Sub-seasonal Prediction of Central European Summer Heatwaves with Linear and Random Forest Machine Learning Models

This is a Preprint and has not been peer reviewed. The published version of this Preprint is available: https://doi.org/10.1175/AIES-D-22-0038.1. This is version 6 of this Preprint.

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Authors

Elizabeth Weirich Benet, Maria Pyrina, Bernat Jiménez Esteve, Ernest Fraenkel, Judah Cohen, Daniela Iris Vera Domeisen

Abstract

Heatwaves are extreme near-surface temperature events that can have substantial impacts on ecosystems and society. Early Warning Systems help to reduce these impacts by helping communities prepare for hazardous climate-related events. However, state-of-the-art prediction systems can often not make accurate forecasts of heatwaves more than two weeks in advance, which are required for advance warnings. We therefore investigate the potential of statistical and machine learning methods to understand and predict central European summer heatwaves on timescales of several weeks. As a first step, we identify the most important regional atmospheric and surface predictors based on previous studies and supported by a correlation analysis: 2-m air temperature, 500-hPa geopotential, precipitation, and soil moisture in central Europe, as well as Mediterranean and North Atlantic sea surface temperatures, and the North Atlantic jet stream. Based on these predictors, we apply machine learning methods to forecast two targets: summer temperature anomalies and the probability of heatwaves for 1--6 weeks lead time at weekly resolution. For each of these two target variables, we use both a linear and a random forest model. The performance of these statistical models decays with lead time, as expected, but outperforms persistence and climatology at all lead times. For lead times longer than two weeks, our machine learning models compete with the ensemble mean of the European Centre for Medium-Range Weather Forecasts' hindcast system. We thus show that machine learning can help improve sub-seasonal forecasts of summer temperature anomalies and heatwaves.

DOI

https://doi.org/10.31223/X5663G

Subjects

Artificial Intelligence and Robotics, Atmospheric Sciences

Keywords

heatwave, machine learning, sub-seasonal, Extreme Events, teleconnections, Europe, machine learning, sub-seasonal, extreme events, teleconnections, Europe

Dates

Published: 2022-06-02 13:07

Last Updated: 2023-04-17 21:31

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License

CC BY Attribution 4.0 International

Additional Metadata

Conflict of interest statement:
None