改进降雨预报的混合方法

A. R. Gainguly
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引用次数: 9

摘要

高分辨率降雨预报具有重要的好处,例如使洪水预报成为可能,但在制定有效策略方面进展甚微。本文提出的混合方法结合了天气物理学、统计学和人工神经网络。该策略能够利用所有可用的信息,解释和使用更好理解的领域物理方面,并利用可用的数据指示工具的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A hybrid approach to improving rainfall forecasts
High-resolution rainfall forecasting has important benefits, such as enabling flood prediction, yet little progress has been made toward developing an effective strategy. The hybrid approach presented here combines weather physics, statistics, and artificial neural networks. The strategy is able to draw on all available information, account for and use aspects of the domain physics that are better understood, and exploit the strengths of the available data-dictated tools.
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