Files
EOS/tests/test_geneticoptimize.py
Bobby Noelte eb9e966de9 fix: move data management to async (#1015)
FAstAPI is an async framework. Data may be imported and exported, load and save, set and get
asynchronously. Prevent interleaving data operations to corrupt the data. In the previous design
sync and async data access was intermixed leading to data corruption.

The basic data classes DataSequence and DataContainer and the derived classes like Provider and
Measurement now are async. Data access is protected by several async locks.

To support the async design of the data classes the database interface became async.

The energy management is also adapted to the new async design. Optimization is still off-loaded
to another thread, but the prepration for the optimization and the post optimization actions now
follow the async design.

Adapter operations are now also protected by async locks.

Tests were adapted to the async design and new tests were created.

Besides this major fix several other improvements and fixes are included in this PR.

* fix: key_to_dict/list/array only regard data records with key value set.

  Before the exclusion of no value data records was only done if the dropna flag was set.

* fix: test for visual result pdf generation

  Due to updates in the library the generated charts text was a little bit different.
  Adapt the test to create the comaprison pdf in the test data durectory and
  update the reference pdf.

* chore: Remove MutableMapping from DataSequence and DataContainer.

  Mutable Mapping does not fit to the now async design.

* chore: Add NoDB database backend

  This backend implements the full database backend interface but performs
  no actual persistence. It is intended for configurations where database
  persistence is disabled (`provider=None`).

* chore: Improve measurement data import testing with real world scenarios.

  Added two new endpoints to support testing.

* chore: Add mermaid to supported documentation tools

* chore: Add documentation about async design

* chore: Add documentation about generic data handling

  Covers the basics of measurement and prediction time series data handling.

* chore: Add empty lines around markdown lists.

* chore: sync pre-commit config to updated package versions

Signed-off-by: Bobby Noelte <b0661n0e17e@gmail.com>
2026-07-15 16:38:53 +02:00

156 lines
5.3 KiB
Python

import json
from pathlib import Path
from typing import Any
from unittest.mock import patch
import pytest
from akkudoktoreos.config.config import ConfigEOS
from akkudoktoreos.core.cache import CacheEnergyManagementStore
from akkudoktoreos.core.coreabc import get_ems
from akkudoktoreos.optimization.genetic.genetic import GeneticOptimization
from akkudoktoreos.optimization.genetic.geneticparams import (
GeneticOptimizationParameters,
)
from akkudoktoreos.optimization.genetic.geneticsolution import GeneticSolution
from akkudoktoreos.utils.datetimeutil import to_datetime
from akkudoktoreos.utils.visualize import (
prepare_visualize, # Import the new prepare_visualize
)
ems_eos = get_ems(init=True) # init once
DIR_TESTDATA = Path(__file__).parent / "testdata"
def compare_dict(actual: dict[str, Any], expected: dict[str, Any]):
assert set(actual) == set(expected)
for key, value in expected.items():
if isinstance(value, dict):
assert isinstance(actual[key], dict)
compare_dict(actual[key], value)
elif isinstance(value, list):
assert isinstance(actual[key], list)
assert actual[key] == pytest.approx(value)
else:
assert actual[key] == pytest.approx(value)
@pytest.mark.asyncio
@pytest.mark.parametrize(
"fn_in, fn_out, ngen, break_even",
[
("optimize_input_1.json", "optimize_result_1.json", 3, 0),
("optimize_input_2.json", "optimize_result_2.json", 3, 0),
("optimize_input_2.json", "optimize_result_2_full.json", 400, 0),
("optimize_input_1.json", "optimize_result_1_be.json", 3, 1),
("optimize_input_2.json", "optimize_result_2_be.json", 3, 1),
],
)
def test_optimize(
fn_in: str,
fn_out: str,
ngen: int,
break_even: int,
config_eos: ConfigEOS,
is_finalize: bool,
):
"""Test optimierung_ems."""
# Test parameters
fixed_start_hour = 10
fixed_seed = 42
# Assure configuration holds the correct values
config_eos.merge_settings_from_dict(
{
"prediction": {
"hours": 48
},
"optimization": {
"horizon_hours": 48,
"genetic": {
"individuals": 300,
"generations": 10,
"penalties": {
"ev_soc_miss": 10,
"ac_charge_break_even": break_even,
}
}
},
"devices": {
"max_electric_vehicles": 1,
"electric_vehicles": [
{
"charge_rates": [0.0, 0.375, 0.5, 0.625, 0.75, 0.875, 1.0],
}
],
}
}
)
# Load input and output data
file = DIR_TESTDATA / fn_in
with file.open("r") as f_in:
input_data = GeneticOptimizationParameters(**json.load(f_in))
file = DIR_TESTDATA / fn_out
# In case a new test case is added, we don't want to fail here, so the new output is written
# to disk before
try:
with file.open("r") as f_out:
expected_data = json.load(f_out)
expected_result = GeneticSolution(**expected_data)
except FileNotFoundError:
pass
# Fake energy management run start datetime
ems_eos.set_start_datetime(to_datetime().set(hour=fixed_start_hour))
# Throw away any cached results of the last energy management run.
CacheEnergyManagementStore().clear()
genetic_optimization = GeneticOptimization(fixed_seed=fixed_seed)
# Activate with pytest --finalize
if ngen > 10 and not is_finalize:
pytest.skip()
visualize_filename = str((DIR_TESTDATA / f"new_{fn_out}").with_suffix(".pdf"))
with patch(
"akkudoktoreos.utils.visualize.prepare_visualize",
side_effect=lambda parameters, results, *args, **kwargs: prepare_visualize(
parameters, results, filename=visualize_filename, **kwargs
),
) as prepare_visualize_patch:
# Call the optimization function
genetic_solution = genetic_optimization.optimierung_ems(
parameters=input_data, start_hour=fixed_start_hour, ngen=ngen
)
# The function creates a visualization result PDF as a side-effect.
prepare_visualize_patch.assert_called_once()
assert Path(visualize_filename).exists()
# Write test output to file, so we can take it as new data on intended change
TESTDATA_FILE = DIR_TESTDATA / f"new_{fn_out}"
with TESTDATA_FILE.open("w", encoding="utf-8", newline="\n") as f_out:
f_out.write(genetic_solution.model_dump_json(indent=4, exclude_unset=True))
assert genetic_solution.result.Gesamtbilanz_Euro == pytest.approx(
expected_result.result.Gesamtbilanz_Euro
)
# Assert that the output contains all expected entries.
# This does not assert that the optimization always gives the same result!
# Reproducibility and mathematical accuracy should be tested on the level of individual components.
compare_dict(genetic_solution.model_dump(), expected_result.model_dump())
# Check the correct generic optimization solution is created
optimization_solution = genetic_solution.optimization_solution()
# @TODO
# Check the correct generic energy management plan is created
plan = genetic_solution.energy_management_plan()
# @TODO