Time‐varying copula‐based compound flood risk assessment of extreme rainfall and high water level under a non‐stationary environment

Author:

Song Mingming123,Zhang Jianyun2345,Liu Yanli2345,Liu Cuishan2345,Bao Zhenxin2345,Jin Junliang2345,He Ruimin2345,Bian Guodong2345,Wang Guoqing2345ORCID

Affiliation:

1. School of Geomatics and Municipal Engineering Zhejiang University of Water Resources and Electric Power Hangzhou China

2. Cooperative Innovation Center for Water Safety and Hydro Science Hohai University Nanjing China

3. Research Center for Climate Change Ministry of Water Resources Nanjing China

4. The National Key Laboratory of Water Disaster Prevention Nanjing Hydraulic Research Institute Nanjing China

5. Yangtze Institute for Conservation and Development Nanjing China

Abstract

AbstractQuantifying flood risk depends on accurate probability estimation, which is challenging due to non‐stationarity and the combined effects of multiple factors in a changing environment. The threat of compound flood risks may spread from coastal areas to inland basins, which have received less attention. In this study, a framework based on time‐varying copulas was introduced for the treatment of compound flood risk and bivariate design in non‐stationary environments. Archimedean copulas were developed to diagnose the non‐stationary trends of flood risk. Return periods, average annual reliabilities, and bivariate designs were estimated. Model uncertainty was analyzed by comparing the results for stationary and non‐stationary conditions. The case study investigated the extreme rainfall and water level series from the Qinhuai River Basin and the Yangtze River in China. The results showed that marginal distributions and correlations are non‐stationary in all bivariate combinations. Ignoring composite effects may lead to inappropriate quantification of flood risk. Excluding non‐stationarity may lead to risk over or underestimation. It showed the limitations of the 1‐day scale and quantified the uncertainty of non‐stationary models. This study provided a flood risk assessment framework in a changing environment and a risk‐based design technique, which is essential for climate change adaptation and water management.

Funder

National Natural Science Foundation of China

Science and Technology Program of Hunan Province

Publisher

Wiley

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