Modelling bivariate extreme precipitation distribution for data‐scarce regions using Gumbel–Hougaard copula with maximum entropy estimation |
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Authors: | Longxia Qian Hongrui Wang Suzhen Dang Cheng Wang Zhiqian Jiao Yong Zhao |
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Affiliation: | 1. Research Center of Ocean Environment Numerical Simulation, Institute of Meteorology and Oceanography, National University of Defense Technology, Nanjing, China;2. College of Water Sciences, Beijing Normal University, Key Laboratory for Water and Sediment Sciences, Ministry of Education, Beijing, China;3. Yellow River Institute of Hydraulic Research, Yellow River Conservancy Commission, Zhengzhou, China;4. Environmental Science Division, Argonne National Laboratory, Lemont, IL, USA;5. State Key Laboratory of Simulation and Regulation of Water Cycle in River Basin, China Institute of water Resources and Hydropower Research, Beijing, China |
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Abstract: | A new method of parameter estimation in data scarce regions is valuable for bivariate hydrological extreme frequency analysis. This paper proposes a new method of parameter estimation (maximum entropy estimation, MEE) for both Gumbel and Gumbel–Hougaard copula in situations when insufficient data are available. MEE requires only the lower and upper bounds of two hydrological variables. To test our new method, two experiments to model the joint distribution of the maximum daily precipitation at two pairs of stations on the tributaries of Heihe and Jinghe River, respectively, were performed and compared with the method of moments, correlation index estimation, and maximum likelihood estimation, which require a large amount of data. Both experiments show that for the Ye Niugou and Qilian stations, the performance of MEE is nearly identical to those of the conventional methods. For the Xifeng and Huanxian stations, MEE can capture information indicating that the maximum daily precipitation at the Xifeng and Huanxian stations has an upper tail dependence, whereas the results generated by correlation index estimation and maximum likelihood estimation are unreasonable. Moreover, MEE is proved to be generally reliable and robust by many simulations under three different situations. The Gumbel–Hougaard copula with MEE can also be applied to the bivariate frequency analysis of other extreme events in data‐scarce regions. |
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Keywords: | extreme frequency analysis Gumbel distribution Gumbel– Hougaard copula insufficient data maximum entropy estimation |
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