首页> 外文期刊>Entropy >Maximum Entropy-Copula Method for Hydrological Risk Analysis under Uncertainty: A Case Study on the Loess Plateau, China
【24h】

Maximum Entropy-Copula Method for Hydrological Risk Analysis under Uncertainty: A Case Study on the Loess Plateau, China

机译:不确定条件下的最大熵-Copula法进行水文风险分析-以黄土高原为例

获取原文
           

摘要

Copula functions have been extensively used to describe the joint behaviors of extreme hydrological events and to analyze hydrological risk. Advanced marginal distribution inference, for example, the maximum entropy theory, is particularly beneficial for improving the performance of the copulas. The goal of this paper, therefore, is twofold; first, to develop a coupled maximum entropy-copula method for hydrological risk analysis through deriving the bivariate return periods, risk, reliability and bivariate design events; and second, to reveal the impact of marginal distribution selection uncertainty and sampling uncertainty on bivariate design event identification. Particularly, the uncertainties involved in the second goal have not yet received significant consideration. The designed framework for hydrological risk analysis related to flood and extreme precipitation events is exemplarily applied in two catchments of the Loess plateau, China. Results show that (1) distribution derived by the maximum entropy principle outperforms the conventional distributions for the probabilistic modeling of flood and extreme precipitation events; (2) the bivariate return periods, risk, reliability and bivariate design events are able to be derived using the coupled entropy-copula method; (3) uncertainty analysis highlights the fact that appropriate performance of marginal distribution is closely related to bivariate design event identification. Most importantly, sampling uncertainty causes the confidence regions of bivariate design events with return periods of 30 years to be very large, overlapping with the values of flood and extreme precipitation, which have return periods of 10 and 50 years, respectively. The large confidence regions of bivariate design events greatly challenge its application in practical engineering design.
机译:Copula函数已被广泛用于描述极端水文事件的联合行为并分析水文风​​险。先进的边际分布推论,例如最大熵理论,对于改善copulas的性能特别有益。因此,本文的目标是双重的。首先,通过推导双变量返回期,风险,可靠性和双变量设计事件,开发一种耦合最大熵-copula方法进行水文风险分析;其次,揭示边际分布选择不确定性和抽样不确定性对双变量设计事件识别的影响。特别是,第二个目标涉及的不确定性尚未得到充分考虑。与洪水和极端降水事件有关的水文风险分析的设计框架示例性地应用于中国黄土高原的两个流域。结果表明:(1)利用最大熵原理推导的分布优于传统的洪水和极端降水事件概率模型的分布; (2)可以使用耦合熵-copula方法推导双变量返回期,风险,可靠性和双变量设计事件; (3)不确定性分析凸显了这样一个事实,即边际分布的适当表现与双变量设计事件识别密切相关。最重要的是,抽样的不确定性导致回归期为30年的双变量设计事件的置信区很大,与洪水和极端降水的值重叠,洪水和极端降水的回归期分别为10年和50年。双变量设计事件的大置信度区域极大地挑战了其在实际工程设计中的应用。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号