PROGNOS - High Resolution Deterministic Prediction System (HRDPS) statistically post-processed by PROGNOS-MLR

Statistical post-processing of forecasts from numerical weather and environmental models, including the High Resolution Deterministic Prediction System (HRDPS), helps reduce systematic biases and error variance in raw forecasts. This is achieved by establishing optimized statistical relationships between observations recorded at stations and numerical model outputs at nearby grid points. The PROGNOS system is a software package developed by Environment and Climate Change Canada that enables this. Relationships are built using the 'Model Output Statistics' (MOS) method and multiple linear regression (MLR). Currently, only the air temperature at 1.5 meters above the Earth's surface is statistically post-processed. The absence of statistically post-processed forecasts can be due to the unavailability of a statistical model caused by insufficient observation quality or quantity. The geographical region covered by this data includes the territory covered by Canadian meteorological stations and some American buoys. For the HRDPS, statistically post-processed forecasts are available at the same issuance frequency as the raw forecasts produced by numerical models (e.g., 00Z, 06Z, 12Z, 18Z) and at hourly forecast lead times, from 00 to 48 hours.

  • Statistical post-processing
  • Machine learning
  • Multiple linear regression
  • PROGNOS
  • Environmental forecast
  • Point forecast
  • Weather forecasts
  • Air temperature
  • Wind

Browse

Queryables

Schema

Temporal extent

Links

Reference Systems

Storage CRS

Powered by
0.20.0
|
msc-pygeoapi
0.17.1