pvlib.iotools.get_acis_mpe#

pvlib.iotools.get_acis_mpe(latitude, longitude, start, end, map_variables=True, url='https://data.rcc-acis.org/GridData', **kwargs)[source]#

Retrieve estimated daily Multi-sensor Precipitation Estimates via the Applied Climate Information System (ACIS).

ACIS 2, 3 aggregates and provides access to climate data from many underlying sources. This function retrieves daily data from the National Weather Service’s Multi-sensor Precipitation Estimates (MPE) 1, a gridded precipitation model.

This dataset covers the contiguous United States, Mexico, and parts of Central America.

Parameters
  • latitude (float) – in decimal degrees, between -90 and 90, north is positive

  • longitude (float) – in decimal degrees, between -180 and 180, east is positive

  • start (datetime-like) – First day of the requested period

  • end (datetime-like) – Last day of the requested period

  • map_variables (bool, default True) – When True, rename data columns and metadata keys to pvlib variable names where applicable. See variable VARIABLE_MAP.

  • url (str, default: ‘https://data.rcc-acis.org/GridData’) – API endpoint URL

  • kwargs – Optional parameters passed to requests.post.

Returns

  • data (pandas.DataFrame) – Daily precipitation [mm] data

  • metadata (dict) – Coordinates of the selected grid cell

Raises

requests.HTTPError – A message from the ACIS server if the request is rejected

Notes

The returned values are 24-hour aggregates, but the aggregation period may not be midnight to midnight in local time. Check the ACIS and MPE documentation for details.

References

1

Multisensor Precipitation Estimates

2

ACIS Gridded Data

3

ACIS Web Services

Examples

>>> from pvlib.iotools import get_acis_mpe
>>> df, meta = get_acis_mpe(40, -80, '2020-01-01', '2020-12-31')