Total Complexity | 121 |
Total Lines | 2771 |
Duplicated Lines | 1.15 % |
Changes | 0 |
Duplicate code is one of the most pungent code smells. A rule that is often used is to re-structure code once it is duplicated in three or more places.
Common duplication problems, and corresponding solutions are:
Complex classes like data.datasets.power_plants.pv_rooftop_buildings often do a lot of different things. To break such a class down, we need to identify a cohesive component within that class. A common approach to find such a component is to look for fields/methods that share the same prefixes, or suffixes.
Once you have determined the fields that belong together, you can apply the Extract Class refactoring. If the component makes sense as a sub-class, Extract Subclass is also a candidate, and is often faster.
1 | """ |
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2 | Distribute MaStR PV rooftop capacities to OSM and synthetic buildings. Generate new |
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3 | PV rooftop generators for scenarios eGon2035 and eGon100RE. |
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4 | Data cleaning: Drop duplicates and entries with missing critical data. Determine most |
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5 | plausible capacity from multiple values given in MaStR data. Drop generators which don't |
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6 | have any plausible capacity data (23.5MW > P > 0.1). Randomly and weighted add a |
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7 | start-up date if it is missing. Extract zip and municipality from 'Standort' given in |
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8 | MaStR data. Geocode unique zip and municipality combinations with Nominatim (1sec |
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9 | delay). Drop generators for which geocoding failed or which are located outside the |
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10 | municipalities of Germany. Add some visual sanity checks for cleaned data. |
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11 | Allocation of MaStR data: Allocate each generator to an existing building from OSM. |
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12 | Determine the quantile each generator and building is in depending on the capacity of |
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13 | the generator and the area of the polygon of the building. Randomly distribute |
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14 | generators within each municipality preferably within the same building area quantile as |
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15 | the generators are capacity wise. If not enough buildings exists within a municipality |
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16 | and quantile additional buildings from other quantiles are chosen randomly. |
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17 | Desegregation of pv rooftop scenarios: The scenario data per federal state is linear |
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18 | distributed to the mv grid districts according to the pv rooftop potential per mv grid |
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19 | district. The rooftop potential is estimated from the building area given from the OSM |
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20 | buildings. Grid districts, which are located in several federal states, are allocated PV |
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21 | capacity according to their respective roof potential in the individual federal states. |
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22 | The desegregation of PV plants within a grid districts respects existing plants from |
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23 | MaStR, which did not reach their end of life. New PV plants are randomly and weighted |
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24 | generated using a breakdown of MaStR data as generator basis. Plant metadata (e.g. plant |
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25 | orientation) is also added random and weighted from MaStR data as basis. |
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26 | """ |
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27 | from __future__ import annotations |
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28 | |||
29 | from collections import Counter |
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30 | from functools import wraps |
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31 | from pathlib import Path |
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32 | from time import perf_counter |
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33 | from typing import Any |
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34 | |||
35 | from geoalchemy2 import Geometry |
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36 | from geopy.extra.rate_limiter import RateLimiter |
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37 | from geopy.geocoders import Nominatim |
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38 | from loguru import logger |
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39 | from numpy.random import RandomState, default_rng |
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40 | from pyproj.crs.crs import CRS |
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41 | from sqlalchemy import BigInteger, Column, Float, Integer, String |
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42 | from sqlalchemy.dialects.postgresql import HSTORE |
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43 | from sqlalchemy.ext.declarative import declarative_base |
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44 | import geopandas as gpd |
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45 | import numpy as np |
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46 | import pandas as pd |
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47 | |||
48 | from egon.data import config, db |
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49 | from egon.data.datasets.electricity_demand_timeseries.hh_buildings import ( |
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50 | OsmBuildingsSynthetic, |
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51 | ) |
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52 | from egon.data.datasets.scenario_capacities import EgonScenarioCapacities |
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53 | from egon.data.datasets.zensus_vg250 import Vg250Gem |
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54 | |||
55 | engine = db.engine() |
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56 | Base = declarative_base() |
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57 | SEED = int(config.settings()["egon-data"]["--random-seed"]) |
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58 | |||
59 | # TODO: move to yml |
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60 | # mastr data |
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61 | MASTR_RELEVANT_COLS = [ |
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62 | "EinheitMastrNummer", |
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63 | "Bruttoleistung", |
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64 | "StatisikFlag", |
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65 | "Bruttoleistung_extended", |
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66 | "Nettonennleistung", |
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67 | "InstallierteLeistung", |
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68 | "zugeordneteWirkleistungWechselrichter", |
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69 | "EinheitBetriebsstatus", |
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70 | "Standort", |
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71 | "Bundesland", |
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72 | "Land", |
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73 | "Landkreis", |
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74 | "Gemeinde", |
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75 | "Postleitzahl", |
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76 | "Ort", |
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77 | "GeplantesInbetriebnahmedatum", |
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78 | "Inbetriebnahmedatum", |
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79 | "GemeinsamerWechselrichterMitSpeicher", |
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80 | "Lage", |
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81 | "Leistungsbegrenzung", |
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82 | "EinheitlicheAusrichtungUndNeigungswinkel", |
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83 | "Hauptausrichtung", |
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84 | "HauptausrichtungNeigungswinkel", |
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85 | "Nebenausrichtung", |
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86 | ] |
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87 | |||
88 | MASTR_DTYPES = { |
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89 | "EinheitMastrNummer": str, |
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90 | "Bruttoleistung": float, |
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91 | "StatisikFlag": str, |
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92 | "Bruttoleistung_extended": float, |
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93 | "Nettonennleistung": float, |
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94 | "InstallierteLeistung": float, |
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95 | "zugeordneteWirkleistungWechselrichter": float, |
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96 | "EinheitBetriebsstatus": str, |
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97 | "Standort": str, |
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98 | "Bundesland": str, |
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99 | "Land": str, |
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100 | "Landkreis": str, |
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101 | "Gemeinde": str, |
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102 | # "Postleitzahl": int, # fails because of nan values |
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103 | "Ort": str, |
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104 | "GemeinsamerWechselrichterMitSpeicher": str, |
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105 | "Lage": str, |
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106 | "Leistungsbegrenzung": str, |
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107 | # this will parse nan values as false wich is not always correct |
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108 | # "EinheitlicheAusrichtungUndNeigungswinkel": bool, |
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109 | "Hauptausrichtung": str, |
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110 | "HauptausrichtungNeigungswinkel": str, |
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111 | "Nebenausrichtung": str, |
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112 | "NebenausrichtungNeigungswinkel": str, |
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113 | } |
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114 | |||
115 | MASTR_PARSE_DATES = [ |
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116 | "GeplantesInbetriebnahmedatum", |
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117 | "Inbetriebnahmedatum", |
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118 | ] |
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119 | |||
120 | MASTR_INDEX_COL = "EinheitMastrNummer" |
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121 | |||
122 | EPSG = 4326 |
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123 | SRID = 3035 |
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124 | |||
125 | # data cleaning |
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126 | MAX_REALISTIC_PV_CAP = 23500 |
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127 | MIN_REALISTIC_PV_CAP = 0.1 |
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128 | ROUNDING = 1 |
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129 | |||
130 | # geopy |
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131 | MIN_DELAY_SECONDS = 1 |
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132 | USER_AGENT = "rli_kh_geocoder" |
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133 | |||
134 | # show additional logging information |
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135 | VERBOSE = False |
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136 | |||
137 | EXPORT_DIR = Path(__name__).resolve().parent / "data" |
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138 | EXPORT_FILE = "mastr_geocoded.gpkg" |
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139 | EXPORT_PATH = EXPORT_DIR / EXPORT_FILE |
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140 | DRIVER = "GPKG" |
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141 | |||
142 | # Number of quantiles |
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143 | Q = 5 |
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144 | |||
145 | # Scenario Data |
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146 | CARRIER = "solar_rooftop" |
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147 | SCENARIOS = ["eGon2035", "eGon100RE"] |
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148 | SCENARIO_TIMESTAMP = { |
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149 | "eGon2035": pd.Timestamp("2035-01-01", tz="UTC"), |
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150 | "eGon100RE": pd.Timestamp("2050-01-01", tz="UTC"), |
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151 | } |
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152 | PV_ROOFTOP_LIFETIME = pd.Timedelta(20 * 365, unit="D") |
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153 | |||
154 | # Example Modul Trina Vertex S TSM-400DE09M.08 400 Wp |
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155 | # https://www.photovoltaik4all.de/media/pdf/92/64/68/Trina_Datasheet_VertexS_DE09-08_2021_A.pdf |
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156 | MODUL_CAP = 0.4 # kWp |
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157 | MODUL_SIZE = 1.096 * 1.754 # m² |
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158 | PV_CAP_PER_SQ_M = MODUL_CAP / MODUL_SIZE |
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159 | |||
160 | # Estimation of usable roof area |
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161 | # Factor for the conversion of building area to roof area |
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162 | # estimation mean roof pitch: 35° |
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163 | # estimation usable roof share: 80% |
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164 | # estimation that only the south side of the building is used for pv |
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165 | # see https://mediatum.ub.tum.de/doc/%20969497/969497.pdf |
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166 | # AREA_FACTOR = 1.221 |
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167 | # USABLE_ROOF_SHARE = 0.8 |
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168 | # SOUTH_SHARE = 0.5 |
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169 | # ROOF_FACTOR = AREA_FACTOR * USABLE_ROOF_SHARE * SOUTH_SHARE |
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170 | ROOF_FACTOR = 0.5 |
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171 | |||
172 | CAP_RANGES = [ |
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173 | (0, 30), |
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174 | (30, 100), |
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175 | (100, float("inf")), |
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176 | ] |
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177 | |||
178 | MIN_BUILDING_SIZE = 10.0 |
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179 | UPPER_QUNATILE = 0.95 |
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180 | LOWER_QUANTILE = 0.05 |
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181 | |||
182 | COLS_TO_RENAME = { |
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183 | "EinheitlicheAusrichtungUndNeigungswinkel": ( |
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184 | "einheitliche_ausrichtung_und_neigungswinkel" |
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185 | ), |
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186 | "Hauptausrichtung": "hauptausrichtung", |
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187 | "HauptausrichtungNeigungswinkel": "hauptausrichtung_neigungswinkel", |
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188 | } |
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189 | |||
190 | COLS_TO_EXPORT = [ |
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191 | "scenario", |
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192 | "bus_id", |
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193 | "building_id", |
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194 | "gens_id", |
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195 | "capacity", |
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196 | "einheitliche_ausrichtung_und_neigungswinkel", |
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197 | "hauptausrichtung", |
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198 | "hauptausrichtung_neigungswinkel", |
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199 | "voltage_level", |
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200 | "weather_cell_id", |
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201 | ] |
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202 | |||
203 | # TODO |
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204 | INCLUDE_SYNTHETIC_BUILDINGS = True |
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205 | ONLY_BUILDINGS_WITH_DEMAND = True |
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206 | TEST_RUN = False |
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207 | |||
208 | |||
209 | def timer_func(func): |
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210 | @wraps(func) |
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211 | def timeit_wrapper(*args, **kwargs): |
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212 | start_time = perf_counter() |
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213 | result = func(*args, **kwargs) |
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214 | end_time = perf_counter() |
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215 | total_time = end_time - start_time |
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216 | logger.debug( |
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217 | f"Function {func.__name__} took {total_time:.4f} seconds." |
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218 | ) |
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219 | return result |
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220 | |||
221 | return timeit_wrapper |
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222 | |||
223 | |||
224 | @timer_func |
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225 | def mastr_data( |
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226 | index_col: str | int | list[str] | list[int], |
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227 | usecols: list[str], |
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228 | dtype: dict[str, Any] | None, |
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229 | parse_dates: list[str] | None, |
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230 | ) -> pd.DataFrame: |
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231 | """ |
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232 | Read MaStR data from csv. |
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233 | |||
234 | Parameters |
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235 | ----------- |
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236 | index_col : str, int or list of str or int |
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237 | Column(s) to use as the row labels of the DataFrame. |
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238 | usecols : list of str |
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239 | Return a subset of the columns. |
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240 | dtype : dict of column (str) -> type (any), optional |
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241 | Data type for data or columns. |
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242 | parse_dates : list of names (str), optional |
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243 | Try to parse given columns to datetime. |
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244 | Returns |
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245 | ------- |
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246 | pandas.DataFrame |
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247 | DataFrame containing MaStR data. |
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248 | """ |
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249 | mastr_path = Path( |
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250 | config.datasets()["power_plants"]["sources"]["mastr_pv"] |
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251 | ).resolve() |
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252 | |||
253 | mastr_df = pd.read_csv( |
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254 | mastr_path, |
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255 | index_col=index_col, |
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256 | usecols=usecols, |
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257 | dtype=dtype, |
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258 | parse_dates=parse_dates, |
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259 | ) |
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260 | |||
261 | mastr_df = mastr_df.loc[ |
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262 | (mastr_df.StatisikFlag == "B") |
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263 | & (mastr_df.EinheitBetriebsstatus == "InBetrieb") |
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264 | & (mastr_df.Land == "Deutschland") |
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265 | & (mastr_df.Lage == "BaulicheAnlagen") |
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266 | ] |
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267 | |||
268 | if ( |
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269 | config.settings()["egon-data"]["--dataset-boundary"] |
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270 | == "Schleswig-Holstein" |
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271 | ): |
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272 | init_len = len(mastr_df) |
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273 | |||
274 | mastr_df = mastr_df.loc[mastr_df.Bundesland == "SchleswigHolstein"] |
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275 | |||
276 | logger.info( |
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277 | f"Using only MaStR data within Schleswig-Holstein. " |
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278 | f"{init_len - len(mastr_df)} of {init_len} generators are dropped." |
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279 | ) |
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280 | |||
281 | logger.debug("MaStR data loaded.") |
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282 | |||
283 | return mastr_df |
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284 | |||
285 | |||
286 | @timer_func |
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287 | def clean_mastr_data( |
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288 | mastr_df: pd.DataFrame, |
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289 | max_realistic_pv_cap: int | float, |
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290 | min_realistic_pv_cap: int | float, |
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291 | rounding: int, |
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292 | seed: int, |
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293 | ) -> pd.DataFrame: |
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294 | """ |
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295 | Clean the MaStR data from implausible data. |
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296 | |||
297 | * Drop MaStR ID duplicates. |
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298 | * Drop generators with implausible capacities. |
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299 | * Drop generators without any kind of start-up date. |
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300 | * Clean up Standort column and capacity. |
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301 | |||
302 | Parameters |
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303 | ----------- |
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304 | mastr_df : pandas.DataFrame |
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305 | DataFrame containing MaStR data. |
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306 | max_realistic_pv_cap : int or float |
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307 | Maximum capacity, which is considered to be realistic. |
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308 | min_realistic_pv_cap : int or float |
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309 | Minimum capacity, which is considered to be realistic. |
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310 | rounding : int |
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311 | Rounding to use when cleaning up capacity. E.g. when |
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312 | rounding is 1 a capacity of 9.93 will be rounded to 9.9. |
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313 | seed : int |
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314 | Seed to use for random operations with NumPy and pandas. |
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315 | Returns |
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316 | ------- |
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317 | pandas.DataFrame |
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318 | DataFrame containing cleaned MaStR data. |
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319 | """ |
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320 | init_len = len(mastr_df) |
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321 | |||
322 | # drop duplicates |
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323 | mastr_df = mastr_df.loc[~mastr_df.index.duplicated()] |
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324 | |||
325 | # drop invalid entries in standort |
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326 | index_to_drop = mastr_df.loc[ |
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327 | (mastr_df.Standort.isna()) | (mastr_df.Standort.isnull()) |
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328 | ].index |
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329 | |||
330 | mastr_df = mastr_df.loc[~mastr_df.index.isin(index_to_drop)] |
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331 | |||
332 | df = mastr_df[ |
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333 | [ |
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334 | "Bruttoleistung", |
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335 | "Bruttoleistung_extended", |
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336 | "Nettonennleistung", |
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337 | "zugeordneteWirkleistungWechselrichter", |
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338 | "InstallierteLeistung", |
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339 | ] |
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340 | ].round(rounding) |
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341 | |||
342 | # use only the smallest capacity rating if multiple are given |
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343 | mastr_df = mastr_df.assign( |
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344 | capacity=[ |
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345 | most_plausible(p_tub, min_realistic_pv_cap) |
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346 | for p_tub in df.itertuples(index=False) |
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347 | ] |
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348 | ) |
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349 | |||
350 | # drop generators without any capacity info |
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351 | # and capacity of zero |
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352 | # and if the capacity is > 23.5 MW, because |
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353 | # Germanies largest rooftop PV is 23 MW |
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354 | # https://www.iwr.de/news/groesste-pv-dachanlage-europas-wird-in-sachsen-anhalt-gebaut-news37379 |
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355 | mastr_df = mastr_df.loc[ |
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356 | (~mastr_df.capacity.isna()) |
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357 | & (mastr_df.capacity <= max_realistic_pv_cap) |
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358 | & (mastr_df.capacity > min_realistic_pv_cap) |
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359 | ] |
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360 | |||
361 | # get zip and municipality |
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362 | mastr_df[["zip_and_municipality", "drop_this"]] = pd.DataFrame( |
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363 | mastr_df.Standort.astype(str) |
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364 | .apply( |
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365 | zip_and_municipality_from_standort, |
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366 | args=(VERBOSE,), |
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367 | ) |
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368 | .tolist(), |
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369 | index=mastr_df.index, |
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370 | ) |
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371 | |||
372 | # drop invalid entries |
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373 | mastr_df = mastr_df.loc[mastr_df.drop_this].drop(columns="drop_this") |
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374 | |||
375 | # add ", Deutschland" just in case |
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376 | mastr_df = mastr_df.assign( |
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377 | zip_and_municipality=(mastr_df.zip_and_municipality + ", Deutschland") |
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378 | ) |
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379 | |||
380 | # get consistent start-up date |
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381 | mastr_df = mastr_df.assign( |
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382 | start_up_date=mastr_df.Inbetriebnahmedatum, |
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383 | ) |
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384 | |||
385 | mastr_df.loc[mastr_df.start_up_date.isna()] = mastr_df.loc[ |
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386 | mastr_df.start_up_date.isna() |
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387 | ].assign( |
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388 | start_up_date=mastr_df.GeplantesInbetriebnahmedatum.loc[ |
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389 | mastr_df.start_up_date.isna() |
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390 | ] |
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391 | ) |
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392 | |||
393 | # randomly and weighted fill missing start-up dates |
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394 | pool = mastr_df.loc[ |
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395 | ~mastr_df.start_up_date.isna() |
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396 | ].start_up_date.to_numpy() |
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397 | |||
398 | size = len(mastr_df) - len(pool) |
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399 | |||
400 | if size > 0: |
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401 | np.random.seed(seed) |
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402 | |||
403 | choice = np.random.choice( |
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404 | pool, |
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405 | size=size, |
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406 | replace=False, |
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407 | ) |
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408 | |||
409 | mastr_df.loc[mastr_df.start_up_date.isna()] = mastr_df.loc[ |
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410 | mastr_df.start_up_date.isna() |
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411 | ].assign(start_up_date=choice) |
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412 | |||
413 | logger.info( |
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414 | f"Randomly and weigthed added start-up date to {size} generators." |
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415 | ) |
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416 | |||
417 | mastr_df = mastr_df.assign( |
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418 | start_up_date=pd.to_datetime(mastr_df.start_up_date, utc=True) |
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419 | ) |
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420 | |||
421 | end_len = len(mastr_df) |
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422 | logger.debug( |
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423 | f"Dropped {init_len - end_len} " |
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424 | f"({((init_len - end_len) / init_len) * 100:g}%)" |
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425 | f" of {init_len} rows from MaStR DataFrame." |
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426 | ) |
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427 | |||
428 | return mastr_df |
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429 | |||
430 | |||
431 | def zip_and_municipality_from_standort( |
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432 | standort: str, |
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433 | verbose: bool = False, |
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434 | ) -> tuple[str, bool]: |
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435 | """ |
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436 | Get zip code and municipality from Standort string split into a list. |
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437 | Parameters |
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438 | ----------- |
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439 | standort : str |
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440 | Standort as given from MaStR data. |
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441 | verbose : bool |
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442 | Logs additional info if True. |
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443 | Returns |
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444 | ------- |
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445 | str |
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446 | Standort with only the zip code and municipality |
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447 | as well a ', Germany' added. |
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448 | """ |
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449 | if verbose: |
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450 | logger.debug(f"Uncleaned String: {standort}") |
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451 | |||
452 | standort_list = standort.split() |
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453 | |||
454 | found = False |
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455 | count = 0 |
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456 | |||
457 | for count, elem in enumerate(standort_list): |
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458 | if len(elem) != 5: |
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459 | continue |
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460 | if not elem.isnumeric(): |
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461 | continue |
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462 | |||
463 | found = True |
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464 | |||
465 | break |
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466 | |||
467 | if found: |
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468 | cleaned_str = " ".join(standort_list[count:]) |
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469 | |||
470 | if verbose: |
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471 | logger.debug(f"Cleaned String: {cleaned_str}") |
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472 | |||
473 | return cleaned_str, found |
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474 | |||
475 | logger.warning( |
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476 | "Couldn't identify zip code. This entry will be dropped." |
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477 | f" Original standort: {standort}." |
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478 | ) |
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479 | |||
480 | return standort, found |
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481 | |||
482 | |||
483 | def most_plausible( |
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484 | p_tub: tuple, |
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485 | min_realistic_pv_cap: int | float, |
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486 | ) -> float: |
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487 | """ |
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488 | Try to determine the most plausible capacity. |
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489 | Try to determine the most plausible capacity from a given |
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490 | generator from MaStR data. |
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491 | Parameters |
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492 | ----------- |
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493 | p_tub : tuple |
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494 | Tuple containing the different capacities given in |
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495 | the MaStR data. |
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496 | min_realistic_pv_cap : int or float |
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497 | Minimum capacity, which is considered to be realistic. |
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498 | Returns |
||
499 | ------- |
||
500 | float |
||
501 | Capacity of the generator estimated as the most realistic. |
||
502 | """ |
||
503 | count = Counter(p_tub).most_common(3) |
||
504 | |||
505 | if len(count) == 1: |
||
506 | return count[0][0] |
||
507 | |||
508 | val1 = count[0][0] |
||
509 | val2 = count[1][0] |
||
510 | |||
511 | if len(count) == 2: |
||
512 | min_val = min(val1, val2) |
||
513 | max_val = max(val1, val2) |
||
514 | else: |
||
515 | val3 = count[2][0] |
||
516 | |||
517 | min_val = min(val1, val2, val3) |
||
518 | max_val = max(val1, val2, val3) |
||
519 | |||
520 | if min_val < min_realistic_pv_cap: |
||
521 | return max_val |
||
522 | |||
523 | return min_val |
||
524 | |||
525 | |||
526 | def geocoder( |
||
527 | user_agent: str, |
||
528 | min_delay_seconds: int, |
||
529 | ) -> RateLimiter: |
||
530 | """ |
||
531 | Setup Nominatim geocoding class. |
||
532 | Parameters |
||
533 | ----------- |
||
534 | user_agent : str |
||
535 | The app name. |
||
536 | min_delay_seconds : int |
||
537 | Delay in seconds to use between requests to Nominatim. |
||
538 | A minimum of 1 is advised. |
||
539 | Returns |
||
540 | ------- |
||
541 | geopy.extra.rate_limiter.RateLimiter |
||
542 | Nominatim RateLimiter geocoding class to use for geocoding. |
||
543 | """ |
||
544 | locator = Nominatim(user_agent=user_agent) |
||
545 | return RateLimiter( |
||
546 | locator.geocode, |
||
547 | min_delay_seconds=min_delay_seconds, |
||
548 | ) |
||
549 | |||
550 | |||
551 | def geocoding_data( |
||
552 | clean_mastr_df: pd.DataFrame, |
||
553 | ) -> pd.DataFrame: |
||
554 | """ |
||
555 | Setup DataFrame to geocode. |
||
556 | Parameters |
||
557 | ----------- |
||
558 | clean_mastr_df : pandas.DataFrame |
||
559 | DataFrame containing cleaned MaStR data. |
||
560 | Returns |
||
561 | ------- |
||
562 | pandas.DataFrame |
||
563 | DataFrame containing all unique combinations of |
||
564 | zip codes with municipalities for geocoding. |
||
565 | """ |
||
566 | return pd.DataFrame( |
||
567 | data=clean_mastr_df.zip_and_municipality.unique(), |
||
568 | columns=["zip_and_municipality"], |
||
569 | ) |
||
570 | |||
571 | |||
572 | @timer_func |
||
573 | def geocode_data( |
||
574 | geocoding_df: pd.DataFrame, |
||
575 | ratelimiter: RateLimiter, |
||
576 | epsg: int, |
||
577 | ) -> gpd.GeoDataFrame: |
||
578 | """ |
||
579 | Geocode zip code and municipality. |
||
580 | Extract latitude, longitude and altitude. |
||
581 | Transfrom latitude and longitude to shapely |
||
582 | Point and return a geopandas GeoDataFrame. |
||
583 | Parameters |
||
584 | ----------- |
||
585 | geocoding_df : pandas.DataFrame |
||
586 | DataFrame containing all unique combinations of |
||
587 | zip codes with municipalities for geocoding. |
||
588 | ratelimiter : geopy.extra.rate_limiter.RateLimiter |
||
589 | Nominatim RateLimiter geocoding class to use for geocoding. |
||
590 | epsg : int |
||
591 | EPSG ID to use as CRS. |
||
592 | Returns |
||
593 | ------- |
||
594 | geopandas.GeoDataFrame |
||
595 | GeoDataFrame containing all unique combinations of |
||
596 | zip codes with municipalities with matching geolocation. |
||
597 | """ |
||
598 | logger.info(f"Geocoding {len(geocoding_df)} locations.") |
||
599 | |||
600 | geocode_df = geocoding_df.assign( |
||
601 | location=geocoding_df.zip_and_municipality.apply(ratelimiter) |
||
602 | ) |
||
603 | |||
604 | geocode_df = geocode_df.assign( |
||
605 | point=geocode_df.location.apply( |
||
606 | lambda loc: tuple(loc.point) if loc else None |
||
607 | ) |
||
608 | ) |
||
609 | |||
610 | geocode_df[["latitude", "longitude", "altitude"]] = pd.DataFrame( |
||
611 | geocode_df.point.tolist(), index=geocode_df.index |
||
612 | ) |
||
613 | |||
614 | return gpd.GeoDataFrame( |
||
615 | geocode_df, |
||
616 | geometry=gpd.points_from_xy(geocode_df.longitude, geocode_df.latitude), |
||
617 | crs=f"EPSG:{epsg}", |
||
618 | ) |
||
619 | |||
620 | |||
621 | def merge_geocode_with_mastr( |
||
622 | clean_mastr_df: pd.DataFrame, geocode_gdf: gpd.GeoDataFrame |
||
623 | ) -> gpd.GeoDataFrame: |
||
624 | """ |
||
625 | Merge geometry to original mastr data. |
||
626 | Parameters |
||
627 | ----------- |
||
628 | clean_mastr_df : pandas.DataFrame |
||
629 | DataFrame containing cleaned MaStR data. |
||
630 | geocode_gdf : geopandas.GeoDataFrame |
||
631 | GeoDataFrame containing all unique combinations of |
||
632 | zip codes with municipalities with matching geolocation. |
||
633 | Returns |
||
634 | ------- |
||
635 | gepandas.GeoDataFrame |
||
636 | GeoDataFrame containing cleaned MaStR data with |
||
637 | matching geolocation from geocoding. |
||
638 | """ |
||
639 | return gpd.GeoDataFrame( |
||
640 | clean_mastr_df.merge( |
||
641 | geocode_gdf[["zip_and_municipality", "geometry"]], |
||
642 | how="left", |
||
643 | left_on="zip_and_municipality", |
||
644 | right_on="zip_and_municipality", |
||
645 | ), |
||
646 | crs=geocode_gdf.crs, |
||
647 | ).set_index(clean_mastr_df.index) |
||
648 | |||
649 | |||
650 | def drop_invalid_entries_from_gdf( |
||
651 | gdf: gpd.GeoDataFrame, |
||
652 | ) -> gpd.GeoDataFrame: |
||
653 | """ |
||
654 | Drop invalid entries from geopandas GeoDataFrame. |
||
655 | TODO: how to omit the logging from geos here??? |
||
656 | Parameters |
||
657 | ----------- |
||
658 | gdf : geopandas.GeoDataFrame |
||
659 | GeoDataFrame to be checked for validity. |
||
660 | Returns |
||
661 | ------- |
||
662 | gepandas.GeoDataFrame |
||
663 | GeoDataFrame with rows with invalid geometries |
||
664 | dropped. |
||
665 | """ |
||
666 | valid_gdf = gdf.loc[gdf.is_valid] |
||
667 | |||
668 | logger.debug( |
||
669 | f"{len(gdf) - len(valid_gdf)} " |
||
670 | f"({(len(gdf) - len(valid_gdf)) / len(gdf) * 100:g}%) " |
||
671 | f"of {len(gdf)} values were invalid and are dropped." |
||
672 | ) |
||
673 | |||
674 | return valid_gdf |
||
675 | |||
676 | |||
677 | @timer_func |
||
678 | def municipality_data() -> gpd.GeoDataFrame: |
||
679 | """ |
||
680 | Get municipality data from eGo^n Database. |
||
681 | Returns |
||
682 | ------- |
||
683 | gepandas.GeoDataFrame |
||
684 | GeoDataFrame with municipality data. |
||
685 | """ |
||
686 | with db.session_scope() as session: |
||
687 | query = session.query(Vg250Gem.ags, Vg250Gem.geometry.label("geom")) |
||
688 | |||
689 | return gpd.read_postgis( |
||
690 | query.statement, query.session.bind, index_col="ags" |
||
691 | ) |
||
692 | |||
693 | |||
694 | @timer_func |
||
695 | def add_ags_to_gens( |
||
696 | valid_mastr_gdf: gpd.GeoDataFrame, |
||
697 | municipalities_gdf: gpd.GeoDataFrame, |
||
698 | ) -> gpd.GeoDataFrame: |
||
699 | """ |
||
700 | Add information about AGS ID to generators. |
||
701 | Parameters |
||
702 | ----------- |
||
703 | valid_mastr_gdf : geopandas.GeoDataFrame |
||
704 | GeoDataFrame with valid and cleaned MaStR data. |
||
705 | municipalities_gdf : geopandas.GeoDataFrame |
||
706 | GeoDataFrame with municipality data. |
||
707 | Returns |
||
708 | ------- |
||
709 | gepandas.GeoDataFrame |
||
710 | GeoDataFrame with valid and cleaned MaStR data |
||
711 | with AGS ID added. |
||
712 | """ |
||
713 | return valid_mastr_gdf.sjoin( |
||
714 | municipalities_gdf, |
||
715 | how="left", |
||
716 | predicate="intersects", |
||
717 | ).rename(columns={"index_right": "ags"}) |
||
718 | |||
719 | |||
720 | def drop_gens_outside_muns( |
||
721 | valid_mastr_gdf: gpd.GeoDataFrame, |
||
722 | ) -> gpd.GeoDataFrame: |
||
723 | """ |
||
724 | Drop all generators outside of municipalities. |
||
725 | Parameters |
||
726 | ----------- |
||
727 | valid_mastr_gdf : geopandas.GeoDataFrame |
||
728 | GeoDataFrame with valid and cleaned MaStR data. |
||
729 | Returns |
||
730 | ------- |
||
731 | gepandas.GeoDataFrame |
||
732 | GeoDataFrame with valid and cleaned MaStR data |
||
733 | with generatos without an AGS ID dropped. |
||
734 | """ |
||
735 | gdf = valid_mastr_gdf.loc[~valid_mastr_gdf.ags.isna()] |
||
736 | |||
737 | logger.debug( |
||
738 | f"{len(valid_mastr_gdf) - len(gdf)} " |
||
739 | f"({(len(valid_mastr_gdf) - len(gdf)) / len(valid_mastr_gdf) * 100:g}%) " |
||
740 | f"of {len(valid_mastr_gdf)} values are outside of the municipalities" |
||
741 | " and are therefore dropped." |
||
742 | ) |
||
743 | |||
744 | return gdf |
||
745 | |||
746 | |||
747 | class EgonMastrPvRoofGeocoded(Base): |
||
748 | __tablename__ = "egon_mastr_pv_roof_geocoded" |
||
749 | __table_args__ = {"schema": "supply"} |
||
750 | |||
751 | zip_and_municipality = Column(String, primary_key=True, index=True) |
||
752 | location = Column(String) |
||
753 | point = Column(String) |
||
754 | latitude = Column(Float) |
||
755 | longitude = Column(Float) |
||
756 | altitude = Column(Float) |
||
757 | geometry = Column(Geometry(srid=EPSG)) |
||
758 | |||
759 | |||
760 | def create_geocoded_table(geocode_gdf): |
||
761 | """ |
||
762 | Create geocoded table mastr pv rooftop |
||
763 | Parameters |
||
764 | ----------- |
||
765 | geocode_gdf : geopandas.GeoDataFrame |
||
766 | GeoDataFrame containing geocoding information on pv rooftop locations. |
||
767 | """ |
||
768 | EgonMastrPvRoofGeocoded.__table__.drop(bind=engine, checkfirst=True) |
||
769 | EgonMastrPvRoofGeocoded.__table__.create(bind=engine, checkfirst=True) |
||
770 | |||
771 | geocode_gdf.to_postgis( |
||
772 | name=EgonMastrPvRoofGeocoded.__table__.name, |
||
773 | schema=EgonMastrPvRoofGeocoded.__table__.schema, |
||
774 | con=db.engine(), |
||
775 | if_exists="append", |
||
776 | index=False, |
||
777 | # dtype={} |
||
778 | ) |
||
779 | |||
780 | |||
781 | def geocoded_data_from_db( |
||
782 | epsg: str | int, |
||
783 | ) -> gpd.GeoDataFrame: |
||
784 | """ |
||
785 | Read OSM buildings data from eGo^n Database. |
||
786 | Parameters |
||
787 | ----------- |
||
788 | to_crs : pyproj.crs.crs.CRS |
||
789 | CRS to transform geometries to. |
||
790 | Returns |
||
791 | ------- |
||
792 | geopandas.GeoDataFrame |
||
793 | GeoDataFrame containing OSM buildings data. |
||
794 | """ |
||
795 | with db.session_scope() as session: |
||
796 | query = session.query( |
||
797 | EgonMastrPvRoofGeocoded.zip_and_municipality, |
||
798 | EgonMastrPvRoofGeocoded.geometry, |
||
799 | ) |
||
800 | |||
801 | return gpd.read_postgis( |
||
802 | query.statement, query.session.bind, geom_col="geometry" |
||
803 | ).to_crs(f"EPSG:{epsg}") |
||
804 | |||
805 | |||
806 | def load_mastr_data(): |
||
807 | """Read PV rooftop data from MaStR CSV |
||
808 | Note: the source will be replaced as soon as the MaStR data is available |
||
809 | in DB. |
||
810 | Returns |
||
811 | ------- |
||
812 | geopandas.GeoDataFrame |
||
813 | GeoDataFrame containing MaStR data with geocoded locations. |
||
814 | """ |
||
815 | mastr_df = mastr_data( |
||
816 | MASTR_INDEX_COL, |
||
817 | MASTR_RELEVANT_COLS, |
||
818 | MASTR_DTYPES, |
||
819 | MASTR_PARSE_DATES, |
||
820 | ) |
||
821 | |||
822 | clean_mastr_df = clean_mastr_data( |
||
823 | mastr_df, |
||
824 | max_realistic_pv_cap=MAX_REALISTIC_PV_CAP, |
||
825 | min_realistic_pv_cap=MIN_REALISTIC_PV_CAP, |
||
826 | seed=SEED, |
||
827 | rounding=ROUNDING, |
||
828 | ) |
||
829 | |||
830 | geocode_gdf = geocoded_data_from_db(EPSG) |
||
831 | |||
832 | mastr_gdf = merge_geocode_with_mastr(clean_mastr_df, geocode_gdf) |
||
833 | |||
834 | valid_mastr_gdf = drop_invalid_entries_from_gdf(mastr_gdf) |
||
835 | |||
836 | municipalities_gdf = municipality_data() |
||
837 | |||
838 | valid_mastr_gdf = add_ags_to_gens(valid_mastr_gdf, municipalities_gdf) |
||
839 | |||
840 | return drop_gens_outside_muns(valid_mastr_gdf) |
||
841 | |||
842 | |||
843 | class OsmBuildingsFiltered(Base): |
||
844 | __tablename__ = "osm_buildings_filtered" |
||
845 | __table_args__ = {"schema": "openstreetmap"} |
||
846 | |||
847 | osm_id = Column(BigInteger) |
||
848 | amenity = Column(String) |
||
849 | building = Column(String) |
||
850 | name = Column(String) |
||
851 | geom = Column(Geometry(srid=SRID), index=True) |
||
852 | area = Column(Float) |
||
853 | geom_point = Column(Geometry(srid=SRID), index=True) |
||
854 | tags = Column(HSTORE) |
||
855 | id = Column(BigInteger, primary_key=True, index=True) |
||
856 | |||
857 | |||
858 | @timer_func |
||
859 | def osm_buildings( |
||
860 | to_crs: CRS, |
||
861 | ) -> gpd.GeoDataFrame: |
||
862 | """ |
||
863 | Read OSM buildings data from eGo^n Database. |
||
864 | Parameters |
||
865 | ----------- |
||
866 | to_crs : pyproj.crs.crs.CRS |
||
867 | CRS to transform geometries to. |
||
868 | Returns |
||
869 | ------- |
||
870 | geopandas.GeoDataFrame |
||
871 | GeoDataFrame containing OSM buildings data. |
||
872 | """ |
||
873 | with db.session_scope() as session: |
||
874 | query = session.query( |
||
875 | OsmBuildingsFiltered.id, |
||
876 | OsmBuildingsFiltered.area, |
||
877 | OsmBuildingsFiltered.geom_point.label("geom"), |
||
878 | ) |
||
879 | |||
880 | return gpd.read_postgis( |
||
881 | query.statement, query.session.bind, index_col="id" |
||
882 | ).to_crs(to_crs) |
||
883 | |||
884 | |||
885 | @timer_func |
||
886 | def synthetic_buildings( |
||
887 | to_crs: CRS, |
||
888 | ) -> gpd.GeoDataFrame: |
||
889 | """ |
||
890 | Read synthetic buildings data from eGo^n Database. |
||
891 | Parameters |
||
892 | ----------- |
||
893 | to_crs : pyproj.crs.crs.CRS |
||
894 | CRS to transform geometries to. |
||
895 | Returns |
||
896 | ------- |
||
897 | geopandas.GeoDataFrame |
||
898 | GeoDataFrame containing OSM buildings data. |
||
899 | """ |
||
900 | with db.session_scope() as session: |
||
901 | query = session.query( |
||
902 | OsmBuildingsSynthetic.id, |
||
903 | OsmBuildingsSynthetic.area, |
||
904 | OsmBuildingsSynthetic.geom_point.label("geom"), |
||
905 | ) |
||
906 | |||
907 | return gpd.read_postgis( |
||
908 | query.statement, query.session.bind, index_col="id" |
||
909 | ).to_crs(to_crs) |
||
910 | |||
911 | |||
912 | @timer_func |
||
913 | def add_ags_to_buildings( |
||
914 | buildings_gdf: gpd.GeoDataFrame, |
||
915 | municipalities_gdf: gpd.GeoDataFrame, |
||
916 | ) -> gpd.GeoDataFrame: |
||
917 | """ |
||
918 | Add information about AGS ID to buildings. |
||
919 | Parameters |
||
920 | ----------- |
||
921 | buildings_gdf : geopandas.GeoDataFrame |
||
922 | GeoDataFrame containing OSM buildings data. |
||
923 | municipalities_gdf : geopandas.GeoDataFrame |
||
924 | GeoDataFrame with municipality data. |
||
925 | Returns |
||
926 | ------- |
||
927 | gepandas.GeoDataFrame |
||
928 | GeoDataFrame containing OSM buildings data |
||
929 | with AGS ID added. |
||
930 | """ |
||
931 | return buildings_gdf.sjoin( |
||
932 | municipalities_gdf, |
||
933 | how="left", |
||
934 | predicate="intersects", |
||
935 | ).rename(columns={"index_right": "ags"}) |
||
936 | |||
937 | |||
938 | def drop_buildings_outside_muns( |
||
939 | buildings_gdf: gpd.GeoDataFrame, |
||
940 | ) -> gpd.GeoDataFrame: |
||
941 | """ |
||
942 | Drop all buildings outside of municipalities. |
||
943 | Parameters |
||
944 | ----------- |
||
945 | buildings_gdf : geopandas.GeoDataFrame |
||
946 | GeoDataFrame containing OSM buildings data. |
||
947 | Returns |
||
948 | ------- |
||
949 | gepandas.GeoDataFrame |
||
950 | GeoDataFrame containing OSM buildings data |
||
951 | with buildings without an AGS ID dropped. |
||
952 | """ |
||
953 | gdf = buildings_gdf.loc[~buildings_gdf.ags.isna()] |
||
954 | |||
955 | logger.debug( |
||
956 | f"{len(buildings_gdf) - len(gdf)} " |
||
957 | f"({(len(buildings_gdf) - len(gdf)) / len(buildings_gdf) * 100:g}%) " |
||
958 | f"of {len(buildings_gdf)} values are outside of the municipalities " |
||
959 | "and are therefore dropped." |
||
960 | ) |
||
961 | |||
962 | return gdf |
||
963 | |||
964 | |||
965 | def egon_building_peak_loads(): |
||
966 | sql = """ |
||
967 | SELECT building_id |
||
968 | FROM demand.egon_building_electricity_peak_loads |
||
969 | WHERE scenario = 'eGon2035' |
||
970 | """ |
||
971 | |||
972 | return ( |
||
973 | db.select_dataframe(sql).building_id.astype(int).sort_values().unique() |
||
974 | ) |
||
975 | |||
976 | |||
977 | @timer_func |
||
978 | def load_building_data(): |
||
979 | """ |
||
980 | Read buildings from DB |
||
981 | Tables: |
||
982 | |||
983 | * `openstreetmap.osm_buildings_filtered` (from OSM) |
||
984 | * `openstreetmap.osm_buildings_synthetic` (synthetic, created by us) |
||
985 | |||
986 | Use column `id` for both as it is unique hence you concat both datasets. If |
||
987 | INCLUDE_SYNTHETIC_BUILDINGS is False synthetic buildings will not be loaded. |
||
988 | |||
989 | Returns |
||
990 | ------- |
||
991 | gepandas.GeoDataFrame |
||
992 | GeoDataFrame containing OSM buildings data with buildings without an AGS ID |
||
993 | dropped. |
||
994 | """ |
||
995 | |||
996 | municipalities_gdf = municipality_data() |
||
997 | |||
998 | osm_buildings_gdf = osm_buildings(municipalities_gdf.crs) |
||
999 | |||
1000 | if INCLUDE_SYNTHETIC_BUILDINGS: |
||
1001 | synthetic_buildings_gdf = synthetic_buildings(municipalities_gdf.crs) |
||
1002 | |||
1003 | buildings_gdf = gpd.GeoDataFrame( |
||
1004 | pd.concat( |
||
1005 | [ |
||
1006 | osm_buildings_gdf, |
||
1007 | synthetic_buildings_gdf, |
||
1008 | ] |
||
1009 | ), |
||
1010 | geometry="geom", |
||
1011 | crs=osm_buildings_gdf.crs, |
||
1012 | ).rename(columns={"area": "building_area"}) |
||
1013 | |||
1014 | buildings_gdf.index = buildings_gdf.index.astype(int) |
||
1015 | |||
1016 | else: |
||
1017 | buildings_gdf = osm_buildings_gdf.rename( |
||
1018 | columns={"area": "building_area"} |
||
1019 | ) |
||
1020 | |||
1021 | if ONLY_BUILDINGS_WITH_DEMAND: |
||
1022 | building_ids = egon_building_peak_loads() |
||
1023 | |||
1024 | init_len = len(building_ids) |
||
1025 | |||
1026 | building_ids = np.intersect1d( |
||
1027 | list(map(int, building_ids)), |
||
1028 | list(map(int, buildings_gdf.index.to_numpy())), |
||
1029 | ) |
||
1030 | |||
1031 | end_len = len(building_ids) |
||
1032 | |||
1033 | logger.debug( |
||
1034 | f"{end_len/init_len * 100: g} % ({end_len} / {init_len}) of buildings have " |
||
1035 | f"peak load." |
||
1036 | ) |
||
1037 | |||
1038 | buildings_gdf = buildings_gdf.loc[building_ids] |
||
1039 | |||
1040 | buildings_ags_gdf = add_ags_to_buildings(buildings_gdf, municipalities_gdf) |
||
1041 | |||
1042 | buildings_ags_gdf = drop_buildings_outside_muns(buildings_ags_gdf) |
||
1043 | |||
1044 | grid_districts_gdf = grid_districts(EPSG) |
||
1045 | |||
1046 | federal_state_gdf = federal_state_data(grid_districts_gdf.crs) |
||
1047 | |||
1048 | grid_federal_state_gdf = overlay_grid_districts_with_counties( |
||
1049 | grid_districts_gdf, |
||
1050 | federal_state_gdf, |
||
1051 | ) |
||
1052 | |||
1053 | buildings_overlay_gdf = add_overlay_id_to_buildings( |
||
1054 | buildings_ags_gdf, |
||
1055 | grid_federal_state_gdf, |
||
1056 | ) |
||
1057 | |||
1058 | logger.debug("Loaded buildings.") |
||
1059 | |||
1060 | buildings_overlay_gdf = drop_buildings_outside_grids(buildings_overlay_gdf) |
||
1061 | |||
1062 | # overwrite bus_id with data from new table |
||
1063 | sql = "SELECT building_id, bus_id FROM boundaries.egon_map_zensus_mvgd_buildings" |
||
1064 | map_building_bus_df = db.select_dataframe(sql) |
||
1065 | |||
1066 | building_ids = np.intersect1d( |
||
1067 | list(map(int, map_building_bus_df.building_id.unique())), |
||
1068 | list(map(int, buildings_overlay_gdf.index.to_numpy())), |
||
1069 | ) |
||
1070 | |||
1071 | buildings_within_gdf = buildings_overlay_gdf.loc[building_ids] |
||
1072 | |||
1073 | gdf = ( |
||
1074 | buildings_within_gdf.reset_index() |
||
1075 | .drop(columns=["bus_id"]) |
||
1076 | .merge( |
||
1077 | how="left", |
||
1078 | right=map_building_bus_df, |
||
1079 | left_on="id", |
||
1080 | right_on="building_id", |
||
1081 | ) |
||
1082 | .drop(columns=["building_id"]) |
||
1083 | .set_index("id") |
||
1084 | .sort_index() |
||
1085 | ) |
||
1086 | |||
1087 | return gdf[~gdf.index.duplicated(keep="first")] |
||
1088 | |||
1089 | |||
1090 | @timer_func |
||
1091 | def sort_and_qcut_df( |
||
1092 | df: pd.DataFrame | gpd.GeoDataFrame, |
||
1093 | col: str, |
||
1094 | q: int, |
||
1095 | ) -> pd.DataFrame | gpd.GeoDataFrame: |
||
1096 | """ |
||
1097 | Determine the quantile of a given attribute in a (Geo)DataFrame. |
||
1098 | Sort the (Geo)DataFrame in ascending order for the given attribute. |
||
1099 | Parameters |
||
1100 | ----------- |
||
1101 | df : pandas.DataFrame or geopandas.GeoDataFrame |
||
1102 | (Geo)DataFrame to sort and qcut. |
||
1103 | col : str |
||
1104 | Name of the attribute to sort and qcut the (Geo)DataFrame on. |
||
1105 | q : int |
||
1106 | Number of quantiles. |
||
1107 | Returns |
||
1108 | ------- |
||
1109 | pandas.DataFrame or gepandas.GeoDataFrame |
||
1110 | Sorted and qcut (Geo)DataFrame. |
||
1111 | """ |
||
1112 | df = df.sort_values(col, ascending=True) |
||
1113 | |||
1114 | return df.assign( |
||
1115 | quant=pd.qcut( |
||
1116 | df[col], |
||
1117 | q=q, |
||
1118 | labels=range(q), |
||
1119 | ) |
||
1120 | ) |
||
1121 | |||
1122 | |||
1123 | @timer_func |
||
1124 | def allocate_pv( |
||
1125 | q_mastr_gdf: gpd.GeoDataFrame, |
||
1126 | q_buildings_gdf: gpd.GeoDataFrame, |
||
1127 | seed: int, |
||
1128 | ) -> tuple[gpd.GeoDataFrame, gpd.GeoDataFrame]: |
||
1129 | """ |
||
1130 | Allocate the MaStR pv generators to the OSM buildings. |
||
1131 | This will determine a building for each pv generator if there are more |
||
1132 | buildings than generators within a given AGS. Primarily generators are |
||
1133 | distributed with the same qunatile as the buildings. Multiple assignment |
||
1134 | is excluded. |
||
1135 | Parameters |
||
1136 | ----------- |
||
1137 | q_mastr_gdf : geopandas.GeoDataFrame |
||
1138 | GeoDataFrame containing geocoded and qcut MaStR data. |
||
1139 | q_buildings_gdf : geopandas.GeoDataFrame |
||
1140 | GeoDataFrame containing qcut OSM buildings data. |
||
1141 | seed : int |
||
1142 | Seed to use for random operations with NumPy and pandas. |
||
1143 | Returns |
||
1144 | ------- |
||
1145 | tuple with two geopandas.GeoDataFrame s |
||
1146 | GeoDataFrame containing MaStR data allocated to building IDs. |
||
1147 | GeoDataFrame containing building data allocated to MaStR IDs. |
||
1148 | """ |
||
1149 | rng = default_rng(seed=seed) |
||
1150 | |||
1151 | q_buildings_gdf = q_buildings_gdf.assign(gens_id=np.nan) |
||
1152 | q_mastr_gdf = q_mastr_gdf.assign(building_id=np.nan) |
||
1153 | |||
1154 | ags_list = q_buildings_gdf.ags.unique() |
||
1155 | |||
1156 | if TEST_RUN: |
||
1157 | ags_list = ags_list[:250] |
||
1158 | |||
1159 | num_ags = len(ags_list) |
||
1160 | |||
1161 | t0 = perf_counter() |
||
1162 | |||
1163 | for count, ags in enumerate(ags_list): |
||
1164 | |||
1165 | buildings = q_buildings_gdf.loc[ |
||
1166 | (q_buildings_gdf.ags == ags) & (q_buildings_gdf.gens_id.isna()) |
||
1167 | ] |
||
1168 | gens = q_mastr_gdf.loc[q_mastr_gdf.ags == ags] |
||
1169 | |||
1170 | len_build = len(buildings) |
||
1171 | len_gens = len(gens) |
||
1172 | |||
1173 | if len_build < len_gens: |
||
1174 | gens = gens.sample(len_build, random_state=RandomState(seed=seed)) |
||
1175 | logger.error( |
||
1176 | f"There are {len_gens} generators and only {len_build}" |
||
1177 | f" buildings in AGS {ags}. {len_gens - len(gens)} " |
||
1178 | "generators were truncated to match the amount of buildings." |
||
1179 | ) |
||
1180 | |||
1181 | assert len_build == len(gens) |
||
1182 | |||
1183 | for quant in gens.quant.unique(): |
||
1184 | q_buildings = buildings.loc[buildings.quant == quant] |
||
1185 | q_gens = gens.loc[gens.quant == quant] |
||
1186 | |||
1187 | len_build = len(q_buildings) |
||
1188 | len_gens = len(q_gens) |
||
1189 | |||
1190 | if len_build < len_gens: |
||
1191 | delta = len_gens - len_build |
||
1192 | |||
1193 | logger.warning( |
||
1194 | f"There are {len_gens} generators and only {len_build} " |
||
1195 | f"buildings in AGS {ags} and quantile {quant}. {delta} " |
||
1196 | f"buildings from AGS {ags} will be added randomly." |
||
1197 | ) |
||
1198 | |||
1199 | add_buildings = pd.Index( |
||
1200 | rng.choice( |
||
1201 | buildings.loc[ |
||
1202 | (buildings.quant != quant) |
||
1203 | & (buildings.gens_id.isna()) |
||
1204 | ].index, |
||
1205 | size=delta, |
||
1206 | replace=False, |
||
1207 | ) |
||
1208 | ) |
||
1209 | |||
1210 | q_buildings = buildings.loc[ |
||
1211 | q_buildings.index.append(add_buildings) |
||
1212 | ] |
||
1213 | |||
1214 | assert len(q_buildings) == len_gens |
||
1215 | |||
1216 | chosen_buildings = pd.Index( |
||
1217 | rng.choice( |
||
1218 | q_buildings.index, |
||
1219 | size=len_gens, |
||
1220 | replace=False, |
||
1221 | ) |
||
1222 | ) |
||
1223 | |||
1224 | # q_mastr_gdf.loc[q_gens.index, "building_id"] = chosen_buildings |
||
1225 | q_buildings_gdf.loc[chosen_buildings, "gens_id"] = q_gens.index |
||
1226 | buildings = buildings.drop(chosen_buildings) |
||
1227 | |||
1228 | if count % 100 == 0: |
||
1229 | logger.debug( |
||
1230 | f"Allocation of {count / num_ags * 100:g} % of AGS done. It took " |
||
1231 | f"{perf_counter() - t0:g} seconds." |
||
1232 | ) |
||
1233 | |||
1234 | t0 = perf_counter() |
||
1235 | |||
1236 | assigned_buildings = q_buildings_gdf.loc[~q_buildings_gdf.gens_id.isna()] |
||
1237 | |||
1238 | assert len(assigned_buildings) == len(assigned_buildings.gens_id.unique()) |
||
1239 | |||
1240 | q_mastr_gdf.loc[ |
||
1241 | assigned_buildings.gens_id, "building_id" |
||
1242 | ] = assigned_buildings.index |
||
1243 | |||
1244 | assigned_gens = q_mastr_gdf.loc[~q_mastr_gdf.building_id.isna()] |
||
1245 | |||
1246 | assert len(assigned_buildings) == len(assigned_gens) |
||
1247 | |||
1248 | logger.debug("Allocated status quo generators to buildings.") |
||
1249 | |||
1250 | return frame_to_numeric(q_mastr_gdf), frame_to_numeric(q_buildings_gdf) |
||
1251 | |||
1252 | |||
1253 | def frame_to_numeric( |
||
1254 | df: pd.DataFrame | gpd.GeoDataFrame, |
||
1255 | ) -> pd.DataFrame | gpd.GeoDataFrame: |
||
1256 | """ |
||
1257 | Try to convert all columns of a DataFrame to numeric ignoring errors. |
||
1258 | Parameters |
||
1259 | ---------- |
||
1260 | df : pandas.DataFrame or geopandas.GeoDataFrame |
||
1261 | Returns |
||
1262 | ------- |
||
1263 | pandas.DataFrame or geopandas.GeoDataFrame |
||
1264 | """ |
||
1265 | if str(df.index.dtype) == "object": |
||
1266 | df.index = pd.to_numeric(df.index, errors="ignore") |
||
1267 | |||
1268 | for col in df.columns: |
||
1269 | if str(df[col].dtype) == "object": |
||
1270 | df[col] = pd.to_numeric(df[col], errors="ignore") |
||
1271 | |||
1272 | return df |
||
1273 | |||
1274 | |||
1275 | def validate_output( |
||
1276 | desagg_mastr_gdf: pd.DataFrame | gpd.GeoDataFrame, |
||
1277 | desagg_buildings_gdf: pd.DataFrame | gpd.GeoDataFrame, |
||
1278 | ) -> None: |
||
1279 | """ |
||
1280 | Validate output. |
||
1281 | |||
1282 | * Validate that there are exactly as many buildings with a pv system as there are |
||
1283 | pv systems with a building |
||
1284 | * Validate that the building IDs with a pv system are the same building IDs as |
||
1285 | assigned to the pv systems |
||
1286 | * Validate that the pv system IDs with a building are the same pv system IDs as |
||
1287 | assigned to the buildings |
||
1288 | |||
1289 | Parameters |
||
1290 | ----------- |
||
1291 | desagg_mastr_gdf : geopandas.GeoDataFrame |
||
1292 | GeoDataFrame containing MaStR data allocated to building IDs. |
||
1293 | desagg_buildings_gdf : geopandas.GeoDataFrame |
||
1294 | GeoDataFrame containing building data allocated to MaStR IDs. |
||
1295 | """ |
||
1296 | assert len( |
||
1297 | desagg_mastr_gdf.loc[~desagg_mastr_gdf.building_id.isna()] |
||
1298 | ) == len(desagg_buildings_gdf.loc[~desagg_buildings_gdf.gens_id.isna()]) |
||
1299 | assert ( |
||
1300 | np.sort( |
||
1301 | desagg_mastr_gdf.loc[ |
||
1302 | ~desagg_mastr_gdf.building_id.isna() |
||
1303 | ].building_id.unique() |
||
1304 | ) |
||
1305 | == np.sort( |
||
1306 | desagg_buildings_gdf.loc[ |
||
1307 | ~desagg_buildings_gdf.gens_id.isna() |
||
1308 | ].index.unique() |
||
1309 | ) |
||
1310 | ).all() |
||
1311 | assert ( |
||
1312 | np.sort( |
||
1313 | desagg_mastr_gdf.loc[ |
||
1314 | ~desagg_mastr_gdf.building_id.isna() |
||
1315 | ].index.unique() |
||
1316 | ) |
||
1317 | == np.sort( |
||
1318 | desagg_buildings_gdf.loc[ |
||
1319 | ~desagg_buildings_gdf.gens_id.isna() |
||
1320 | ].gens_id.unique() |
||
1321 | ) |
||
1322 | ).all() |
||
1323 | |||
1324 | logger.debug("Validated output.") |
||
1325 | |||
1326 | |||
1327 | def drop_unallocated_gens( |
||
1328 | gdf: gpd.GeoDataFrame, |
||
1329 | ) -> gpd.GeoDataFrame: |
||
1330 | """ |
||
1331 | Drop generators which did not get allocated. |
||
1332 | |||
1333 | Parameters |
||
1334 | ----------- |
||
1335 | gdf : geopandas.GeoDataFrame |
||
1336 | GeoDataFrame containing MaStR data allocated to building IDs. |
||
1337 | Returns |
||
1338 | ------- |
||
1339 | geopandas.GeoDataFrame |
||
1340 | GeoDataFrame containing MaStR data with generators dropped which did not get |
||
1341 | allocated. |
||
1342 | """ |
||
1343 | init_len = len(gdf) |
||
1344 | gdf = gdf.loc[~gdf.building_id.isna()] |
||
1345 | end_len = len(gdf) |
||
1346 | |||
1347 | logger.debug( |
||
1348 | f"Dropped {init_len - end_len} " |
||
1349 | f"({((init_len - end_len) / init_len) * 100:g}%)" |
||
1350 | f" of {init_len} unallocated rows from MaStR DataFrame." |
||
1351 | ) |
||
1352 | |||
1353 | return gdf |
||
1354 | |||
1355 | |||
1356 | @timer_func |
||
1357 | def allocate_to_buildings( |
||
1358 | mastr_gdf: gpd.GeoDataFrame, |
||
1359 | buildings_gdf: gpd.GeoDataFrame, |
||
1360 | ) -> tuple[gpd.GeoDataFrame, gpd.GeoDataFrame]: |
||
1361 | """ |
||
1362 | Allocate status quo pv rooftop generators to buildings. |
||
1363 | Parameters |
||
1364 | ----------- |
||
1365 | mastr_gdf : geopandas.GeoDataFrame |
||
1366 | GeoDataFrame containing MaStR data with geocoded locations. |
||
1367 | buildings_gdf : geopandas.GeoDataFrame |
||
1368 | GeoDataFrame containing OSM buildings data with buildings without an AGS ID |
||
1369 | dropped. |
||
1370 | Returns |
||
1371 | ------- |
||
1372 | tuple with two geopandas.GeoDataFrame s |
||
1373 | GeoDataFrame containing MaStR data allocated to building IDs. |
||
1374 | GeoDataFrame containing building data allocated to MaStR IDs. |
||
1375 | """ |
||
1376 | logger.debug("Starting allocation of status quo.") |
||
1377 | |||
1378 | q_mastr_gdf = sort_and_qcut_df(mastr_gdf, col="capacity", q=Q) |
||
1379 | q_buildings_gdf = sort_and_qcut_df(buildings_gdf, col="building_area", q=Q) |
||
1380 | |||
1381 | desagg_mastr_gdf, desagg_buildings_gdf = allocate_pv( |
||
1382 | q_mastr_gdf, q_buildings_gdf, SEED |
||
1383 | ) |
||
1384 | |||
1385 | validate_output(desagg_mastr_gdf, desagg_buildings_gdf) |
||
1386 | |||
1387 | return drop_unallocated_gens(desagg_mastr_gdf), desagg_buildings_gdf |
||
1388 | |||
1389 | |||
1390 | @timer_func |
||
1391 | def grid_districts( |
||
1392 | epsg: int, |
||
1393 | ) -> gpd.GeoDataFrame: |
||
1394 | """ |
||
1395 | Load mv grid district geo data from eGo^n Database as |
||
1396 | geopandas.GeoDataFrame. |
||
1397 | Parameters |
||
1398 | ----------- |
||
1399 | epsg : int |
||
1400 | EPSG ID to use as CRS. |
||
1401 | Returns |
||
1402 | ------- |
||
1403 | geopandas.GeoDataFrame |
||
1404 | GeoDataFrame containing mv grid district ID and geo shapes data. |
||
1405 | """ |
||
1406 | gdf = db.select_geodataframe( |
||
1407 | """ |
||
1408 | SELECT bus_id, geom |
||
1409 | FROM grid.egon_mv_grid_district |
||
1410 | ORDER BY bus_id |
||
1411 | """, |
||
1412 | index_col="bus_id", |
||
1413 | geom_col="geom", |
||
1414 | epsg=epsg, |
||
1415 | ) |
||
1416 | |||
1417 | gdf.index = gdf.index.astype(int) |
||
1418 | |||
1419 | logger.debug("Grid districts loaded.") |
||
1420 | |||
1421 | return gdf |
||
1422 | |||
1423 | |||
1424 | def scenario_data( |
||
1425 | carrier: str = "solar_rooftop", |
||
1426 | scenario: str = "eGon2035", |
||
1427 | ) -> pd.DataFrame: |
||
1428 | """ |
||
1429 | Get scenario capacity data from eGo^n Database. |
||
1430 | Parameters |
||
1431 | ----------- |
||
1432 | carrier : str |
||
1433 | Carrier type to filter table by. |
||
1434 | scenario : str |
||
1435 | Scenario to filter table by. |
||
1436 | Returns |
||
1437 | ------- |
||
1438 | geopandas.GeoDataFrame |
||
1439 | GeoDataFrame with scenario capacity data in GW. |
||
1440 | """ |
||
1441 | with db.session_scope() as session: |
||
1442 | query = session.query(EgonScenarioCapacities).filter( |
||
1443 | EgonScenarioCapacities.carrier == carrier, |
||
1444 | EgonScenarioCapacities.scenario_name == scenario, |
||
1445 | ) |
||
1446 | |||
1447 | df = pd.read_sql( |
||
1448 | query.statement, query.session.bind, index_col="index" |
||
1449 | ).sort_index() |
||
1450 | |||
1451 | logger.debug("Scenario capacity data loaded.") |
||
1452 | |||
1453 | return df |
||
1454 | |||
1455 | |||
1456 | View Code Duplication | class Vg250Lan(Base): |
|
|
|||
1457 | __tablename__ = "vg250_lan" |
||
1458 | __table_args__ = {"schema": "boundaries"} |
||
1459 | |||
1460 | id = Column(BigInteger, primary_key=True, index=True) |
||
1461 | ade = Column(BigInteger) |
||
1462 | gf = Column(BigInteger) |
||
1463 | bsg = Column(BigInteger) |
||
1464 | ars = Column(String) |
||
1465 | ags = Column(String) |
||
1466 | sdv_ars = Column(String) |
||
1467 | gen = Column(String) |
||
1468 | bez = Column(String) |
||
1469 | ibz = Column(BigInteger) |
||
1470 | bem = Column(String) |
||
1471 | nbd = Column(String) |
||
1472 | sn_l = Column(String) |
||
1473 | sn_r = Column(String) |
||
1474 | sn_k = Column(String) |
||
1475 | sn_v1 = Column(String) |
||
1476 | sn_v2 = Column(String) |
||
1477 | sn_g = Column(String) |
||
1478 | fk_s3 = Column(String) |
||
1479 | nuts = Column(String) |
||
1480 | ars_0 = Column(String) |
||
1481 | ags_0 = Column(String) |
||
1482 | wsk = Column(String) |
||
1483 | debkg_id = Column(String) |
||
1484 | rs = Column(String) |
||
1485 | sdv_rs = Column(String) |
||
1486 | rs_0 = Column(String) |
||
1487 | geometry = Column(Geometry(srid=EPSG), index=True) |
||
1488 | |||
1489 | |||
1490 | def federal_state_data(to_crs: CRS) -> gpd.GeoDataFrame: |
||
1491 | """ |
||
1492 | Get feder state data from eGo^n Database. |
||
1493 | Parameters |
||
1494 | ----------- |
||
1495 | to_crs : pyproj.crs.crs.CRS |
||
1496 | CRS to transform geometries to. |
||
1497 | Returns |
||
1498 | ------- |
||
1499 | geopandas.GeoDataFrame |
||
1500 | GeoDataFrame with federal state data. |
||
1501 | """ |
||
1502 | with db.session_scope() as session: |
||
1503 | query = session.query( |
||
1504 | Vg250Lan.id, Vg250Lan.nuts, Vg250Lan.geometry.label("geom") |
||
1505 | ) |
||
1506 | |||
1507 | gdf = gpd.read_postgis( |
||
1508 | query.statement, session.connection(), index_col="id" |
||
1509 | ).to_crs(to_crs) |
||
1510 | |||
1511 | logger.debug("Federal State data loaded.") |
||
1512 | |||
1513 | return gdf |
||
1514 | |||
1515 | |||
1516 | @timer_func |
||
1517 | def overlay_grid_districts_with_counties( |
||
1518 | mv_grid_district_gdf: gpd.GeoDataFrame, |
||
1519 | federal_state_gdf: gpd.GeoDataFrame, |
||
1520 | ) -> gpd.GeoDataFrame: |
||
1521 | """ |
||
1522 | Calculate the intersections of mv grid districts and counties. |
||
1523 | Parameters |
||
1524 | ----------- |
||
1525 | mv_grid_district_gdf : gpd.GeoDataFrame |
||
1526 | GeoDataFrame containing mv grid district ID and geo shapes data. |
||
1527 | federal_state_gdf : gpd.GeoDataFrame |
||
1528 | GeoDataFrame with federal state data. |
||
1529 | Returns |
||
1530 | ------- |
||
1531 | geopandas.GeoDataFrame |
||
1532 | GeoDataFrame containing OSM buildings data. |
||
1533 | """ |
||
1534 | logger.debug( |
||
1535 | "Calculating intersection overlay between mv grid districts and " |
||
1536 | "counties. This may take a while..." |
||
1537 | ) |
||
1538 | |||
1539 | gdf = gpd.overlay( |
||
1540 | federal_state_gdf.to_crs(mv_grid_district_gdf.crs), |
||
1541 | mv_grid_district_gdf.reset_index(), |
||
1542 | how="intersection", |
||
1543 | keep_geom_type=True, |
||
1544 | ) |
||
1545 | |||
1546 | logger.debug("Done!") |
||
1547 | |||
1548 | return gdf |
||
1549 | |||
1550 | |||
1551 | @timer_func |
||
1552 | def add_overlay_id_to_buildings( |
||
1553 | buildings_gdf: gpd.GeoDataFrame, |
||
1554 | grid_federal_state_gdf: gpd.GeoDataFrame, |
||
1555 | ) -> gpd.GeoDataFrame: |
||
1556 | """ |
||
1557 | Add information about overlay ID to buildings. |
||
1558 | Parameters |
||
1559 | ----------- |
||
1560 | buildings_gdf : geopandas.GeoDataFrame |
||
1561 | GeoDataFrame containing OSM buildings data. |
||
1562 | grid_federal_state_gdf : geopandas.GeoDataFrame |
||
1563 | GeoDataFrame with intersection shapes between counties and grid districts. |
||
1564 | Returns |
||
1565 | ------- |
||
1566 | geopandas.GeoDataFrame |
||
1567 | GeoDataFrame containing OSM buildings data with overlay ID added. |
||
1568 | """ |
||
1569 | gdf = ( |
||
1570 | buildings_gdf.to_crs(grid_federal_state_gdf.crs) |
||
1571 | .sjoin( |
||
1572 | grid_federal_state_gdf, |
||
1573 | how="left", |
||
1574 | predicate="intersects", |
||
1575 | ) |
||
1576 | .rename(columns={"index_right": "overlay_id"}) |
||
1577 | ) |
||
1578 | |||
1579 | logger.debug("Added overlay ID to OSM buildings.") |
||
1580 | |||
1581 | return gdf |
||
1582 | |||
1583 | |||
1584 | def drop_buildings_outside_grids( |
||
1585 | buildings_gdf: gpd.GeoDataFrame, |
||
1586 | ) -> gpd.GeoDataFrame: |
||
1587 | """ |
||
1588 | Drop all buildings outside of grid areas. |
||
1589 | Parameters |
||
1590 | ----------- |
||
1591 | buildings_gdf : geopandas.GeoDataFrame |
||
1592 | GeoDataFrame containing OSM buildings data. |
||
1593 | Returns |
||
1594 | ------- |
||
1595 | gepandas.GeoDataFrame |
||
1596 | GeoDataFrame containing OSM buildings data |
||
1597 | with buildings without an bus ID dropped. |
||
1598 | """ |
||
1599 | gdf = buildings_gdf.loc[~buildings_gdf.bus_id.isna()] |
||
1600 | |||
1601 | logger.debug( |
||
1602 | f"{len(buildings_gdf) - len(gdf)} " |
||
1603 | f"({(len(buildings_gdf) - len(gdf)) / len(buildings_gdf) * 100:g}%) " |
||
1604 | f"of {len(buildings_gdf)} values are outside of the grid areas " |
||
1605 | "and are therefore dropped." |
||
1606 | ) |
||
1607 | |||
1608 | return gdf |
||
1609 | |||
1610 | |||
1611 | def cap_per_bus_id( |
||
1612 | scenario: str, |
||
1613 | ) -> pd.DataFrame: |
||
1614 | """ |
||
1615 | Get table with total pv rooftop capacity per grid district. |
||
1616 | |||
1617 | Parameters |
||
1618 | ----------- |
||
1619 | scenario : str |
||
1620 | Scenario name. |
||
1621 | Returns |
||
1622 | ------- |
||
1623 | pandas.DataFrame |
||
1624 | DataFrame with total rooftop capacity per mv grid. |
||
1625 | """ |
||
1626 | targets = config.datasets()["solar_rooftop"]["targets"] |
||
1627 | |||
1628 | sql = f""" |
||
1629 | SELECT bus as bus_id, control, p_nom as capacity |
||
1630 | FROM {targets['generators']['schema']}.{targets['generators']['table']} |
||
1631 | WHERE carrier = 'solar_rooftop' |
||
1632 | AND scn_name = '{scenario}' |
||
1633 | """ |
||
1634 | # TODO: woher kommen die Slack rows??? |
||
1635 | |||
1636 | df = db.select_dataframe(sql, index_col="bus_id") |
||
1637 | |||
1638 | return df.loc[df.control != "Slack"] |
||
1639 | |||
1640 | # overlay_gdf = overlay_gdf.assign(capacity=np.nan) |
||
1641 | # |
||
1642 | # for cap, nuts in scenario_df[["capacity", "nuts"]].itertuples(index=False): |
||
1643 | # nuts_gdf = overlay_gdf.loc[overlay_gdf.nuts == nuts] |
||
1644 | # |
||
1645 | # capacity = nuts_gdf.building_area.multiply( |
||
1646 | # cap / nuts_gdf.building_area.sum() |
||
1647 | # ) |
||
1648 | # |
||
1649 | # overlay_gdf.loc[nuts_gdf.index] = overlay_gdf.loc[ |
||
1650 | # nuts_gdf.index |
||
1651 | # ].assign(capacity=capacity.multiply(conversion).to_numpy()) |
||
1652 | # |
||
1653 | # return overlay_gdf[["bus_id", "capacity"]].groupby("bus_id").sum() |
||
1654 | |||
1655 | |||
1656 | def determine_end_of_life_gens( |
||
1657 | mastr_gdf: gpd.GeoDataFrame, |
||
1658 | scenario_timestamp: pd.Timestamp, |
||
1659 | pv_rooftop_lifetime: pd.Timedelta, |
||
1660 | ) -> gpd.GeoDataFrame: |
||
1661 | """ |
||
1662 | Determine if an old PV system has reached its end of life. |
||
1663 | Parameters |
||
1664 | ----------- |
||
1665 | mastr_gdf : geopandas.GeoDataFrame |
||
1666 | GeoDataFrame containing geocoded MaStR data. |
||
1667 | scenario_timestamp : pandas.Timestamp |
||
1668 | Timestamp at which the scenario takes place. |
||
1669 | pv_rooftop_lifetime : pandas.Timedelta |
||
1670 | Average expected lifetime of PV rooftop systems. |
||
1671 | Returns |
||
1672 | ------- |
||
1673 | geopandas.GeoDataFrame |
||
1674 | GeoDataFrame containing geocoded MaStR data and info if the system |
||
1675 | has reached its end of life. |
||
1676 | """ |
||
1677 | before = mastr_gdf.capacity.sum() |
||
1678 | |||
1679 | mastr_gdf = mastr_gdf.assign( |
||
1680 | age=scenario_timestamp - mastr_gdf.start_up_date |
||
1681 | ) |
||
1682 | |||
1683 | mastr_gdf = mastr_gdf.assign( |
||
1684 | end_of_life=pv_rooftop_lifetime < mastr_gdf.age |
||
1685 | ) |
||
1686 | |||
1687 | after = mastr_gdf.loc[~mastr_gdf.end_of_life].capacity.sum() |
||
1688 | |||
1689 | logger.debug( |
||
1690 | "Determined if pv rooftop systems reached their end of life.\nTotal capacity: " |
||
1691 | f"{before}\nActive capacity: {after}" |
||
1692 | ) |
||
1693 | |||
1694 | return mastr_gdf |
||
1695 | |||
1696 | |||
1697 | def calculate_max_pv_cap_per_building( |
||
1698 | buildings_gdf: gpd.GeoDataFrame, |
||
1699 | mastr_gdf: gpd.GeoDataFrame, |
||
1700 | pv_cap_per_sq_m: float | int, |
||
1701 | roof_factor: float | int, |
||
1702 | ) -> gpd.GeoDataFrame: |
||
1703 | """ |
||
1704 | Calculate the estimated maximum possible PV capacity per building. |
||
1705 | Parameters |
||
1706 | ----------- |
||
1707 | buildings_gdf : geopandas.GeoDataFrame |
||
1708 | GeoDataFrame containing OSM buildings data. |
||
1709 | mastr_gdf : geopandas.GeoDataFrame |
||
1710 | GeoDataFrame containing geocoded MaStR data. |
||
1711 | pv_cap_per_sq_m : float, int |
||
1712 | Average expected, installable PV capacity per square meter. |
||
1713 | roof_factor : float, int |
||
1714 | Average for PV usable roof area share. |
||
1715 | Returns |
||
1716 | ------- |
||
1717 | geopandas.GeoDataFrame |
||
1718 | GeoDataFrame containing OSM buildings data with estimated maximum PV |
||
1719 | capacity. |
||
1720 | """ |
||
1721 | gdf = ( |
||
1722 | buildings_gdf.reset_index() |
||
1723 | .rename(columns={"index": "id"}) |
||
1724 | .merge( |
||
1725 | mastr_gdf[ |
||
1726 | [ |
||
1727 | "capacity", |
||
1728 | "end_of_life", |
||
1729 | "building_id", |
||
1730 | "EinheitlicheAusrichtungUndNeigungswinkel", |
||
1731 | "Hauptausrichtung", |
||
1732 | "HauptausrichtungNeigungswinkel", |
||
1733 | ] |
||
1734 | ], |
||
1735 | how="left", |
||
1736 | left_on="id", |
||
1737 | right_on="building_id", |
||
1738 | ) |
||
1739 | .set_index("id") |
||
1740 | .drop(columns="building_id") |
||
1741 | ) |
||
1742 | |||
1743 | return gdf.assign( |
||
1744 | max_cap=gdf.building_area.multiply(roof_factor * pv_cap_per_sq_m), |
||
1745 | end_of_life=gdf.end_of_life.fillna(True).astype(bool), |
||
1746 | bus_id=gdf.bus_id.astype(int), |
||
1747 | ) |
||
1748 | |||
1749 | |||
1750 | def calculate_building_load_factor( |
||
1751 | mastr_gdf: gpd.GeoDataFrame, |
||
1752 | buildings_gdf: gpd.GeoDataFrame, |
||
1753 | rounding: int = 4, |
||
1754 | ) -> gpd.GeoDataFrame: |
||
1755 | """ |
||
1756 | Calculate the roof load factor from existing PV systems. |
||
1757 | Parameters |
||
1758 | ----------- |
||
1759 | mastr_gdf : geopandas.GeoDataFrame |
||
1760 | GeoDataFrame containing geocoded MaStR data. |
||
1761 | buildings_gdf : geopandas.GeoDataFrame |
||
1762 | GeoDataFrame containing OSM buildings data. |
||
1763 | rounding : int |
||
1764 | Rounding to use for load factor. |
||
1765 | Returns |
||
1766 | ------- |
||
1767 | geopandas.GeoDataFrame |
||
1768 | GeoDataFrame containing geocoded MaStR data with calculated load factor. |
||
1769 | """ |
||
1770 | gdf = mastr_gdf.merge( |
||
1771 | buildings_gdf[["max_cap", "building_area"]] |
||
1772 | .loc[~buildings_gdf["max_cap"].isna()] |
||
1773 | .reset_index(), |
||
1774 | how="left", |
||
1775 | left_on="building_id", |
||
1776 | right_on="id", |
||
1777 | ).set_index("id") |
||
1778 | |||
1779 | return gdf.assign(load_factor=(gdf.capacity / gdf.max_cap).round(rounding)) |
||
1780 | |||
1781 | |||
1782 | def get_probability_for_property( |
||
1783 | mastr_gdf: gpd.GeoDataFrame, |
||
1784 | cap_range: tuple[int | float, int | float], |
||
1785 | prop: str, |
||
1786 | ) -> tuple[np.array, np.array]: |
||
1787 | """ |
||
1788 | Calculate the probability of the different options of a property of the |
||
1789 | existing PV plants. |
||
1790 | Parameters |
||
1791 | ----------- |
||
1792 | mastr_gdf : geopandas.GeoDataFrame |
||
1793 | GeoDataFrame containing geocoded MaStR data. |
||
1794 | cap_range : tuple(int, int) |
||
1795 | Capacity range of PV plants to look at. |
||
1796 | prop : str |
||
1797 | Property to calculate probabilities for. String needs to be in columns |
||
1798 | of mastr_gdf. |
||
1799 | Returns |
||
1800 | ------- |
||
1801 | tuple |
||
1802 | numpy.array |
||
1803 | Unique values of property. |
||
1804 | numpy.array |
||
1805 | Probabilties per unique value. |
||
1806 | """ |
||
1807 | cap_range_gdf = mastr_gdf.loc[ |
||
1808 | (mastr_gdf.capacity > cap_range[0]) |
||
1809 | & (mastr_gdf.capacity <= cap_range[1]) |
||
1810 | ] |
||
1811 | |||
1812 | if prop == "load_factor": |
||
1813 | cap_range_gdf = cap_range_gdf.loc[cap_range_gdf[prop] <= 1] |
||
1814 | |||
1815 | count = Counter( |
||
1816 | cap_range_gdf[prop].loc[ |
||
1817 | ~cap_range_gdf[prop].isna() |
||
1818 | & ~cap_range_gdf[prop].isnull() |
||
1819 | & ~(cap_range_gdf[prop] == "None") |
||
1820 | ] |
||
1821 | ) |
||
1822 | |||
1823 | values = np.array(list(count.keys())) |
||
1824 | probabilities = np.fromiter(count.values(), dtype=float) |
||
1825 | probabilities = probabilities / np.sum(probabilities) |
||
1826 | |||
1827 | return values, probabilities |
||
1828 | |||
1829 | |||
1830 | @timer_func |
||
1831 | def probabilities( |
||
1832 | mastr_gdf: gpd.GeoDataFrame, |
||
1833 | cap_ranges: list[tuple[int | float, int | float]] | None = None, |
||
1834 | properties: list[str] | None = None, |
||
1835 | ) -> dict: |
||
1836 | """ |
||
1837 | Calculate the probability of the different options of properties of the |
||
1838 | existing PV plants. |
||
1839 | Parameters |
||
1840 | ----------- |
||
1841 | mastr_gdf : geopandas.GeoDataFrame |
||
1842 | GeoDataFrame containing geocoded MaStR data. |
||
1843 | cap_ranges : list(tuple(int, int)) |
||
1844 | List of capacity ranges to distinguish between. The first tuple should |
||
1845 | start with a zero and the last one should end with infinite. |
||
1846 | properties : list(str) |
||
1847 | List of properties to calculate probabilities for. Strings needs to be |
||
1848 | in columns of mastr_gdf. |
||
1849 | Returns |
||
1850 | ------- |
||
1851 | dict |
||
1852 | Dictionary with values and probabilities per capacity range. |
||
1853 | """ |
||
1854 | if cap_ranges is None: |
||
1855 | cap_ranges = [ |
||
1856 | (0, 30), |
||
1857 | (30, 100), |
||
1858 | (100, float("inf")), |
||
1859 | ] |
||
1860 | if properties is None: |
||
1861 | properties = [ |
||
1862 | "EinheitlicheAusrichtungUndNeigungswinkel", |
||
1863 | "Hauptausrichtung", |
||
1864 | "HauptausrichtungNeigungswinkel", |
||
1865 | "load_factor", |
||
1866 | ] |
||
1867 | |||
1868 | prob_dict = {} |
||
1869 | |||
1870 | for cap_range in cap_ranges: |
||
1871 | prob_dict[cap_range] = { |
||
1872 | "values": {}, |
||
1873 | "probabilities": {}, |
||
1874 | } |
||
1875 | |||
1876 | for prop in properties: |
||
1877 | v, p = get_probability_for_property( |
||
1878 | mastr_gdf, |
||
1879 | cap_range, |
||
1880 | prop, |
||
1881 | ) |
||
1882 | |||
1883 | prob_dict[cap_range]["values"][prop] = v |
||
1884 | prob_dict[cap_range]["probabilities"][prop] = p |
||
1885 | |||
1886 | return prob_dict |
||
1887 | |||
1888 | |||
1889 | def cap_share_per_cap_range( |
||
1890 | mastr_gdf: gpd.GeoDataFrame, |
||
1891 | cap_ranges: list[tuple[int | float, int | float]] | None = None, |
||
1892 | ) -> dict[tuple[int | float, int | float], float]: |
||
1893 | """ |
||
1894 | Calculate the share of PV capacity from the total PV capacity within |
||
1895 | capacity ranges. |
||
1896 | Parameters |
||
1897 | ----------- |
||
1898 | mastr_gdf : geopandas.GeoDataFrame |
||
1899 | GeoDataFrame containing geocoded MaStR data. |
||
1900 | cap_ranges : list(tuple(int, int)) |
||
1901 | List of capacity ranges to distinguish between. The first tuple should |
||
1902 | start with a zero and the last one should end with infinite. |
||
1903 | Returns |
||
1904 | ------- |
||
1905 | dict |
||
1906 | Dictionary with share of PV capacity from the total PV capacity within |
||
1907 | capacity ranges. |
||
1908 | """ |
||
1909 | if cap_ranges is None: |
||
1910 | cap_ranges = [ |
||
1911 | (0, 30), |
||
1912 | (30, 100), |
||
1913 | (100, float("inf")), |
||
1914 | ] |
||
1915 | |||
1916 | cap_share_dict = {} |
||
1917 | |||
1918 | total_cap = mastr_gdf.capacity.sum() |
||
1919 | |||
1920 | for cap_range in cap_ranges: |
||
1921 | cap_share = ( |
||
1922 | mastr_gdf.loc[ |
||
1923 | (mastr_gdf.capacity > cap_range[0]) |
||
1924 | & (mastr_gdf.capacity <= cap_range[1]) |
||
1925 | ].capacity.sum() |
||
1926 | / total_cap |
||
1927 | ) |
||
1928 | |||
1929 | cap_share_dict[cap_range] = cap_share |
||
1930 | |||
1931 | return cap_share_dict |
||
1932 | |||
1933 | |||
1934 | def mean_load_factor_per_cap_range( |
||
1935 | mastr_gdf: gpd.GeoDataFrame, |
||
1936 | cap_ranges: list[tuple[int | float, int | float]] | None = None, |
||
1937 | ) -> dict[tuple[int | float, int | float], float]: |
||
1938 | """ |
||
1939 | Calculate the mean roof load factor per capacity range from existing PV |
||
1940 | plants. |
||
1941 | Parameters |
||
1942 | ----------- |
||
1943 | mastr_gdf : geopandas.GeoDataFrame |
||
1944 | GeoDataFrame containing geocoded MaStR data. |
||
1945 | cap_ranges : list(tuple(int, int)) |
||
1946 | List of capacity ranges to distinguish between. The first tuple should |
||
1947 | start with a zero and the last one should end with infinite. |
||
1948 | Returns |
||
1949 | ------- |
||
1950 | dict |
||
1951 | Dictionary with mean roof load factor per capacity range. |
||
1952 | """ |
||
1953 | if cap_ranges is None: |
||
1954 | cap_ranges = [ |
||
1955 | (0, 30), |
||
1956 | (30, 100), |
||
1957 | (100, float("inf")), |
||
1958 | ] |
||
1959 | |||
1960 | load_factor_dict = {} |
||
1961 | |||
1962 | for cap_range in cap_ranges: |
||
1963 | load_factor = mastr_gdf.loc[ |
||
1964 | (mastr_gdf.load_factor <= 1) |
||
1965 | & (mastr_gdf.capacity > cap_range[0]) |
||
1966 | & (mastr_gdf.capacity <= cap_range[1]) |
||
1967 | ].load_factor.mean() |
||
1968 | |||
1969 | load_factor_dict[cap_range] = load_factor |
||
1970 | |||
1971 | return load_factor_dict |
||
1972 | |||
1973 | |||
1974 | def building_area_range_per_cap_range( |
||
1975 | mastr_gdf: gpd.GeoDataFrame, |
||
1976 | cap_ranges: list[tuple[int | float, int | float]] | None = None, |
||
1977 | min_building_size: int | float = 10.0, |
||
1978 | upper_quantile: float = 0.95, |
||
1979 | lower_quantile: float = 0.05, |
||
1980 | ) -> dict[tuple[int | float, int | float], tuple[int | float, int | float]]: |
||
1981 | """ |
||
1982 | Estimate normal building area range per capacity range. |
||
1983 | Calculate the mean roof load factor per capacity range from existing PV |
||
1984 | plants. |
||
1985 | Parameters |
||
1986 | ----------- |
||
1987 | mastr_gdf : geopandas.GeoDataFrame |
||
1988 | GeoDataFrame containing geocoded MaStR data. |
||
1989 | cap_ranges : list(tuple(int, int)) |
||
1990 | List of capacity ranges to distinguish between. The first tuple should |
||
1991 | start with a zero and the last one should end with infinite. |
||
1992 | min_building_size : int, float |
||
1993 | Minimal building size to consider for PV plants. |
||
1994 | upper_quantile : float |
||
1995 | Upper quantile to estimate maximum building size per capacity range. |
||
1996 | lower_quantile : float |
||
1997 | Lower quantile to estimate minimum building size per capacity range. |
||
1998 | Returns |
||
1999 | ------- |
||
2000 | dict |
||
2001 | Dictionary with estimated normal building area range per capacity |
||
2002 | range. |
||
2003 | """ |
||
2004 | if cap_ranges is None: |
||
2005 | cap_ranges = [ |
||
2006 | (0, 30), |
||
2007 | (30, 100), |
||
2008 | (100, float("inf")), |
||
2009 | ] |
||
2010 | |||
2011 | building_area_range_dict = {} |
||
2012 | |||
2013 | n_ranges = len(cap_ranges) |
||
2014 | |||
2015 | for count, cap_range in enumerate(cap_ranges): |
||
2016 | cap_range_gdf = mastr_gdf.loc[ |
||
2017 | (mastr_gdf.capacity > cap_range[0]) |
||
2018 | & (mastr_gdf.capacity <= cap_range[1]) |
||
2019 | ] |
||
2020 | |||
2021 | if count == 0: |
||
2022 | building_area_range_dict[cap_range] = ( |
||
2023 | min_building_size, |
||
2024 | cap_range_gdf.building_area.quantile(upper_quantile), |
||
2025 | ) |
||
2026 | elif count == n_ranges - 1: |
||
2027 | building_area_range_dict[cap_range] = ( |
||
2028 | cap_range_gdf.building_area.quantile(lower_quantile), |
||
2029 | float("inf"), |
||
2030 | ) |
||
2031 | else: |
||
2032 | building_area_range_dict[cap_range] = ( |
||
2033 | cap_range_gdf.building_area.quantile(lower_quantile), |
||
2034 | cap_range_gdf.building_area.quantile(upper_quantile), |
||
2035 | ) |
||
2036 | |||
2037 | values = list(building_area_range_dict.values()) |
||
2038 | |||
2039 | building_area_range_normed_dict = {} |
||
2040 | |||
2041 | for count, (cap_range, (min_area, max_area)) in enumerate( |
||
2042 | building_area_range_dict.items() |
||
2043 | ): |
||
2044 | if count == 0: |
||
2045 | building_area_range_normed_dict[cap_range] = ( |
||
2046 | min_area, |
||
2047 | np.mean((values[count + 1][0], max_area)), |
||
2048 | ) |
||
2049 | elif count == n_ranges - 1: |
||
2050 | building_area_range_normed_dict[cap_range] = ( |
||
2051 | np.mean((values[count - 1][1], min_area)), |
||
2052 | max_area, |
||
2053 | ) |
||
2054 | else: |
||
2055 | building_area_range_normed_dict[cap_range] = ( |
||
2056 | np.mean((values[count - 1][1], min_area)), |
||
2057 | np.mean((values[count + 1][0], max_area)), |
||
2058 | ) |
||
2059 | |||
2060 | return building_area_range_normed_dict |
||
2061 | |||
2062 | |||
2063 | @timer_func |
||
2064 | def desaggregate_pv_in_mv_grid( |
||
2065 | buildings_gdf: gpd.GeoDataFrame, |
||
2066 | pv_cap: float | int, |
||
2067 | **kwargs, |
||
2068 | ) -> gpd.GeoDataFrame: |
||
2069 | """ |
||
2070 | Desaggregate PV capacity on buildings within a given grid district. |
||
2071 | Parameters |
||
2072 | ----------- |
||
2073 | buildings_gdf : geopandas.GeoDataFrame |
||
2074 | GeoDataFrame containing buildings within the grid district. |
||
2075 | pv_cap : float, int |
||
2076 | PV capacity to desaggregate. |
||
2077 | Other Parameters |
||
2078 | ----------- |
||
2079 | prob_dict : dict |
||
2080 | Dictionary with values and probabilities per capacity range. |
||
2081 | cap_share_dict : dict |
||
2082 | Dictionary with share of PV capacity from the total PV capacity within |
||
2083 | capacity ranges. |
||
2084 | building_area_range_dict : dict |
||
2085 | Dictionary with estimated normal building area range per capacity |
||
2086 | range. |
||
2087 | load_factor_dict : dict |
||
2088 | Dictionary with mean roof load factor per capacity range. |
||
2089 | seed : int |
||
2090 | Seed to use for random operations with NumPy and pandas. |
||
2091 | pv_cap_per_sq_m : float, int |
||
2092 | Average expected, installable PV capacity per square meter. |
||
2093 | Returns |
||
2094 | ------- |
||
2095 | geopandas.GeoDataFrame |
||
2096 | GeoDataFrame containing OSM building data with desaggregated PV |
||
2097 | plants. |
||
2098 | """ |
||
2099 | bus_id = int(buildings_gdf.bus_id.iat[0]) |
||
2100 | |||
2101 | rng = default_rng(seed=kwargs["seed"]) |
||
2102 | random_state = RandomState(seed=kwargs["seed"]) |
||
2103 | |||
2104 | results_df = pd.DataFrame(columns=buildings_gdf.columns) |
||
2105 | |||
2106 | for cap_range, share in kwargs["cap_share_dict"].items(): |
||
2107 | pv_cap_range = pv_cap * share |
||
2108 | |||
2109 | b_area_min, b_area_max = kwargs["building_area_range_dict"][cap_range] |
||
2110 | |||
2111 | cap_range_buildings_gdf = buildings_gdf.loc[ |
||
2112 | ~buildings_gdf.index.isin(results_df.index) |
||
2113 | & (buildings_gdf.building_area > b_area_min) |
||
2114 | & (buildings_gdf.building_area <= b_area_max) |
||
2115 | ] |
||
2116 | |||
2117 | mean_load_factor = kwargs["load_factor_dict"][cap_range] |
||
2118 | cap_range_buildings_gdf = cap_range_buildings_gdf.assign( |
||
2119 | mean_cap=cap_range_buildings_gdf.max_cap * mean_load_factor, |
||
2120 | load_factor=np.nan, |
||
2121 | capacity=np.nan, |
||
2122 | ) |
||
2123 | |||
2124 | total_mean_cap = cap_range_buildings_gdf.mean_cap.sum() |
||
2125 | |||
2126 | if total_mean_cap == 0: |
||
2127 | logger.warning( |
||
2128 | f"There are no matching roof for capacity range {cap_range} " |
||
2129 | f"kW in grid {bus_id}. Using all buildings as fallback." |
||
2130 | ) |
||
2131 | |||
2132 | cap_range_buildings_gdf = buildings_gdf.loc[ |
||
2133 | ~buildings_gdf.index.isin(results_df.index) |
||
2134 | ] |
||
2135 | |||
2136 | if len(cap_range_buildings_gdf) == 0: |
||
2137 | logger.warning( |
||
2138 | "There are no roofes available for capacity range " |
||
2139 | f"{cap_range} kW in grid {bus_id}. Allowing dual use." |
||
2140 | ) |
||
2141 | cap_range_buildings_gdf = buildings_gdf.copy() |
||
2142 | |||
2143 | cap_range_buildings_gdf = cap_range_buildings_gdf.assign( |
||
2144 | mean_cap=cap_range_buildings_gdf.max_cap * mean_load_factor, |
||
2145 | load_factor=np.nan, |
||
2146 | capacity=np.nan, |
||
2147 | ) |
||
2148 | |||
2149 | total_mean_cap = cap_range_buildings_gdf.mean_cap.sum() |
||
2150 | |||
2151 | elif total_mean_cap < pv_cap_range: |
||
2152 | logger.warning( |
||
2153 | f"Average roof utilization of the roof area in grid {bus_id} " |
||
2154 | f"and capacity range {cap_range} kW is not sufficient. The " |
||
2155 | "roof utilization will be above average." |
||
2156 | ) |
||
2157 | |||
2158 | frac = max( |
||
2159 | pv_cap_range / total_mean_cap, |
||
2160 | 1 / len(cap_range_buildings_gdf), |
||
2161 | ) |
||
2162 | |||
2163 | samples_gdf = cap_range_buildings_gdf.sample( |
||
2164 | frac=min(1, frac), |
||
2165 | random_state=random_state, |
||
2166 | ) |
||
2167 | |||
2168 | cap_range_dict = kwargs["prob_dict"][cap_range] |
||
2169 | |||
2170 | values_dict = cap_range_dict["values"] |
||
2171 | p_dict = cap_range_dict["probabilities"] |
||
2172 | |||
2173 | load_factors = rng.choice( |
||
2174 | a=values_dict["load_factor"], |
||
2175 | size=len(samples_gdf), |
||
2176 | p=p_dict["load_factor"], |
||
2177 | ) |
||
2178 | |||
2179 | samples_gdf = samples_gdf.assign( |
||
2180 | load_factor=load_factors, |
||
2181 | capacity=( |
||
2182 | samples_gdf.building_area |
||
2183 | * load_factors |
||
2184 | * kwargs["pv_cap_per_sq_m"] |
||
2185 | ).clip(lower=0.4), |
||
2186 | ) |
||
2187 | |||
2188 | missing_factor = pv_cap_range / samples_gdf.capacity.sum() |
||
2189 | |||
2190 | samples_gdf = samples_gdf.assign( |
||
2191 | capacity=(samples_gdf.capacity * missing_factor), |
||
2192 | load_factor=(samples_gdf.load_factor * missing_factor), |
||
2193 | ) |
||
2194 | |||
2195 | assert np.isclose( |
||
2196 | samples_gdf.capacity.sum(), |
||
2197 | pv_cap_range, |
||
2198 | rtol=1e-03, |
||
2199 | ), f"{samples_gdf.capacity.sum()} != {pv_cap_range}" |
||
2200 | |||
2201 | results_df = pd.concat( |
||
2202 | [ |
||
2203 | results_df, |
||
2204 | samples_gdf, |
||
2205 | ], |
||
2206 | ) |
||
2207 | |||
2208 | total_missing_factor = pv_cap / results_df.capacity.sum() |
||
2209 | |||
2210 | results_df = results_df.assign( |
||
2211 | capacity=(results_df.capacity * total_missing_factor), |
||
2212 | ) |
||
2213 | |||
2214 | assert np.isclose( |
||
2215 | results_df.capacity.sum(), |
||
2216 | pv_cap, |
||
2217 | rtol=1e-03, |
||
2218 | ), f"{results_df.capacity.sum()} != {pv_cap}" |
||
2219 | |||
2220 | return gpd.GeoDataFrame( |
||
2221 | results_df, |
||
2222 | crs=samples_gdf.crs, |
||
2223 | geometry="geom", |
||
2224 | ) |
||
2225 | |||
2226 | |||
2227 | @timer_func |
||
2228 | def desaggregate_pv( |
||
2229 | buildings_gdf: gpd.GeoDataFrame, |
||
2230 | cap_df: pd.DataFrame, |
||
2231 | **kwargs, |
||
2232 | ) -> gpd.GeoDataFrame: |
||
2233 | """ |
||
2234 | Desaggregate PV capacity on buildings within a given grid district. |
||
2235 | Parameters |
||
2236 | ----------- |
||
2237 | buildings_gdf : geopandas.GeoDataFrame |
||
2238 | GeoDataFrame containing OSM buildings data. |
||
2239 | cap_df : pandas.DataFrame |
||
2240 | DataFrame with total rooftop capacity per mv grid. |
||
2241 | Other Parameters |
||
2242 | ----------- |
||
2243 | prob_dict : dict |
||
2244 | Dictionary with values and probabilities per capacity range. |
||
2245 | cap_share_dict : dict |
||
2246 | Dictionary with share of PV capacity from the total PV capacity within |
||
2247 | capacity ranges. |
||
2248 | building_area_range_dict : dict |
||
2249 | Dictionary with estimated normal building area range per capacity |
||
2250 | range. |
||
2251 | load_factor_dict : dict |
||
2252 | Dictionary with mean roof load factor per capacity range. |
||
2253 | seed : int |
||
2254 | Seed to use for random operations with NumPy and pandas. |
||
2255 | pv_cap_per_sq_m : float, int |
||
2256 | Average expected, installable PV capacity per square meter. |
||
2257 | Returns |
||
2258 | ------- |
||
2259 | geopandas.GeoDataFrame |
||
2260 | GeoDataFrame containing OSM building data with desaggregated PV |
||
2261 | plants. |
||
2262 | """ |
||
2263 | allocated_buildings_gdf = buildings_gdf.loc[~buildings_gdf.end_of_life] |
||
2264 | |||
2265 | building_bus_ids = set(buildings_gdf.bus_id) |
||
2266 | cap_bus_ids = set(cap_df.index) |
||
2267 | |||
2268 | logger.debug( |
||
2269 | f"Bus IDs from buildings: {len(building_bus_ids)}\nBus IDs from capacity: " |
||
2270 | f"{len(cap_bus_ids)}" |
||
2271 | ) |
||
2272 | |||
2273 | if len(building_bus_ids) > len(cap_bus_ids): |
||
2274 | missing = building_bus_ids - cap_bus_ids |
||
2275 | else: |
||
2276 | missing = cap_bus_ids - building_bus_ids |
||
2277 | |||
2278 | logger.debug(str(missing)) |
||
2279 | |||
2280 | bus_ids = np.intersect1d(list(building_bus_ids), list(cap_bus_ids)) |
||
2281 | |||
2282 | # assert set(buildings_gdf.bus_id.unique()) == set(cap_df.index) |
||
2283 | |||
2284 | for bus_id in bus_ids: |
||
2285 | buildings_grid_gdf = buildings_gdf.loc[buildings_gdf.bus_id == bus_id] |
||
2286 | |||
2287 | pv_installed_gdf = buildings_grid_gdf.loc[ |
||
2288 | ~buildings_grid_gdf.end_of_life |
||
2289 | ] |
||
2290 | |||
2291 | pv_installed = pv_installed_gdf.capacity.sum() |
||
2292 | |||
2293 | pot_buildings_gdf = buildings_grid_gdf.drop( |
||
2294 | index=pv_installed_gdf.index |
||
2295 | ) |
||
2296 | |||
2297 | if len(pot_buildings_gdf) == 0: |
||
2298 | logger.error( |
||
2299 | f"In grid {bus_id} there are no potential buildings to allocate " |
||
2300 | "PV capacity to. The grid is skipped. This message should only " |
||
2301 | "appear doing test runs with few buildings." |
||
2302 | ) |
||
2303 | |||
2304 | continue |
||
2305 | |||
2306 | pv_target = cap_df.at[bus_id, "capacity"] * 1000 |
||
2307 | |||
2308 | logger.debug(f"pv_target: {pv_target}") |
||
2309 | |||
2310 | pv_missing = pv_target - pv_installed |
||
2311 | |||
2312 | if pv_missing <= 0: |
||
2313 | logger.warning( |
||
2314 | f"In grid {bus_id} there is more PV installed ({pv_installed: g}) in " |
||
2315 | f"status Quo than allocated within the scenario ({pv_target: g}). No " |
||
2316 | f"new generators are added." |
||
2317 | ) |
||
2318 | |||
2319 | continue |
||
2320 | |||
2321 | if pot_buildings_gdf.max_cap.sum() < pv_missing: |
||
2322 | logger.error( |
||
2323 | f"In grid {bus_id} there is less PV potential (" |
||
2324 | f"{pot_buildings_gdf.max_cap.sum():g} kW) than allocated PV capacity " |
||
2325 | f"({pv_missing:g} kW). The average roof utilization will be very high." |
||
2326 | ) |
||
2327 | |||
2328 | gdf = desaggregate_pv_in_mv_grid( |
||
2329 | buildings_gdf=pot_buildings_gdf, |
||
2330 | pv_cap=pv_missing, |
||
2331 | **kwargs, |
||
2332 | ) |
||
2333 | |||
2334 | logger.debug(f"New cap in grid {bus_id}: {gdf.capacity.sum()}") |
||
2335 | logger.debug(f"Installed cap in grid {bus_id}: {pv_installed}") |
||
2336 | logger.debug( |
||
2337 | f"Total cap in grid {bus_id}: {gdf.capacity.sum() + pv_installed}" |
||
2338 | ) |
||
2339 | |||
2340 | if not np.isclose( |
||
2341 | gdf.capacity.sum() + pv_installed, pv_target, rtol=1e-3 |
||
2342 | ): |
||
2343 | logger.warning( |
||
2344 | f"The desired capacity and actual capacity in grid {bus_id} differ.\n" |
||
2345 | f"Desired cap: {pv_target}\nActual cap: " |
||
2346 | f"{gdf.capacity.sum() + pv_installed}" |
||
2347 | ) |
||
2348 | |||
2349 | pre_cap = allocated_buildings_gdf.capacity.sum() |
||
2350 | new_cap = gdf.capacity.sum() |
||
2351 | |||
2352 | allocated_buildings_gdf = pd.concat( |
||
2353 | [ |
||
2354 | allocated_buildings_gdf, |
||
2355 | gdf, |
||
2356 | ] |
||
2357 | ) |
||
2358 | |||
2359 | total_cap = allocated_buildings_gdf.capacity.sum() |
||
2360 | |||
2361 | assert np.isclose(pre_cap + new_cap, total_cap) |
||
2362 | |||
2363 | logger.debug("Desaggregated scenario.") |
||
2364 | logger.debug(f"Scenario capacity: {cap_df.capacity.sum(): g}") |
||
2365 | logger.debug( |
||
2366 | f"Generator capacity: {allocated_buildings_gdf.capacity.sum() / 1000: g}" |
||
2367 | ) |
||
2368 | |||
2369 | return gpd.GeoDataFrame( |
||
2370 | allocated_buildings_gdf, |
||
2371 | crs=gdf.crs, |
||
2372 | geometry="geom", |
||
2373 | ) |
||
2374 | |||
2375 | |||
2376 | @timer_func |
||
2377 | def add_buildings_meta_data( |
||
2378 | buildings_gdf: gpd.GeoDataFrame, |
||
2379 | prob_dict: dict, |
||
2380 | seed: int, |
||
2381 | ) -> gpd.GeoDataFrame: |
||
2382 | """ |
||
2383 | Randomly add additional metadata to desaggregated PV plants. |
||
2384 | Parameters |
||
2385 | ----------- |
||
2386 | buildings_gdf : geopandas.GeoDataFrame |
||
2387 | GeoDataFrame containing OSM buildings data with desaggregated PV |
||
2388 | plants. |
||
2389 | prob_dict : dict |
||
2390 | Dictionary with values and probabilities per capacity range. |
||
2391 | seed : int |
||
2392 | Seed to use for random operations with NumPy and pandas. |
||
2393 | Returns |
||
2394 | ------- |
||
2395 | geopandas.GeoDataFrame |
||
2396 | GeoDataFrame containing OSM building data with desaggregated PV |
||
2397 | plants. |
||
2398 | """ |
||
2399 | rng = default_rng(seed=seed) |
||
2400 | buildings_gdf = buildings_gdf.reset_index().rename( |
||
2401 | columns={ |
||
2402 | "index": "building_id", |
||
2403 | } |
||
2404 | ) |
||
2405 | |||
2406 | for (min_cap, max_cap), cap_range_prob_dict in prob_dict.items(): |
||
2407 | cap_range_gdf = buildings_gdf.loc[ |
||
2408 | (buildings_gdf.capacity >= min_cap) |
||
2409 | & (buildings_gdf.capacity < max_cap) |
||
2410 | ] |
||
2411 | |||
2412 | for key, values in cap_range_prob_dict["values"].items(): |
||
2413 | if key == "load_factor": |
||
2414 | continue |
||
2415 | |||
2416 | gdf = cap_range_gdf.loc[ |
||
2417 | cap_range_gdf[key].isna() |
||
2418 | | cap_range_gdf[key].isnull() |
||
2419 | | (cap_range_gdf[key] == "None") |
||
2420 | ] |
||
2421 | |||
2422 | key_vals = rng.choice( |
||
2423 | a=values, |
||
2424 | size=len(gdf), |
||
2425 | p=cap_range_prob_dict["probabilities"][key], |
||
2426 | ) |
||
2427 | |||
2428 | buildings_gdf.loc[gdf.index, key] = key_vals |
||
2429 | |||
2430 | return buildings_gdf |
||
2431 | |||
2432 | |||
2433 | def add_voltage_level( |
||
2434 | buildings_gdf: gpd.GeoDataFrame, |
||
2435 | ) -> gpd.GeoDataFrame: |
||
2436 | """ |
||
2437 | Add voltage level derived from generator capacity to the power plants. |
||
2438 | Parameters |
||
2439 | ----------- |
||
2440 | buildings_gdf : geopandas.GeoDataFrame |
||
2441 | GeoDataFrame containing OSM buildings data with desaggregated PV |
||
2442 | plants. |
||
2443 | Returns |
||
2444 | ------- |
||
2445 | geopandas.GeoDataFrame |
||
2446 | GeoDataFrame containing OSM building data with voltage level per generator. |
||
2447 | """ |
||
2448 | |||
2449 | def voltage_levels(p: float) -> int: |
||
2450 | if p < 100: |
||
2451 | return 7 |
||
2452 | elif p < 200: |
||
2453 | return 6 |
||
2454 | elif p < 5500: |
||
2455 | return 5 |
||
2456 | elif p < 20000: |
||
2457 | return 4 |
||
2458 | elif p < 120000: |
||
2459 | return 3 |
||
2460 | return 1 |
||
2461 | |||
2462 | return buildings_gdf.assign( |
||
2463 | voltage_level=buildings_gdf.capacity.apply(voltage_levels) |
||
2464 | ) |
||
2465 | |||
2466 | |||
2467 | def add_start_up_date( |
||
2468 | buildings_gdf: gpd.GeoDataFrame, |
||
2469 | start: pd.Timestamp, |
||
2470 | end: pd.Timestamp, |
||
2471 | seed: int, |
||
2472 | ): |
||
2473 | """ |
||
2474 | Randomly and linear add start-up date to new pv generators. |
||
2475 | Parameters |
||
2476 | ---------- |
||
2477 | buildings_gdf : geopandas.GeoDataFrame |
||
2478 | GeoDataFrame containing OSM buildings data with desaggregated PV |
||
2479 | plants. |
||
2480 | start : pandas.Timestamp |
||
2481 | Minimum Timestamp to use. |
||
2482 | end : pandas.Timestamp |
||
2483 | Maximum Timestamp to use. |
||
2484 | seed : int |
||
2485 | Seed to use for random operations with NumPy and pandas. |
||
2486 | Returns |
||
2487 | ------- |
||
2488 | geopandas.GeoDataFrame |
||
2489 | GeoDataFrame containing OSM buildings data with start-up date added. |
||
2490 | """ |
||
2491 | rng = default_rng(seed=seed) |
||
2492 | |||
2493 | date_range = pd.date_range(start=start, end=end, freq="1D") |
||
2494 | |||
2495 | return buildings_gdf.assign( |
||
2496 | start_up_date=rng.choice(date_range, size=len(buildings_gdf)) |
||
2497 | ) |
||
2498 | |||
2499 | |||
2500 | @timer_func |
||
2501 | def allocate_scenarios( |
||
2502 | mastr_gdf: gpd.GeoDataFrame, |
||
2503 | valid_buildings_gdf: gpd.GeoDataFrame, |
||
2504 | last_scenario_gdf: gpd.GeoDataFrame, |
||
2505 | scenario: str, |
||
2506 | ): |
||
2507 | """ |
||
2508 | Desaggregate and allocate scenario pv rooftop ramp-ups onto buildings. |
||
2509 | Parameters |
||
2510 | ---------- |
||
2511 | mastr_gdf : geopandas.GeoDataFrame |
||
2512 | GeoDataFrame containing geocoded MaStR data. |
||
2513 | valid_buildings_gdf : geopandas.GeoDataFrame |
||
2514 | GeoDataFrame containing OSM buildings data. |
||
2515 | last_scenario_gdf : geopandas.GeoDataFrame |
||
2516 | GeoDataFrame containing OSM buildings matched with pv generators from temporal |
||
2517 | preceding scenario. |
||
2518 | scenario : str |
||
2519 | Scenario to desaggrgate and allocate. |
||
2520 | Returns |
||
2521 | ------- |
||
2522 | tuple |
||
2523 | geopandas.GeoDataFrame |
||
2524 | GeoDataFrame containing OSM buildings matched with pv generators. |
||
2525 | pandas.DataFrame |
||
2526 | DataFrame containing pv rooftop capacity per grid id. |
||
2527 | """ |
||
2528 | cap_per_bus_id_df = cap_per_bus_id(scenario) |
||
2529 | |||
2530 | logger.debug( |
||
2531 | f"cap_per_bus_id_df total capacity: {cap_per_bus_id_df.capacity.sum()}" |
||
2532 | ) |
||
2533 | |||
2534 | last_scenario_gdf = determine_end_of_life_gens( |
||
2535 | last_scenario_gdf, |
||
2536 | SCENARIO_TIMESTAMP[scenario], |
||
2537 | PV_ROOFTOP_LIFETIME, |
||
2538 | ) |
||
2539 | |||
2540 | buildings_gdf = calculate_max_pv_cap_per_building( |
||
2541 | valid_buildings_gdf, |
||
2542 | last_scenario_gdf, |
||
2543 | PV_CAP_PER_SQ_M, |
||
2544 | ROOF_FACTOR, |
||
2545 | ) |
||
2546 | |||
2547 | mastr_gdf = calculate_building_load_factor( |
||
2548 | mastr_gdf, |
||
2549 | buildings_gdf, |
||
2550 | ) |
||
2551 | |||
2552 | probabilities_dict = probabilities( |
||
2553 | mastr_gdf, |
||
2554 | cap_ranges=CAP_RANGES, |
||
2555 | ) |
||
2556 | |||
2557 | cap_share_dict = cap_share_per_cap_range( |
||
2558 | mastr_gdf, |
||
2559 | cap_ranges=CAP_RANGES, |
||
2560 | ) |
||
2561 | |||
2562 | load_factor_dict = mean_load_factor_per_cap_range( |
||
2563 | mastr_gdf, |
||
2564 | cap_ranges=CAP_RANGES, |
||
2565 | ) |
||
2566 | |||
2567 | building_area_range_dict = building_area_range_per_cap_range( |
||
2568 | mastr_gdf, |
||
2569 | cap_ranges=CAP_RANGES, |
||
2570 | min_building_size=MIN_BUILDING_SIZE, |
||
2571 | upper_quantile=UPPER_QUNATILE, |
||
2572 | lower_quantile=LOWER_QUANTILE, |
||
2573 | ) |
||
2574 | |||
2575 | allocated_buildings_gdf = desaggregate_pv( |
||
2576 | buildings_gdf=buildings_gdf, |
||
2577 | cap_df=cap_per_bus_id_df, |
||
2578 | prob_dict=probabilities_dict, |
||
2579 | cap_share_dict=cap_share_dict, |
||
2580 | building_area_range_dict=building_area_range_dict, |
||
2581 | load_factor_dict=load_factor_dict, |
||
2582 | seed=SEED, |
||
2583 | pv_cap_per_sq_m=PV_CAP_PER_SQ_M, |
||
2584 | ) |
||
2585 | |||
2586 | allocated_buildings_gdf = allocated_buildings_gdf.assign(scenario=scenario) |
||
2587 | |||
2588 | meta_buildings_gdf = frame_to_numeric( |
||
2589 | add_buildings_meta_data( |
||
2590 | allocated_buildings_gdf, |
||
2591 | probabilities_dict, |
||
2592 | SEED, |
||
2593 | ) |
||
2594 | ) |
||
2595 | |||
2596 | return ( |
||
2597 | add_start_up_date( |
||
2598 | meta_buildings_gdf, |
||
2599 | start=last_scenario_gdf.start_up_date.max(), |
||
2600 | end=SCENARIO_TIMESTAMP[scenario], |
||
2601 | seed=SEED, |
||
2602 | ), |
||
2603 | cap_per_bus_id_df, |
||
2604 | ) |
||
2605 | |||
2606 | |||
2607 | class EgonPowerPlantPvRoofBuildingScenario(Base): |
||
2608 | __tablename__ = "egon_power_plants_pv_roof_building" |
||
2609 | __table_args__ = {"schema": "supply"} |
||
2610 | |||
2611 | index = Column(Integer, primary_key=True, index=True) |
||
2612 | scenario = Column(String) |
||
2613 | bus_id = Column(Integer, nullable=True) |
||
2614 | building_id = Column(Integer) |
||
2615 | gens_id = Column(String, nullable=True) |
||
2616 | capacity = Column(Float) |
||
2617 | einheitliche_ausrichtung_und_neigungswinkel = Column(Float) |
||
2618 | hauptausrichtung = Column(String) |
||
2619 | hauptausrichtung_neigungswinkel = Column(String) |
||
2620 | voltage_level = Column(Integer) |
||
2621 | weather_cell_id = Column(Integer) |
||
2622 | |||
2623 | |||
2624 | def create_scenario_table(buildings_gdf): |
||
2625 | """Create mapping table pv_unit <-> building for scenario""" |
||
2626 | EgonPowerPlantPvRoofBuildingScenario.__table__.drop( |
||
2627 | bind=engine, checkfirst=True |
||
2628 | ) |
||
2629 | EgonPowerPlantPvRoofBuildingScenario.__table__.create( |
||
2630 | bind=engine, checkfirst=True |
||
2631 | ) |
||
2632 | |||
2633 | buildings_gdf.rename(columns=COLS_TO_RENAME).assign( |
||
2634 | capacity=buildings_gdf.capacity.div(10**3) # kW -> MW |
||
2635 | )[COLS_TO_EXPORT].reset_index().to_sql( |
||
2636 | name=EgonPowerPlantPvRoofBuildingScenario.__table__.name, |
||
2637 | schema=EgonPowerPlantPvRoofBuildingScenario.__table__.schema, |
||
2638 | con=db.engine(), |
||
2639 | if_exists="append", |
||
2640 | index=False, |
||
2641 | ) |
||
2642 | |||
2643 | |||
2644 | def geocode_mastr_data(): |
||
2645 | """ |
||
2646 | Read PV rooftop data from MaStR CSV |
||
2647 | TODO: the source will be replaced as soon as the MaStR data is available |
||
2648 | in DB. |
||
2649 | """ |
||
2650 | mastr_df = mastr_data( |
||
2651 | MASTR_INDEX_COL, |
||
2652 | MASTR_RELEVANT_COLS, |
||
2653 | MASTR_DTYPES, |
||
2654 | MASTR_PARSE_DATES, |
||
2655 | ) |
||
2656 | |||
2657 | clean_mastr_df = clean_mastr_data( |
||
2658 | mastr_df, |
||
2659 | max_realistic_pv_cap=MAX_REALISTIC_PV_CAP, |
||
2660 | min_realistic_pv_cap=MIN_REALISTIC_PV_CAP, |
||
2661 | seed=SEED, |
||
2662 | rounding=ROUNDING, |
||
2663 | ) |
||
2664 | |||
2665 | geocoding_df = geocoding_data(clean_mastr_df) |
||
2666 | |||
2667 | ratelimiter = geocoder(USER_AGENT, MIN_DELAY_SECONDS) |
||
2668 | |||
2669 | geocode_gdf = geocode_data(geocoding_df, ratelimiter, EPSG) |
||
2670 | |||
2671 | create_geocoded_table(geocode_gdf) |
||
2672 | |||
2673 | |||
2674 | def add_weather_cell_id(buildings_gdf: gpd.GeoDataFrame) -> gpd.GeoDataFrame: |
||
2675 | sql = """ |
||
2676 | SELECT building_id, zensus_population_id |
||
2677 | FROM boundaries.egon_map_zensus_mvgd_buildings |
||
2678 | """ |
||
2679 | |||
2680 | buildings_gdf = buildings_gdf.merge( |
||
2681 | right=db.select_dataframe(sql), |
||
2682 | how="left", |
||
2683 | on="building_id", |
||
2684 | ) |
||
2685 | |||
2686 | sql = """ |
||
2687 | SELECT zensus_population_id, w_id as weather_cell_id |
||
2688 | FROM boundaries.egon_map_zensus_weather_cell |
||
2689 | """ |
||
2690 | |||
2691 | buildings_gdf = buildings_gdf.merge( |
||
2692 | right=db.select_dataframe(sql), |
||
2693 | how="left", |
||
2694 | on="zensus_population_id", |
||
2695 | ) |
||
2696 | |||
2697 | if buildings_gdf.weather_cell_id.isna().any(): |
||
2698 | missing = buildings_gdf.loc[ |
||
2699 | buildings_gdf.weather_cell_id.isna() |
||
2700 | ].building_id.tolist() |
||
2701 | |||
2702 | raise ValueError( |
||
2703 | f"Following buildings don't have a weather cell id: {missing}" |
||
2704 | ) |
||
2705 | |||
2706 | return buildings_gdf |
||
2707 | |||
2708 | |||
2709 | def pv_rooftop_to_buildings(): |
||
2710 | """Main script, executed as task""" |
||
2711 | |||
2712 | mastr_gdf = load_mastr_data() |
||
2713 | |||
2714 | buildings_gdf = load_building_data() |
||
2715 | |||
2716 | desagg_mastr_gdf, desagg_buildings_gdf = allocate_to_buildings( |
||
2717 | mastr_gdf, buildings_gdf |
||
2718 | ) |
||
2719 | |||
2720 | all_buildings_gdf = ( |
||
2721 | desagg_mastr_gdf.assign(scenario="status_quo") |
||
2722 | .reset_index() |
||
2723 | .rename(columns={"geometry": "geom", "EinheitMastrNummer": "gens_id"}) |
||
2724 | ) |
||
2725 | |||
2726 | scenario_buildings_gdf = all_buildings_gdf.copy() |
||
2727 | |||
2728 | cap_per_bus_id_df = pd.DataFrame() |
||
2729 | |||
2730 | for scenario in SCENARIOS: |
||
2731 | logger.debug(f"Desaggregating scenario {scenario}.") |
||
2732 | ( |
||
2733 | scenario_buildings_gdf, |
||
2734 | cap_per_bus_id_scenario_df, |
||
2735 | ) = allocate_scenarios( # noqa: F841 |
||
2736 | desagg_mastr_gdf, |
||
2737 | desagg_buildings_gdf, |
||
2738 | scenario_buildings_gdf, |
||
2739 | scenario, |
||
2740 | ) |
||
2741 | |||
2742 | all_buildings_gdf = gpd.GeoDataFrame( |
||
2743 | pd.concat( |
||
2744 | [all_buildings_gdf, scenario_buildings_gdf], ignore_index=True |
||
2745 | ), |
||
2746 | crs=scenario_buildings_gdf.crs, |
||
2747 | geometry="geom", |
||
2748 | ) |
||
2749 | |||
2750 | cap_per_bus_id_df = pd.concat( |
||
2751 | [cap_per_bus_id_df, cap_per_bus_id_scenario_df] |
||
2752 | ) |
||
2753 | |||
2754 | for scenario in SCENARIOS: |
||
2755 | scn_df = all_buildings_gdf.loc[all_buildings_gdf.scenario == scenario] |
||
2756 | logger.debug( |
||
2757 | f"PV Cap {scenario}: {scn_df.capacity.sum()}" |
||
2758 | ) |
||
2759 | |||
2760 | # add weather cell |
||
2761 | all_buildings_gdf = add_weather_cell_id(all_buildings_gdf) |
||
2762 | |||
2763 | for scenario in SCENARIOS: |
||
2764 | scn_df = all_buildings_gdf.loc[all_buildings_gdf.scenario == scenario] |
||
2765 | logger.debug( |
||
2766 | f"PV Cap {scenario}: {scn_df.capacity.sum()}" |
||
2767 | ) |
||
2768 | |||
2769 | # export scenario |
||
2770 | create_scenario_table(add_voltage_level(all_buildings_gdf)) |
||
2771 |