Documentation: energypylinear.adgefficiency.com
A Python library for optimizing energy assets with mixed-integer linear programming:
- electric batteries,
- combined heat & power (CHP) generators,
- electric vehicle smart charging,
- heat pumps,
- renewable (wind & solar) generators.
Assets can be optimized to either maximize profit or minimize carbon emissions, or for user defined custom objective functions. Custom constraints can be used to further constrain asset behaviour.
A site is a collection of assets that can be optimized together. Sites can use custom objectives and constraints.
Energy balances are performed on electricity, high, and low temperature heat.
Requires Python 3.11 or 3.12:
$ pip install energypylinear The asset API allows optimizing a single asset at once:
import energypylinear as epl # 2.0 MW, 4.0 MWh battery asset = epl.Battery( power_mw=2, capacity_mwh=4, efficiency_pct=0.9, # different electricity prices for each interval # length of electricity_prices is the length of the simulation electricity_prices=[100.0, 50, 200, -100, 0, 200, 100, -100], # a constant value for each interval export_electricity_prices=40, ) simulation = asset.optimize()The site API allows optimizing multiple assets together:
import energypylinear as epl assets = [ # 2.0 MW, 4.0 MWh battery epl.Battery(power_mw=2.0, capacity_mwh=4.0), # 30 MW open cycle generator epl.CHP( electric_power_max_mw=100, electric_power_min_mw=30, electric_efficiency_pct=0.4 ), # 2 EV chargers & 4 charge events epl.EVs( chargers_power_mw=[100, 100], charge_events_capacity_mwh=[50, 100, 30, 40], charge_events=[ [1, 0, 0, 0, 0], [0, 1, 1, 1, 0], [0, 0, 0, 1, 1], [0, 1, 0, 0, 0], ], ), # natural gas boiler to generate high temperature heat epl.Boiler(), # valve to generate low temperature heat from high temperature heat epl.Valve(), ] site = epl.Site( assets=assets, # length of energy prices is the length of the simulation electricity_prices=[100, 50, 200, -100, 0], # these should match the length of the export_electricity_prices # if they don't, they will be repeated or cut to match the length of electricity_prices high_temperature_load_mwh=[105, 110, 120, 110, 105], low_temperature_load_mwh=[105, 110, 120, 110, 105], ) simulation = site.optimize()See more asset types & use cases in the documentation.
$ make test