Files
EOS/tests/test_weatherclearoutside.py
Bobby Noelte b397b5d43e fix: automatic optimization (#596)
This fix implements the long term goal to have the EOS server run optimization (or
energy management) on regular intervals automatically. Thus clients can request
the current energy management plan at any time and it is updated on regular
intervals without interaction by the client.

This fix started out to "only" make automatic optimization (or energy management)
runs working. It turned out there are several endpoints that in some way
update predictions or run the optimization. To lock against such concurrent attempts
the code had to be refactored to allow control of execution. During refactoring it
became clear that some classes and files are named without a proper reference
to their usage. Thus not only refactoring but also renaming became necessary.
The names are still not the best, but I hope they are more intuitive.

The fix includes several bug fixes that are not directly related to the automatic optimization
but are necessary to keep EOS running properly to do the automatic optimization and
to test and document the changes.

This is a breaking change as the configuration structure changed once again and
the server API was also enhanced and streamlined. The server API that is used by
Andreas and Jörg in their videos has not changed.

* fix: automatic optimization

  Allow optimization to automatically run on configured intervals gathering all
  optimization parameters from configuration and predictions. The automatic run
  can be configured to only run prediction updates skipping the optimization.
  Extend documentaion to also cover automatic optimization. Lock automatic runs
  against runs initiated by the /optimize or other endpoints. Provide new
  endpoints to retrieve the energy management plan and the genetic solution
  of the latest automatic optimization run. Offload energy management to thread
  pool executor to keep the app more responsive during the CPU heavy optimization
  run.

* fix: EOS servers recognize environment variables on startup

  Force initialisation of EOS configuration on server startup to assure
  all sources of EOS configuration are properly set up and read. Adapt
  server tests and configuration tests to also test for environment
  variable configuration.

* fix: Remove 0.0.0.0 to localhost translation under Windows

  EOS imposed a 0.0.0.0 to localhost translation under Windows for
  convenience. This caused some trouble in user configurations. Now, as the
  default IP address configuration is 127.0.0.1, the user is responsible
  for to set up the correct Windows compliant IP address.

* fix: allow names for hosts additional to IP addresses

* fix: access pydantic model fields by class

  Access by instance is deprecated.

* fix: down sampling key_to_array

* fix: make cache clear endpoint clear all cache files

  Make /v1/admin/cache/clear clear all cache files. Before it only cleared
  expired cache files by default. Add new endpoint /v1/admin/clear-expired
  to only clear expired cache files.

* fix: timezonefinder returns Europe/Paris instead of Europe/Berlin

  timezonefinder 8.10 got more inaccurate for timezones in europe as there is
  a common timezone. Use new package tzfpy instead which is still returning
  Europe/Berlin if you are in Germany. tzfpy also claims to be faster than
  timezonefinder.

* fix: provider settings configuration

  Provider configuration used to be a union holding the settings for several
  providers. Pydantic union handling does not always find the correct type
  for a provider setting. This led to exceptions in specific configurations.
  Now provider settings are explicit comfiguration items for each possible
  provider. This is a breaking change as the configuration structure was
  changed.

* fix: ClearOutside weather prediction irradiance calculation

  Pvlib needs a pandas time index. Convert time index.

* fix: test config file priority

  Do not use config_eos fixture as this fixture already creates a config file.

* fix: optimization sample request documentation

  Provide all data in documentation of optimization sample request.

* fix: gitlint blocking pip dependency resolution

  Replace gitlint by commitizen. Gitlint is not actively maintained anymore.
  Gitlint dependencies blocked pip from dependency resolution.

* fix: sync pre-commit config to actual dependency requirements

  .pre-commit-config.yaml was out of sync, also requirements-dev.txt.

* fix: missing babel in requirements.txt

  Add babel to requirements.txt

* feat: setup default device configuration for automatic optimization

  In case the parameters for automatic optimization are not fully defined a
  default configuration is setup to allow the automatic energy management
  run. The default configuration may help the user to correctly define
  the device configuration.

* feat: allow configuration of genetic algorithm parameters

  The genetic algorithm parameters for number of individuals, number of
  generations, the seed and penalty function parameters are now avaliable
  as configuration options.

* feat: allow configuration of home appliance time windows

  The time windows a home appliance is allowed to run are now configurable
  by the configuration (for /v1 API) and also by the home appliance parameters
  (for the classic /optimize API). If there is no such configuration the
  time window defaults to optimization hours, which was the standard before
  the change. Documentation on how to configure time windows is added.

* feat: standardize mesaurement keys for battery/ ev SoC measurements

  The standardized measurement keys to report battery SoC to the device
  simulations can now be retrieved from the device configuration as a
  read-only config option.

* feat: feed in tariff prediction

  Add feed in tarif predictions needed for automatic optimization. The feed in
  tariff can be retrieved as fixed feed in tarif or can be imported. Also add
  tests for the different feed in tariff providers. Extend documentation to
  cover the feed in tariff providers.

* feat: add energy management plan based on S2 standard instructions

  EOS can generate an energy management plan as a list of simple instructions.
  May be retrieved by the /v1/energy-management/plan endpoint. The instructions
  loosely follow the S2 energy management standard.

* feat: make measurement keys configurable by EOS configuration.

  The fixed measurement keys are replaced by configurable measurement keys.

* feat: make pendulum DateTime, Date, Duration types usable for pydantic models

  Use pydantic_extra_types.pendulum_dt to get pydantic pendulum types. Types are
  added to the datetimeutil utility. Remove custom made pendulum adaptations
  from EOS pydantic module. Make EOS modules use the pydantic pendulum types
  managed by the datetimeutil module instead of the core pendulum types.

* feat: Add Time, TimeWindow, TimeWindowSequence and to_time to datetimeutil.

  The time windows are are added to support home appliance time window
  configuration. All time classes are also pydantic models. Time is the base
  class for time definition derived from pendulum.Time.

* feat: Extend DataRecord by configurable field like data.

  Configurable field like data was added to support the configuration of
  measurement records.

* feat: Add additional information to health information

  Version information is added to the health endpoints of eos and eosDash.
  The start time of the last optimization and the latest run time of the energy
  management is added to the EOS health information.

* feat: add pydantic merge model tests

* feat: add plan tab to EOSdash

  The plan tab displays the current energy management instructions.

* feat: add predictions tab to EOSdash

  The predictions tab displays the current predictions.

* feat: add cache management to EOSdash admin tab

  The admin tab is extended by a section for cache management. It allows to
  clear the cache.

* feat: add about tab to EOSdash

  The about tab resembles the former hello tab and provides extra information.

* feat: Adapt changelog and prepare for release management

  Release management using commitizen is added. The changelog file is adapted and
  teh changelog and a description for release management is added in the
  documentation.

* feat(doc): Improve install and devlopment documentation

  Provide a more concise installation description in Readme.md and add extra
  installation page and development page to documentation.

* chore: Use memory cache for interpolation instead of dict in inverter

  Decorate calculate_self_consumption() with @cachemethod_until_update to cache
  results in memory during an energy management/ optimization run. Replacement
  of dict type caching in inverter is now possible because all optimization
  runs are properly locked and the memory cache CacheUntilUpdateStore is properly
  cleared at the start of any energy management/ optimization operation.

* chore: refactor genetic

  Refactor the genetic algorithm modules for enhanced module structure and better
  readability. Removed unnecessary and overcomplex devices singleton. Also
  split devices configuration from genetic algorithm parameters to allow further
  development independently from genetic algorithm parameter format. Move
  charge rates configuration for electric vehicles from optimization to devices
  configuration to allow to have different charge rates for different cars in
  the future.

* chore: Rename memory cache to CacheEnergyManagementStore

  The name better resembles the task of the cache to chache function and method
  results for an energy management run. Also the decorator functions are renamed
  accordingly: cachemethod_energy_management, cache_energy_management

* chore: use class properties for config/ems/prediction mixin classes

* chore: skip debug logs from mathplotlib

  Mathplotlib is very noisy in debug mode.

* chore: automatically sync bokeh js to bokeh python package

  bokeh was updated to 3.8.0, make JS CDN automatically follow the package version.

* chore: rename hello.py to about.py

  Make hello.py the adapted EOSdash about page.

* chore: remove demo page from EOSdash

  As no the plan and prediction pages are working without configuration, the demo
  page is no longer necessary

* chore: split test_server.py for system test

  Split test_server.py to create explicit test_system.py for system tests.

* chore: move doc utils to generate_config_md.py

  The doc utils are only used in scripts/generate_config_md.py. Move it there to
  attribute for strong cohesion.

* chore: improve pydantic merge model documentation

* chore: remove pendulum warning from readme

* chore: remove GitHub discussions from contributing documentation

  Github discussions is to be replaced by Akkudoktor.net.

* chore(release): bump version to 0.1.0+dev for development

* build(deps): bump fastapi[standard] from 0.115.14 to 0.117.1

  bump fastapi and make coverage version (for pytest-cov) explicit to avoid pip break.

* build(deps): bump uvicorn from 0.36.0 to 0.37.0

BREAKING CHANGE: EOS configuration changed. V1 API changed.

  - The available_charge_rates_percent configuration is removed from optimization.
    Use the new charge_rate configuration for the electric vehicle
  - Optimization configuration parameter hours renamed to horizon_hours
  - Device configuration now has to provide the number of devices and device
    properties per device.
  - Specific prediction provider configuration to be provided by explicit
    configuration item (no union for all providers).
  - Measurement keys to be provided as a list.
  - New feed in tariff providers have to be configured.
  - /v1/measurement/loadxxx endpoints are removed. Use generic mesaurement endpoints.
  - /v1/admin/cache/clear now clears all cache files. Use
    /v1/admin/cache/clear-expired to only clear all expired cache files.

Signed-off-by: Bobby Noelte <b0661n0e17e@gmail.com>
2025-10-28 02:50:31 +01:00

579 lines
17 KiB
Python

import re
from datetime import datetime, timedelta, timezone
from pathlib import Path
from unittest.mock import Mock, patch
import numpy as np
import pandas as pd
import pvlib
import pytest
from bs4 import BeautifulSoup
from akkudoktoreos.core.cache import CacheFileStore
from akkudoktoreos.core.ems import get_ems
from akkudoktoreos.prediction.weatherclearoutside import WeatherClearOutside
from akkudoktoreos.utils.datetimeutil import compare_datetimes, to_datetime
DIR_TESTDATA = Path(__file__).absolute().parent.joinpath("testdata")
FILE_TESTDATA_WEATHERCLEAROUTSIDE_1_HTML = DIR_TESTDATA.joinpath("weatherforecast_clearout_1.html")
FILE_TESTDATA_WEATHERCLEAROUTSIDE_1_DATA = DIR_TESTDATA.joinpath("weatherforecast_clearout_1.json")
@pytest.fixture
def provider(config_eos):
"""Fixture to create a WeatherProvider instance."""
settings = {
"weather": {
"provider": "ClearOutside",
},
"general": {
"latitude": 50.0,
"longitude": 10.0,
},
}
config_eos.merge_settings_from_dict(settings)
return WeatherClearOutside()
@pytest.fixture
def sample_clearout_1_html():
"""Fixture that returns sample forecast data report."""
with FILE_TESTDATA_WEATHERCLEAROUTSIDE_1_HTML.open(
"r", encoding="utf-8", newline=None
) as f_res:
input_data = f_res.read()
return input_data
@pytest.fixture
def sample_clearout_1_data():
"""Fixture that returns sample forecast data."""
with FILE_TESTDATA_WEATHERCLEAROUTSIDE_1_DATA.open("r", encoding="utf-8", newline=None) as f_in:
json_str = f_in.read()
data = WeatherClearOutside.from_json(json_str)
return data
@pytest.fixture
def cache_store():
"""A pytest fixture that creates a new CacheFileStore instance for testing."""
return CacheFileStore()
# ------------------------------------------------
# General WeatherProvider
# ------------------------------------------------
def test_singleton_instance(provider):
"""Test that WeatherForecast behaves as a singleton."""
another_instance = WeatherClearOutside()
assert provider is another_instance
def test_invalid_provider(provider, config_eos):
"""Test requesting an unsupported provider."""
settings = {
"weather": {
"provider": "<invalid>",
}
}
with pytest.raises(ValueError, match="not a valid weather provider"):
config_eos.merge_settings_from_dict(settings)
def test_invalid_coordinates(provider, config_eos):
"""Test invalid coordinates raise ValueError."""
settings = {
"weather": {
"provider": "ClearOutside",
},
"general": {
"latitude": 1000.0,
"longitude": 1000.0,
},
}
with pytest.raises(
ValueError, # match="Latitude '1000' and/ or longitude `1000` out of valid range."
):
config_eos.merge_settings_from_dict(settings)
# ------------------------------------------------
# Irradiance caclulation
# ------------------------------------------------
def test_irridiance_estimate_from_cloud_cover(provider):
"""Test cloud cover to irradiance estimation."""
cloud_cover_data = pd.Series(
data=[20, 50, 80], index=pd.date_range("2023-10-22", periods=3, freq="h")
)
ghi, dni, dhi = provider.estimate_irradiance_from_cloud_cover(50.0, 10.0, cloud_cover_data)
assert ghi == [0, 0, 0]
assert dhi == [0, 0, 0]
assert dni == [0, 0, 0]
# ------------------------------------------------
# ClearOutside
# ------------------------------------------------
@patch("requests.get")
def test_request_forecast(mock_get, provider, sample_clearout_1_html, config_eos):
"""Test fetching forecast from ClearOutside."""
# Mock response object
mock_response = Mock()
mock_response.status_code = 200
mock_response.content = sample_clearout_1_html
mock_get.return_value = mock_response
# Preset, as this is usually done by update()
config_eos.update()
# Test function
response = provider._request_forecast()
assert response.status_code == 200
assert response.content == sample_clearout_1_html
@patch("requests.get")
def test_update_data(mock_get, provider, sample_clearout_1_html, sample_clearout_1_data):
# Mock response object
mock_response = Mock()
mock_response.status_code = 200
mock_response.content = sample_clearout_1_html
mock_get.return_value = mock_response
expected_start = to_datetime("2024-10-26 00:00:00", in_timezone="Europe/Berlin")
expected_end = to_datetime("2024-10-28 00:00:00", in_timezone="Europe/Berlin")
expected_keep = to_datetime("2024-10-24 00:00:00", in_timezone="Europe/Berlin")
# Call the method
ems_eos = get_ems()
ems_eos.set_start_datetime(expected_start)
provider.update_data()
# Check for correct prediction time window
assert provider.config.prediction.hours == 48
assert provider.config.prediction.historic_hours == 48
assert compare_datetimes(provider.ems_start_datetime, expected_start).equal
assert compare_datetimes(provider.end_datetime, expected_end).equal
assert compare_datetimes(provider.keep_datetime, expected_keep).equal
# Verify the data
assert len(provider) == 165 # 6 days, 24 hours per day - 7th day 21 hours
# Check that specific values match the expected output
# for i, record in enumerate(weather_data.records):
# # Compare datetime and specific values
# assert record.datetime == sample_clearout_1_data.records[i].datetime
# assert record.data['total_clouds'] == sample_clearout_1_data.records[i].data['total_clouds']
# # Check additional weather attributes as necessary
@pytest.mark.skip(reason="Test fixture to be improved")
@patch("requests.get")
def test_cache_forecast(mock_get, provider, sample_clearout_1_html, cache_store):
"""Test that ClearOutside forecast data is cached with TTL.
This can not be tested with mock_get. Mock objects are not pickable and therefor can not be
cached to a file. Keep it for documentation.
"""
# Mock response object
mock_response = Mock()
mock_response.status_code = 200
mock_response.content = sample_clearout_1_html
mock_get.return_value = mock_response
cache_store.clear(clear_all=True)
provider.update_data()
mock_get.assert_called_once()
forecast_data_first = provider.to_json()
provider.update_data()
forecast_data_second = provider.to_json()
# Verify that cache returns the same object without calling the method again
assert forecast_data_first == forecast_data_second
# A mock object is not pickable and therefor can not be chached to file
assert mock_get.call_count == 2
# ------------------------------------------------
# Development ClearOutside
# ------------------------------------------------
@pytest.mark.skip(reason="For development only")
@patch("requests.get")
def test_development_forecast_data(mock_get, provider, sample_clearout_1_html):
# Mock response object
mock_response = Mock()
mock_response.status_code = 200
mock_response.content = sample_clearout_1_html
mock_get.return_value = mock_response
# Fill the instance
provider.update_data(force_enable=True)
with FILE_TESTDATA_WEATHERCLEAROUTSIDE_1_DATA.open(
"w", encoding="utf-8", newline="\n"
) as f_out:
f_out.write(provider.to_json())
@pytest.mark.skip(reason="For development only")
def test_clearoutsides_development_scraper(provider, sample_clearout_1_html):
"""Test scraping from ClearOutside."""
soup = BeautifulSoup(sample_clearout_1_html, "html.parser")
# Sample was created for the loacation
lat = 50.0
lon = 10.0
# Find generation data
p_generated = soup.find("h2", string=lambda text: text and text.startswith("Generated:"))
assert p_generated is not None
# Extract forecast start and end dates
forecast_pattern = r"Forecast: (\d{2}/\d{2}/\d{2}) to (\d{2}/\d{2}/\d{2})"
forecast_match = re.search(forecast_pattern, p_generated.get_text())
if forecast_match:
forecast_start_date = forecast_match.group(1)
forecast_end_date = forecast_match.group(2)
else:
assert False
assert forecast_start_date == "26/10/24"
assert forecast_end_date == "01/11/24"
# Extract timezone offset
timezone_pattern = r"Timezone: UTC([+-]\d+)\.(\d+)"
timezone_match = re.search(timezone_pattern, p_generated.get_text())
if timezone_match:
hours = int(timezone_match.group(1))
assert hours == 2
# Convert the decimal part to minutes (e.g., .50 -> 30 minutes)
minutes = int(timezone_match.group(2)) * 6 # Multiply by 6 to convert to minutes
assert minutes == 0
# Create the timezone object using timedelta for the offset
forecast_timezone = timezone(timedelta(hours=hours, minutes=minutes))
else:
assert False
forecast_start_datetime = to_datetime(
forecast_start_date, in_timezone=forecast_timezone, to_naiv=False, to_maxtime=False
)
assert forecast_start_datetime == datetime(2024, 10, 26, 0, 0)
# Find all paragraphs with id 'day_<x>'. There should be seven.
p_days = soup.find_all(id=re.compile(r"day_[0-9]"))
assert len(p_days) == 7
p_day = p_days[0]
# Within day_x paragraph find the details labels
p_detail_labels = p_day.find_all(class_="fc_detail_label")
detail_names = [p.get_text() for p in p_detail_labels]
assert detail_names == [
"Total Clouds (% Sky Obscured)",
"Low Clouds (% Sky Obscured)",
"Medium Clouds (% Sky Obscured)",
"High Clouds (% Sky Obscured)",
"ISS Passover",
"Visibility (miles)",
"Fog (%)",
"Precipitation Type",
"Precipitation Probability (%)",
"Precipitation Amount (mm)",
"Wind Speed/Direction (mph)",
"Chance of Frost",
"Temperature (°C)",
"Feels Like (°C)",
"Dew Point (°C)",
"Relative Humidity (%)",
"Pressure (mb)",
"Ozone (du)",
]
# Find all the paragraphs that are associated to the details.
# Beware there is one ul paragraph before that is not associated to a detail
p_detail_tables = p_day.find_all("ul")
assert len(p_detail_tables) == len(detail_names) + 1
p_detail_tables.pop(0)
# Create clearout data
clearout_data = {}
# Add data values
for i, detail_name in enumerate(detail_names):
p_detail_values = p_detail_tables[i].find_all("li")
detail_data = []
for p_detail_value in p_detail_values:
if (
detail_name in ("Precipitation Type", "Chance of Frost")
and hasattr(p_detail_value, "title")
and p_detail_value.title
):
value_str = p_detail_value.title.string
else:
value_str = p_detail_value.get_text()
try:
value = float(value_str)
except ValueError:
value = value_str
detail_data.append(value)
assert len(detail_data) == 24
clearout_data[detail_name] = detail_data
assert clearout_data["Temperature (°C)"] == [
14.0,
14.0,
13.0,
12.0,
11.0,
11.0,
10.0,
10.0,
9.0,
9.0,
9.0,
9.0,
9.0,
10.0,
9.0,
9.0,
10.0,
11.0,
13.0,
14.0,
15.0,
16.0,
16.0,
16.0,
]
assert clearout_data["Relative Humidity (%)"] == [
59.0,
68.0,
75.0,
81.0,
84.0,
85.0,
85.0,
91.0,
91.0,
93.0,
93.0,
93.0,
93.0,
93.0,
95.0,
95.0,
93.0,
87.0,
81.0,
76.0,
70.0,
66.0,
66.0,
69.0,
]
assert clearout_data["Wind Speed/Direction (mph)"] == [
7.0,
6.0,
4.0,
4.0,
4.0,
4.0,
4.0,
4.0,
3.0,
3.0,
3.0,
2.0,
1.0,
1.0,
1.0,
2.0,
2.0,
2.0,
4.0,
5.0,
6.0,
6.0,
5.0,
5.0,
]
# Add datetimes of the scrapped data
clearout_data["DateTime"] = [forecast_start_datetime + timedelta(hours=i) for i in range(24)]
detail_names.append("DateTime")
assert len(clearout_data["DateTime"]) == 24
assert clearout_data["DateTime"][0] == to_datetime(
"2024-10-26 00:00:00", in_timezone=forecast_timezone
)
assert clearout_data["DateTime"][23] == to_datetime(
"2024-10-26 23:00:00", in_timezone=forecast_timezone
)
# Converting the cloud cover into Global Horizontal Irradiance (GHI) with a PVLib method
offset = 35 # The default
offset_fraction = offset / 100.0 # Adjust percentage to scaling factor
cloud_cover = pd.Series(clearout_data["Total Clouds (% Sky Obscured)"])
# Convert datetime list to a pandas DatetimeIndex
cloud_cover_times = pd.DatetimeIndex(clearout_data["DateTime"])
# Create a location object
location = pvlib.location.Location(latitude=lat, longitude=lon)
# Get solar position and clear-sky GHI using the Ineichen model
solpos = location.get_solarposition(cloud_cover_times)
clear_sky = location.get_clearsky(cloud_cover_times, model="ineichen")
# Convert cloud cover percentage to a scaling factor
cloud_cover_fraction = np.array(cloud_cover) / 100.0
# Calculate adjusted GHI with proportional offset adjustment
adjusted_ghi = clear_sky["ghi"] * (
offset_fraction + (1 - offset_fraction) * (1 - cloud_cover_fraction)
)
adjusted_ghi.fillna(0.0, inplace=True)
# Apply DISC model to estimate Direct Normal Irradiance (DNI) from adjusted GHI
disc_output = pvlib.irradiance.disc(adjusted_ghi, solpos["zenith"], cloud_cover_times)
adjusted_dni = disc_output["dni"]
adjusted_dni.fillna(0.0, inplace=True)
# Calculate Diffuse Horizontal Irradiance (DHI) as DHI = GHI - DNI * cos(zenith)
zenith_rad = np.radians(solpos["zenith"])
adjusted_dhi = adjusted_ghi - adjusted_dni * np.cos(zenith_rad)
adjusted_dhi.fillna(0.0, inplace=True)
# Add GHI, DNI, DHI to clearout data
clearout_data["Global Horizontal Irradiance (W/m2)"] = adjusted_ghi.to_list()
detail_names.append("Global Horizontal Irradiance (W/m2)")
clearout_data["Direct Normal Irradiance (W/m2)"] = adjusted_dni.to_list()
detail_names.append("Direct Normal Irradiance (W/m2)")
clearout_data["Diffuse Horizontal Irradiance (W/m2)"] = adjusted_dhi.to_list()
detail_names.append("Diffuse Horizontal Irradiance (W/m2)")
assert clearout_data["Global Horizontal Irradiance (W/m2)"] == [
0.0,
0.0,
0.0,
0.0,
0.0,
0.0,
0.0,
24.291000436601216,
85.88494154645998,
136.09269403109946,
139.26925350542064,
146.7174434892616,
149.0167479382964,
138.97458866666065,
103.47132353697396,
46.81279774519421,
0.12972168074047014,
0.0,
0.0,
0.0,
0.0,
0.0,
0.0,
0.0,
]
assert clearout_data["Direct Normal Irradiance (W/m2)"] == [
0.0,
0.0,
0.0,
0.0,
0.0,
0.0,
0.0,
0.0,
0.0,
10.19687368654253,
0.0,
0.0,
2.9434862632289804,
9.621272744657047,
9.384995789935898,
0.0,
0.0,
0.0,
0.0,
0.0,
0.0,
0.0,
0.0,
0.0,
]
assert clearout_data["Diffuse Horizontal Irradiance (W/m2)"] == [
0.0,
0.0,
0.0,
0.0,
0.0,
0.0,
0.0,
24.291000436601216,
85.88494154645998,
132.32210426501337,
139.26925350542064,
146.7174434892616,
147.721968406295,
135.32240392326145,
100.82522311704261,
46.81279774519421,
0.12972168074047014,
0.0,
0.0,
0.0,
0.0,
0.0,
0.0,
0.0,
]
# Preciptable Water (PWAT) with a PVLib method
clearout_data["Preciptable Water (cm)"] = pvlib.atmosphere.gueymard94_pw(
pd.Series(data=clearout_data["Temperature (°C)"]),
pd.Series(data=clearout_data["Relative Humidity (%)"]),
).to_list()
detail_names.append("Preciptable Water (cm)")
assert clearout_data["Preciptable Water (cm)"] == [
1.5345406562673334,
1.7686231292572652,
1.8354895631381385,
1.8651290310892348,
1.8197998755611786,
1.8414641597940502,
1.7325709431177607,
1.8548700685143087,
1.7453005409540279,
1.783658794601369,
1.783658794601369,
1.783658794601369,
1.783658794601369,
1.8956364436464912,
1.8220170482487101,
1.8220170482487101,
1.8956364436464912,
1.8847927282597918,
1.9823287281891897,
1.9766964385816497,
1.9346943880237457,
1.9381315133101413,
1.9381315133101413,
2.026228400278784,
]