Machine learning based post‐processing of model‐derived near‐surface air temperature – A multimodel approach

Author:

Stachura Gabriel123ORCID,Ustrnul Zbigniew23ORCID,Sekuła Piotr3ORCID,Bochenek Bogdan3,Kolonko Marcin3ORCID,Szczęch‐Gajewska Małgorzata3ORCID

Affiliation:

1. Doctoral School of Exact and Natural Sciences Jagiellonian University Kraków Poland

2. Department of Climatology Jagiellonian University Kraków Poland

3. Institute of Meteorology and Water Management – National Research Institute Kraków Poland

Abstract

AbstractIn this article, a machine‐learning‐based tool for calibrating numerical forecasts of near‐surface air temperature is proposed. The study area covers Poland representing a temperate type of climate with transitional features and highly variable weather. The direct output of numerical weather prediction (NWP) models is often biased and needs to be adjusted to observed values. Forecasters have to reconcile forecasts from several NWP models during their operational work. As the proposed method is based on deterministic forecasts from three short‐range limited‐area models (ALARO, AROME and COSMO), it can support them in their decision‐making process. Predictors include forecasts of weather elements produced by the NWP models at synoptic weather stations across Poland and station‐embedded data on ambient orography. The Random Forests algorithm (RF) has been used to produce bias‐corrected forecasts on a test set spanning one year. Its performance was evaluated against the NWP models, a linear combination of all predictors (multiple linear regression, MLR) as well as a basic Artificial Neural Network (ANN). Detailed evaluation was done to identify potential strengths and weaknesses of the model at the temporal and spatial scale. The value of RMSE of a forecast obtained by the RF model was 11% and 27% lower compared to the MLR model and the best‐performing NWP model respectively. The ANN model turned out to be even superior, outperforming RF by around 2.5%. The greatest improvement occurred for warm bias during the nighttime from July to September. The largest difference in forecast accuracy between RF and ANN appeared for temperature drops inApril nights. Poor performance of RF for extreme temperature ranges may be suppressed by training the model on forecast error instead of observed values of the variable.

Funder

Uniwersytet Jagielloński w Krakowie

Publisher

Wiley

Subject

Atmospheric Science

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