| Conditions | 32 |
| Total Lines | 699 |
| Code Lines | 481 |
| Lines | 0 |
| Ratio | 0 % |
| Changes | 0 | ||
Small methods make your code easier to understand, in particular if combined with a good name. Besides, if your method is small, finding a good name is usually much easier.
For example, if you find yourself adding comments to a method's body, this is usually a good sign to extract the commented part to a new method, and use the comment as a starting point when coming up with a good name for this new method.
Commonly applied refactorings include:
If many parameters/temporary variables are present:
Complex classes like data.datasets.pypsaeursec.neighbor_reduction() 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 | """The central module containing all code dealing with importing data from |
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| 266 | def neighbor_reduction(): |
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| 267 | |||
| 268 | network = read_network() |
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| 269 | |||
| 270 | wanted_countries = [ |
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| 271 | "DE", |
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| 272 | "AT", |
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| 273 | "CH", |
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| 274 | "CZ", |
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| 275 | "PL", |
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| 276 | "SE", |
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| 277 | "NO", |
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| 278 | "DK", |
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| 279 | "GB", |
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| 280 | "NL", |
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| 281 | "BE", |
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| 282 | "FR", |
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| 283 | "LU", |
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| 284 | ] |
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| 285 | foreign_buses = network.buses[ |
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| 286 | ~network.buses.index.str.contains("|".join(wanted_countries)) |
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| 287 | ] |
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| 288 | network.buses = network.buses.drop( |
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| 289 | network.buses.loc[foreign_buses.index].index |
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| 290 | ) |
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| 291 | |||
| 292 | # drop foreign lines and links from the 2nd row |
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| 293 | |||
| 294 | network.lines = network.lines.drop( |
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| 295 | network.lines[ |
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| 296 | (network.lines["bus0"].isin(network.buses.index) == False) |
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| 297 | & (network.lines["bus1"].isin(network.buses.index) == False) |
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| 298 | ].index |
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| 299 | ) |
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| 300 | |||
| 301 | # select all lines which have at bus1 the bus which is kept |
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| 302 | lines_cb_1 = network.lines[ |
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| 303 | (network.lines["bus0"].isin(network.buses.index) == False) |
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| 304 | ] |
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| 305 | |||
| 306 | # create a load at bus1 with the line's hourly loading |
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| 307 | for i, k in zip(lines_cb_1.bus1.values, lines_cb_1.index): |
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| 308 | network.add( |
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| 309 | "Load", |
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| 310 | "slack_fix " + i + " " + k, |
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| 311 | bus=i, |
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| 312 | p_set=network.lines_t.p1[k], |
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| 313 | ) |
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| 314 | network.loads.carrier.loc[ |
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| 315 | "slack_fix " + i + " " + k |
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| 316 | ] = lines_cb_1.carrier[k] |
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| 317 | |||
| 318 | # select all lines which have at bus0 the bus which is kept |
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| 319 | lines_cb_0 = network.lines[ |
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| 320 | (network.lines["bus1"].isin(network.buses.index) == False) |
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| 321 | ] |
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| 322 | |||
| 323 | # create a load at bus0 with the line's hourly loading |
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| 324 | for i, k in zip(lines_cb_0.bus0.values, lines_cb_0.index): |
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| 325 | network.add( |
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| 326 | "Load", |
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| 327 | "slack_fix " + i + " " + k, |
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| 328 | bus=i, |
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| 329 | p_set=network.lines_t.p0[k], |
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| 330 | ) |
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| 331 | network.loads.carrier.loc[ |
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| 332 | "slack_fix " + i + " " + k |
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| 333 | ] = lines_cb_0.carrier[k] |
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| 334 | |||
| 335 | # do the same for links |
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| 336 | |||
| 337 | network.links = network.links.drop( |
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| 338 | network.links[ |
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| 339 | (network.links["bus0"].isin(network.buses.index) == False) |
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| 340 | & (network.links["bus1"].isin(network.buses.index) == False) |
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| 341 | ].index |
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| 342 | ) |
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| 343 | |||
| 344 | # select all links which have at bus1 the bus which is kept |
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| 345 | links_cb_1 = network.links[ |
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| 346 | (network.links["bus0"].isin(network.buses.index) == False) |
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| 347 | ] |
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| 348 | |||
| 349 | # create a load at bus1 with the link's hourly loading |
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| 350 | for i, k in zip(links_cb_1.bus1.values, links_cb_1.index): |
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| 351 | network.add( |
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| 352 | "Load", |
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| 353 | "slack_fix_links " + i + " " + k, |
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| 354 | bus=i, |
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| 355 | p_set=network.links_t.p1[k], |
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| 356 | ) |
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| 357 | network.loads.carrier.loc[ |
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| 358 | "slack_fix_links " + i + " " + k |
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| 359 | ] = links_cb_1.carrier[k] |
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| 360 | |||
| 361 | # select all links which have at bus0 the bus which is kept |
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| 362 | links_cb_0 = network.links[ |
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| 363 | (network.links["bus1"].isin(network.buses.index) == False) |
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| 364 | ] |
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| 365 | |||
| 366 | # create a load at bus0 with the link's hourly loading |
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| 367 | for i, k in zip(links_cb_0.bus0.values, links_cb_0.index): |
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| 368 | network.add( |
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| 369 | "Load", |
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| 370 | "slack_fix_links " + i + " " + k, |
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| 371 | bus=i, |
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| 372 | p_set=network.links_t.p0[k], |
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| 373 | ) |
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| 374 | network.loads.carrier.loc[ |
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| 375 | "slack_fix_links " + i + " " + k |
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| 376 | ] = links_cb_0.carrier[k] |
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| 377 | |||
| 378 | # drop remaining foreign components |
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| 379 | |||
| 380 | network.lines = network.lines.drop( |
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| 381 | network.lines[ |
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| 382 | (network.lines["bus0"].isin(network.buses.index) == False) |
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| 383 | | (network.lines["bus1"].isin(network.buses.index) == False) |
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| 384 | ].index |
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| 385 | ) |
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| 386 | |||
| 387 | network.links = network.links.drop( |
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| 388 | network.links[ |
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| 389 | (network.links["bus0"].isin(network.buses.index) == False) |
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| 390 | | (network.links["bus1"].isin(network.buses.index) == False) |
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| 391 | ].index |
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| 392 | ) |
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| 393 | |||
| 394 | network.transformers = network.transformers.drop( |
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| 395 | network.transformers[ |
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| 396 | (network.transformers["bus0"].isin(network.buses.index) == False) |
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| 397 | | (network.transformers["bus1"].isin(network.buses.index) == False) |
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| 398 | ].index |
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| 399 | ) |
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| 400 | network.generators = network.generators.drop( |
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| 401 | network.generators[ |
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| 402 | (network.generators["bus"].isin(network.buses.index) == False) |
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| 403 | ].index |
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| 404 | ) |
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| 405 | |||
| 406 | network.loads = network.loads.drop( |
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| 407 | network.loads[ |
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| 408 | (network.loads["bus"].isin(network.buses.index) == False) |
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| 409 | ].index |
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| 410 | ) |
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| 411 | |||
| 412 | network.storage_units = network.storage_units.drop( |
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| 413 | network.storage_units[ |
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| 414 | (network.storage_units["bus"].isin(network.buses.index) == False) |
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| 415 | ].index |
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| 416 | ) |
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| 417 | |||
| 418 | components = [ |
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| 419 | "loads", |
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| 420 | "generators", |
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| 421 | "lines", |
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| 422 | "buses", |
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| 423 | "transformers", |
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| 424 | "links", |
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| 425 | ] |
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| 426 | for g in components: # loads_t |
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| 427 | h = g + "_t" |
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| 428 | nw = getattr(network, h) # network.loads_t |
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| 429 | for i in nw.keys(): # network.loads_t.p |
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| 430 | cols = [ |
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| 431 | j |
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| 432 | for j in getattr(nw, i).columns |
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| 433 | if j not in getattr(network, g).index |
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| 434 | ] |
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| 435 | for k in cols: |
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| 436 | del getattr(nw, i)[k] |
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| 437 | |||
| 438 | # writing components of neighboring countries to etrago tables |
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| 439 | |||
| 440 | # Set country tag for all buses |
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| 441 | network.buses.country = network.buses.index.str[:2] |
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| 442 | neighbors = network.buses[network.buses.country != "DE"] |
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| 443 | |||
| 444 | neighbors["new_index"] = ( |
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| 445 | db.next_etrago_id("bus") + neighbors.reset_index().index |
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| 446 | ) |
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| 447 | |||
| 448 | # lines, the foreign crossborder lines |
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| 449 | # (without crossborder lines to Germany!) |
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| 450 | |||
| 451 | neighbor_lines = network.lines[ |
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| 452 | network.lines.bus0.isin(neighbors.index) |
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| 453 | & network.lines.bus1.isin(neighbors.index) |
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| 454 | ] |
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| 455 | if not network.lines_t["s_max_pu"].empty: |
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| 456 | neighbor_lines_t = network.lines_t["s_max_pu"][neighbor_lines.index] |
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| 457 | |||
| 458 | neighbor_lines.reset_index(inplace=True) |
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| 459 | neighbor_lines.bus0 = ( |
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| 460 | neighbors.loc[neighbor_lines.bus0, "new_index"].reset_index().new_index |
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| 461 | ) |
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| 462 | neighbor_lines.bus1 = ( |
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| 463 | neighbors.loc[neighbor_lines.bus1, "new_index"].reset_index().new_index |
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| 464 | ) |
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| 465 | neighbor_lines.index += db.next_etrago_id("line") |
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| 466 | |||
| 467 | if not network.lines_t["s_max_pu"].empty: |
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| 468 | for i in neighbor_lines_t.columns: |
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|
|
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| 469 | new_index = neighbor_lines[neighbor_lines["name"] == i].index |
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| 470 | neighbor_lines_t.rename(columns={i: new_index[0]}, inplace=True) |
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| 471 | |||
| 472 | # links |
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| 473 | neighbor_links = network.links[ |
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| 474 | network.links.bus0.isin(neighbors.index) |
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| 475 | & network.links.bus1.isin(neighbors.index) |
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| 476 | ] |
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| 477 | |||
| 478 | neighbor_links.reset_index(inplace=True) |
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| 479 | neighbor_links.bus0 = ( |
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| 480 | neighbors.loc[neighbor_links.bus0, "new_index"].reset_index().new_index |
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| 481 | ) |
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| 482 | neighbor_links.bus1 = ( |
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| 483 | neighbors.loc[neighbor_links.bus1, "new_index"].reset_index().new_index |
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| 484 | ) |
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| 485 | neighbor_links.index += db.next_etrago_id("link") |
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| 486 | |||
| 487 | # generators |
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| 488 | neighbor_gens = network.generators[ |
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| 489 | network.generators.bus.isin(neighbors.index) |
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| 490 | ] |
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| 491 | neighbor_gens_t = network.generators_t["p_max_pu"][ |
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| 492 | neighbor_gens[ |
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| 493 | neighbor_gens.index.isin(network.generators_t["p_max_pu"].columns) |
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| 494 | ].index |
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| 495 | ] |
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| 496 | |||
| 497 | neighbor_gens.reset_index(inplace=True) |
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| 498 | neighbor_gens.bus = ( |
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| 499 | neighbors.loc[neighbor_gens.bus, "new_index"].reset_index().new_index |
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| 500 | ) |
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| 501 | neighbor_gens.index += db.next_etrago_id("generator") |
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| 502 | |||
| 503 | for i in neighbor_gens_t.columns: |
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| 504 | new_index = neighbor_gens[neighbor_gens["name"] == i].index |
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| 505 | neighbor_gens_t.rename(columns={i: new_index[0]}, inplace=True) |
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| 506 | |||
| 507 | # loads |
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| 508 | |||
| 509 | neighbor_loads = network.loads[network.loads.bus.isin(neighbors.index)] |
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| 510 | neighbor_loads_t_index = neighbor_loads.index[ |
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| 511 | neighbor_loads.index.isin(network.loads_t.p_set.columns) |
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| 512 | ] |
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| 513 | neighbor_loads_t = network.loads_t["p_set"][neighbor_loads_t_index] |
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| 514 | |||
| 515 | neighbor_loads.reset_index(inplace=True) |
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| 516 | neighbor_loads.bus = ( |
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| 517 | neighbors.loc[neighbor_loads.bus, "new_index"].reset_index().new_index |
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| 518 | ) |
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| 519 | neighbor_loads.index += db.next_etrago_id("load") |
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| 520 | |||
| 521 | for i in neighbor_loads_t.columns: |
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| 522 | new_index = neighbor_loads[neighbor_loads["index"] == i].index |
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| 523 | neighbor_loads_t.rename(columns={i: new_index[0]}, inplace=True) |
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| 524 | |||
| 525 | # stores |
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| 526 | neighbor_stores = network.stores[network.stores.bus.isin(neighbors.index)] |
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| 527 | neighbor_stores_t_index = neighbor_stores.index[ |
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| 528 | neighbor_stores.index.isin(network.stores_t.e_min_pu.columns) |
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| 529 | ] |
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| 530 | neighbor_stores_t = network.stores_t["e_min_pu"][neighbor_stores_t_index] |
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| 531 | |||
| 532 | neighbor_stores.reset_index(inplace=True) |
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| 533 | neighbor_stores.bus = ( |
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| 534 | neighbors.loc[neighbor_stores.bus, "new_index"].reset_index().new_index |
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| 535 | ) |
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| 536 | neighbor_stores.index += db.next_etrago_id("store") |
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| 537 | |||
| 538 | for i in neighbor_stores_t.columns: |
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| 539 | new_index = neighbor_stores[neighbor_stores["name"] == i].index |
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| 540 | neighbor_stores_t.rename(columns={i: new_index[0]}, inplace=True) |
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| 541 | |||
| 542 | # storage_units |
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| 543 | neighbor_storage = network.storage_units[ |
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| 544 | network.storage_units.bus.isin(neighbors.index) |
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| 545 | ] |
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| 546 | neighbor_storage_t_index = neighbor_storage.index[ |
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| 547 | neighbor_storage.index.isin(network.storage_units_t.inflow.columns) |
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| 548 | ] |
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| 549 | neighbor_storage_t = network.storage_units_t["inflow"][ |
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| 550 | neighbor_storage_t_index |
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| 551 | ] |
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| 552 | |||
| 553 | neighbor_storage.reset_index(inplace=True) |
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| 554 | neighbor_storage.bus = ( |
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| 555 | neighbors.loc[neighbor_storage.bus, "new_index"] |
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| 556 | .reset_index() |
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| 557 | .new_index |
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| 558 | ) |
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| 559 | neighbor_storage.index += db.next_etrago_id("storage") |
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| 560 | |||
| 561 | for i in neighbor_storage_t.columns: |
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| 562 | new_index = neighbor_storage[neighbor_storage["name"] == i].index |
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| 563 | neighbor_storage_t.rename(columns={i: new_index[0]}, inplace=True) |
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| 564 | |||
| 565 | # Connect to local database |
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| 566 | engine = db.engine() |
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| 567 | |||
| 568 | neighbors["scn_name"] = "eGon100RE" |
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| 569 | neighbors.index = neighbors["new_index"] |
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| 570 | |||
| 571 | # Correct geometry for non AC buses |
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| 572 | carriers = set(neighbors.carrier.to_list()) |
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| 573 | carriers.remove("AC") |
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| 574 | non_AC_neighbors = pd.DataFrame() |
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| 575 | for c in carriers: |
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| 576 | c_neighbors = neighbors[neighbors.carrier == c].set_index( |
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| 577 | "location", drop=False |
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| 578 | ) |
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| 579 | for i in ["x", "y"]: |
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| 580 | c_neighbors = c_neighbors.drop(i, axis=1) |
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| 581 | coordinates = neighbors[neighbors.carrier == "AC"][ |
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| 582 | ["location", "x", "y"] |
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| 583 | ].set_index("location") |
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| 584 | c_neighbors = pd.concat([coordinates, c_neighbors], axis=1).set_index( |
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| 585 | "new_index", drop=False |
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| 586 | ) |
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| 587 | non_AC_neighbors = non_AC_neighbors.append(c_neighbors) |
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| 588 | neighbors = neighbors[neighbors.carrier == "AC"].append(non_AC_neighbors) |
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| 589 | |||
| 590 | for i in ["new_index", "control", "generator", "location", "sub_network"]: |
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| 591 | neighbors = neighbors.drop(i, axis=1) |
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| 592 | |||
| 593 | # Add geometry column |
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| 594 | neighbors = ( |
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| 595 | gpd.GeoDataFrame( |
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| 596 | neighbors, geometry=gpd.points_from_xy(neighbors.x, neighbors.y) |
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| 597 | ) |
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| 598 | .rename_geometry("geom") |
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| 599 | .set_crs(4326) |
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| 600 | ) |
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| 601 | |||
| 602 | # Unify carrier names |
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| 603 | neighbors.carrier.replace( |
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| 604 | { |
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| 605 | "gas": "CH4", |
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| 606 | "gas_for_industry": "CH4_for_industry", |
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| 607 | }, |
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| 608 | inplace=True, |
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| 609 | ) |
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| 610 | |||
| 611 | neighbors.to_postgis( |
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| 612 | "egon_etrago_bus", |
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| 613 | engine, |
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| 614 | schema="grid", |
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| 615 | if_exists="append", |
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| 616 | index=True, |
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| 617 | index_label="bus_id", |
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| 618 | ) |
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| 619 | |||
| 620 | # prepare and write neighboring crossborder lines to etrago tables |
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| 621 | def lines_to_etrago(neighbor_lines=neighbor_lines, scn="eGon100RE"): |
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| 622 | neighbor_lines["scn_name"] = scn |
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| 623 | neighbor_lines["cables"] = 3 * neighbor_lines["num_parallel"].astype( |
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| 624 | int |
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| 625 | ) |
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| 626 | neighbor_lines["s_nom"] = neighbor_lines["s_nom_min"] |
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| 627 | |||
| 628 | for i in [ |
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| 629 | "name", |
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| 630 | "x_pu_eff", |
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| 631 | "r_pu_eff", |
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| 632 | "sub_network", |
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| 633 | "x_pu", |
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| 634 | "r_pu", |
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| 635 | "g_pu", |
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| 636 | "b_pu", |
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| 637 | "s_nom_opt", |
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| 638 | ]: |
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| 639 | neighbor_lines = neighbor_lines.drop(i, axis=1) |
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| 640 | |||
| 641 | # Define geometry and add to lines dataframe as 'topo' |
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| 642 | gdf = gpd.GeoDataFrame(index=neighbor_lines.index) |
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| 643 | gdf["geom_bus0"] = neighbors.geom[neighbor_lines.bus0].values |
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| 644 | gdf["geom_bus1"] = neighbors.geom[neighbor_lines.bus1].values |
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| 645 | gdf["geometry"] = gdf.apply( |
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| 646 | lambda x: LineString([x["geom_bus0"], x["geom_bus1"]]), axis=1 |
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| 647 | ) |
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| 648 | |||
| 649 | neighbor_lines = ( |
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| 650 | gpd.GeoDataFrame(neighbor_lines, geometry=gdf["geometry"]) |
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| 651 | .rename_geometry("topo") |
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| 652 | .set_crs(4326) |
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| 653 | ) |
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| 654 | |||
| 655 | neighbor_lines["lifetime"] = get_sector_parameters("electricity", scn)[ |
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| 656 | "lifetime" |
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| 657 | ]["ac_ehv_overhead_line"] |
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| 658 | |||
| 659 | neighbor_lines.to_postgis( |
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| 660 | "egon_etrago_line", |
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| 661 | engine, |
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| 662 | schema="grid", |
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| 663 | if_exists="append", |
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| 664 | index=True, |
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| 665 | index_label="line_id", |
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| 666 | ) |
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| 667 | |||
| 668 | lines_to_etrago(neighbor_lines=neighbor_lines, scn="eGon100RE") |
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| 669 | lines_to_etrago(neighbor_lines=neighbor_lines, scn="eGon2035") |
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| 670 | |||
| 671 | # prepare and write neighboring crossborder links to etrago tables |
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| 672 | def links_to_etrago(neighbor_links, scn="eGon100RE"): |
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| 673 | neighbor_links["scn_name"] = scn |
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| 674 | |||
| 675 | for i in [ |
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| 676 | "name", |
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| 677 | "geometry", |
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| 678 | "tags", |
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| 679 | "under_construction", |
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| 680 | "underground", |
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| 681 | "underwater_fraction", |
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| 682 | "bus2", |
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| 683 | "bus3", |
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| 684 | "bus4", |
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| 685 | "efficiency2", |
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| 686 | "efficiency3", |
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| 687 | "efficiency4", |
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| 688 | "lifetime", |
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| 689 | "p_nom_opt", |
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| 690 | ]: |
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| 691 | neighbor_links = neighbor_links.drop(i, axis=1) |
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| 692 | |||
| 693 | # Define geometry and add to lines dataframe as 'topo' |
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| 694 | gdf = gpd.GeoDataFrame(index=neighbor_links.index) |
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| 695 | gdf["geom_bus0"] = neighbors.geom[neighbor_links.bus0].values |
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| 696 | gdf["geom_bus1"] = neighbors.geom[neighbor_links.bus1].values |
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| 697 | gdf["geometry"] = gdf.apply( |
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| 698 | lambda x: LineString([x["geom_bus0"], x["geom_bus1"]]), axis=1 |
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| 699 | ) |
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| 700 | |||
| 701 | neighbor_links = ( |
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| 702 | gpd.GeoDataFrame(neighbor_links, geometry=gdf["geometry"]) |
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| 703 | .rename_geometry("topo") |
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| 704 | .set_crs(4326) |
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| 705 | ) |
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| 706 | |||
| 707 | # Unify carrier names |
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| 708 | neighbor_links.carrier = neighbor_links.carrier.str.replace(" ", "_") |
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| 709 | |||
| 710 | neighbor_links.carrier.replace( |
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| 711 | { |
||
| 712 | "H2_Electrolysis": "power_to_H2", |
||
| 713 | "H2_Fuel_Cell": "H2_to_power", |
||
| 714 | "H2_pipeline_retrofitted": "H2_retrofit", |
||
| 715 | "SMR": "CH4_to_H2", |
||
| 716 | "SMR_CC": "CH4_to_H2_CC", |
||
| 717 | "Sabatier": "H2_to_CH4", |
||
| 718 | "gas_for_industry": "CH4_for_industry", |
||
| 719 | "gas_for_industry_CC": "CH4_for_industry_CC", |
||
| 720 | "gas_pipeline": "CH4", |
||
| 721 | }, |
||
| 722 | inplace=True, |
||
| 723 | ) |
||
| 724 | |||
| 725 | neighbor_links.to_postgis( |
||
| 726 | "egon_etrago_link", |
||
| 727 | engine, |
||
| 728 | schema="grid", |
||
| 729 | if_exists="append", |
||
| 730 | index=True, |
||
| 731 | index_label="link_id", |
||
| 732 | ) |
||
| 733 | |||
| 734 | links_to_etrago(neighbor_links, "eGon100RE") |
||
| 735 | links_to_etrago(neighbor_links[neighbor_links.carrier == "DC"], "eGon2035") |
||
| 736 | |||
| 737 | # prepare neighboring generators for etrago tables |
||
| 738 | neighbor_gens["scn_name"] = "eGon100RE" |
||
| 739 | neighbor_gens["p_nom"] = neighbor_gens["p_nom_opt"] |
||
| 740 | neighbor_gens["p_nom_extendable"] = False |
||
| 741 | |||
| 742 | # Unify carrier names |
||
| 743 | neighbor_gens.carrier = neighbor_gens.carrier.str.replace(" ", "_") |
||
| 744 | |||
| 745 | neighbor_gens.carrier.replace( |
||
| 746 | { |
||
| 747 | "onwind": "wind_onshore", |
||
| 748 | "ror": "run_of_river", |
||
| 749 | "offwind-ac": "wind_offshore", |
||
| 750 | "offwind-dc": "wind_offshore", |
||
| 751 | "urban_central_solar_thermal": "urban_central_solar_thermal_collector", |
||
| 752 | "residential_rural_solar_thermal": "residential_rural_solar_thermal_collector", |
||
| 753 | "services_rural_solar_thermal": "services_rural_solar_thermal_collector", |
||
| 754 | }, |
||
| 755 | inplace=True, |
||
| 756 | ) |
||
| 757 | |||
| 758 | for i in ["name", "weight", "lifetime", "p_set", "q_set", "p_nom_opt"]: |
||
| 759 | neighbor_gens = neighbor_gens.drop(i, axis=1) |
||
| 760 | |||
| 761 | neighbor_gens.to_sql( |
||
| 762 | "egon_etrago_generator", |
||
| 763 | engine, |
||
| 764 | schema="grid", |
||
| 765 | if_exists="append", |
||
| 766 | index=True, |
||
| 767 | index_label="generator_id", |
||
| 768 | ) |
||
| 769 | |||
| 770 | # prepare neighboring loads for etrago tables |
||
| 771 | neighbor_loads["scn_name"] = "eGon100RE" |
||
| 772 | |||
| 773 | # Unify carrier names |
||
| 774 | neighbor_loads.carrier = neighbor_loads.carrier.str.replace(" ", "_") |
||
| 775 | |||
| 776 | neighbor_loads.carrier.replace( |
||
| 777 | { |
||
| 778 | "electricity": "AC", |
||
| 779 | "DC": "AC", |
||
| 780 | "industry_electricity": "AC", |
||
| 781 | "H2_pipeline": "H2_system_boundary", |
||
| 782 | "gas_for_industry": "CH4_for_industry", |
||
| 783 | }, |
||
| 784 | inplace=True, |
||
| 785 | ) |
||
| 786 | |||
| 787 | for i in ["index", "p_set", "q_set"]: |
||
| 788 | neighbor_loads = neighbor_loads.drop(i, axis=1) |
||
| 789 | |||
| 790 | neighbor_loads.to_sql( |
||
| 791 | "egon_etrago_load", |
||
| 792 | engine, |
||
| 793 | schema="grid", |
||
| 794 | if_exists="append", |
||
| 795 | index=True, |
||
| 796 | index_label="load_id", |
||
| 797 | ) |
||
| 798 | |||
| 799 | # prepare neighboring stores for etrago tables |
||
| 800 | neighbor_stores["scn_name"] = "eGon100RE" |
||
| 801 | |||
| 802 | # Unify carrier names |
||
| 803 | neighbor_stores.carrier = neighbor_stores.carrier.str.replace(" ", "_") |
||
| 804 | |||
| 805 | neighbor_stores.carrier.replace( |
||
| 806 | { |
||
| 807 | "Li_ion": "battery", |
||
| 808 | "gas": "CH4", |
||
| 809 | }, |
||
| 810 | inplace=True, |
||
| 811 | ) |
||
| 812 | neighbor_stores.loc[ |
||
| 813 | ( |
||
| 814 | (neighbor_stores.e_nom_max <= 1e9) |
||
| 815 | & (neighbor_stores.carrier == "H2") |
||
| 816 | ), |
||
| 817 | "carrier", |
||
| 818 | ] = "H2_underground" |
||
| 819 | neighbor_stores.loc[ |
||
| 820 | ( |
||
| 821 | (neighbor_stores.e_nom_max > 1e9) |
||
| 822 | & (neighbor_stores.carrier == "H2") |
||
| 823 | ), |
||
| 824 | "carrier", |
||
| 825 | ] = "H2_overground" |
||
| 826 | |||
| 827 | for i in ["name", "p_set", "q_set", "e_nom_opt", "lifetime"]: |
||
| 828 | neighbor_stores = neighbor_stores.drop(i, axis=1) |
||
| 829 | |||
| 830 | neighbor_stores.to_sql( |
||
| 831 | "egon_etrago_store", |
||
| 832 | engine, |
||
| 833 | schema="grid", |
||
| 834 | if_exists="append", |
||
| 835 | index=True, |
||
| 836 | index_label="store_id", |
||
| 837 | ) |
||
| 838 | |||
| 839 | # prepare neighboring storage_units for etrago tables |
||
| 840 | neighbor_storage["scn_name"] = "eGon100RE" |
||
| 841 | |||
| 842 | # Unify carrier names |
||
| 843 | neighbor_storage.carrier = neighbor_storage.carrier.str.replace(" ", "_") |
||
| 844 | |||
| 845 | neighbor_storage.carrier.replace( |
||
| 846 | {"PHS": "pumped_hydro", "hydro": "reservoir"}, inplace=True |
||
| 847 | ) |
||
| 848 | |||
| 849 | for i in ["name", "p_nom_opt"]: |
||
| 850 | neighbor_storage = neighbor_storage.drop(i, axis=1) |
||
| 851 | |||
| 852 | neighbor_storage.to_sql( |
||
| 853 | "egon_etrago_storage", |
||
| 854 | engine, |
||
| 855 | schema="grid", |
||
| 856 | if_exists="append", |
||
| 857 | index=True, |
||
| 858 | index_label="storage_id", |
||
| 859 | ) |
||
| 860 | |||
| 861 | # writing neighboring loads_t p_sets to etrago tables |
||
| 862 | |||
| 863 | neighbor_loads_t_etrago = pd.DataFrame( |
||
| 864 | columns=["scn_name", "temp_id", "p_set"], |
||
| 865 | index=neighbor_loads_t.columns, |
||
| 866 | ) |
||
| 867 | neighbor_loads_t_etrago["scn_name"] = "eGon100RE" |
||
| 868 | neighbor_loads_t_etrago["temp_id"] = 1 |
||
| 869 | for i in neighbor_loads_t.columns: |
||
| 870 | neighbor_loads_t_etrago["p_set"][i] = neighbor_loads_t[ |
||
| 871 | i |
||
| 872 | ].values.tolist() |
||
| 873 | |||
| 874 | neighbor_loads_t_etrago.to_sql( |
||
| 875 | "egon_etrago_load_timeseries", |
||
| 876 | engine, |
||
| 877 | schema="grid", |
||
| 878 | if_exists="append", |
||
| 879 | index=True, |
||
| 880 | index_label="load_id", |
||
| 881 | ) |
||
| 882 | |||
| 883 | # writing neighboring generator_t p_max_pu to etrago tables |
||
| 884 | neighbor_gens_t_etrago = pd.DataFrame( |
||
| 885 | columns=["scn_name", "temp_id", "p_max_pu"], |
||
| 886 | index=neighbor_gens_t.columns, |
||
| 887 | ) |
||
| 888 | neighbor_gens_t_etrago["scn_name"] = "eGon100RE" |
||
| 889 | neighbor_gens_t_etrago["temp_id"] = 1 |
||
| 890 | for i in neighbor_gens_t.columns: |
||
| 891 | neighbor_gens_t_etrago["p_max_pu"][i] = neighbor_gens_t[ |
||
| 892 | i |
||
| 893 | ].values.tolist() |
||
| 894 | |||
| 895 | neighbor_gens_t_etrago.to_sql( |
||
| 896 | "egon_etrago_generator_timeseries", |
||
| 897 | engine, |
||
| 898 | schema="grid", |
||
| 899 | if_exists="append", |
||
| 900 | index=True, |
||
| 901 | index_label="generator_id", |
||
| 902 | ) |
||
| 903 | |||
| 904 | # writing neighboring stores_t e_min_pu to etrago tables |
||
| 905 | neighbor_stores_t_etrago = pd.DataFrame( |
||
| 906 | columns=["scn_name", "temp_id", "e_min_pu"], |
||
| 907 | index=neighbor_stores_t.columns, |
||
| 908 | ) |
||
| 909 | neighbor_stores_t_etrago["scn_name"] = "eGon100RE" |
||
| 910 | neighbor_stores_t_etrago["temp_id"] = 1 |
||
| 911 | for i in neighbor_stores_t.columns: |
||
| 912 | neighbor_stores_t_etrago["e_min_pu"][i] = neighbor_stores_t[ |
||
| 913 | i |
||
| 914 | ].values.tolist() |
||
| 915 | |||
| 916 | neighbor_stores_t_etrago.to_sql( |
||
| 917 | "egon_etrago_store_timeseries", |
||
| 918 | engine, |
||
| 919 | schema="grid", |
||
| 920 | if_exists="append", |
||
| 921 | index=True, |
||
| 922 | index_label="store_id", |
||
| 923 | ) |
||
| 924 | |||
| 925 | # writing neighboring storage_units inflow to etrago tables |
||
| 926 | neighbor_storage_t_etrago = pd.DataFrame( |
||
| 927 | columns=["scn_name", "temp_id", "inflow"], |
||
| 928 | index=neighbor_storage_t.columns, |
||
| 929 | ) |
||
| 930 | neighbor_storage_t_etrago["scn_name"] = "eGon100RE" |
||
| 931 | neighbor_storage_t_etrago["temp_id"] = 1 |
||
| 932 | for i in neighbor_storage_t.columns: |
||
| 933 | neighbor_storage_t_etrago["inflow"][i] = neighbor_storage_t[ |
||
| 934 | i |
||
| 935 | ].values.tolist() |
||
| 936 | |||
| 937 | neighbor_storage_t_etrago.to_sql( |
||
| 938 | "egon_etrago_storage_timeseries", |
||
| 939 | engine, |
||
| 940 | schema="grid", |
||
| 941 | if_exists="append", |
||
| 942 | index=True, |
||
| 943 | index_label="storage_id", |
||
| 944 | ) |
||
| 945 | |||
| 946 | # writing neighboring lines_t s_max_pu to etrago tables |
||
| 947 | if not network.lines_t["s_max_pu"].empty: |
||
| 948 | neighbor_lines_t_etrago = pd.DataFrame( |
||
| 949 | columns=["scn_name", "s_max_pu"], index=neighbor_lines_t.columns |
||
| 950 | ) |
||
| 951 | neighbor_lines_t_etrago["scn_name"] = "eGon100RE" |
||
| 952 | |||
| 953 | for i in neighbor_lines_t.columns: |
||
| 954 | neighbor_lines_t_etrago["s_max_pu"][i] = neighbor_lines_t[ |
||
| 955 | i |
||
| 956 | ].values.tolist() |
||
| 957 | |||
| 958 | neighbor_lines_t_etrago.to_sql( |
||
| 959 | "egon_etrago_line_timeseries", |
||
| 960 | engine, |
||
| 961 | schema="grid", |
||
| 962 | if_exists="append", |
||
| 963 | index=True, |
||
| 964 | index_label="line_id", |
||
| 965 | ) |
||
| 985 |