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test_solver.py
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/
test_solver.py
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from datetime import datetime, timedelta
import pytest
import numpy as np
import pandas as pd
from flexmeasures.data.models.time_series import Sensor
from flexmeasures.data.models.planning.battery import schedule_battery
from flexmeasures.data.models.planning.charging_station import schedule_charging_station
from flexmeasures.utils.calculations import integrate_time_series
from flexmeasures.utils.time_utils import as_server_time
def test_battery_solver_day_1(add_battery_assets):
epex_da = Sensor.query.filter(Sensor.name == "epex_da").one_or_none()
battery = Sensor.query.filter(Sensor.name == "Test battery").one_or_none()
assert Sensor.query.get(battery.get_attribute("market_id")) == epex_da
start = as_server_time(datetime(2015, 1, 1))
end = as_server_time(datetime(2015, 1, 2))
resolution = timedelta(minutes=15)
soc_at_start = battery.get_attribute("soc_in_mwh")
schedule = schedule_battery(battery, start, end, resolution, soc_at_start)
soc_schedule = integrate_time_series(schedule, soc_at_start, decimal_precision=6)
with pd.option_context("display.max_rows", None, "display.max_columns", 3):
print(soc_schedule)
# Check if constraints were met
assert min(schedule.values) >= battery.get_attribute("capacity_in_mw") * -1
assert max(schedule.values) <= battery.get_attribute("capacity_in_mw")
for soc in soc_schedule.values:
assert soc >= battery.get_attribute("min_soc_in_mwh")
assert soc <= battery.get_attribute("max_soc_in_mwh")
def test_battery_solver_day_2(add_battery_assets):
epex_da = Sensor.query.filter(Sensor.name == "epex_da").one_or_none()
battery = Sensor.query.filter(Sensor.name == "Test battery").one_or_none()
assert Sensor.query.get(battery.get_attribute("market_id")) == epex_da
start = as_server_time(datetime(2015, 1, 2))
end = as_server_time(datetime(2015, 1, 3))
resolution = timedelta(minutes=15)
soc_at_start = battery.get_attribute("soc_in_mwh")
schedule = schedule_battery(battery, start, end, resolution, soc_at_start)
soc_schedule = integrate_time_series(schedule, soc_at_start, decimal_precision=6)
with pd.option_context("display.max_rows", None, "display.max_columns", 3):
print(soc_schedule)
# Check if constraints were met
assert min(schedule.values) >= battery.get_attribute("capacity_in_mw") * -1
assert max(schedule.values) <= battery.get_attribute("capacity_in_mw")
for soc in soc_schedule.values:
assert soc >= battery.get_attribute("min_soc_in_mwh")
assert soc <= battery.get_attribute("max_soc_in_mwh")
# Check whether the resulting soc schedule follows our expectations for 8 expensive, 8 cheap and 8 expensive hours
assert soc_schedule.iloc[-1] == battery.get_attribute(
"min_soc_in_mwh"
) # Battery sold out at the end of its planning horizon
assert soc_schedule.loc[start + timedelta(hours=8)] == battery.get_attribute(
"min_soc_in_mwh"
) # Sell what you begin with
assert soc_schedule.loc[start + timedelta(hours=16)] == battery.get_attribute(
"max_soc_in_mwh"
) # Buy what you can to sell later
@pytest.mark.parametrize(
"target_soc, charging_station_name",
[
(1, "Test charging station"),
(5, "Test charging station"),
(0, "Test charging station (bidirectional)"),
(5, "Test charging station (bidirectional)"),
],
)
def test_charging_station_solver_day_2(target_soc, charging_station_name):
"""Starting with a state of charge 1 kWh, within 2 hours we should be able to reach
any state of charge in the range [1, 5] kWh for a unidirectional station,
or [0, 5] for a bidirectional station, given a charging capacity of 2 kW.
"""
soc_at_start = 1
duration_until_target = timedelta(hours=2)
epex_da = Sensor.query.filter(Sensor.name == "epex_da").one_or_none()
charging_station = Sensor.query.filter(
Sensor.name == charging_station_name
).one_or_none()
assert charging_station.get_attribute("capacity_in_mw") == 2
assert Sensor.query.get(charging_station.get_attribute("market_id")) == epex_da
start = as_server_time(datetime(2015, 1, 2))
end = as_server_time(datetime(2015, 1, 3))
resolution = timedelta(minutes=15)
target_soc_datetime = start + duration_until_target
soc_targets = pd.Series(
np.nan, index=pd.date_range(start, end, freq=resolution, closed="right")
)
soc_targets.loc[target_soc_datetime] = target_soc
consumption_schedule = schedule_charging_station(
charging_station, start, end, resolution, soc_at_start, soc_targets
)
soc_schedule = integrate_time_series(
consumption_schedule, soc_at_start, decimal_precision=6
)
# Check if constraints were met
assert (
min(consumption_schedule.values)
>= charging_station.get_attribute("capacity_in_mw") * -1
)
assert max(consumption_schedule.values) <= charging_station.get_attribute(
"capacity_in_mw"
)
print(consumption_schedule.head(12))
print(soc_schedule.head(12))
assert abs(soc_schedule.loc[target_soc_datetime] - target_soc) < 0.00001
@pytest.mark.parametrize(
"target_soc, charging_station_name",
[
(9, "Test charging station"),
(15, "Test charging station"),
(5, "Test charging station (bidirectional)"),
(15, "Test charging station (bidirectional)"),
],
)
def test_fallback_to_unsolvable_problem(target_soc, charging_station_name):
"""Starting with a state of charge 10 kWh, within 2 hours we should be able to reach
any state of charge in the range [10, 14] kWh for a unidirectional station,
or [6, 14] for a bidirectional station, given a charging capacity of 2 kW.
Here we test target states of charge outside that range, ones that we should be able
to get as close to as 1 kWh difference.
We want our scheduler to handle unsolvable problems like these with a sensible fallback policy.
"""
soc_at_start = 10
duration_until_target = timedelta(hours=2)
expected_gap = 1
epex_da = Sensor.query.filter(Sensor.name == "epex_da").one_or_none()
charging_station = Sensor.query.filter(
Sensor.name == charging_station_name
).one_or_none()
assert charging_station.get_attribute("capacity_in_mw") == 2
assert Sensor.query.get(charging_station.get_attribute("market_id")) == epex_da
start = as_server_time(datetime(2015, 1, 2))
end = as_server_time(datetime(2015, 1, 3))
resolution = timedelta(minutes=15)
target_soc_datetime = start + duration_until_target
soc_targets = pd.Series(
np.nan, index=pd.date_range(start, end, freq=resolution, closed="right")
)
soc_targets.loc[target_soc_datetime] = target_soc
consumption_schedule = schedule_charging_station(
charging_station, start, end, resolution, soc_at_start, soc_targets
)
soc_schedule = integrate_time_series(
consumption_schedule, soc_at_start, decimal_precision=6
)
# Check if constraints were met
assert (
min(consumption_schedule.values)
>= charging_station.get_attribute("capacity_in_mw") * -1
)
assert max(consumption_schedule.values) <= charging_station.get_attribute(
"capacity_in_mw"
)
print(consumption_schedule.head(12))
print(soc_schedule.head(12))
assert (
abs(abs(soc_schedule.loc[target_soc_datetime] - target_soc) - expected_gap)
< 0.00001
)