import requests import pandas as pd import json translation_dict = { 'VindkraftAnleggId': 'WindPowerPlantId', 'Navn': 'Name', 'IdriftsettelseForsteByggetrinn': 'CommissioningFirstPhase', 'AnleggsNr': 'FacilityNumber', 'InstallertEffekt_MW': 'InstalledCapacity_MW', 'HovedEierNavn': 'MainOwnerName', 'HovedEierOrgNr': 'MainOwnerOrgNumber', 'ElspotomraadeNummer': 'ElspotAreaNumber', 'Fylke': 'County', 'Kommune': 'Municipality', 'NormalAArsproduksjon_GWh': 'NormalAnnualProduction_GWh', 'GjsnittGeneratorytelse': 'AvgGeneratorOutput', 'GjsnittNavhoeyde': 'AvgHubHeight', 'GjsnittRotordiameter': 'AvgRotorDiameter', 'EnergiPerSveiptAreal': 'EnergyPerSweptArea', 'AntallOperativeTurbiner': 'NumberOfOperationalTurbines', 'AnlKonsNr_Vind': 'FacilityPermitNumber_Wind', 'AntallTurbiner': 'NumberOfTurbines', 'DatoIdriftsatt': 'CommissioningDate', 'DatoUtavdrift': 'DecommissioningDate', 'ForventetProd_NormalAAr_GWh': 'ExpectedProduction_NormalYear_GWh', 'KR_Saksid': 'NVE_CaseId', 'TurbinID': 'TurbineID', 'TurbinProdusent': 'TurbineManufacturer', 'TurbinStorrelse_kW': 'TurbineSize_kW', 'TurbinType': 'TurbineType', 'TurbintypeID': 'TurbineTypeID', } def translate_keys_recursive(obj, translation_dict): if isinstance(obj, dict): return { translation_dict.get(k, k): translate_keys_recursive(v, translation_dict) for k, v in obj.items() } elif isinstance(obj, list): return [translate_keys_recursive(item, translation_dict) for item in obj] else: return obj def get_power(): output_path = 'data/vindprod2002-2024_kraftverk_utcplus1.xlsx' url = 'https://www.nve.no/media/18018/vindprod2002-2024_kraftverk_utcplus1.xlsx' response = requests.get(url) with open(output_path, 'wb') as f: f.write(response.content) print("Power data saved to:", output_path) def get_metadata(): output_path = 'data/metadata.json' url = 'https://api.nve.no/web/WindPowerplant/GetWindPowerPlants' # url = "https://api.nve.no/web/WindPowerplant/GetWindPowerPlantsInOperation" response = requests.get(url) data = response.json() with open(output_path, 'w', encoding='utf-8') as f: json.dump(data, f, indent=4, ensure_ascii=False) print("Metadata saved to:", output_path) def get_geodata(): output_path = 'data/geodata.json' latlon_wkid = 4326 url = f'https://nve.geodataonline.no/arcgis/rest/services/Vindkraft2/MapServer/0/query?f=json&cacheHint=true&resultOffset=0&resultRecordCount=1000&where=1%3D1&orderByFields=OBJECTID&outFields=*&outSR={latlon_wkid}&spatialRel=esriSpatialRelIntersects' response = requests.get(url) data = response.json() with open(output_path, 'w', encoding='utf-8') as f: json.dump(data, f, indent=4, ensure_ascii=False) print("Geodata saved to:", output_path) def extract_meta(): output_path_1 = 'nve-windpower-metadata.csv' output_path_2 = 'nve-windpower-metadata-extended.csv' file_path_1 = 'data/metadata.json' file_path_2 = 'data/geodata.json' with open(file_path_1, 'r', encoding='utf-8') as f: metadata = json.load(f) with open(file_path_2, 'r', encoding='utf-8') as f: geodata = json.load(f) metadata = translate_keys_recursive(metadata, translation_dict) # Convert to pandas dataframe metadata_df = pd.DataFrame(metadata) geodata_df = pd.DataFrame([{'name': park_feature['attributes']['anleggNavn'], 'code': park_feature['attributes']['anleggsNr'], 'capacity_MW': park_feature['attributes']['effekt_MW'], 'no_turbines': park_feature['attributes']['antallTurbiner'], 'start_date': pd.to_datetime(park_feature['attributes']['forsteIdriftDato'], unit='ms'), 'lat': park_feature['geometry']['y'], 'lon': park_feature['geometry']['x'] } for park_feature in geodata['features']]) metadata_df = metadata_df.set_index('FacilityNumber') geodata_df = geodata_df.set_index('code') # Add lat and lon from geodata_df metadata_df['lat'] = geodata_df['lat'] metadata_df['lon'] = geodata_df['lon'] # Reset index metadata_df = metadata_df.reset_index() # Set colums as int for c in ['WindPowerPlantId','FacilityNumber','MainOwnerOrgNumber','ElspotAreaNumber','NumberOfOperationalTurbines']: metadata_df[c] = pd.to_numeric(metadata_df[c], errors='coerce').astype('Int64') # Remove column with turbine meta metadata_df1 = metadata_df.copy() metadata_df1 = metadata_df1.drop('Turbiner', axis=1) metadata_df1 = metadata_df1.set_index('WindPowerPlantId').sort_index() # Explode turbine list df_exploded = metadata_df.explode('Turbiner').reset_index(drop=True) # Normalize turbine dictionaries into columns data_normalized = pd.json_normalize(df_exploded['Turbiner']) # Combine with original dataframe (without the old turbine column) metadata_df2 = pd.concat([df_exploded.drop(columns='Turbiner'), data_normalized], axis=1) metadata_df2 = metadata_df2.set_index('WindPowerPlantId').sort_index() # Save dataframe as cvs metadata_df1.to_csv(output_path_1, index=True) metadata_df2.to_csv(output_path_2, index=True) def extract_power(): output_path = 'nve-windpower-timeseries.csv' file_path = 'data/vindprod2002-2024_kraftverk_utcplus1.xlsx' power = pd.read_excel(file_path, header=1, skiprows=[2]) power = power.rename(columns={'kraftverknr':'datetime'}) power = power.set_index('datetime') power.index = pd.to_datetime(power.index, utc=True) # Sort by park id power = power[sorted(power.columns)] # Save dataframe as cvs power.to_csv(output_path, index=True) if __name__ == '__main__': get_power() get_metadata() extract_meta() extract_power()