Ongoing developments for the course workshop, including graphs implementation
This commit is contained in:
parent
d3b524b677
commit
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@ -9,7 +9,6 @@ from pathlib import Path
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import numpy_financial as npf
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import pandas as pd
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from energy_systems_sizing import EnergySystemsSizing
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from hub.catalog_factories.costs_catalog_factory import CostCatalogFactory
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from hub.helpers.dictionaries import Dictionaries
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from hub.imports.construction_factory import ConstructionFactory
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@ -19,10 +18,11 @@ from hub.imports.usage_factory import UsageFactory
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from hub.imports.weather_factory import WeatherFactory
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from monthly_energy_balance_engine import MonthlyEnergyBalanceEngine
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from sra_engine import SraEngine
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import numpy as np
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from printing_results import *
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from hub.helpers import constants as cte
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from life_cycle_costs import LifeCycleCosts
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# import constants
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from costs import CLIMATE_REFERENCE_CITY, WEATHER_FILE, WEATHER_FORMAT, CONSTRUCTION_FORMAT, USAGE_FORMAT
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from costs import ENERGY_SYSTEM_FORMAT, ATTIC_HEATED_CASE, BASEMENT_HEATED_CASE, RETROFITTING_SCENARIOS, NUMBER_OF_YEARS
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from costs import CONSUMER_PRICE_INDEX, ELECTRICITY_PEAK_INDEX, ELECTRICITY_PRICE_INDEX, GAS_PRICE_INDEX, DISCOUNT_RATE
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@ -33,8 +33,7 @@ from costs import EMISSION_FACTOR_GAS_QUEBEC, EMISSION_FACTOR_ELECTRICITY_QUEBEC
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EMISSION_FACTOR_BIOMASS_QUEBEC, EMISSION_FACTOR_FUEL_OIL_QUEBEC, EMISSION_FACTOR_DIESEL_QUEBEC
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# import paths
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from costs import file_path, tmp_folder, out_path
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from results import Results
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def _npv_from_list(npv_discount_rate, list_cashflow):
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lcc_value = npf.npv(npv_discount_rate, list_cashflow)
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@ -50,36 +49,44 @@ def _search_archetype(costs_catalog, building_function):
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life_cycle_results = pd.DataFrame()
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print('[city creation start]')
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file_path = (Path(__file__).parent.parent / 'input_files' / 'summerschool_one_building.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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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.parent / 'out_files')
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tmp_folder = (Path(__file__).parent / 'tmp')
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print('[simulation start]')
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city = GeometryFactory('geojson',
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path=file_path,
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height_field='heightmax',
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height_field='citygml_me',
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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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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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print(f'city created from {file_path}')
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WeatherFactory(WEATHER_FORMAT, city, file_name=WEATHER_FILE).enrich()
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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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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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UsageFactory(usage_format, city).enrich()
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print('enrich usage... done')
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for building in city.buildings:
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building.energy_systems_archetype_name = 'system 1 gas'
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EnergySystemsFactory(ENERGY_SYSTEM_FORMAT, city).enrich()
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building.energy_systems_archetype_name = 'system 1 gas pv'
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EnergySystemsFactory(energy_systems_format, city).enrich()
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print('enrich systems... done')
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print('exporting:')
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catalog = CostCatalogFactory('montreal_custom').catalog
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print('costs catalog access... done')
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sra_file = (tmp_folder / f'{city.name}_sra.xml').resolve()
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SraEngine(city, sra_file, tmp_folder, WEATHER_FILE)
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print(' sra processed...')
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for building in city.buildings:
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building.attic_heated = ATTIC_HEATED_CASE
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building.basement_heated = BASEMENT_HEATED_CASE
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print('exporting:')
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sra_file = (tmp_folder / f'{city.name}_sra.xml').resolve()
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SraEngine(city, sra_file, tmp_folder)
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print(' sra processed...')
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catalog = CostCatalogFactory('montreal_custom').catalog
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for retrofitting_scenario in RETROFITTING_SCENARIOS:
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@ -96,13 +103,26 @@ for retrofitting_scenario in RETROFITTING_SCENARIOS:
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print('enrich systems... done')
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MonthlyEnergyBalanceEngine(city, tmp_folder)
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print(' insel processed...')
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EnergySystemsSizing(city).enrich()
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for building in city.buildings:
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for energy_system in building.energy_systems:
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if cte.HEATING in energy_system.demand_types:
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energy_system.generation_system.heat_power = building.heating_peak_load[cte.YEAR][0]
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if cte.COOLING in energy_system.demand_types:
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energy_system.generation_system.cooling_power = building.cooling_peak_load[cte.YEAR][0]
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print(f' heating consumption {building.heating_consumption[cte.YEAR][0]}')
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print('importing results:')
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results = Results(city, out_path)
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results.print()
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print('results printed...')
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print('[simulation end]')
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print(f'beginning costing scenario {retrofitting_scenario} systems... done')
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for building in city.buildings:
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total_floor_area = 0
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function = Dictionaries().hub_function_to_montreal_custom_costs_function[building.function]
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archetype = _search_archetype(catalog, function)
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print('lcc for first building started')
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@ -117,7 +137,7 @@ for retrofitting_scenario in RETROFITTING_SCENARIOS:
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global_end_of_life_costs = lcc.calculate_end_of_life_costs()
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global_operational_costs = lcc.calculate_total_operational_costs
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global_maintenance_costs = lcc.calculate_total_maintenance_costs()
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global_operational_incomes = lcc.calculate_total_operational_incomes()
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global_operational_incomes = lcc.calculate_total_operational_incomes(retrofitting_scenario)
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full_path_output = Path(out_path / f'output {retrofitting_scenario} {building.name}.xlsx').resolve()
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with pd.ExcelWriter(full_path_output) as writer:
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global_capital_costs.to_excel(writer, sheet_name='global_capital_costs')
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@ -127,6 +147,31 @@ for retrofitting_scenario in RETROFITTING_SCENARIOS:
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global_operational_incomes.to_excel(writer, sheet_name='global_operational_incomes')
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global_capital_incomes.to_excel(writer, sheet_name='global_capital_incomes')
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if retrofitting_scenario == 0:
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investmentcosts = [global_capital_costs['B2010_opaque_walls'][0],
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global_capital_costs['B2020_transparent'][0],
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global_capital_costs['B3010_opaque_roof'][0],
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global_capital_costs['B10_superstructure'][0],
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global_capital_costs['D3020_heat_generating_systems'][0],
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global_capital_costs['D3080_other_hvac_ahu'][0],
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global_capital_costs['D5020_lighting_and_branch_wiring'][0],
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global_capital_costs['D301010_photovoltaic_system'][0]]
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investmentcosts = pd.DataFrame(investmentcosts)
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else:
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investmentcosts[f'retrofitting_scenario {retrofitting_scenario}'] = [global_capital_costs['B2010_opaque_walls'][0],
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global_capital_costs['B2020_transparent'][0],
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global_capital_costs['B3010_opaque_roof'][0],
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global_capital_costs['B10_superstructure'][0],
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global_capital_costs['D3020_heat_generating_systems'][0],
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global_capital_costs['D3080_other_hvac_ahu'][0],
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global_capital_costs['D5020_lighting_and_branch_wiring'][0],
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global_capital_costs['D301010_photovoltaic_system'][0]]
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investmentcosts.index = ['Opaque walls', 'Transparent walls', 'Opaque roof', 'Superstructure',
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'Heat generation systems', 'Other HVAC AHU', 'Lighting and branch wiring', 'PV systems']
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df_capital_costs_skin = (
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global_capital_costs['B2010_opaque_walls'] + global_capital_costs['B2020_transparent'] +
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global_capital_costs['B3010_opaque_roof'] + global_capital_costs['B10_superstructure']
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@ -178,14 +223,14 @@ for retrofitting_scenario in RETROFITTING_SCENARIOS:
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life_cycle_operational_incomes -
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life_cycle_capital_incomes
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)
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total_floor_area += lcc.calculate_total_floor_area()
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life_cycle_results[f'Scenario {retrofitting_scenario}'] = [life_cycle_costs_capital_skin,
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life_cycle_costs_capital_systems,
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life_cycle_costs_end_of_life_costs,
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life_cycle_operational_costs,
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life_cycle_maintenance_costs,
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life_cycle_operational_incomes,
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life_cycle_capital_incomes]
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-life_cycle_operational_incomes,
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-life_cycle_capital_incomes]
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life_cycle_results.index = ['total_capital_costs_skin',
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'total_capital_costs_systems',
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@ -195,5 +240,16 @@ for retrofitting_scenario in RETROFITTING_SCENARIOS:
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'operational_incomes',
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'capital_incomes']
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print(life_cycle_results)
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print(f'Scenario {retrofitting_scenario} {life_cycle_costs}')
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printing_results(investmentcosts,life_cycle_results,total_floor_area)
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@ -102,9 +102,9 @@ class LifeCycleCosts:
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surface_transparent += thermal_boundary.opaque_area * thermal_boundary.window_ratio
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chapters = archetype.capital_cost
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peak_heating = building.heating_peak_load[cte.YEAR].values[0]/1000
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peak_cooling = building.cooling_peak_load[cte.YEAR].values[0]/1000
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print('kk')
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peak_heating = building.heating_peak_load[cte.YEAR][0]/1000
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peak_cooling = building.cooling_peak_load[cte.YEAR][0]/1000
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# todo: change area pv when the variable exists
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roof_area = 0
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for roof in building.roofs:
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@ -247,6 +247,9 @@ class LifeCycleCosts:
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self._yearly_end_of_life_costs.fillna(0, inplace=True)
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return self._yearly_end_of_life_costs
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def calculate_total_floor_area(self):
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total_floor_area = self._total_floor_area
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return total_floor_area
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@property
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def calculate_total_operational_costs(self):
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"""
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@ -283,7 +286,7 @@ class LifeCycleCosts:
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print(f'electricity consumption {total_electricity_consumption}')
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# todo: change when peak electricity demand is coded. Careful with factor residential
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peak_electricity_demand = 100 # self._peak_electricity_demand
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peak_electricity_demand = 0.1*total_floor_area # self._peak_electricity_demand
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variable_electricity_cost_year_0 = total_electricity_consumption * archetype.operational_cost.fuels[0].variable[0]
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peak_electricity_cost_year_0 = peak_electricity_demand * archetype.operational_cost.fuels[0].fixed_power * 12
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monthly_electricity_cost_year_0 = archetype.operational_cost.fuels[0].fixed_monthly * 12 * factor_residential
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@ -313,7 +316,7 @@ class LifeCycleCosts:
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return self._yearly_operational_costs
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def calculate_total_operational_incomes(self):
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def calculate_total_operational_incomes(self, retrofitting_scenario):
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"""
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Calculate total operational incomes
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:return: pd.DataFrame
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@ -321,6 +324,9 @@ class LifeCycleCosts:
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building = self._building
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if cte.YEAR not in building.onsite_electrical_production:
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onsite_electricity_production = 0
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else:
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if retrofitting_scenario == 0 or retrofitting_scenario == 1:
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onsite_electricity_production = 0
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else:
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onsite_electricity_production = building.onsite_electrical_production[cte.YEAR][0]/1000
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@ -348,8 +354,8 @@ class LifeCycleCosts:
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roof_area += roof.solid_polygon.area
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surface_pv = roof_area * 0.5
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peak_heating = building.heating_peak_load[cte.YEAR][cte.HEATING_PEAK_LOAD][0]
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peak_cooling = building.cooling_peak_load[cte.YEAR][cte.COOLING_PEAK_LOAD][0]
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peak_heating = building.heating_peak_load[cte.YEAR][0]/1000
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peak_cooling = building.heating_peak_load[cte.YEAR][0]/1000
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maintenance_heating_0 = peak_heating * archetype.operational_cost.maintenance_heating
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maintenance_cooling_0 = peak_cooling * archetype.operational_cost.maintenance_cooling
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60
costs/printing_results.py
Normal file
60
costs/printing_results.py
Normal file
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@ -0,0 +1,60 @@
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import numpy as np
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import plotly.graph_objects as go
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import plotly.offline as offline
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import matplotlib.pyplot as plt
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import plotly.express as px
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def printing_results(investmentcosts, life_cycle_results,total_floor_area):
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labels = investmentcosts.index
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values = investmentcosts['retrofitting_scenario 1']
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values2 = investmentcosts['retrofitting_scenario 2']
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values3 = investmentcosts['retrofitting_scenario 3']
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fig = go.Figure(data=[go.Pie(labels=labels, values=values)])
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fig2 = go.Figure(data=[go.Pie(labels=labels, values=values2)])
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fig3 = go.Figure(data=[go.Pie(labels=labels, values=values3)])
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# Set the layout properties
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fig.update_layout(
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title='Retrofitting scenario 1',
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showlegend=True
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)
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fig2.update_layout(
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title='Retrofitting scenario 1',
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showlegend=True
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)
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fig3.update_layout(
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title='Retrofitting scenario 1',
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showlegend=True
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)
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# Display the chart
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fig.show()
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fig2.show()
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fig3.show()
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df = life_cycle_results / total_floor_area
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# Transpose the DataFrame (swap columns and rows)
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df_swapped = df.transpose()
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# Reset the index to make the current index a regular column
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df_swapped = df_swapped.reset_index()
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# Assign new column names
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df_swapped.columns = ['Scenarios', 'total_capital_costs_skin',
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'total_capital_costs_systems',
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'end_of_life_costs',
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'total_operational_costs',
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'total_maintenance_costs',
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'operational_incomes',
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'capital_incomes']
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df_swapped.index = df_swapped['Scenarios']
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df_swapped = df_swapped.drop('Scenarios', axis=1)
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print(df_swapped)
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fig = px.bar(df_swapped, title='Life Cycle Costs for buildings')
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fig.show()
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# Display the chart
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plt.show()
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294
input_files/summerschool_one_building.geojson
Normal file
294
input_files/summerschool_one_building.geojson
Normal file
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@ -0,0 +1,294 @@
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{
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"type": "FeatureCollection",
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"features": [
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{
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"type": "Feature",
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"id": 12,
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"geometry": {
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"type": "Polygon",
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"coordinates": [
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[
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[
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||||
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||||
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}
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]
|
||||
}
|
Loading…
Reference in New Issue
Block a user