利用多保真度方法结合官方和众包气象观测数据,实现高分辨率网格气候学

Daniëlle van Beekvelt, Irene Garcia‐Marti, Jouke H. S. de Baar
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引用次数: 0

摘要

要获得高分辨率的网格气候数据和天气预报,需要前所未有的近地表观测数据,以建立次中尺度模型。国家气象服务机构(NMS)在收集观测数据的数量上受到实际和资金的限制,因此,向众包天气计划敞开大门可能是缓解数据匮乏的一个有趣选择。近年来,科学家们在评估众包收集数据的质量和确定这些数据如何为国家气象服务的 "日常业务 "增值方面做出了巨大努力。在这项工作中,我们开发并应用了一种多保真度空间回归方法,能够将官方观测数据与众包观测数据相结合,从而创建高分辨率的天气变量插值。大量众包观测数据的可用性也提出了利用这些新数据源建模的最大天气复杂度是多少的问题。我们以香农-奈奎斯特极限为基准,对日益复杂的天气模式进行了结构化理论分析。结果表明,官方和众包气象观测的结合进一步推高了香农-奈奎斯特极限,从而表明众包数据有助于监测次中尺度天气过程(如城市尺度)。我们认为,这项工作很好地说明了众包数据的潜力,它不仅扩大了国家气象卫星系统现有的产品和服务范围,还为高分辨率天气预报和监测、发布地方预警以及推进基于影响的分析打开了大门。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards high-resolution gridded climatology stemming from the combination of official and crowdsourced weather observations using multi-fidelity methods
The pursue of a high resolution gridded climate data and weather forecast requires an unprecedented number of in situ near-surface observations to model the sub-mesoscale. National meteorological services (NMS) have practical and financial limitations to the number of observations it can collect, therefore, opening the door to crowdsourced weather initiatives might be an interesting option to mitigate data scarcity. In recent years, scientists have made remarkable efforts at assessing the quality of crowdsourced collections and determining ways these can add value to the “daily business” of NMS. In this work, we develop and apply a multi-fidelity spatial regression method capable of combining official observations with crowdsourced observations, which enables the creation of high-resolution interpolations of weather variables. The availability of a sheer volume of crowdsourced observations also poses questions on what is the maximum weather complexity that can be modelled with these novel data sources. We include a structured theoretical analysis simulating increasingly complex weather patterns that uses the Shannon-Nyquist limit as a benchmark. Results show that the combination of official and crowdsourced weather observations pushes further the Shannon-Nyquist limit, thus indicating that crowdsourced data contributes at monitoring sub-mesoscale weather processes (e.g. urban scales). We think that this effort illustrates well the potential of crowdsourced data, not only to expand the current range of products and services at NMS, but also opening the door for high-resolution weather forecast and monitoring, issuing local early warnings and advancing towards impact-based analyses.
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