A Review of Recent and Emerging Machine Learning Applications for Climate Variability and Weather Phenomena

M. Molina, T. O’Brien, G. Anderson, M. Ashfaq, K. Bennett, W. Collins, K. Dagon, J. Restrepo, P. Ullrich
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引用次数: 4

Abstract

Climate variability and weather phenomena can cause extremes and pose significant risk to society and ecosystems, making continued advances in our physical understanding of such events of utmost importance for regional and global security. Advances in machine learning (ML) have been leveraged for applications in climate variability and weather, empowering scientists to approach questions using big data in new ways. Growing interest across the scientific community in these areas has motivated coordination between the physical and computer science disciplines to further advance the state of the science and tackle pressing challenges. During a recently held workshop that had participants across academia, private industry, and research laboratories, it became clear that a comprehensive review of recent and emerging ML applications for climate variability and weather phenomena that can cause extremes was needed. This article aims to fulfill this need by discussing recent advances, challenges, and research priorities in the following topics: sources of predictability for modes of climate variability, feature detection, extreme weather and climate prediction and precursors, observation-model integration, downscaling and bias correction. This article provides a review for domain scientists seeking to incorporate ML into their research. It also provides a review for those with some ML experience seeking to broaden their knowledge of ML applications for climate variability and weather.
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最近和新兴的机器学习在气候变率和天气现象中的应用综述
气候变率和天气现象可能导致极端事件,并对社会和生态系统构成重大风险,这使得我们对这些对区域和全球安全至关重要的事件的物理理解不断取得进展。机器学习(ML)的进步已经被用于气候变化和天气的应用,使科学家能够以新的方式使用大数据来解决问题。科学界对这些领域日益增长的兴趣推动了物理和计算机科学学科之间的协调,以进一步推进科学的发展,解决紧迫的挑战。在最近举行的一次研讨会上,来自学术界、私营企业和研究实验室的与会者明确表示,需要对近期和新兴的ML应用进行全面审查,以应对气候变率和可能导致极端天气的天气现象。本文旨在通过讨论以下主题的最新进展,挑战和研究重点来满足这一需求:气候变率模式的可预测性来源,特征检测,极端天气和气候预测及其前兆,观测-模式整合,降尺度和偏差校正。本文为寻求将机器学习纳入其研究的领域科学家提供了一个回顾。它还为那些有一些ML经验的人提供了一个回顾,以寻求扩大他们在气候变率和天气方面的ML应用的知识。
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