对流大气极端降雨事件的浅层和深度学习

IF 4.2 2区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY
Gerd Bürger, Maik Heistermann
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引用次数: 0

摘要

摘要我们的主题是基于雷达的德国强降雨事件(CatRaRE)的新目录及其与同期大气环流的关系。我们根据CatRaRE对对流指数的每日ERA5场进行分类,使用13种统计方法,包括4种传统(“浅”)和9种最新的深度机器学习(DL)算法;然后将分类器应用于协调区域气候降尺度试验(CORDEX)项目模拟的当前和未来大气的相应场。DL结果的固有不确定性来自其优化的随机性质,通过采用对每个网络使用20次运行的集成方法来解决。浅层随机森林方法表现最好,其公平威胁得分(ETS)约为0.52,其次是深度学习网络ALL-CNN和ResNet,其ETS接近0.48。他们的成功可以被理解为概念简单和参数简约的结果,这显然最适合相对简单的分类任务。研究发现,夏季德国上空出现罕见对流大气的概率约为0.5。在era5再分析和cordex模拟的大气中,无论采用何种方法,预估这一概率都将增加:在历史时期,我们发现百年来的增幅约为0.2,而在未来时期,这一增幅略低于0.1。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Shallow and deep learning of extreme rainfall events from convective atmospheres
Abstract. Our subject is a new catalogue of radar-based heavy rainfall events (CatRaRE) over Germany and how it relates to the concurrent atmospheric circulation. We classify daily ERA5 fields of convective indices according to CatRaRE, using an array of 13 statistical methods, consisting of 4 conventional (“shallow”) and 9 more recent deep machine learning (DL) algorithms; the classifiers are then applied to corresponding fields of simulated present and future atmospheres from the Coordinated Regional Climate Downscaling Experiment (CORDEX) project. The inherent uncertainty of the DL results from the stochastic nature of their optimization is addressed by employing an ensemble approach using 20 runs for each network. The shallow random forest method performs best with an equitable threat score (ETS) around 0.52, followed by the DL networks ALL-CNN and ResNet with an ETS near 0.48. Their success can be understood as a result of conceptual simplicity and parametric parsimony, which obviously best fits the relatively simple classification task. It is found that, on summer days, CatRaRE-convective atmospheres over Germany occur with a probability of about 0.5. This probability is projected to increase, regardless of method, both in ERA5-reanalyzed and CORDEX-simulated atmospheres: for the historical period we find a centennial increase of about 0.2 and for the future period one of slightly below 0.1.
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来源期刊
Natural Hazards and Earth System Sciences
Natural Hazards and Earth System Sciences 地学-地球科学综合
CiteScore
7.60
自引率
6.50%
发文量
192
审稿时长
3.8 months
期刊介绍: Natural Hazards and Earth System Sciences (NHESS) is an interdisciplinary and international journal dedicated to the public discussion and open-access publication of high-quality studies and original research on natural hazards and their consequences. Embracing a holistic Earth system science approach, NHESS serves a wide and diverse community of research scientists, practitioners, and decision makers concerned with detection of natural hazards, monitoring and modelling, vulnerability and risk assessment, and the design and implementation of mitigation and adaptation strategies, including economical, societal, and educational aspects.
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