对流天气的机器学习研究综述

A. McGovern, R. Chase, Montgomery Flora, D. Gagne, Ryan Lagerquist, C. Potvin, Nathan Snook, Eric D. Loken
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引用次数: 2

摘要

我们概述了使用人工智能/机器学习技术预测对流天气及其相关危害(包括龙卷风、冰雹、风和闪电)的最新工作。这些高影响现象在全球范围内造成了巨大的财产损失和生命损失,但预测起来却相当具有挑战性。鉴于最近在整个天气范围内开发机器学习技术的爆炸式增长,以及对流天气的熟练预测具有直接社会效益的事实,我们对对流危害的人工智能和机器学习技术的当前状态进行了全面的回顾。我们的综述包括传统方法,包括支持向量机和决策树,以及深度学习方法。我们强调了在开发机器学习方法来预测各种空间和时间尺度上的这些现象所面临的挑战。最后,我们讨论了机器学习在对流天气方面未来有前途的工作领域,包括讨论了创建可用于实时预报员的可信赖的人工智能预测的必要性,以及在测试台上进行积极的跨部门协作以验证机器学习方法在操作情况下的必要性。
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A Review of Machine Learning for Convective Weather
We present an overviewof recentwork on using artificial intelligence/machine learning techniques for forecasting convective weather and its associated hazards, including tornadoes, hail, wind, and lightning. These high-impact phenomena globally cause both massive property damage and loss of life yet they are quite challenging to forecast. Given the recent explosion in developing machine learning techniques across the weather spectrum and the fact that the skillful prediction of convective weather has immediate societal benefits, we present a thorough review of the current state of the art in artificial intelligence and machine learning techniques for convective hazards. Our review includes both traditional approaches, including support vector machines and decision trees as well as deep learning approaches. We highlight the challenges in developing machine learning approaches to forecast these phenomena across a variety of spatial and temporal scales. We end with a discussion of promising areas of future work for ML for convective weather, including a discussion of the need to create trustworthy AI forecasts that can be used for forecasters in real-time and the need for active cross-sector collaboration on testbeds to validate machine learning methods in operational situations.
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