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  4. Status and prospects for drought forecasting: opportunities in artificial intelligence and hybrid physical-statistical forecasting
 
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Status and prospects for drought forecasting: opportunities in artificial intelligence and hybrid physical-statistical forecasting

Publikationstyp
Review Article
Date Issued
2022-12-12
Sprache
English
Author(s)
AghaKouchak, A.  
Pan, B.  
Mazdiyasni, Omid
Sadegh, Mojtaba  
Jiwa, Shakil
Zhang, Wenkai
Love, Charlotte A.  
Madadgar, Shahrbanou
Papalexiou, S. M.  
Davis, Steven J.
Hsu, Kuo‑Lin ‑l
Sorooshian, Soroosh  
TORE-URI
https://hdl.handle.net/11420/57675
Journal
Philosophical transactions of the Royal Society A: Mathematical,physical and engineering sciences  
Volume
380
Issue
2238
Article Number
20210288
Citation
Philosophical Transactions of the Royal Society A Mathematical Physical and Engineering Sciences 380: 20210288 (2022)
Publisher DOI
10.1098/rsta.2021.0288
Scopus ID
2-s2.0-85141038522
Publisher
Royal Society
Despite major improvements in weather and climate modelling and substantial increases in remotely sensed observations, drought prediction remains a major challenge. After a review of the existing methods, we discuss major research gaps and opportunities to improve drought prediction. We argue that current approaches are top-down, assuming that the process(es) and/or driver(s) are known - i.e. starting with a model and then imposing it on the observed events (reality). With the help of an experiment, we show that there are opportunities to develop bottom-up drought prediction models - i.e. starting from the reality (here, observed events) and searching for model(s) and driver(s) that work. Recent advances in artificial intelligence and machine learning provide significant opportunities for developing bottom-up drought forecasting models. Regardless of the type of drought forecasting model (e.g. machine learning, dynamical simulations, analogue based), we need to shift our attention to robustness of theories and outputs rather than event-based verification. A shift in our focus towards quantifying the stability of uncertainty in drought prediction models, rather than the goodness of fit or reproducing the past, could be the first step towards this goal. Finally, we highlight the advantages of hybrid dynamical and statistical models for improving current drought prediction models. This article is part of Science+ meeting issue 'Drought risk in the Anthropocene'.
Subjects
climate
drought
hydrology
prediction
DDC Class
600: Technology
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