Training machine learning models on climate model output yields skillful interpretable seasonal precipitation forecasts

A barrier to utilizing machine learning in seasonal forecasting applications is the limited sample size of observational data for model training. To circumvent this issue, here we explore the feasibility of training various machine learning approaches on a large climate model ensemble, providing a l...

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Veröffentlicht in:Communications earth & environment 2021-08, Vol.2 (1), p.1-13, Article 159
Hauptverfasser: Gibson, Peter B., Chapman, William E., Altinok, Alphan, Delle Monache, Luca, DeFlorio, Michael J., Waliser, Duane E.
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Sprache:eng
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Zusammenfassung:A barrier to utilizing machine learning in seasonal forecasting applications is the limited sample size of observational data for model training. To circumvent this issue, here we explore the feasibility of training various machine learning approaches on a large climate model ensemble, providing a long training set with physically consistent model realizations. After training on thousands of seasons of climate model simulations, the machine learning models are tested for producing seasonal forecasts across the historical observational period (1980-2020). For forecasting large-scale spatial patterns of precipitation across the western United States, here we show that these machine learning-based models are capable of competing with or outperforming existing dynamical models from the North American Multi Model Ensemble. We further show that this approach need not be considered a ‘black box’ by utilizing machine learning interpretability methods to identify the relevant physical processes that lead to prediction skill.
ISSN:2662-4435
2662-4435
DOI:10.1038/s43247-021-00225-4