Modelling flood frequency and magnitude in a glacially conditioned, heterogeneous landscape: testing the importance of land cover and land use

IF 5.7 1区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY Hydrology and Earth System Sciences Pub Date : 2023-11-09 DOI:10.5194/hess-27-3977-2023
Pamela E. Tetford, Joseph R. Desloges
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Abstract

Abstract. A reliable flood frequency analysis (FFA) requires selection of an appropriate statistical distribution to model historical streamflow data and, where streamflow data are not available (ungauged sites), a regression-based regional flood frequency analysis (RFFA) often correlates well with downstream channel discharge to drainage area relations. However, the predictive strength of the accepted RFFA relies on an assumption of homogeneous watershed conditions. For glacially conditioned fluvial systems, inherited glacial landforms, sediments, and variable land use can alter flow paths and modify flow regimes. This study compares a multivariate RFFA that considers 28 explanatory variables to characterize variable watershed conditions (i.e., surficial geology, climate, topography, and land use) to an accepted power-law relationship between discharge and drainage area. Archived gauge data from southern Ontario, Canada, are used to test these ideas. Mathematical goodness-of-fit criteria best estimate flood discharge for a broad range of flood recurrence intervals, i.e., 1.25, 2, 5, 10, 25, 50, and 100 years. The log-normal, Gumbel, log-Pearson type III, and generalized extreme value distributions are found most appropriate in 42.5 %, 31.9 %, 21.7 %, and 3.9 % of cases, respectively, suggesting that systematic model selection criteria are required for FFA in heterogeneous landscapes. Multivariate regression of estimated flood quantiles with backward elimination of explanatory variables using principal component and discriminant analyses reveal that precipitation provides a greater predictive relationship for more frequent flood events, whereas surficial geology demonstrates more predictive ability for high-magnitude, less-frequent flood events. In this study, all seven flood quantiles identify a statistically significant two-predictor model that incorporates upstream drainage area and the percentage of naturalized landscape with 5 % improvement in predictive power over the commonly used single-variable drainage area model (p<2.2×10-16). Leave-one-out model testing and an analysis of variance (ANOVA) further support the parsimonious two-predictor model when estimating flood discharge in this low-relief landscape with pronounced glacial legacy effects and heterogeneous land use.
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模拟冰川条件下异质景观的洪水频率和强度:测试土地覆盖和土地利用的重要性
摘要可靠的洪水频率分析(FFA)需要选择适当的统计分布来模拟历史河流流量数据,在没有河流流量数据(未测量的站点)的情况下,基于回归的区域洪水频率分析(RFFA)通常与下游河道流量与流域面积的关系密切相关。然而,公认的RFFA的预测强度依赖于均匀流域条件的假设。对于冰川条件下的河流系统,继承的冰川地貌、沉积物和可变的土地利用可以改变水流路径和改变水流形态。本研究比较了一个多元RFFA,该RFFA考虑了28个解释变量来表征可变流域条件(即地表地质、气候、地形和土地利用)与公认的流量和流域面积之间的幂律关系。来自加拿大安大略省南部的存档测量数据被用来测试这些想法。数学拟合优度标准在洪水复发间隔的大范围内,即1.25年、2年、5年、10年、25年、50年和100年,最能估计洪水流量。对数正态分布、甘贝尔分布、对数皮尔逊III型分布和广义极值分布分别在42.5%、31.9%、21.7%和3.9%的情况下最为合适,这表明异质性景观的FFA需要系统的模型选择标准。利用主成分分析和判别分析对洪水分位数进行多元回归分析,发现降水对更频繁的洪水事件具有更强的预测关系,而地表地质对高震级、低频率的洪水事件具有更强的预测能力。在这项研究中,所有七个洪水分位数都确定了一个具有统计意义的双预测模型,该模型结合了上游流域面积和自然景观百分比,比常用的单变量流域面积模型的预测能力提高了5% (p<2.2×10-16)。留一模型检验和方差分析(ANOVA)进一步支持简化的双预测器模型在估算具有明显冰川遗留效应和异质土地利用的低地势景观的洪水流量时。
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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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