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main
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summercour
Author | SHA1 | Date | |
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4c49d51a26 | |||
d48d811787 | |||
b74e0f21b5 | |||
95698d61ed | |||
44dff9b47e | |||
6c4559b3d6 |
249
input_files/eilat.geojson
Normal file
249
input_files/eilat.geojson
Normal file
@ -0,0 +1,249 @@
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{
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{
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"ANNEE_CONS": 1978,
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"CODE_UTILI": "residential"
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},
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17
main.py
17
main.py
@ -3,7 +3,6 @@ from pathlib import Path
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from hub.imports.geometry_factory import GeometryFactory
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from hub.imports.construction_factory import ConstructionFactory
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from hub.imports.usage_factory import UsageFactory
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from hub.imports.weather_factory import WeatherFactory
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from hub.helpers.dictionaries import Dictionaries
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from hub.imports.energy_systems_factory import EnergySystemsFactory
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import hub.helpers.constants as cte
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@ -13,14 +12,11 @@ from sra_engine import SraEngine
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try:
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file_path = (Path(__file__).parent / 'input_files' / '195_v1.geojson')
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file_path = (Path(__file__).parent / 'input_files' / 'eilat.geojson')
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climate_reference_city = 'Montreal'
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weather_format = 'epw'
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construction_format = 'nrcan'
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usage_format = 'nrcan'
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construction_format = 'eilat'
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usage_format = 'eilat'
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energy_systems_format = 'montreal_custom'
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attic_heated_case = 0
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basement_heated_case = 1
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out_path = (Path(__file__).parent / 'output_files')
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tmp_folder = (Path(__file__).parent / 'tmp')
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@ -31,12 +27,9 @@ try:
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height_field='heightmax',
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year_of_construction_field='ANNEE_CONS',
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function_field='CODE_UTILI',
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function_to_hub=Dictionaries().montreal_function_to_hub_function).city
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city.climate_reference_city = climate_reference_city
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city.climate_file = (tmp_folder / f'{climate_reference_city}.cli').resolve()
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function_to_hub=Dictionaries().eilat_function_to_hub_function).city
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print(f'city created from {file_path}')
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WeatherFactory(weather_format, city).enrich()
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print('enrich weather... done')
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ConstructionFactory(construction_format, city).enrich()
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print('enrich constructions... done')
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UsageFactory(usage_format, city).enrich()
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44
peak_load_class.py
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44
peak_load_class.py
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@ -0,0 +1,44 @@
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from pathlib import Path
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import pandas as pd
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import hub.helpers.constants as cte
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def Peak_load (building):
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array = [None] * 12
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heating = 0
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cooling = 0
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for system in building.energy_systems:
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for demand_type in system.demand_types:
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if demand_type == cte.HEATING:
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heating = 1
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if demand_type == cte.COOLING:
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cooling = 1
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if cte.MONTH in building.heating_peak_load.keys() and cte.MONTH in building.cooling_peak_load.keys():
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peak_lighting = 0
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peak_appliances = 0
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for thermal_zone in building.internal_zones[0].thermal_zones:
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lighting = thermal_zone.lighting
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for schedule in lighting.schedules:
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for value in schedule.values:
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if value * lighting.density * thermal_zone.total_floor_area > peak_lighting:
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peak_lighting = value * lighting.density * thermal_zone.total_floor_area
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appliances = thermal_zone.appliances
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for schedule in appliances.schedules:
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for value in schedule.values:
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if value * appliances.density * thermal_zone.total_floor_area > peak_appliances:
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peak_appliances = value * appliances.density * thermal_zone.total_floor_area
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monthly_electricity_peak = [0.9 * peak_lighting + 0.7 * peak_appliances] * 12
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conditioning_peak = []
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for i, value in enumerate(building.heating_peak_load[cte.MONTH]):
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if cooling * building.cooling_peak_load[cte.MONTH][i] > heating * value:
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conditioning_peak.append(cooling * building.cooling_peak_load[cte.MONTH][i])
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else:
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conditioning_peak.append(heating * value)
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monthly_electricity_peak[i] += 0.8 * conditioning_peak[i]
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electricity_peak_load_results = pd.DataFrame(monthly_electricity_peak
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, columns=[f'{building.name} electricity peak load W'])
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else:
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electricity_peak_load_results = pd.DataFrame(array, columns=[f'{building.name} electricity peak load W'])
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return electricity_peak_load_results
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50
results.py
50
results.py
@ -152,7 +152,7 @@ class Results:
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metadata_file.write(file)
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def outputsforgraph(self):
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file = 'city name: ' + self._city.name + '\n'
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outputs_energy =pd.DataFrame()
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array = [None] * 12
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for building in self._city.buildings:
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if cte.MONTH in building.heating_demand.keys():
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@ -262,36 +262,20 @@ class Results:
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columns=[
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f'{building.name} electrical consumption for distribution Wh'])
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if print_results is None:
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print_results = heating_results
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else:
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print_results = pd.concat([print_results, heating_results], axis='columns')
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print_results = pd.concat([print_results,
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cooling_results,
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lighting_results,
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appliances_results,
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dhw_results,
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heating_consumption_results,
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cooling_consumption_results,
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dhw_consumption_results,
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heating_peak_load_results,
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cooling_peak_load_results,
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electricity_peak_load_results,
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onsite_electrical_production,
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extra_electrical_consumption], axis='columns')
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file += '\n'
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file += f'name: {building.name}\n'
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file += f'year of construction: {building.year_of_construction}\n'
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file += f'function: {building.function}\n'
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file += f'floor area: {building.floor_area}\n'
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if building.average_storey_height is not None and building.eave_height is not None:
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file += f'storeys: {int(building.eave_height / building.average_storey_height)}\n'
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else:
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file += f'storeys: n/a\n'
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file += f'volume: {building.volume}\n'
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listgraph = [lighting_results.values.sum(),
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appliances_results.values.sum(),
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heating_consumption_results.values.sum(),
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cooling_consumption_results.values.sum(),
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dhw_consumption_results.values.sum(),
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extra_electrical_consumption.values.sum()
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]
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outputs_energy[f'building {building.name}'] = listgraph
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outputs_energy.index = ['Lighting consumption', 'Appliances consumption', 'Heating consumption',
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'Cooling consumption', 'DHW consumption', 'Extra electrical consumption']
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total_final_energy = (lighting_results.values.sum() + appliances_results.values.sum() + \
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heating_consumption_results.values.sum() + cooling_consumption_results.values.sum() + \
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dhw_consumption_results.values.sum() + extra_electrical_consumption.values.sum())/1000
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return outputs_energy, total_final_energy
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full_path_results = Path(self._path / 'demand.csv').resolve()
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print_results.to_csv(full_path_results, na_rep='null')
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full_path_metadata = Path(self._path / 'metadata.csv').resolve()
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with open(full_path_metadata, 'w') as metadata_file:
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metadata_file.write(file)
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Loading…
Reference in New Issue
Block a user