Enhancing flood risk assessment in the Johor River Basin through trivariate copula

IF 2.7 4区 环境科学与生态学 Q2 WATER RESOURCES
Naqibah Aminuddin Jafry, J. Suhaila, Fadhilah Yusof, Siti Rohani Mohd Nor, Nor Eliza Alias
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Abstract

Copulas are a vital statistical tool, particularly in hydrology, for understanding complex relationships among flood characteristics. This study focuses on three key flood features: peak discharge, flood volume, and flood duration, using trivariate copulas to capture their interdependencies. This is crucial because bivariate and univariate analyses fall short in considering all three factors simultaneously. To handle extreme flood values, L-moment is proposed over maximum likelihood estimation and inference function margin due to its enhanced reliability and susceptibility to outliers and extreme values. Akaike information criterion was employed to identify the best-fit marginal distribution and copula. The Lognormal distribution effectively models peak discharge, while Weibull and generalized extreme value distributions fit flood volume and duration best, respectively. Various copula families, including elliptical and Archimedean, are assessed, where Clayton copula emerge as the most suitable. This analysis demonstrates that when more flood features are considered together, the return period increases, indicating the reduced likelihood of occurrence. The trivariate case of the AND-joint return period surpasses the trivariate case of the OR-joint return period where the TP, V, DAND=5, 405.93 years, while TP, V, DOR=500.46 years. This comprehensive approach enhances hydrological modeling and decision-making for water resource management and flood mitigation projects.
通过三变量 copula 加强柔佛河流域的洪水风险评估
协方差是一种重要的统计工具,尤其是在水文学领域,可用于理解洪水特征之间的复杂关系。本研究重点关注三个关键的洪水特征:峰值排水量、洪水流量和洪水持续时间,并使用三变量协方差来捕捉它们之间的相互依存关系。这一点至关重要,因为双变量和单变量分析无法同时考虑这三个因素。为了处理极端洪水值,建议使用 L-moment 而不是最大似然估计和推理函数边际,因为 L-moment 具有更高的可靠性,并且容易受到异常值和极端值的影响。采用 Akaike 信息准则来确定最佳拟合边际分布和协整分布。对数正态分布有效地模拟了洪峰流量,而魏布勒分布和广义极值分布分别最适合洪水流量和持续时间。对包括椭圆形和阿基米德形在内的各种 copula 系列进行了评估,其中克莱顿 copula 最为合适。该分析表明,当同时考虑更多洪水特征时,重现期会增加,表明洪水发生的可能性降低。AND 联合回归期的三变量情况超过 OR 联合回归期的三变量情况,其中 TP、V、DAND=5,405.93 年,而 TP、V、DOR=500.46 年。这种综合方法增强了水资源管理和防洪减灾项目的水文建模和决策能力。
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来源期刊
CiteScore
4.80
自引率
10.70%
发文量
168
审稿时长
>12 weeks
期刊介绍: Journal of Water and Climate Change publishes refereed research and practitioner papers on all aspects of water science, technology, management and innovation in response to climate change, with emphasis on reduction of energy usage.
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