Inferring heavy tails of flood distributions through hydrograph recession analysis

IF 5.7 1区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY Hydrology and Earth System Sciences Pub Date : 2023-12-14 DOI:10.5194/hess-27-4369-2023
Hsing-Jui Wang, R. Merz, Soohyun Yang, S. Basso
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引用次数: 2

Abstract

Abstract. Floods are often disastrous due to underestimation of the magnitude of rare events. Underestimation commonly happens when the magnitudes of floods follow a heavy-tailed distribution, but this behavior is not recognized and thus neglected for flood hazard assessment. In fact, identifying heavy-tailed flood behavior is challenging because of limited data records and the lack of physical support for currently used indices. We address these issues by deriving a new index of heavy-tailed flood behavior from a physically based description of streamflow dynamics. The proposed index, which is embodied by the hydrograph recession exponent, enables inferring heavy-tailed flood behavior from daily flow records, even of short length. We test the index in a large set of case studies across Germany encompassing a variety of climatic and physiographic settings. Our findings demonstrate that the new index enables reliable identification of cases with either heavy- or non-heavy-tailed flood behavior from daily flow records. Additionally, the index suitably estimates the severity of tail heaviness and ranks it across cases, achieving robust results even with short data records. The new index addresses the main limitations of currently used metrics, which lack physical support and require long data records to correctly identify tail behaviors, and provides valuable information on the tail behavior of flood distributions and the related flood hazard in river basins using commonly available discharge data.
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通过水文衰退分析推断洪水分布的重尾
摘要由于低估了罕见事件的严重程度,洪水往往会造成灾难性后果。低估通常发生在洪水量级呈重尾分布的情况下,但这种行为并未被认识到,因此在洪水灾害评估中被忽视。事实上,由于数据记录有限以及目前使用的指数缺乏物理支持,识别重尾洪水行为具有挑战性。为了解决这些问题,我们从基于物理的水流动态描述中推导出一种新的重尾洪水行为指数。所提出的指数由水文衰退指数体现,能够从日流量记录(即使是较短的记录)中推断重尾洪水行为。我们在德国的大量案例研究中对该指数进行了测试,其中包括各种气候和地貌环境。我们的研究结果表明,新指数能够从日流量记录中可靠地识别出重尾或非重尾洪水行为。此外,该指数还能适当估计尾流严重程度,并在不同情况下对其进行排序,即使数据记录较短,也能获得可靠的结果。新指数解决了目前使用的指标的主要局限性(这些指标缺乏物理支持,需要较长的数据记录才能正确识别尾部行为),并利用常见的排水数据为流域洪水分布的尾部行为及相关洪水危害提供了有价值的信息。
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来源期刊
Hydrology and Earth System Sciences
Hydrology and Earth System Sciences 地学-地球科学综合
CiteScore
10.10
自引率
7.90%
发文量
273
审稿时长
15 months
期刊介绍: Hydrology and Earth System Sciences (HESS) is a not-for-profit international two-stage open-access journal for the publication of original research in hydrology. HESS encourages and supports fundamental and applied research that advances the understanding of hydrological systems, their role in providing water for ecosystems and society, and the role of the water cycle in the functioning of the Earth system. A multi-disciplinary approach is encouraged that broadens the hydrological perspective and the advancement of hydrological science through integration with other cognate sciences and cross-fertilization across disciplinary boundaries.
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