Applying machine learning for drought prediction using data from a large ensemble of climate simulations

There is strong scientific and social interest to understand the factors leading to extreme events in order to improve the management of risks associated with hazards like droughts. In this study, artificial neural networks are applied to predict the occurrence of a drought in two contrasting Europe...

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Main Authors: Felsche, Elizaveta, Ludwig, Ralf
Format: Text
Language:English
Published: 2021
Subjects:
Online Access:https://doi.org/10.5194/nhess-2021-110
https://nhess.copernicus.org/preprints/nhess-2021-110/
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spelling ftcopernicus:oai:publications.copernicus.org:nhessd93991 2023-05-15T17:33:59+02:00 Applying machine learning for drought prediction using data from a large ensemble of climate simulations Felsche, Elizaveta Ludwig, Ralf 2021-04-15 application/pdf https://doi.org/10.5194/nhess-2021-110 https://nhess.copernicus.org/preprints/nhess-2021-110/ eng eng doi:10.5194/nhess-2021-110 https://nhess.copernicus.org/preprints/nhess-2021-110/ eISSN: 1684-9981 Text 2021 ftcopernicus https://doi.org/10.5194/nhess-2021-110 2021-04-19T16:22:14Z There is strong scientific and social interest to understand the factors leading to extreme events in order to improve the management of risks associated with hazards like droughts. In this study, artificial neural networks are applied to predict the occurrence of a drought in two contrasting European domains, Munich and Lisbon, with a lead time of one month. The approach takes into account a list of 30 atmospheric and soil variables as input parameters from a single-model initial condition large ensemble (CRCM5-LE). The data was produced the context of the ClimEx project by Ouranos with the Canadian Regional Climate Model (CRCM5) driven by 50 members of the Canadian Earth System Model (CanESM2). Drought occurrence was defined using the Standardized Precipitation Index. The best performing machine learning algorithms managed to obtain a correct classification of drought or no drought for a lead time of one month for around 55–60 % of the events of each class for both domains. Explainable AI methods like SHapley Additive exPlanations (SHAP) were applied to gain a better understanding of the trained algorithms. Variables like the North Atlantic Oscillation Index and air pressure one month before the event proved to be of high importance for the prediction. The study showed that seasonality has a high influence on goodness of drought prediction, especially for the Lisbon domain. Text North Atlantic North Atlantic oscillation Copernicus Publications: E-Journals
institution Open Polar
collection Copernicus Publications: E-Journals
op_collection_id ftcopernicus
language English
description There is strong scientific and social interest to understand the factors leading to extreme events in order to improve the management of risks associated with hazards like droughts. In this study, artificial neural networks are applied to predict the occurrence of a drought in two contrasting European domains, Munich and Lisbon, with a lead time of one month. The approach takes into account a list of 30 atmospheric and soil variables as input parameters from a single-model initial condition large ensemble (CRCM5-LE). The data was produced the context of the ClimEx project by Ouranos with the Canadian Regional Climate Model (CRCM5) driven by 50 members of the Canadian Earth System Model (CanESM2). Drought occurrence was defined using the Standardized Precipitation Index. The best performing machine learning algorithms managed to obtain a correct classification of drought or no drought for a lead time of one month for around 55–60 % of the events of each class for both domains. Explainable AI methods like SHapley Additive exPlanations (SHAP) were applied to gain a better understanding of the trained algorithms. Variables like the North Atlantic Oscillation Index and air pressure one month before the event proved to be of high importance for the prediction. The study showed that seasonality has a high influence on goodness of drought prediction, especially for the Lisbon domain.
format Text
author Felsche, Elizaveta
Ludwig, Ralf
spellingShingle Felsche, Elizaveta
Ludwig, Ralf
Applying machine learning for drought prediction using data from a large ensemble of climate simulations
author_facet Felsche, Elizaveta
Ludwig, Ralf
author_sort Felsche, Elizaveta
title Applying machine learning for drought prediction using data from a large ensemble of climate simulations
title_short Applying machine learning for drought prediction using data from a large ensemble of climate simulations
title_full Applying machine learning for drought prediction using data from a large ensemble of climate simulations
title_fullStr Applying machine learning for drought prediction using data from a large ensemble of climate simulations
title_full_unstemmed Applying machine learning for drought prediction using data from a large ensemble of climate simulations
title_sort applying machine learning for drought prediction using data from a large ensemble of climate simulations
publishDate 2021
url https://doi.org/10.5194/nhess-2021-110
https://nhess.copernicus.org/preprints/nhess-2021-110/
genre North Atlantic
North Atlantic oscillation
genre_facet North Atlantic
North Atlantic oscillation
op_source eISSN: 1684-9981
op_relation doi:10.5194/nhess-2021-110
https://nhess.copernicus.org/preprints/nhess-2021-110/
op_doi https://doi.org/10.5194/nhess-2021-110
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