pypsa-eur/scripts/build_powerplants.py

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# coding: utf-8
import logging
import pandas as pd
from scipy.spatial import cKDTree as KDTree
import pypsa
import powerplantmatching as ppm
if 'snakemake' not in globals():
from vresutils.snakemake import MockSnakemake, Dict
snakemake = MockSnakemake(
input=Dict(base_network='networks/base.nc'),
output=['resources/powerplants.csv']
)
logging.basicConfig(level=snakemake.config['logging_level'])
n = pypsa.Network(snakemake.input.base_network)
ppl = (ppm.collection.matched_data()
[lambda df : ~df.Fueltype.isin(('Solar', 'Wind'))]
.pipe(ppm.cleaning.clean_technology)
.assign(Fueltype=lambda df: (
df.Fueltype.where(df.Fueltype != 'Natural Gas',
df.Technology.replace('Steam Turbine', 'OCGT').fillna('OCGT'))))
.pipe(ppm.utils.fill_geoposition, parse=True, only_saved_locs=True)
.pipe(ppm.heuristics.fill_missing_duration))
# ppl.loc[(ppl.Fueltype == 'Other') & ppl.Technology.str.contains('CCGT'), 'Fueltype'] = 'CCGT'
# ppl.loc[(ppl.Fueltype == 'Other') & ppl.Technology.str.contains('Steam Turbine'), 'Fueltype'] = 'CCGT'
ppl = ppl.loc[ppl.lon.notnull() & ppl.lat.notnull()]
substation_lv_i = n.buses.index[n.buses['substation_lv']]
kdtree = KDTree(n.buses.loc[substation_lv_i, ['x','y']].values)
ppl = ppl.assign(bus=substation_lv_i[kdtree.query(ppl[['lon','lat']].values)[1]])
ppl.to_csv(snakemake.output[0])