基于物理的深度学习框架以超分辨率模拟强降水事件。

IF 4 3区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY Geoscience Letters Pub Date : 2023-01-01 DOI:10.1186/s40562-023-00272-z
B Teufel, F Carmo, L Sushama, L Sun, M N Khaliq, S Bélair, A Shamseldin, D Nagesh Kumar, J Vaze
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引用次数: 2

摘要

精细(亚公里)空间尺度降水的物理模拟在计算上是非常昂贵的。本研究通过耦合深度学习(DL)和物理建模,为该任务开发了一个高效的框架。该框架是利用2015-2020年夏季覆盖蒙特利尔及邻近地区的区域气候模拟开发和测试的,分辨率为2.5公里和250米。DL框架使用循环方法,并考虑大气物理过程(如平流),从低分辨率数据生成高分辨率信息,使其能够重建精细细节并产生时间一致的场。DL框架生成现实的高分辨率降水估计,包括短时强降水事件,这使其能够应用于工程问题,如评估城市暴雨排水系统的气候适应性。结果描述了所提出的深度学习框架的价值,它可以扩展到其他分辨率、时期和地区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Physics-informed deep learning framework to model intense precipitation events at super resolution.

Physical modeling of precipitation at fine (sub-kilometer) spatial scales is computationally very expensive. This study develops a highly efficient framework for this task by coupling deep learning (DL) and physical modeling. This framework is developed and tested using regional climate simulations performed over a domain covering Montreal and adjoining regions, for the summers of 2015-2020, at 2.5 km and 250 m resolutions. The DL framework uses a recurrent approach and considers atmospheric physical processes, such as advection, to generate high-resolution information from low-resolution data, which enables it to recreate fine details and produce temporally consistent fields. The DL framework generates realistic high-resolution precipitation estimates, including intense short-duration precipitation events, which allows it to be applied in engineering problems, such as evaluating the climate resiliency of urban storm drainage systems. The results portray the value of the proposed DL framework, which can be extended to other resolutions, periods, and regions.

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来源期刊
Geoscience Letters
Geoscience Letters Earth and Planetary Sciences-General Earth and Planetary Sciences
CiteScore
4.90
自引率
2.50%
发文量
42
审稿时长
25 weeks
期刊介绍: Geoscience Letters is the official journal of the Asia Oceania Geosciences Society, and a fully open access journal published under the SpringerOpen brand. The journal publishes original, innovative and timely research letter articles and concise reviews on studies of the Earth and its environment, the planetary and space sciences. Contributions reflect the eight scientific sections of the AOGS: Atmospheric Sciences, Biogeosciences, Hydrological Sciences, Interdisciplinary Geosciences, Ocean Sciences, Planetary Sciences, Solar and Terrestrial Sciences, and Solid Earth Sciences. Geoscience Letters focuses on cutting-edge fundamental and applied research in the broad field of the geosciences, including the applications of geoscience research to societal problems. This journal is Open Access, providing rapid electronic publication of high-quality, peer-reviewed scientific contributions.
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