降水场预测的深度学习架构的相互比较,重点是极端

IF 4.6 1区 地球科学 Q2 ENVIRONMENTAL SCIENCES Water Resources Research Pub Date : 2023-11-01 DOI:10.1029/2023wr035088
Noelia Otero, Pascal Horton
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引用次数: 0

摘要

近年来,深度学习方法在许多研究领域的应用迅速增加。同样,它们已成为气候科学界的有力工具。深度学习方法已经成功地应用于不同的任务,如大气模式识别、极端天气分类或天气预报。然而,由于大气过程固有的复杂性,深度学习模型模拟自然过程的能力,特别是在极端天气的情况下,仍然具有挑战性。因此,仍然需要对它们在预测降水场方面的性能和稳健性进行全面评估,特别是对于极端降水事件,这些事件可能在基础设施破坏、经济损失甚至生命损失方面造成毁灭性后果。在这项研究中,我们对一组用于模拟降水的深度学习架构进行了全面评估,包括欧洲地区的强降水事件(>95百分位数)和极端事件(>99百分位数)。在本文分析的体系结构中,发现U - Net网络在模拟降水事件方面优于其他网络。特别是,我们发现具有两个编码器-解码器级别的原始U - Net的简化版本通常比深度版本在预测极端降水方面获得相似的技能分数,同时显着降低了总体复杂性和计算资源。我们进一步评估了模型如何通过分层相关传播可解释性方法的属性热图进行预测。
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Intercomparison of deep learning architectures for the prediction of precipitation fields with a focus on extremes
Abstract In recent years, the use of deep learning methods has rapidly increased in many research fields. Similarly, they have become a powerful tool within the climate scientific community. Deep learning methods have been successfully applied for different tasks, such as the identification of atmospheric patterns, weather extreme classification, or weather forecasting. However, due to the inherent complexity of atmospheric processes, the ability of deep learning models to simulate natural processes, particularly in the case of weather extremes, is still challenging. Therefore, a thorough evaluation of their performance and robustness in predicting precipitation fields is still needed, especially for extreme precipitation events, which can have devastating consequences in terms of infrastructure damage, economic losses, and even loss of life. In this study, we present a comprehensive evaluation of a set of deep learning architectures to simulate precipitation, including heavy precipitation events (>95th percentile) and extreme events (>99th percentile) over the European domain. Among the architectures analyzed here, the U‐Net network was found to be superior and outperformed the other networks in simulating precipitation events. In particular, we found that a simplified version of the original U‐Net with two encoder‐decoder levels generally achieved similar skill scores than deeper versions for predicting precipitation extremes, while significantly reducing the overall complexity and computing resources. We further assess how the model predicts through the attribution heatmaps from a layer‐wise relevance propagation explainability method.
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来源期刊
Water Resources Research
Water Resources Research 环境科学-湖沼学
CiteScore
8.80
自引率
13.00%
发文量
599
审稿时长
3.5 months
期刊介绍: Water Resources Research (WRR) is an interdisciplinary journal that focuses on hydrology and water resources. It publishes original research in the natural and social sciences of water. It emphasizes the role of water in the Earth system, including physical, chemical, biological, and ecological processes in water resources research and management, including social, policy, and public health implications. It encompasses observational, experimental, theoretical, analytical, numerical, and data-driven approaches that advance the science of water and its management. Submissions are evaluated for their novelty, accuracy, significance, and broader implications of the findings.
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