人工智能预测极端气候:技术现状、挑战和未来展望

Stefano Materia, Lluís Palma García, Chiem van Straaten, Sungmin O, Antonios Mamalakis, Leone Cavicchia, Dim Coumou, Paolo de Luca, Marlene Kretschmer, Markus Donat
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引用次数: 0

摘要

热浪和寒流、干旱、暴雨和风暴等极端事件由于其罕见性和混乱性,以及模型的局限性,准确预测尤其具有挑战性。然而,最近的研究表明,可能存在未被利用的系统可预测性,利用这种可预测性可以满足对未来数周到数十年时间尺度上的极端天气总量进行可靠预测的需求。最近,许多研究都致力于利用人工智能(AI)来研究可预测性和进行气候预测。人工智能技术已显示出巨大的潜力,可改善极端事件的预测,并揭示其与大规模和局部驱动因素之间的联系。我们探索了机器学习和深度学习来加强预测,同时还测试了因果发现和可解释人工智能,以提高我们对可预测性基本过程的理解。人工智能可以从数据中揭示未知的时空联系,而气候模型则提供了物理世界的理论基础和可解释性,两者相结合的混合预测表明,提高气候相关时间尺度上极端事件的预测能力是可能的。然而,在数据整理、模型的不确定性、可推广性、方法的可重复性和工作流程等各个方面,仍然存在许多挑战。本综述旨在概述在利用人工智能技术改进亚季节到十年时间尺度极端气候预测方面所取得的成就和面临的挑战。文章提出了一些最佳实践,以增加对这些新技术的信任,并展望了进一步科学发展的前景:气候模型与建模 > 利用模型生成知识 气候变化知识的社会地位 > 气候科学与决策
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial intelligence for climate prediction of extremes: State of the art, challenges, and future perspectives
Extreme events such as heat waves and cold spells, droughts, heavy rain, and storms are particularly challenging to predict accurately due to their rarity and chaotic nature, and because of model limitations. However, recent studies have shown that there might be systemic predictability that is not being leveraged, whose exploitation could meet the need for reliable predictions of aggregated extreme weather measures on timescales from weeks to decades ahead. Recently, numerous studies have been devoted to the use of artificial intelligence (AI) to study predictability and make climate predictions. AI techniques have shown great potential to improve the prediction of extreme events and uncover their links to large‐scale and local drivers. Machine and deep learning have been explored to enhance prediction, while causal discovery and explainable AI have been tested to improve our understanding of the processes underlying predictability. Hybrid predictions combining AI, which can reveal unknown spatiotemporal connections from data, with climate models that provide the theoretical foundation and interpretability of the physical world, have shown that improving prediction skills of extremes on climate‐relevant timescales is possible. However, numerous challenges persist in various aspects, including data curation, model uncertainty, generalizability, reproducibility of methods, and workflows. This review aims at overviewing achievements and challenges in the use of AI techniques to improve the prediction of extremes at the subseasonal to decadal timescale. A few best practices are identified to increase trust in these novel techniques, and future perspectives are envisaged for further scientific development.This article is categorized under: Climate Models and Modeling > Knowledge Generation with Models The Social Status of Climate Change Knowledge > Climate Science and Decision Making
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