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""" |
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CTS electricity and heat demand time series for scenarios in 2035 and 2050 |
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assigned to OSM-buildings. |
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Disaggregation of cts heat & electricity demand time series from MV Substation |
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to census cells via annual demand and then to OSM buildings via |
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amenity tags or randomly if no sufficient OSM-data is available in the |
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respective census cell. If no OSM-buildings or synthetic residential buildings |
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are available new synthetic 5x5m buildings are generated. |
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The resulting data is stored in separate tables |
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* `openstreetmap.osm_buildings_synthetic`: |
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Lists generated synthetic building with id, zensus_population_id and |
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building type. This table is already created within |
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:func:`hh_buildings.map_houseprofiles_to_buildings()` |
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* `openstreetmap.egon_cts_buildings`: |
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Table of all selected cts buildings with id, census cell id, geometry and |
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amenity count in building. This table is created within |
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:func:`cts_buildings()` |
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* `demand.egon_cts_electricity_demand_building_share`: |
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Table including the mv substation electricity profile share of all selected |
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cts buildings for scenario eGon2035 and eGon100RE. This table is created |
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within :func:`cts_electricity()` |
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* `demand.egon_cts_heat_demand_building_share`: |
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Table including the mv substation heat profile share of all selected |
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cts buildings for scenario eGon2035 and eGon100RE. This table is created |
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within :func:`cts_heat()` |
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* `demand.egon_building_peak_loads`: |
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Mapping of demand time series and buildings including cell_id, building |
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area and peak load. This table is already created within |
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:func:`hh_buildings.get_building_peak_loads()` |
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**The following datasets from the database are mainly used for creation:** |
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* `openstreetmap.osm_buildings_filtered`: |
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Table of OSM-buildings filtered by tags to selecting residential and cts |
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buildings only. |
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* `openstreetmap.osm_amenities_shops_filtered`: |
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Table of OSM-amenities filtered by tags to select cts only. |
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* `openstreetmap.osm_amenities_not_in_buildings_filtered`: |
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Table of amenities which do not intersect with any building from |
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`openstreetmap.osm_buildings_filtered` |
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* `openstreetmap.osm_buildings_synthetic`: |
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Table of synthetic residential buildings |
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* `boundaries.egon_map_zensus_buildings_filtered_all`: |
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Mapping table of census cells and buildings filtered even if population |
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in census cell = 0. |
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* `demand.egon_demandregio_zensus_electricity`: |
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Table of annual electricity load demand for residential and cts at census |
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cell level. Residential load demand is derived from aggregated residential |
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building profiles. DemandRegio CTS load demand at NUTS3 is distributed to |
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census cells linearly to heat demand from peta5. |
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* `demand.egon_peta_heat`: |
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Table of annual heat load demand for residential and cts at census cell |
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level from peta5. |
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* `demand.egon_etrago_electricity_cts`: |
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Scaled cts electricity time series for every MV substation. Derived from |
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DemandRegio SLP for selected economic sectors at nuts3. Scaled with annual |
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demand from `demand.egon_demandregio_zensus_electricity` |
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* `demand.egon_etrago_heat_cts`: |
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Scaled cts heat time series for every MV substation. Derived from |
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DemandRegio SLP Gas for selected economic sectors at nuts3. Scaled with |
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annual demand from `demand.egon_peta_heat`. |
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**What is the goal?** |
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To disaggregate cts heat and electricity time series from MV substation level |
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to geo-referenced buildings. DemandRegio and Peta5 is used to identify census |
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cells with load demand. Openstreetmap data is used and filtered via tags to |
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identify buildings and count amenities within. The number of amenities serve |
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to assign the appropriate load demand share to the building. |
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**What is the challenge?** |
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The OSM, DemandRegio and Peta5 dataset differ from each other. The OSM dataset |
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is a community based dataset which is extended throughout and does not claim to |
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be complete. Therefore not all census cells which have a demand assigned by |
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DemandRegio or Peta5 methodology also have buildings with respective tags or no |
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buildings at all. Merging these datasets inconsistencies need |
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to be addressed. For example: not yet tagged buildings or amenities in OSM |
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**How are these datasets combined?** |
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------>>>>>> continue |
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Firstly, all cts buildings are selected. Buildings which have cts amenities |
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inside. |
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**What are central assumptions during the data processing?** |
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* Mapping census to OSM data is not trivial. Discrepancies are substituted. |
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* Missing OSM buildings are generated by census building count. |
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* If no census building count data is available, the number of buildings is |
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derived by an average rate of households/buildings applied to the number of |
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households. |
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**Drawbacks and limitations of the data** |
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* Missing OSM buildings in cells without census building count are derived by |
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an average rate of households/buildings applied to the number of households. |
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As only whole houses can exist, the substitute is ceiled to the next higher |
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integer. Ceiling is applied to avoid rounding to amount of 0 buildings. |
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* As this datasets is a cascade after profile assignement at census cells |
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also check drawbacks and limitations in hh_profiles.py. |
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Example Query |
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----- |
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Notes |
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----- |
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This module docstring is rather a dataset documentation. Once, a decision |
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is made in ... the content of this module docstring needs to be moved to |
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docs attribute of the respective dataset class. |
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""" |
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from geoalchemy2 import Geometry |
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from geoalchemy2.shape import to_shape |
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from sqlalchemy import REAL, Column, Integer, String, func |
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from sqlalchemy.ext.declarative import declarative_base |
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import geopandas as gpd |
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import numpy as np |
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import pandas as pd |
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import saio |
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from egon.data import db |
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from egon.data import logger as log |
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from egon.data.datasets import Dataset |
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from egon.data.datasets.electricity_demand import ( |
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EgonDemandRegioZensusElectricity, |
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) |
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from egon.data.datasets.electricity_demand.temporal import ( |
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EgonEtragoElectricityCts, |
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) |
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from egon.data.datasets.electricity_demand_timeseries.hh_buildings import ( |
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BuildingElectricityPeakLoads, |
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OsmBuildingsSynthetic, |
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) |
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from egon.data.datasets.electricity_demand_timeseries.tools import ( |
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random_ints_until_sum, |
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random_point_in_square, |
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specific_int_until_sum, |
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write_table_to_postgis, |
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write_table_to_postgres, |
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) |
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from egon.data.datasets.heat_demand import EgonPetaHeat |
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from egon.data.datasets.heat_demand_timeseries import EgonEtragoHeatCts |
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from egon.data.datasets.zensus_mv_grid_districts import MapZensusGridDistricts |
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from egon.data.datasets.zensus_vg250 import DestatisZensusPopulationPerHa |
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157
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engine = db.engine() |
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Base = declarative_base() |
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160
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# import db tables |
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saio.register_schema("openstreetmap", engine=engine) |
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saio.register_schema("boundaries", engine=engine) |
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163
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164
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165
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class EgonCtsElectricityDemandBuildingShare(Base): |
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__tablename__ = "egon_cts_electricity_demand_building_share" |
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__table_args__ = {"schema": "demand"} |
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168
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169
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building_id = Column(Integer, primary_key=True) |
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scenario = Column(String, primary_key=True) |
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bus_id = Column(Integer, index=True) |
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profile_share = Column(REAL) |
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174
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175
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class EgonCtsHeatDemandBuildingShare(Base): |
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__tablename__ = "egon_cts_heat_demand_building_share" |
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__table_args__ = {"schema": "demand"} |
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179
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building_id = Column(Integer, primary_key=True) |
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scenario = Column(String, primary_key=True) |
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bus_id = Column(Integer, index=True) |
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profile_share = Column(REAL) |
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184
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185
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class CtsBuildings(Base): |
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__tablename__ = "egon_cts_buildings" |
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__table_args__ = {"schema": "openstreetmap"} |
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189
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serial = Column(Integer, primary_key=True) |
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id = Column(Integer, index=True) |
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191
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zensus_population_id = Column(Integer, index=True) |
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geom_building = Column(Geometry("Polygon", 3035)) |
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n_amenities_inside = Column(Integer) |
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194
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source = Column(String) |
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195
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196
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197
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class BuildingHeatPeakLoads(Base): |
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__tablename__ = "egon_building_heat_peak_loads" |
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199
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__table_args__ = {"schema": "demand"} |
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200
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201
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building_id = Column(Integer, primary_key=True) |
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202
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scenario = Column(String, primary_key=True) |
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203
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sector = Column(String, primary_key=True) |
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peak_load_in_w = Column(REAL) |
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205
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206
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207
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class CtsDemandBuildings(Dataset): |
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def __init__(self, dependencies): |
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super().__init__( |
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name="CtsDemandBuildings", |
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version="0.0.0", |
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dependencies=dependencies, |
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tasks=( |
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cts_buildings, |
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215
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{cts_electricity, cts_heat}, |
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{get_cts_electricity_peak_load, get_cts_heat_peak_load}, |
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), |
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218
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) |
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220
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221
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def amenities_without_buildings(): |
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""" |
|
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Amenities which have no buildings assigned and are in |
|
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a cell with cts demand are determined. |
|
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226
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Returns |
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227
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------- |
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228
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pd.DataFrame |
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Table of amenities without buildings |
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""" |
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from saio.openstreetmap import osm_amenities_not_in_buildings_filtered |
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233
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with db.session_scope() as session: |
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cells_query = ( |
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session.query( |
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DestatisZensusPopulationPerHa.id.label("zensus_population_id"), |
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osm_amenities_not_in_buildings_filtered.geom_amenity, |
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osm_amenities_not_in_buildings_filtered.egon_amenity_id, |
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) |
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.filter( |
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func.st_within( |
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242
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osm_amenities_not_in_buildings_filtered.geom_amenity, |
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DestatisZensusPopulationPerHa.geom, |
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) |
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245
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) |
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246
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.filter( |
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DestatisZensusPopulationPerHa.id |
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== EgonDemandRegioZensusElectricity.zensus_population_id |
|
249
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) |
|
250
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.filter( |
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EgonDemandRegioZensusElectricity.sector == "service", |
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252
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EgonDemandRegioZensusElectricity.scenario == "eGon2035", |
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253
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) |
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254
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) |
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255
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|
256
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|
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df_amenities_without_buildings = gpd.read_postgis( |
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257
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cells_query.statement, |
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258
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cells_query.session.bind, |
|
259
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geom_col="geom_amenity", |
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260
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) |
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261
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|
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return df_amenities_without_buildings |
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262
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|
263
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|
264
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def place_buildings_with_amenities(df, amenities=None, max_amenities=None): |
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""" |
|
266
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|
Building centroids are placed randomly within census cells. |
|
267
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|
The Number of buildings is derived from n_amenity_inside, the selected |
|
268
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|
|
method and number of amenities per building. |
|
269
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270
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Returns |
|
271
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------- |
|
272
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df: gpd.GeoDataFrame |
|
273
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Table of buildings centroids |
|
274
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""" |
|
275
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if isinstance(max_amenities, int): |
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276
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# amount of amenities is randomly generated within bounds |
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277
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|
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# (max_amenities, amenities per cell) |
|
278
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df["n_amenities_inside"] = df["n_amenities_inside"].apply( |
|
279
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|
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random_ints_until_sum, args=[max_amenities] |
|
280
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) |
|
281
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if isinstance(amenities, int): |
|
282
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# Specific amount of amenities per building |
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283
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|
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df["n_amenities_inside"] = df["n_amenities_inside"].apply( |
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284
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|
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specific_int_until_sum, args=[amenities] |
|
285
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) |
|
286
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|
287
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# Unnest each building |
|
288
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|
|
df = df.explode(column="n_amenities_inside") |
|
289
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|
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|
|
290
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|
|
# building count per cell |
|
291
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|
|
df["building_count"] = df.groupby(["zensus_population_id"]).cumcount() + 1 |
|
292
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|
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|
|
293
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|
|
# generate random synthetic buildings |
|
294
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|
|
edge_length = 5 |
|
295
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|
|
# create random points within census cells |
|
296
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|
|
points = random_point_in_square(geom=df["geom"], tol=edge_length / 2) |
|
297
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|
298
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|
|
df.reset_index(drop=True, inplace=True) |
|
299
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|
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# Store center of polygon |
|
300
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|
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df["geom_point"] = points |
|
301
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# Drop geometry of census cell |
|
302
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df = df.drop(columns=["geom"]) |
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303
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304
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return df |
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305
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306
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307
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def create_synthetic_buildings(df, points=None, crs="EPSG:3035"): |
|
308
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""" |
|
309
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|
Synthetic buildings are generated around points. |
|
310
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|
|
311
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Parameters |
|
312
|
|
|
---------- |
|
313
|
|
|
df: pd.DataFrame |
|
314
|
|
|
Table of census cells |
|
315
|
|
|
points: gpd.GeoSeries or str |
|
316
|
|
|
List of points to place buildings around or column name of df |
|
317
|
|
|
crs: str |
|
318
|
|
|
CRS of result table |
|
319
|
|
|
|
|
320
|
|
|
Returns |
|
321
|
|
|
------- |
|
322
|
|
|
df: gpd.GeoDataFrame |
|
323
|
|
|
Synthetic buildings |
|
324
|
|
|
""" |
|
325
|
|
|
|
|
326
|
|
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if isinstance(points, str) and points in df.columns: |
|
327
|
|
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points = df[points] |
|
328
|
|
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elif isinstance(points, gpd.GeoSeries): |
|
329
|
|
|
pass |
|
330
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|
|
else: |
|
331
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|
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raise ValueError("Points are of the wrong type") |
|
332
|
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|
|
333
|
|
|
# Create building using a square around point |
|
334
|
|
|
edge_length = 5 |
|
335
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|
|
df["geom_building"] = points.buffer(distance=edge_length / 2, cap_style=3) |
|
336
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|
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|
|
337
|
|
|
if "geom_point" not in df.columns: |
|
338
|
|
|
df["geom_point"] = df["geom_building"].centroid |
|
339
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|
|
|
|
340
|
|
|
df = gpd.GeoDataFrame( |
|
341
|
|
|
df, |
|
342
|
|
|
crs=crs, |
|
343
|
|
|
geometry="geom_building", |
|
344
|
|
|
) |
|
345
|
|
|
|
|
346
|
|
|
# TODO remove after #772 implementation of egon_building_id |
|
347
|
|
|
df.rename(columns={"id": "egon_building_id"}, inplace=True) |
|
348
|
|
|
|
|
349
|
|
|
# get max number of building ids from synthetic residential table |
|
350
|
|
|
with db.session_scope() as session: |
|
351
|
|
|
max_synth_residential_id = session.execute( |
|
352
|
|
|
func.max(OsmBuildingsSynthetic.id) |
|
353
|
|
|
).scalar() |
|
354
|
|
|
max_synth_residential_id = int(max_synth_residential_id) |
|
355
|
|
|
|
|
356
|
|
|
# create sequential ids |
|
357
|
|
|
df["egon_building_id"] = range( |
|
358
|
|
|
max_synth_residential_id + 1, |
|
359
|
|
|
max_synth_residential_id + df.shape[0] + 1, |
|
360
|
|
|
) |
|
361
|
|
|
|
|
362
|
|
|
df["area"] = df["geom_building"].area |
|
363
|
|
|
# set building type of synthetic building |
|
364
|
|
|
df["building"] = "cts" |
|
365
|
|
|
# TODO remove in #772 |
|
366
|
|
|
df = df.rename( |
|
367
|
|
|
columns={ |
|
368
|
|
|
# "zensus_population_id": "cell_id", |
|
369
|
|
|
"egon_building_id": "id", |
|
370
|
|
|
} |
|
371
|
|
|
) |
|
372
|
|
|
return df |
|
373
|
|
|
|
|
374
|
|
|
|
|
375
|
|
|
def buildings_with_amenities(): |
|
376
|
|
|
""" |
|
377
|
|
|
Amenities which are assigned to buildings are determined |
|
378
|
|
|
and grouped per building and zensus cell. Buildings |
|
379
|
|
|
covering multiple cells therefore exists multiple times |
|
380
|
|
|
but in different zensus cells. This is necessary to cover |
|
381
|
|
|
all cells with a cts demand. If buildings exist in multiple |
|
382
|
|
|
substations, their amenities are summed and assigned and kept in |
|
383
|
|
|
one substation only. If as a result, a census cell is uncovered, |
|
384
|
|
|
a synthetic amenity is placed. The buildings are aggregated |
|
385
|
|
|
afterwards during the calculation of the profile_share. |
|
386
|
|
|
|
|
387
|
|
|
Returns |
|
388
|
|
|
------- |
|
389
|
|
|
df_buildings_with_amenities: gpd.GeoDataFrame |
|
390
|
|
|
Contains all buildings with amenities per zensus cell. |
|
391
|
|
|
df_lost_cells: gpd.GeoDataFrame |
|
392
|
|
|
Contains synthetic amenities in lost cells. Might be empty |
|
393
|
|
|
""" |
|
394
|
|
|
|
|
395
|
|
|
from saio.openstreetmap import osm_amenities_in_buildings_filtered |
|
396
|
|
|
|
|
397
|
|
|
with db.session_scope() as session: |
|
398
|
|
|
cells_query = ( |
|
399
|
|
|
session.query( |
|
400
|
|
|
osm_amenities_in_buildings_filtered, |
|
401
|
|
|
MapZensusGridDistricts.bus_id, |
|
402
|
|
|
) |
|
403
|
|
|
.filter( |
|
404
|
|
|
MapZensusGridDistricts.zensus_population_id |
|
405
|
|
|
== osm_amenities_in_buildings_filtered.zensus_population_id |
|
406
|
|
|
) |
|
407
|
|
|
.filter( |
|
408
|
|
|
EgonDemandRegioZensusElectricity.zensus_population_id |
|
409
|
|
|
== osm_amenities_in_buildings_filtered.zensus_population_id |
|
410
|
|
|
) |
|
411
|
|
|
.filter( |
|
412
|
|
|
EgonDemandRegioZensusElectricity.sector == "service", |
|
413
|
|
|
EgonDemandRegioZensusElectricity.scenario == "eGon2035", |
|
414
|
|
|
) |
|
415
|
|
|
) |
|
416
|
|
|
df_amenities_in_buildings = pd.read_sql( |
|
417
|
|
|
cells_query.statement, cells_query.session.bind, index_col=None |
|
418
|
|
|
) |
|
419
|
|
|
|
|
420
|
|
|
df_amenities_in_buildings["geom_building"] = df_amenities_in_buildings[ |
|
421
|
|
|
"geom_building" |
|
422
|
|
|
].apply(to_shape) |
|
423
|
|
|
df_amenities_in_buildings["geom_amenity"] = df_amenities_in_buildings[ |
|
424
|
|
|
"geom_amenity" |
|
425
|
|
|
].apply(to_shape) |
|
426
|
|
|
|
|
427
|
|
|
df_amenities_in_buildings["n_amenities_inside"] = 1 |
|
428
|
|
|
|
|
429
|
|
|
# add identifier column for buildings in multiple substations |
|
430
|
|
|
df_amenities_in_buildings[ |
|
431
|
|
|
"duplicate_identifier" |
|
432
|
|
|
] = df_amenities_in_buildings.groupby(["id", "bus_id"])[ |
|
433
|
|
|
"n_amenities_inside" |
|
434
|
|
|
].transform( |
|
435
|
|
|
"cumsum" |
|
436
|
|
|
) |
|
437
|
|
|
df_amenities_in_buildings = df_amenities_in_buildings.sort_values( |
|
438
|
|
|
["id", "duplicate_identifier"] |
|
439
|
|
|
) |
|
440
|
|
|
# sum amenities of buildings with multiple substations |
|
441
|
|
|
df_amenities_in_buildings[ |
|
442
|
|
|
"n_amenities_inside" |
|
443
|
|
|
] = df_amenities_in_buildings.groupby(["id", "duplicate_identifier"])[ |
|
444
|
|
|
"n_amenities_inside" |
|
445
|
|
|
].transform( |
|
446
|
|
|
"sum" |
|
447
|
|
|
) |
|
448
|
|
|
|
|
449
|
|
|
# create column to always go for bus_id with max amenities |
|
450
|
|
|
df_amenities_in_buildings[ |
|
451
|
|
|
"max_amenities" |
|
452
|
|
|
] = df_amenities_in_buildings.groupby(["id", "bus_id"])[ |
|
453
|
|
|
"n_amenities_inside" |
|
454
|
|
|
].transform( |
|
455
|
|
|
"sum" |
|
456
|
|
|
) |
|
457
|
|
|
# sort to go for |
|
458
|
|
|
df_amenities_in_buildings.sort_values( |
|
459
|
|
|
["id", "max_amenities"], ascending=False, inplace=True |
|
460
|
|
|
) |
|
461
|
|
|
|
|
462
|
|
|
# identify lost zensus cells |
|
463
|
|
|
df_lost_cells = df_amenities_in_buildings.loc[ |
|
464
|
|
|
df_amenities_in_buildings.duplicated( |
|
465
|
|
|
subset=["id", "duplicate_identifier"], keep="first" |
|
466
|
|
|
) |
|
467
|
|
|
] |
|
468
|
|
|
df_lost_cells.drop_duplicates( |
|
469
|
|
|
subset=["zensus_population_id"], inplace=True |
|
470
|
|
|
) |
|
471
|
|
|
|
|
472
|
|
|
# drop buildings with multiple substation and lower max amenity |
|
473
|
|
|
df_amenities_in_buildings.drop_duplicates( |
|
474
|
|
|
subset=["id", "duplicate_identifier"], keep="first", inplace=True |
|
475
|
|
|
) |
|
476
|
|
|
|
|
477
|
|
|
# check if lost zensus cells are already covered |
|
478
|
|
|
if not df_lost_cells.empty: |
|
479
|
|
|
if not ( |
|
480
|
|
|
df_amenities_in_buildings["zensus_population_id"] |
|
481
|
|
|
.isin(df_lost_cells["zensus_population_id"]) |
|
482
|
|
|
.empty |
|
483
|
|
|
): |
|
484
|
|
|
# query geom data for cell if not |
|
485
|
|
|
with db.session_scope() as session: |
|
486
|
|
|
cells_query = session.query( |
|
487
|
|
|
DestatisZensusPopulationPerHa.id, |
|
488
|
|
|
DestatisZensusPopulationPerHa.geom, |
|
489
|
|
|
).filter( |
|
490
|
|
|
DestatisZensusPopulationPerHa.id.in_( |
|
491
|
|
|
df_lost_cells["zensus_population_id"] |
|
492
|
|
|
) |
|
493
|
|
|
) |
|
494
|
|
|
|
|
495
|
|
|
df_lost_cells = gpd.read_postgis( |
|
496
|
|
|
cells_query.statement, |
|
497
|
|
|
cells_query.session.bind, |
|
498
|
|
|
geom_col="geom", |
|
499
|
|
|
) |
|
500
|
|
|
# TODO maybe adapt method |
|
501
|
|
|
# place random amenity in cell |
|
502
|
|
|
df_lost_cells["n_amenities_inside"] = 1 |
|
503
|
|
|
df_lost_cells.rename( |
|
504
|
|
|
columns={ |
|
505
|
|
|
"id": "zensus_population_id", |
|
506
|
|
|
}, |
|
507
|
|
|
inplace=True, |
|
508
|
|
|
) |
|
509
|
|
|
df_lost_cells = place_buildings_with_amenities( |
|
510
|
|
|
df_lost_cells, amenities=1 |
|
511
|
|
|
) |
|
512
|
|
|
df_lost_cells.rename( |
|
513
|
|
|
columns={ |
|
514
|
|
|
# "id": "zensus_population_id", |
|
515
|
|
|
"geom_point": "geom_amenity", |
|
516
|
|
|
}, |
|
517
|
|
|
inplace=True, |
|
518
|
|
|
) |
|
519
|
|
|
df_lost_cells.drop( |
|
520
|
|
|
columns=["building_count", "n_amenities_inside"], inplace=True |
|
521
|
|
|
) |
|
522
|
|
|
else: |
|
523
|
|
|
df_lost_cells = None |
|
524
|
|
|
else: |
|
525
|
|
|
df_lost_cells = None |
|
526
|
|
|
|
|
527
|
|
|
# drop helper columns |
|
528
|
|
|
df_amenities_in_buildings.drop( |
|
529
|
|
|
columns=["duplicate_identifier"], inplace=True |
|
530
|
|
|
) |
|
531
|
|
|
|
|
532
|
|
|
# sum amenities per building and cell |
|
533
|
|
|
df_amenities_in_buildings[ |
|
534
|
|
|
"n_amenities_inside" |
|
535
|
|
|
] = df_amenities_in_buildings.groupby(["zensus_population_id", "id"])[ |
|
536
|
|
|
"n_amenities_inside" |
|
537
|
|
|
].transform( |
|
538
|
|
|
"sum" |
|
539
|
|
|
) |
|
540
|
|
|
# drop duplicated buildings |
|
541
|
|
|
df_buildings_with_amenities = df_amenities_in_buildings.drop_duplicates( |
|
542
|
|
|
["id", "zensus_population_id"] |
|
543
|
|
|
) |
|
544
|
|
|
df_buildings_with_amenities.reset_index(inplace=True, drop=True) |
|
545
|
|
|
|
|
546
|
|
|
df_buildings_with_amenities = df_buildings_with_amenities[ |
|
547
|
|
|
["id", "zensus_population_id", "geom_building", "n_amenities_inside"] |
|
548
|
|
|
] |
|
549
|
|
|
df_buildings_with_amenities.rename( |
|
550
|
|
|
columns={ |
|
551
|
|
|
# "zensus_population_id": "cell_id", |
|
552
|
|
|
"egon_building_id": "id" |
|
553
|
|
|
}, |
|
554
|
|
|
inplace=True, |
|
555
|
|
|
) |
|
556
|
|
|
|
|
557
|
|
|
return df_buildings_with_amenities, df_lost_cells |
|
558
|
|
|
|
|
559
|
|
|
|
|
560
|
|
|
def buildings_without_amenities(): |
|
561
|
|
|
""" |
|
562
|
|
|
Buildings (filtered and synthetic) in cells with |
|
563
|
|
|
cts demand but no amenities are determined. |
|
564
|
|
|
|
|
565
|
|
|
Returns |
|
566
|
|
|
------- |
|
567
|
|
|
df_buildings_without_amenities: gpd.GeoDataFrame |
|
568
|
|
|
Table of buildings without amenities in zensus cells |
|
569
|
|
|
with cts demand. |
|
570
|
|
|
""" |
|
571
|
|
|
from saio.boundaries import egon_map_zensus_buildings_filtered_all |
|
572
|
|
|
from saio.openstreetmap import ( |
|
573
|
|
|
osm_amenities_shops_filtered, |
|
574
|
|
|
osm_buildings_filtered, |
|
575
|
|
|
osm_buildings_synthetic, |
|
576
|
|
|
) |
|
577
|
|
|
|
|
578
|
|
|
# buildings_filtered in cts-demand-cells without amenities |
|
579
|
|
|
with db.session_scope() as session: |
|
580
|
|
|
|
|
581
|
|
|
# Synthetic Buildings |
|
582
|
|
|
q_synth_buildings = session.query( |
|
583
|
|
|
osm_buildings_synthetic.cell_id.cast(Integer).label( |
|
584
|
|
|
"zensus_population_id" |
|
585
|
|
|
), |
|
586
|
|
|
osm_buildings_synthetic.id.cast(Integer).label("id"), |
|
587
|
|
|
osm_buildings_synthetic.area.label("area"), |
|
588
|
|
|
osm_buildings_synthetic.geom_building.label("geom_building"), |
|
589
|
|
|
osm_buildings_synthetic.geom_point.label("geom_point"), |
|
590
|
|
|
) |
|
591
|
|
|
|
|
592
|
|
|
# Buildings filtered |
|
593
|
|
|
q_buildings_filtered = session.query( |
|
594
|
|
|
egon_map_zensus_buildings_filtered_all.zensus_population_id, |
|
595
|
|
|
osm_buildings_filtered.id, |
|
596
|
|
|
osm_buildings_filtered.area, |
|
597
|
|
|
osm_buildings_filtered.geom_building, |
|
598
|
|
|
osm_buildings_filtered.geom_point, |
|
599
|
|
|
).filter( |
|
600
|
|
|
osm_buildings_filtered.id |
|
601
|
|
|
== egon_map_zensus_buildings_filtered_all.id |
|
602
|
|
|
) |
|
603
|
|
|
|
|
604
|
|
|
# Amenities + zensus_population_id |
|
605
|
|
|
q_amenities = ( |
|
606
|
|
|
session.query( |
|
607
|
|
|
DestatisZensusPopulationPerHa.id.label("zensus_population_id"), |
|
608
|
|
|
) |
|
609
|
|
|
.filter( |
|
610
|
|
|
func.st_within( |
|
611
|
|
|
osm_amenities_shops_filtered.geom_amenity, |
|
612
|
|
|
DestatisZensusPopulationPerHa.geom, |
|
613
|
|
|
) |
|
614
|
|
|
) |
|
615
|
|
|
.distinct(DestatisZensusPopulationPerHa.id) |
|
616
|
|
|
) |
|
617
|
|
|
|
|
618
|
|
|
# Cells with CTS demand but without amenities |
|
619
|
|
|
q_cts_without_amenities = ( |
|
620
|
|
|
session.query( |
|
621
|
|
|
EgonDemandRegioZensusElectricity.zensus_population_id, |
|
622
|
|
|
) |
|
623
|
|
|
.filter( |
|
624
|
|
|
EgonDemandRegioZensusElectricity.sector == "service", |
|
625
|
|
|
EgonDemandRegioZensusElectricity.scenario == "eGon2035", |
|
626
|
|
|
) |
|
627
|
|
|
.filter( |
|
628
|
|
|
EgonDemandRegioZensusElectricity.zensus_population_id.notin_( |
|
629
|
|
|
q_amenities |
|
630
|
|
|
) |
|
631
|
|
|
) |
|
632
|
|
|
.distinct() |
|
633
|
|
|
) |
|
634
|
|
|
|
|
635
|
|
|
# Buildings filtered + synthetic buildings residential in |
|
636
|
|
|
# cells with CTS demand but without amenities |
|
637
|
|
|
cells_query = q_synth_buildings.union(q_buildings_filtered).filter( |
|
638
|
|
|
egon_map_zensus_buildings_filtered_all.zensus_population_id.in_( |
|
639
|
|
|
q_cts_without_amenities |
|
640
|
|
|
) |
|
641
|
|
|
) |
|
642
|
|
|
|
|
643
|
|
|
# df_buildings_without_amenities = pd.read_sql( |
|
644
|
|
|
# cells_query.statement, cells_query.session.bind, index_col=None) |
|
645
|
|
|
df_buildings_without_amenities = gpd.read_postgis( |
|
646
|
|
|
cells_query.statement, |
|
647
|
|
|
cells_query.session.bind, |
|
648
|
|
|
geom_col="geom_building", |
|
649
|
|
|
) |
|
650
|
|
|
|
|
651
|
|
|
df_buildings_without_amenities = df_buildings_without_amenities.rename( |
|
652
|
|
|
columns={ |
|
653
|
|
|
# "zensus_population_id": "cell_id", |
|
654
|
|
|
"egon_building_id": "id", |
|
655
|
|
|
} |
|
656
|
|
|
) |
|
657
|
|
|
|
|
658
|
|
|
return df_buildings_without_amenities |
|
659
|
|
|
|
|
660
|
|
|
|
|
661
|
|
|
def select_cts_buildings(df_buildings_wo_amenities, max_n): |
|
662
|
|
|
""" |
|
663
|
|
|
N Buildings (filtered and synthetic) in each cell with |
|
664
|
|
|
cts demand are selected. Only the first n buildings |
|
665
|
|
|
are taken for each cell. The buildings are sorted by surface |
|
666
|
|
|
area. |
|
667
|
|
|
|
|
668
|
|
|
Returns |
|
669
|
|
|
------- |
|
670
|
|
|
df_buildings_with_cts_demand: gpd.GeoDataFrame |
|
671
|
|
|
Table of buildings |
|
672
|
|
|
""" |
|
673
|
|
|
|
|
674
|
|
|
df_buildings_wo_amenities.sort_values( |
|
675
|
|
|
"area", ascending=False, inplace=True |
|
676
|
|
|
) |
|
677
|
|
|
# select first n ids each census cell if available |
|
678
|
|
|
df_buildings_with_cts_demand = ( |
|
679
|
|
|
df_buildings_wo_amenities.groupby("zensus_population_id") |
|
680
|
|
|
.nth(list(range(max_n))) |
|
681
|
|
|
.reset_index() |
|
682
|
|
|
) |
|
683
|
|
|
df_buildings_with_cts_demand.reset_index(drop=True, inplace=True) |
|
684
|
|
|
|
|
685
|
|
|
return df_buildings_with_cts_demand |
|
686
|
|
|
|
|
687
|
|
|
|
|
688
|
|
|
def cells_with_cts_demand_only(df_buildings_without_amenities): |
|
689
|
|
|
""" |
|
690
|
|
|
Cells with cts demand but no amenities or buildilngs |
|
691
|
|
|
are determined. |
|
692
|
|
|
|
|
693
|
|
|
Returns |
|
694
|
|
|
------- |
|
695
|
|
|
df_cells_only_cts_demand: gpd.GeoDataFrame |
|
696
|
|
|
Table of cells with cts demand but no amenities or buildings |
|
697
|
|
|
""" |
|
698
|
|
|
from saio.openstreetmap import osm_amenities_shops_filtered |
|
699
|
|
|
|
|
700
|
|
|
# cells mit amenities |
|
701
|
|
|
with db.session_scope() as session: |
|
702
|
|
|
sub_query = ( |
|
703
|
|
|
session.query( |
|
704
|
|
|
DestatisZensusPopulationPerHa.id.label("zensus_population_id"), |
|
705
|
|
|
) |
|
706
|
|
|
.filter( |
|
707
|
|
|
func.st_within( |
|
708
|
|
|
osm_amenities_shops_filtered.geom_amenity, |
|
709
|
|
|
DestatisZensusPopulationPerHa.geom, |
|
710
|
|
|
) |
|
711
|
|
|
) |
|
712
|
|
|
.distinct(DestatisZensusPopulationPerHa.id) |
|
713
|
|
|
) |
|
714
|
|
|
|
|
715
|
|
|
cells_query = ( |
|
716
|
|
|
session.query( |
|
717
|
|
|
EgonDemandRegioZensusElectricity.zensus_population_id, |
|
718
|
|
|
EgonDemandRegioZensusElectricity.scenario, |
|
719
|
|
|
EgonDemandRegioZensusElectricity.sector, |
|
720
|
|
|
EgonDemandRegioZensusElectricity.demand, |
|
721
|
|
|
DestatisZensusPopulationPerHa.geom, |
|
722
|
|
|
) |
|
723
|
|
|
.filter( |
|
724
|
|
|
EgonDemandRegioZensusElectricity.sector == "service", |
|
725
|
|
|
EgonDemandRegioZensusElectricity.scenario == "eGon2035", |
|
726
|
|
|
) |
|
727
|
|
|
.filter( |
|
728
|
|
|
EgonDemandRegioZensusElectricity.zensus_population_id.notin_( |
|
729
|
|
|
sub_query |
|
730
|
|
|
) |
|
731
|
|
|
) |
|
732
|
|
|
.filter( |
|
733
|
|
|
EgonDemandRegioZensusElectricity.zensus_population_id |
|
734
|
|
|
== DestatisZensusPopulationPerHa.id |
|
735
|
|
|
) |
|
736
|
|
|
) |
|
737
|
|
|
|
|
738
|
|
|
df_cts_cell_without_amenities = gpd.read_postgis( |
|
739
|
|
|
cells_query.statement, |
|
740
|
|
|
cells_query.session.bind, |
|
741
|
|
|
geom_col="geom", |
|
742
|
|
|
index_col=None, |
|
743
|
|
|
) |
|
744
|
|
|
|
|
745
|
|
|
# TODO maybe remove |
|
746
|
|
|
df_buildings_without_amenities = df_buildings_without_amenities.rename( |
|
747
|
|
|
columns={"cell_id": "zensus_population_id"} |
|
748
|
|
|
) |
|
749
|
|
|
|
|
750
|
|
|
# Census cells with only cts demand |
|
751
|
|
|
df_cells_only_cts_demand = df_cts_cell_without_amenities.loc[ |
|
752
|
|
|
~df_cts_cell_without_amenities["zensus_population_id"].isin( |
|
753
|
|
|
df_buildings_without_amenities["zensus_population_id"].unique() |
|
754
|
|
|
) |
|
755
|
|
|
] |
|
756
|
|
|
|
|
757
|
|
|
df_cells_only_cts_demand.reset_index(drop=True, inplace=True) |
|
758
|
|
|
|
|
759
|
|
|
return df_cells_only_cts_demand |
|
760
|
|
|
|
|
761
|
|
|
|
|
762
|
|
|
def calc_census_cell_share(scenario, sector): |
|
763
|
|
|
""" |
|
764
|
|
|
The profile share for each census cell is calculated by it's |
|
765
|
|
|
share of annual demand per substation bus. The annual demand |
|
766
|
|
|
per cell is defined by DemandRegio/Peta5. The share is for both |
|
767
|
|
|
scenarios identical as the annual demand is linearly scaled. |
|
768
|
|
|
|
|
769
|
|
|
Parameters |
|
770
|
|
|
---------- |
|
771
|
|
|
scenario: str |
|
772
|
|
|
Scenario for which the share is calculated: "eGon2035" or "eGon100RE" |
|
773
|
|
|
sector: str |
|
774
|
|
|
Scenario for which the share is calculated: "electricity" or "heat" |
|
775
|
|
|
|
|
776
|
|
|
Returns |
|
777
|
|
|
------- |
|
778
|
|
|
df_census_share: pd.DataFrame |
|
779
|
|
|
""" |
|
780
|
|
|
if sector == "electricity": |
|
781
|
|
|
with db.session_scope() as session: |
|
782
|
|
|
cells_query = ( |
|
783
|
|
|
session.query( |
|
784
|
|
|
EgonDemandRegioZensusElectricity, |
|
785
|
|
|
MapZensusGridDistricts.bus_id, |
|
786
|
|
|
) |
|
787
|
|
|
.filter(EgonDemandRegioZensusElectricity.sector == "service") |
|
788
|
|
|
.filter(EgonDemandRegioZensusElectricity.scenario == scenario) |
|
789
|
|
|
.filter( |
|
790
|
|
|
EgonDemandRegioZensusElectricity.zensus_population_id |
|
791
|
|
|
== MapZensusGridDistricts.zensus_population_id |
|
792
|
|
|
) |
|
793
|
|
|
) |
|
794
|
|
|
|
|
795
|
|
|
elif sector == "heat": |
|
796
|
|
|
with db.session_scope() as session: |
|
797
|
|
|
cells_query = ( |
|
798
|
|
|
session.query(EgonPetaHeat, MapZensusGridDistricts.bus_id) |
|
799
|
|
|
.filter(EgonPetaHeat.sector == "service") |
|
800
|
|
|
.filter(EgonPetaHeat.scenario == scenario) |
|
801
|
|
|
.filter( |
|
802
|
|
|
EgonPetaHeat.zensus_population_id |
|
803
|
|
|
== MapZensusGridDistricts.zensus_population_id |
|
804
|
|
|
) |
|
805
|
|
|
) |
|
806
|
|
|
|
|
807
|
|
|
df_demand = pd.read_sql( |
|
808
|
|
|
cells_query.statement, |
|
|
|
|
|
|
809
|
|
|
cells_query.session.bind, |
|
810
|
|
|
index_col="zensus_population_id", |
|
811
|
|
|
) |
|
812
|
|
|
|
|
813
|
|
|
# get demand share of cell per bus |
|
814
|
|
|
df_census_share = df_demand["demand"] / df_demand.groupby("bus_id")[ |
|
815
|
|
|
"demand" |
|
816
|
|
|
].transform("sum") |
|
817
|
|
|
df_census_share = df_census_share.rename("cell_share") |
|
818
|
|
|
|
|
819
|
|
|
df_census_share = pd.concat( |
|
820
|
|
|
[ |
|
821
|
|
|
df_census_share, |
|
822
|
|
|
df_demand[["bus_id", "scenario"]], |
|
823
|
|
|
], |
|
824
|
|
|
axis=1, |
|
825
|
|
|
) |
|
826
|
|
|
|
|
827
|
|
|
df_census_share.reset_index(inplace=True) |
|
828
|
|
|
return df_census_share |
|
829
|
|
|
|
|
830
|
|
|
|
|
831
|
|
|
def calc_building_demand_profile_share( |
|
832
|
|
|
df_cts_buildings, scenario="eGon2035", sector="electricity" |
|
833
|
|
|
): |
|
834
|
|
|
""" |
|
835
|
|
|
Share of cts electricity demand profile per bus for every selected building |
|
836
|
|
|
is calculated. Building-amenity share is multiplied with census cell share |
|
837
|
|
|
to get the substation bus profile share for each building. The share is |
|
838
|
|
|
grouped and aggregated per building as some buildings exceed the shape of |
|
839
|
|
|
census cells and have amenities assigned from multiple cells. Building |
|
840
|
|
|
therefore get the amenity share of all census cells. |
|
841
|
|
|
|
|
842
|
|
|
Parameters |
|
843
|
|
|
---------- |
|
844
|
|
|
df_cts_buildings: gpd.GeoDataFrame |
|
845
|
|
|
Table of all buildings with cts demand assigned |
|
846
|
|
|
scenario: str |
|
847
|
|
|
Scenario for which the share is calculated. |
|
848
|
|
|
sector: str |
|
849
|
|
|
Sector for which the share is calculated. |
|
850
|
|
|
|
|
851
|
|
|
Returns |
|
852
|
|
|
------- |
|
853
|
|
|
df_building_share: pd.DataFrame |
|
854
|
|
|
Table of bus profile share per building |
|
855
|
|
|
|
|
856
|
|
|
""" |
|
857
|
|
|
|
|
858
|
|
|
def calc_building_amenity_share(df_cts_buildings): |
|
859
|
|
|
""" |
|
860
|
|
|
Calculate the building share by the number amenities per building |
|
861
|
|
|
within a census cell. Building ids can exist multiple time but with |
|
862
|
|
|
different zensus_population_ids. |
|
863
|
|
|
""" |
|
864
|
|
|
df_building_amenity_share = df_cts_buildings[ |
|
865
|
|
|
"n_amenities_inside" |
|
866
|
|
|
] / df_cts_buildings.groupby("zensus_population_id")[ |
|
867
|
|
|
"n_amenities_inside" |
|
868
|
|
|
].transform( |
|
869
|
|
|
"sum" |
|
870
|
|
|
) |
|
871
|
|
|
df_building_amenity_share = pd.concat( |
|
872
|
|
|
[ |
|
873
|
|
|
df_building_amenity_share.rename("building_amenity_share"), |
|
874
|
|
|
df_cts_buildings[["zensus_population_id", "id"]], |
|
875
|
|
|
], |
|
876
|
|
|
axis=1, |
|
877
|
|
|
) |
|
878
|
|
|
return df_building_amenity_share |
|
879
|
|
|
|
|
880
|
|
|
df_building_amenity_share = calc_building_amenity_share(df_cts_buildings) |
|
881
|
|
|
|
|
882
|
|
|
df_census_cell_share = calc_census_cell_share( |
|
883
|
|
|
scenario=scenario, sector=sector |
|
884
|
|
|
) |
|
885
|
|
|
|
|
886
|
|
|
df_demand_share = pd.merge( |
|
887
|
|
|
left=df_building_amenity_share, |
|
888
|
|
|
right=df_census_cell_share, |
|
889
|
|
|
left_on="zensus_population_id", |
|
890
|
|
|
right_on="zensus_population_id", |
|
891
|
|
|
) |
|
892
|
|
|
df_demand_share["profile_share"] = df_demand_share[ |
|
893
|
|
|
"building_amenity_share" |
|
894
|
|
|
].multiply(df_demand_share["cell_share"]) |
|
895
|
|
|
|
|
896
|
|
|
# TODO bus_id fix |
|
897
|
|
|
df_demand_share = df_demand_share[ |
|
898
|
|
|
["id", "bus_id", "scenario", "profile_share"] |
|
899
|
|
|
] |
|
900
|
|
|
|
|
901
|
|
|
# Group and aggregate per building for multi cell buildings |
|
902
|
|
|
df_demand_share = ( |
|
903
|
|
|
df_demand_share.groupby(["scenario", "id", "bus_id"]) |
|
904
|
|
|
.sum() |
|
905
|
|
|
.reset_index() |
|
906
|
|
|
) |
|
907
|
|
|
if df_demand_share.duplicated("id", keep=False).any(): |
|
908
|
|
|
print( |
|
909
|
|
|
df_demand_share.loc[df_demand_share.duplicated("id", keep=False)] |
|
910
|
|
|
) |
|
911
|
|
|
return df_demand_share |
|
912
|
|
|
|
|
913
|
|
|
|
|
914
|
|
|
def calc_cts_building_profiles( |
|
915
|
|
|
egon_building_ids, |
|
916
|
|
|
bus_ids, |
|
917
|
|
|
scenario, |
|
918
|
|
|
sector, |
|
919
|
|
|
): |
|
920
|
|
|
""" |
|
921
|
|
|
Calculate the cts demand profile for each building. The profile is |
|
922
|
|
|
calculated by the demand share of the building per substation bus. |
|
923
|
|
|
|
|
924
|
|
|
Parameters |
|
925
|
|
|
---------- |
|
926
|
|
|
egon_building_ids: list of int |
|
927
|
|
|
Ids of the building for which the profile is calculated. |
|
928
|
|
|
bus_ids: list of int |
|
929
|
|
|
Ids of the substation for which selected building profiles are |
|
930
|
|
|
calculated. |
|
931
|
|
|
scenario: str |
|
932
|
|
|
Scenario for which the share is calculated: "eGon2035" or "eGon100RE" |
|
933
|
|
|
sector: str |
|
934
|
|
|
Sector for which the share is calculated: "electricity" or "heat" |
|
935
|
|
|
|
|
936
|
|
|
Returns |
|
937
|
|
|
------- |
|
938
|
|
|
df_building_profiles: pd.DataFrame |
|
939
|
|
|
Table of demand profile per building |
|
940
|
|
|
""" |
|
941
|
|
|
if sector == "electricity": |
|
942
|
|
|
# Get cts building electricity demand share of selected buildings |
|
943
|
|
|
with db.session_scope() as session: |
|
944
|
|
|
cells_query = ( |
|
945
|
|
|
session.query( |
|
946
|
|
|
EgonCtsElectricityDemandBuildingShare, |
|
947
|
|
|
) |
|
948
|
|
|
.filter( |
|
949
|
|
|
EgonCtsElectricityDemandBuildingShare.scenario == scenario |
|
950
|
|
|
) |
|
951
|
|
|
.filter( |
|
952
|
|
|
EgonCtsElectricityDemandBuildingShare.building_id.in_( |
|
953
|
|
|
egon_building_ids |
|
954
|
|
|
) |
|
955
|
|
|
) |
|
956
|
|
|
) |
|
957
|
|
|
|
|
958
|
|
|
df_demand_share = pd.read_sql( |
|
959
|
|
|
cells_query.statement, cells_query.session.bind, index_col=None |
|
960
|
|
|
) |
|
961
|
|
|
|
|
962
|
|
|
# Get substation cts electricity load profiles of selected bus_ids |
|
963
|
|
|
with db.session_scope() as session: |
|
964
|
|
|
cells_query = ( |
|
965
|
|
|
session.query(EgonEtragoElectricityCts).filter( |
|
966
|
|
|
EgonEtragoElectricityCts.scn_name == scenario |
|
967
|
|
|
) |
|
968
|
|
|
).filter(EgonEtragoElectricityCts.bus_id.in_(bus_ids)) |
|
969
|
|
|
|
|
970
|
|
|
df_cts_profiles = pd.read_sql( |
|
971
|
|
|
cells_query.statement, |
|
972
|
|
|
cells_query.session.bind, |
|
973
|
|
|
) |
|
974
|
|
|
df_cts_profiles = pd.DataFrame.from_dict( |
|
975
|
|
|
df_cts_profiles.set_index("bus_id")["p_set"].to_dict(), |
|
976
|
|
|
orient="index", |
|
977
|
|
|
) |
|
978
|
|
|
# df_cts_profiles = calc_load_curves_cts(scenario) |
|
979
|
|
|
|
|
980
|
|
|
elif sector == "heat": |
|
981
|
|
|
# Get cts building heat demand share of selected buildings |
|
982
|
|
|
with db.session_scope() as session: |
|
983
|
|
|
cells_query = ( |
|
984
|
|
|
session.query( |
|
985
|
|
|
EgonCtsHeatDemandBuildingShare, |
|
986
|
|
|
) |
|
987
|
|
|
.filter(EgonCtsHeatDemandBuildingShare.scenario == scenario) |
|
988
|
|
|
.filter( |
|
989
|
|
|
EgonCtsHeatDemandBuildingShare.building_id.in_( |
|
990
|
|
|
egon_building_ids |
|
991
|
|
|
) |
|
992
|
|
|
) |
|
993
|
|
|
) |
|
994
|
|
|
|
|
995
|
|
|
df_demand_share = pd.read_sql( |
|
996
|
|
|
cells_query.statement, cells_query.session.bind, index_col=None |
|
997
|
|
|
) |
|
998
|
|
|
|
|
999
|
|
|
# Get substation cts heat load profiles of selected bus_ids |
|
1000
|
|
|
with db.session_scope() as session: |
|
1001
|
|
|
cells_query = ( |
|
1002
|
|
|
session.query(EgonEtragoHeatCts).filter( |
|
1003
|
|
|
EgonEtragoHeatCts.scn_name == scenario |
|
1004
|
|
|
) |
|
1005
|
|
|
).filter(EgonEtragoHeatCts.bus_id.in_(bus_ids)) |
|
1006
|
|
|
|
|
1007
|
|
|
df_cts_profiles = pd.read_sql( |
|
1008
|
|
|
cells_query.statement, |
|
1009
|
|
|
cells_query.session.bind, |
|
1010
|
|
|
) |
|
1011
|
|
|
df_cts_profiles = pd.DataFrame.from_dict( |
|
1012
|
|
|
df_cts_profiles.set_index("bus_id")["p_set"].to_dict(), |
|
1013
|
|
|
orient="index", |
|
1014
|
|
|
) |
|
1015
|
|
|
|
|
1016
|
|
|
# TODO remove later |
|
1017
|
|
|
df_demand_share.rename(columns={"id": "building_id"}, inplace=True) |
|
|
|
|
|
|
1018
|
|
|
|
|
1019
|
|
|
# get demand profile for all buildings for selected demand share |
|
1020
|
|
|
df_building_profiles = pd.DataFrame() |
|
1021
|
|
|
for bus_id, df in df_demand_share.groupby("bus_id"): |
|
1022
|
|
|
shares = df.set_index("building_id", drop=True)["profile_share"] |
|
1023
|
|
|
profile_ts = df_cts_profiles.loc[bus_id] |
|
|
|
|
|
|
1024
|
|
|
building_profiles = np.outer(profile_ts, shares) |
|
1025
|
|
|
building_profiles = pd.DataFrame( |
|
1026
|
|
|
building_profiles, index=profile_ts.index, columns=shares.index |
|
1027
|
|
|
) |
|
1028
|
|
|
df_building_profiles = pd.concat( |
|
1029
|
|
|
[df_building_profiles, building_profiles], axis=1 |
|
1030
|
|
|
) |
|
1031
|
|
|
|
|
1032
|
|
|
return df_building_profiles |
|
1033
|
|
|
|
|
1034
|
|
|
|
|
1035
|
|
|
def delete_synthetic_cts_buildings(): |
|
1036
|
|
|
""" |
|
1037
|
|
|
All synthetic cts buildings are deleted from the DB. This is necessary if |
|
1038
|
|
|
the task is run multiple times as the existing synthetic buildings |
|
1039
|
|
|
influence the results. |
|
1040
|
|
|
""" |
|
1041
|
|
|
# import db tables |
|
1042
|
|
|
from saio.openstreetmap import osm_buildings_synthetic |
|
1043
|
|
|
|
|
1044
|
|
|
# cells mit amenities |
|
1045
|
|
|
with db.session_scope() as session: |
|
1046
|
|
|
session.query(osm_buildings_synthetic).filter( |
|
1047
|
|
|
osm_buildings_synthetic.building == "cts" |
|
1048
|
|
|
).delete() |
|
1049
|
|
|
|
|
1050
|
|
|
|
|
1051
|
|
|
def remove_double_bus_id(df_cts_buildings): |
|
1052
|
|
|
"""This is an backup adhoc fix if there should still be a building which |
|
1053
|
|
|
is assigned to 2 substations. In this case one of the buildings is just |
|
1054
|
|
|
dropped. As this currently accounts for only one building with one amenity |
|
1055
|
|
|
the deviation is neglectable.""" |
|
1056
|
|
|
# assign bus_id via census cell of amenity |
|
1057
|
|
|
with db.session_scope() as session: |
|
1058
|
|
|
cells_query = session.query( |
|
1059
|
|
|
MapZensusGridDistricts.zensus_population_id, |
|
1060
|
|
|
MapZensusGridDistricts.bus_id, |
|
1061
|
|
|
) |
|
1062
|
|
|
|
|
1063
|
|
|
df_egon_map_zensus_buildings_buses = pd.read_sql( |
|
1064
|
|
|
cells_query.statement, |
|
1065
|
|
|
cells_query.session.bind, |
|
1066
|
|
|
index_col=None, |
|
1067
|
|
|
) |
|
1068
|
|
|
df_cts_buildings = pd.merge( |
|
1069
|
|
|
left=df_cts_buildings, |
|
1070
|
|
|
right=df_egon_map_zensus_buildings_buses, |
|
1071
|
|
|
on="zensus_population_id", |
|
1072
|
|
|
) |
|
1073
|
|
|
|
|
1074
|
|
|
substation_per_building = df_cts_buildings.groupby("id")[ |
|
1075
|
|
|
"bus_id" |
|
1076
|
|
|
].nunique() |
|
1077
|
|
|
building_id = substation_per_building.loc[ |
|
1078
|
|
|
substation_per_building > 1 |
|
1079
|
|
|
].index |
|
1080
|
|
|
df_duplicates = df_cts_buildings.loc[ |
|
1081
|
|
|
df_cts_buildings["id"].isin(building_id) |
|
1082
|
|
|
] |
|
1083
|
|
|
for unique_id in df_duplicates["id"].unique(): |
|
1084
|
|
|
drop_index = df_duplicates[df_duplicates["id"] == unique_id].index[0] |
|
1085
|
|
|
print( |
|
1086
|
|
|
f"Buildings {df_cts_buildings.loc[drop_index, 'id']}" |
|
1087
|
|
|
f" dropped because of double substation" |
|
1088
|
|
|
) |
|
1089
|
|
|
df_cts_buildings.drop(index=drop_index, inplace=True) |
|
1090
|
|
|
|
|
1091
|
|
|
df_cts_buildings.drop(columns="bus_id", inplace=True) |
|
1092
|
|
|
|
|
1093
|
|
|
return df_cts_buildings |
|
1094
|
|
|
|
|
1095
|
|
|
|
|
1096
|
|
|
def cts_buildings(): |
|
1097
|
|
|
""" |
|
1098
|
|
|
Assigns CTS demand to buildings and calculates the respective demand |
|
1099
|
|
|
profiles. The demand profile per substation are disaggregated per |
|
1100
|
|
|
annual demand share of each census cell and by the number of amenities |
|
1101
|
|
|
per building within the cell. If no building data is available, |
|
1102
|
|
|
synthetic buildings are generated around the amenities. If no amenities |
|
1103
|
|
|
but cts demand is available, buildings are randomly selected. If no |
|
1104
|
|
|
building nor amenity is available, random synthetic buildings are |
|
1105
|
|
|
generated. The demand share is stored in the database. |
|
1106
|
|
|
|
|
1107
|
|
|
Note: |
|
1108
|
|
|
----- |
|
1109
|
|
|
Cells with CTS demand, amenities and buildings do not change within |
|
1110
|
|
|
the scenarios, only the demand itself. Therefore scenario eGon2035 |
|
1111
|
|
|
can be used universally to determine the cts buildings but not for |
|
1112
|
|
|
he demand share. |
|
1113
|
|
|
""" |
|
1114
|
|
|
|
|
1115
|
|
|
log.info("Start logging!") |
|
1116
|
|
|
# Buildings with amenities |
|
1117
|
|
|
df_buildings_with_amenities, df_lost_cells = buildings_with_amenities() |
|
1118
|
|
|
log.info("Buildings with amenities selected!") |
|
1119
|
|
|
|
|
1120
|
|
|
# Median number of amenities per cell |
|
1121
|
|
|
median_n_amenities = int( |
|
1122
|
|
|
df_buildings_with_amenities.groupby("zensus_population_id")[ |
|
1123
|
|
|
"n_amenities_inside" |
|
1124
|
|
|
] |
|
1125
|
|
|
.sum() |
|
1126
|
|
|
.median() |
|
1127
|
|
|
) |
|
1128
|
|
|
log.info(f"Median amenity value: {median_n_amenities}") |
|
1129
|
|
|
|
|
1130
|
|
|
# Remove synthetic CTS buildings if existing |
|
1131
|
|
|
delete_synthetic_cts_buildings() |
|
1132
|
|
|
log.info("Old synthetic cts buildings deleted!") |
|
1133
|
|
|
|
|
1134
|
|
|
# Amenities not assigned to buildings |
|
1135
|
|
|
df_amenities_without_buildings = amenities_without_buildings() |
|
1136
|
|
|
log.info("Amenities without buildlings selected!") |
|
1137
|
|
|
|
|
1138
|
|
|
# Append lost cells due to duplicated ids, to cover all demand cells |
|
1139
|
|
|
if not df_lost_cells.empty: |
|
1140
|
|
|
|
|
1141
|
|
|
df_lost_cells["amenities"] = median_n_amenities |
|
1142
|
|
|
# create row for every amenity |
|
1143
|
|
|
df_lost_cells["amenities"] = ( |
|
1144
|
|
|
df_lost_cells["amenities"].astype(int).apply(range) |
|
1145
|
|
|
) |
|
1146
|
|
|
df_lost_cells = df_lost_cells.explode("amenities") |
|
1147
|
|
|
df_lost_cells.drop(columns="amenities", inplace=True) |
|
1148
|
|
|
df_amenities_without_buildings = df_amenities_without_buildings.append( |
|
1149
|
|
|
df_lost_cells, ignore_index=True |
|
1150
|
|
|
) |
|
1151
|
|
|
log.info("Lost cells due to substation intersection appended!") |
|
1152
|
|
|
|
|
1153
|
|
|
# One building per amenity |
|
1154
|
|
|
df_amenities_without_buildings["n_amenities_inside"] = 1 |
|
1155
|
|
|
# Create synthetic buildings for amenites without buildings |
|
1156
|
|
|
df_synthetic_buildings_with_amenities = create_synthetic_buildings( |
|
1157
|
|
|
df_amenities_without_buildings, points="geom_amenity" |
|
1158
|
|
|
) |
|
1159
|
|
|
log.info("Synthetic buildings created!") |
|
1160
|
|
|
|
|
1161
|
|
|
# TODO write to DB and remove renaming |
|
1162
|
|
|
write_table_to_postgis( |
|
1163
|
|
|
df_synthetic_buildings_with_amenities.rename( |
|
1164
|
|
|
columns={ |
|
1165
|
|
|
"zensus_population_id": "cell_id", |
|
1166
|
|
|
"egon_building_id": "id", |
|
1167
|
|
|
} |
|
1168
|
|
|
), |
|
1169
|
|
|
OsmBuildingsSynthetic, |
|
1170
|
|
|
engine=engine, |
|
1171
|
|
|
drop=False, |
|
1172
|
|
|
) |
|
1173
|
|
|
log.info("Synthetic buildings exported to DB!") |
|
1174
|
|
|
|
|
1175
|
|
|
# Cells without amenities but CTS demand and buildings |
|
1176
|
|
|
df_buildings_without_amenities = buildings_without_amenities() |
|
1177
|
|
|
log.info("Buildings without amenities in demand cells identified!") |
|
1178
|
|
|
|
|
1179
|
|
|
# Backup Bugfix for duplicated buildings which occure in SQL-Querry |
|
1180
|
|
|
# drop building ids which have already been used |
|
1181
|
|
|
mask = df_buildings_without_amenities.loc[ |
|
1182
|
|
|
df_buildings_without_amenities["id"].isin( |
|
1183
|
|
|
df_buildings_with_amenities["id"] |
|
1184
|
|
|
) |
|
1185
|
|
|
].index |
|
1186
|
|
|
df_buildings_without_amenities = df_buildings_without_amenities.drop( |
|
1187
|
|
|
index=mask |
|
1188
|
|
|
).reset_index(drop=True) |
|
1189
|
|
|
log.info(f"{len(mask)} duplicated ids removed!") |
|
1190
|
|
|
|
|
1191
|
|
|
# select median n buildings per cell |
|
1192
|
|
|
df_buildings_without_amenities = select_cts_buildings( |
|
1193
|
|
|
df_buildings_without_amenities, max_n=median_n_amenities |
|
1194
|
|
|
) |
|
1195
|
|
|
df_buildings_without_amenities["n_amenities_inside"] = 1 |
|
1196
|
|
|
log.info(f"{median_n_amenities} buildings per cell selected!") |
|
1197
|
|
|
|
|
1198
|
|
|
# Create synthetic amenities and buildings in cells with only CTS demand |
|
1199
|
|
|
df_cells_with_cts_demand_only = cells_with_cts_demand_only( |
|
1200
|
|
|
df_buildings_without_amenities |
|
1201
|
|
|
) |
|
1202
|
|
|
log.info("Cells with only demand identified!") |
|
1203
|
|
|
|
|
1204
|
|
|
# Median n Amenities per cell |
|
1205
|
|
|
df_cells_with_cts_demand_only["amenities"] = median_n_amenities |
|
1206
|
|
|
# create row for every amenity |
|
1207
|
|
|
df_cells_with_cts_demand_only["amenities"] = ( |
|
1208
|
|
|
df_cells_with_cts_demand_only["amenities"].astype(int).apply(range) |
|
1209
|
|
|
) |
|
1210
|
|
|
df_cells_with_cts_demand_only = df_cells_with_cts_demand_only.explode( |
|
1211
|
|
|
"amenities" |
|
1212
|
|
|
) |
|
1213
|
|
|
df_cells_with_cts_demand_only.drop(columns="amenities", inplace=True) |
|
1214
|
|
|
|
|
1215
|
|
|
# Only 1 Amenity per Building |
|
1216
|
|
|
df_cells_with_cts_demand_only["n_amenities_inside"] = 1 |
|
1217
|
|
|
df_cells_with_cts_demand_only = place_buildings_with_amenities( |
|
1218
|
|
|
df_cells_with_cts_demand_only, amenities=1 |
|
1219
|
|
|
) |
|
1220
|
|
|
df_synthetic_buildings_without_amenities = create_synthetic_buildings( |
|
1221
|
|
|
df_cells_with_cts_demand_only, points="geom_point" |
|
1222
|
|
|
) |
|
1223
|
|
|
log.info(f"{median_n_amenities} synthetic buildings per cell created") |
|
1224
|
|
|
|
|
1225
|
|
|
# TODO remove (backup) renaming after #871 |
|
1226
|
|
|
write_table_to_postgis( |
|
1227
|
|
|
df_synthetic_buildings_without_amenities.rename( |
|
1228
|
|
|
columns={ |
|
1229
|
|
|
"zensus_population_id": "cell_id", |
|
1230
|
|
|
"egon_building_id": "id", |
|
1231
|
|
|
} |
|
1232
|
|
|
), |
|
1233
|
|
|
OsmBuildingsSynthetic, |
|
1234
|
|
|
engine=engine, |
|
1235
|
|
|
drop=False, |
|
1236
|
|
|
) |
|
1237
|
|
|
log.info("Synthetic buildings exported to DB") |
|
1238
|
|
|
|
|
1239
|
|
|
# Concat all buildings |
|
1240
|
|
|
columns = [ |
|
1241
|
|
|
"zensus_population_id", |
|
1242
|
|
|
"id", |
|
1243
|
|
|
"geom_building", |
|
1244
|
|
|
"n_amenities_inside", |
|
1245
|
|
|
"source", |
|
1246
|
|
|
] |
|
1247
|
|
|
|
|
1248
|
|
|
df_buildings_with_amenities["source"] = "bwa" |
|
1249
|
|
|
df_synthetic_buildings_with_amenities["source"] = "sbwa" |
|
1250
|
|
|
df_buildings_without_amenities["source"] = "bwoa" |
|
1251
|
|
|
df_synthetic_buildings_without_amenities["source"] = "sbwoa" |
|
1252
|
|
|
|
|
1253
|
|
|
df_cts_buildings = pd.concat( |
|
1254
|
|
|
[ |
|
1255
|
|
|
df_buildings_with_amenities[columns], |
|
1256
|
|
|
df_synthetic_buildings_with_amenities[columns], |
|
1257
|
|
|
df_buildings_without_amenities[columns], |
|
1258
|
|
|
df_synthetic_buildings_without_amenities[columns], |
|
1259
|
|
|
], |
|
1260
|
|
|
axis=0, |
|
1261
|
|
|
ignore_index=True, |
|
1262
|
|
|
) |
|
1263
|
|
|
df_cts_buildings = remove_double_bus_id(df_cts_buildings) |
|
1264
|
|
|
log.info("Double bus_id checked") |
|
1265
|
|
|
|
|
1266
|
|
|
# TODO maybe remove after #772 |
|
1267
|
|
|
df_cts_buildings["id"] = df_cts_buildings["id"].astype(int) |
|
1268
|
|
|
|
|
1269
|
|
|
# Write table to db for debugging |
|
1270
|
|
|
# TODO remove later? Check if cts-builings are querried in other functions |
|
1271
|
|
|
df_cts_buildings = gpd.GeoDataFrame( |
|
1272
|
|
|
df_cts_buildings, geometry="geom_building", crs=3035 |
|
1273
|
|
|
) |
|
1274
|
|
|
df_cts_buildings = df_cts_buildings.reset_index().rename( |
|
1275
|
|
|
columns={"index": "serial"} |
|
1276
|
|
|
) |
|
1277
|
|
|
write_table_to_postgis( |
|
1278
|
|
|
df_cts_buildings, |
|
1279
|
|
|
CtsBuildings, |
|
1280
|
|
|
engine=engine, |
|
1281
|
|
|
drop=True, |
|
1282
|
|
|
) |
|
1283
|
|
|
log.info("CTS buildings exported to DB!") |
|
1284
|
|
|
|
|
1285
|
|
|
|
|
1286
|
|
View Code Duplication |
def cts_electricity(): |
|
|
|
|
|
|
1287
|
|
|
""" |
|
1288
|
|
|
Calculate cts electricity demand share of hvmv substation profile |
|
1289
|
|
|
for buildings. |
|
1290
|
|
|
""" |
|
1291
|
|
|
log.info("Start logging!") |
|
1292
|
|
|
with db.session_scope() as session: |
|
1293
|
|
|
cells_query = session.query(CtsBuildings) |
|
1294
|
|
|
|
|
1295
|
|
|
df_cts_buildings = pd.read_sql( |
|
1296
|
|
|
cells_query.statement, cells_query.session.bind, index_col=None |
|
1297
|
|
|
) |
|
1298
|
|
|
log.info("CTS buildings from DB imported!") |
|
1299
|
|
|
df_demand_share_2035 = calc_building_demand_profile_share( |
|
1300
|
|
|
df_cts_buildings, scenario="eGon2035", sector="electricity" |
|
1301
|
|
|
) |
|
1302
|
|
|
log.info("Profile share for egon2035 calculated!") |
|
1303
|
|
|
|
|
1304
|
|
|
df_demand_share_100RE = calc_building_demand_profile_share( |
|
1305
|
|
|
df_cts_buildings, scenario="eGon100RE", sector="electricity" |
|
1306
|
|
|
) |
|
1307
|
|
|
log.info("Profile share for egon100RE calculated!") |
|
1308
|
|
|
|
|
1309
|
|
|
df_demand_share = pd.concat( |
|
1310
|
|
|
[df_demand_share_2035, df_demand_share_100RE], |
|
1311
|
|
|
axis=0, |
|
1312
|
|
|
ignore_index=True, |
|
1313
|
|
|
) |
|
1314
|
|
|
df_demand_share.rename(columns={"id": "building_id"}, inplace=True) |
|
1315
|
|
|
|
|
1316
|
|
|
write_table_to_postgres( |
|
1317
|
|
|
df_demand_share, |
|
1318
|
|
|
EgonCtsElectricityDemandBuildingShare, |
|
1319
|
|
|
engine=engine, |
|
1320
|
|
|
drop=True, |
|
1321
|
|
|
) |
|
1322
|
|
|
log.info("Profile share exported to DB!") |
|
1323
|
|
|
|
|
1324
|
|
|
|
|
1325
|
|
View Code Duplication |
def cts_heat(): |
|
|
|
|
|
|
1326
|
|
|
""" |
|
1327
|
|
|
Calculate cts electricity demand share of hvmv substation profile |
|
1328
|
|
|
for buildings. |
|
1329
|
|
|
""" |
|
1330
|
|
|
log.info("Start logging!") |
|
1331
|
|
|
with db.session_scope() as session: |
|
1332
|
|
|
cells_query = session.query(CtsBuildings) |
|
1333
|
|
|
|
|
1334
|
|
|
df_cts_buildings = pd.read_sql( |
|
1335
|
|
|
cells_query.statement, cells_query.session.bind, index_col=None |
|
1336
|
|
|
) |
|
1337
|
|
|
log.info("CTS buildings from DB imported!") |
|
1338
|
|
|
|
|
1339
|
|
|
df_demand_share_2035 = calc_building_demand_profile_share( |
|
1340
|
|
|
df_cts_buildings, scenario="eGon2035", sector="heat" |
|
1341
|
|
|
) |
|
1342
|
|
|
log.info("Profile share for egon2035 calculated!") |
|
1343
|
|
|
df_demand_share_100RE = calc_building_demand_profile_share( |
|
1344
|
|
|
df_cts_buildings, scenario="eGon100RE", sector="heat" |
|
1345
|
|
|
) |
|
1346
|
|
|
log.info("Profile share for egon100RE calculated!") |
|
1347
|
|
|
df_demand_share = pd.concat( |
|
1348
|
|
|
[df_demand_share_2035, df_demand_share_100RE], |
|
1349
|
|
|
axis=0, |
|
1350
|
|
|
ignore_index=True, |
|
1351
|
|
|
) |
|
1352
|
|
|
|
|
1353
|
|
|
write_table_to_postgres( |
|
1354
|
|
|
df_demand_share, |
|
1355
|
|
|
EgonCtsHeatDemandBuildingShare, |
|
1356
|
|
|
engine=engine, |
|
1357
|
|
|
drop=True, |
|
1358
|
|
|
) |
|
1359
|
|
|
log.info("Profile share exported to DB!") |
|
1360
|
|
|
|
|
1361
|
|
|
|
|
1362
|
|
View Code Duplication |
def get_cts_electricity_peak_load(): |
|
|
|
|
|
|
1363
|
|
|
""" |
|
1364
|
|
|
Get electricity peak load of all CTS buildings for both scenarios and |
|
1365
|
|
|
store in DB. |
|
1366
|
|
|
""" |
|
1367
|
|
|
log.info("Start logging!") |
|
1368
|
|
|
|
|
1369
|
|
|
BuildingElectricityPeakLoads.__table__.create(bind=engine, checkfirst=True) |
|
1370
|
|
|
|
|
1371
|
|
|
# Delete rows with cts demand |
|
1372
|
|
|
with db.session_scope() as session: |
|
1373
|
|
|
session.query(BuildingElectricityPeakLoads).filter( |
|
1374
|
|
|
BuildingElectricityPeakLoads.sector == "cts" |
|
1375
|
|
|
).delete() |
|
1376
|
|
|
log.info("Cts electricity peak load removed from DB!") |
|
1377
|
|
|
|
|
1378
|
|
|
for scenario in ["eGon2035", "eGon100RE"]: |
|
1379
|
|
|
|
|
1380
|
|
|
with db.session_scope() as session: |
|
1381
|
|
|
cells_query = session.query( |
|
1382
|
|
|
EgonCtsElectricityDemandBuildingShare |
|
1383
|
|
|
).filter( |
|
1384
|
|
|
EgonCtsElectricityDemandBuildingShare.scenario == scenario |
|
1385
|
|
|
) |
|
1386
|
|
|
|
|
1387
|
|
|
df_demand_share = pd.read_sql( |
|
1388
|
|
|
cells_query.statement, cells_query.session.bind, index_col=None |
|
1389
|
|
|
) |
|
1390
|
|
|
|
|
1391
|
|
|
with db.session_scope() as session: |
|
1392
|
|
|
cells_query = session.query(EgonEtragoElectricityCts).filter( |
|
1393
|
|
|
EgonEtragoElectricityCts.scn_name == scenario |
|
1394
|
|
|
) |
|
1395
|
|
|
|
|
1396
|
|
|
df_cts_profiles = pd.read_sql( |
|
1397
|
|
|
cells_query.statement, |
|
1398
|
|
|
cells_query.session.bind, |
|
1399
|
|
|
) |
|
1400
|
|
|
df_cts_profiles = pd.DataFrame.from_dict( |
|
1401
|
|
|
df_cts_profiles.set_index("bus_id")["p_set"].to_dict(), |
|
1402
|
|
|
orient="columns", |
|
1403
|
|
|
) |
|
1404
|
|
|
|
|
1405
|
|
|
df_peak_load = pd.merge( |
|
1406
|
|
|
left=df_cts_profiles.max().astype(float).rename("max"), |
|
1407
|
|
|
right=df_demand_share, |
|
1408
|
|
|
left_index=True, |
|
1409
|
|
|
right_on="bus_id", |
|
1410
|
|
|
) |
|
1411
|
|
|
|
|
1412
|
|
|
# Convert unit from MWh to W |
|
1413
|
|
|
df_peak_load["max"] = df_peak_load["max"] * 1e6 |
|
1414
|
|
|
df_peak_load["peak_load_in_w"] = ( |
|
1415
|
|
|
df_peak_load["max"] * df_peak_load["profile_share"] |
|
1416
|
|
|
) |
|
1417
|
|
|
log.info(f"Peak load for {scenario} determined!") |
|
1418
|
|
|
|
|
1419
|
|
|
# TODO remove later |
|
1420
|
|
|
df_peak_load.rename(columns={"id": "building_id"}, inplace=True) |
|
1421
|
|
|
df_peak_load["sector"] = "cts" |
|
1422
|
|
|
|
|
1423
|
|
|
# # Write peak loads into db |
|
1424
|
|
|
write_table_to_postgres( |
|
1425
|
|
|
df_peak_load, |
|
1426
|
|
|
BuildingElectricityPeakLoads, |
|
1427
|
|
|
engine=engine, |
|
1428
|
|
|
drop=False, |
|
1429
|
|
|
index=False, |
|
1430
|
|
|
if_exists="append", |
|
1431
|
|
|
) |
|
1432
|
|
|
|
|
1433
|
|
|
log.info(f"Peak load for {scenario} exported to DB!") |
|
1434
|
|
|
|
|
1435
|
|
|
|
|
1436
|
|
View Code Duplication |
def get_cts_heat_peak_load(): |
|
|
|
|
|
|
1437
|
|
|
""" |
|
1438
|
|
|
Get heat peak load of all CTS buildings for both scenarios and store in DB. |
|
1439
|
|
|
""" |
|
1440
|
|
|
log.info("Start logging!") |
|
1441
|
|
|
|
|
1442
|
|
|
BuildingHeatPeakLoads.__table__.create(bind=engine, checkfirst=True) |
|
1443
|
|
|
|
|
1444
|
|
|
# Delete rows with cts demand |
|
1445
|
|
|
with db.session_scope() as session: |
|
1446
|
|
|
session.query(BuildingHeatPeakLoads).filter( |
|
1447
|
|
|
BuildingHeatPeakLoads.sector == "cts" |
|
1448
|
|
|
).delete() |
|
1449
|
|
|
log.info("Cts heat peak load removed from DB!") |
|
1450
|
|
|
|
|
1451
|
|
|
for scenario in ["eGon2035", "eGon100RE"]: |
|
1452
|
|
|
|
|
1453
|
|
|
with db.session_scope() as session: |
|
1454
|
|
|
cells_query = session.query( |
|
1455
|
|
|
EgonCtsElectricityDemandBuildingShare |
|
1456
|
|
|
).filter( |
|
1457
|
|
|
EgonCtsElectricityDemandBuildingShare.scenario == scenario |
|
1458
|
|
|
) |
|
1459
|
|
|
|
|
1460
|
|
|
df_demand_share = pd.read_sql( |
|
1461
|
|
|
cells_query.statement, cells_query.session.bind, index_col=None |
|
1462
|
|
|
) |
|
1463
|
|
|
log.info(f"Retrieved demand share for scenario: {scenario}") |
|
1464
|
|
|
|
|
1465
|
|
|
with db.session_scope() as session: |
|
1466
|
|
|
cells_query = session.query(EgonEtragoHeatCts).filter( |
|
1467
|
|
|
EgonEtragoHeatCts.scn_name == scenario |
|
1468
|
|
|
) |
|
1469
|
|
|
|
|
1470
|
|
|
df_cts_profiles = pd.read_sql( |
|
1471
|
|
|
cells_query.statement, |
|
1472
|
|
|
cells_query.session.bind, |
|
1473
|
|
|
) |
|
1474
|
|
|
log.info(f"Retrieved substation profiles for scenario: {scenario}") |
|
1475
|
|
|
|
|
1476
|
|
|
df_cts_profiles = pd.DataFrame.from_dict( |
|
1477
|
|
|
df_cts_profiles.set_index("bus_id")["p_set"].to_dict(), |
|
1478
|
|
|
orient="columns", |
|
1479
|
|
|
) |
|
1480
|
|
|
|
|
1481
|
|
|
df_peak_load = pd.merge( |
|
1482
|
|
|
left=df_cts_profiles.max().astype(float).rename("max"), |
|
1483
|
|
|
right=df_demand_share, |
|
1484
|
|
|
left_index=True, |
|
1485
|
|
|
right_on="bus_id", |
|
1486
|
|
|
) |
|
1487
|
|
|
|
|
1488
|
|
|
# Convert unit from MWh to W |
|
1489
|
|
|
df_peak_load["max"] = df_peak_load["max"] * 1e6 |
|
1490
|
|
|
df_peak_load["peak_load_in_w"] = ( |
|
1491
|
|
|
df_peak_load["max"] * df_peak_load["profile_share"] |
|
1492
|
|
|
) |
|
1493
|
|
|
log.info(f"Peak load for {scenario} determined!") |
|
1494
|
|
|
|
|
1495
|
|
|
# TODO remove later |
|
1496
|
|
|
df_peak_load.rename(columns={"id": "building_id"}, inplace=True) |
|
1497
|
|
|
df_peak_load["sector"] = "cts" |
|
1498
|
|
|
|
|
1499
|
|
|
# # Write peak loads into db |
|
1500
|
|
|
write_table_to_postgres( |
|
1501
|
|
|
df_peak_load, |
|
1502
|
|
|
BuildingHeatPeakLoads, |
|
1503
|
|
|
engine=engine, |
|
1504
|
|
|
drop=False, |
|
1505
|
|
|
index=False, |
|
1506
|
|
|
if_exists="append", |
|
1507
|
|
|
) |
|
1508
|
|
|
|
|
1509
|
|
|
log.info(f"Peak load for {scenario} exported to DB!") |
|
1510
|
|
|
|