Source code for climind.readers.reader_dcent_ts

#  Climate indicator manager - a package for managing and building climate indicator dashboards.
#  Copyright (c) 2024 John Kennedy
#
#  This program is free software: you can redistribute it and/or modify
#  it under the terms of the GNU General Public License as published by
#  the Free Software Foundation, either version 3 of the License, or
#  (at your option) any later version.
#
#  This program is distributed in the hope that it will be useful,
#  but WITHOUT ANY WARRANTY; without even the implied warranty of
#  MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE.  See the
#  GNU General Public License for more details.
#
#  You should have received a copy of the GNU General Public License
#  along with this program.  If not, see <http://www.gnu.org/licenses/>.
from pathlib import Path
from typing import List
import xarray as xa
import numpy as np

import climind.data_types.timeseries as ts
import climind.data_types.grid as gd

from climind.data_manager.metadata import CombinedMetadata

from climind.readers.generic_reader import read_ts


[docs] def read_monthly_grid(filename: List[Path], metadata: CombinedMetadata) -> gd.GridMonthly: df = xa.open_dataset(filename[0]) if metadata['variable'] == 'temperature': df = df[['temperature']] elif metadata['variable'] == 'sst': df = df[['sst']] elif metadata['variable'] == 'lsat': df = df[['lsat']] metadata['history'] = [f"Gridded dataset created from file {metadata['filename']} " f"downloaded from {metadata['url']}"] return gd.GridMonthly(df, metadata)
[docs] def read_monthly_5x5_grid(filename: List[Path], metadata: CombinedMetadata, **kwargs) -> gd.GridMonthly: return read_monthly_grid(filename, metadata)
[docs] def read_monthly_1x1_grid(filename: List[Path], metadata: CombinedMetadata, **kwargs) -> gd.GridMonthly: df = xa.open_dataset(filename[0]) # regrid to 1x1 lats = np.arange(-89.5, 90.5, 1.0) lons = np.arange(-179.5, 180.5, 1.0) # Copy 5-degree grid cell value into all one degree cells grid = np.repeat(df.temperature, 5, 1) grid = np.repeat(grid, 5, 2) df = gd.make_xarray(grid, df.time.data, lats, lons) metadata.creation_message() metadata['history'].append("Regridded to 1 degree latitude-longitude resolution") return gd.GridMonthly(df, metadata)
[docs] def read_monthly_ts(filename: List[Path], metadata: CombinedMetadata) -> ts.TimeSeriesMonthly: grid = read_monthly_grid(filename, metadata) weights = np.cos(np.deg2rad(grid.df.lat)) area_average = grid.df.weighted(weights).mean(dim=("lat", "lon")) time = grid.df.time.data years = time.astype('datetime64[Y]').astype(int) + 1970 months = time.astype('datetime64[M]').astype(int) % 12 + 1 years = years.tolist() months = months.tolist() if metadata['variable'] == 'tas': anomalies = area_average.temperature.data.tolist() elif metadata['variable'] == 'sst': anomalies = area_average.sst.data.tolist() elif metadata['variable'] == 'lsat': anomalies = area_average.lsat.data.tolist() metadata.creation_message() return ts.TimeSeriesMonthly(years, months, anomalies, metadata=metadata)
[docs] def read_annual_ts(filename: List[Path], metadata: CombinedMetadata) -> ts.TimeSeriesAnnual: monthly = read_monthly_ts(filename, metadata) annual = monthly.make_annual() return annual