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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >A Deep‐Learning Ensemble Method to Detect Atmospheric Rivers and Its Application to Projected Changes in Precipitation Regime
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A Deep‐Learning Ensemble Method to Detect Atmospheric Rivers and Its Application to Projected Changes in Precipitation Regime

机译:A Deep‐Learning Ensemble Method to Detect Atmospheric Rivers and Its Application to Projected Changes in Precipitation Regime

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摘要

Abstract This study aims to detect atmospheric rivers (ARs) around the world by developing a deep‐learning ensemble method using AR catalogs of the ClimateNet data set. The ensemble method, based on 20 semantic segmentation algorithms, notably reduces the bias of the testing data set, with its intersection over union score being 1.7%–10.1% higher than that of individual algorithms. This method is then applied to the Coupled Model Intercomparison Project Phase 6 (CMIP6) datasets to quantify AR frequency and its related precipitation in the historical period (1985–2014) and future period (2070–2099) under the Shared Socioeconomic Pathways 5–8.5 warming scenario. The six key regions, which are distributed in different continents of the globe and greatly influenced by ARs, are particularly highlighted. The results show that CMIP6 multi‐model mean with the deep‐learning ensemble method reasonably reproduces the observed AR frequency. In most key regions, both heavy precipitation (90–99 percentile) and extremely heavy precipitation (>99 percentile) are projected to increase in a warming climate mainly due to the increased AR‐related precipitation. The AR contributions to future heavy and extremely heavy precipitation increase range from 145.1% to 280.5% and from 36.2% to 213.5%, respectively, indicating that ARs should be taken into account to better understand the future extreme precipitation changes.
机译:摘要本研究旨在检测大气世界各地的河流(ARs)通过开发一个深度学习整体方法使用基于“增大化现实”技术目录ClimateNet的数据集。基于20语义分割算法,特别是减少偏差的测试数据集,与其相交在联盟得分1.7% - -10.1%高于个人算法。耦合模型相互比较项目6级(CMIP6)数据集量化AR及其频率沉淀在历史时期有关(1985 - 2014)和未来时期(2070 - 2099)共享社会经济途径5 - 8.5变暖场景。分布在不同大洲的全球并极大地影响了农业研究所,尤其突出显示。多模型意味着与深度学习合奏方法合理地再现了观察到的基于“增大化现实”技术频率。降水(90 - 99百分位)和极端沉重的降水(> 99百分位)气候变暖主要是将增加由于增加的基于“增大化现实”技术的沉淀量相关。未来的沉重和基于“增大化现实”技术的贡献极其沉重的降水增加的范围从145.1%至280.5%,从36.2%提高到213.5%,分别表明农业研究所应采取考虑到为了更好地理解未来极端降水的变化。

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