文章引用说明 更多>> (返回到该文章)

VANDENBERGHE, S., VERHOEST, N. E. C. and DE BAETS, B. Fitting bivariate copulas to the dependence structure between storm characteristics: A detailed analysis based on 105 year 10 min rainfall. Water Resources Research, 2010, 46(1): W01512.

被以下文章引用:

  • 标题: Copula熵理论及其在水文相关性分析中的应用Copula Entropy and Its Application in Hydrological Correlation Analysis

    作者: 陈璐, 郭生练

    关键字: Copula熵, 水文变量, 相关分析, ANN模型Copula Entropy; Hydrological Variables; Correlation Analysis; ANN Model

    期刊名称: 《Journal of Water Resources Research》, Vol.2 No.2, 2013-04-29

    摘要: 水文事件一般具有多个方面的特征属性,而各个特征属性之间普遍具有相关性,因此需要采用特定的方法对水文变量的相关性进行分析。本文综述了现有的相关性计算方法,指出了现有方法的不足和缺陷;引入Copula熵的概念,用以衡量复杂水文现象的相关结构,并给出Copula熵与互信息的关系和计算方法。最后,以神经网络预报因子的选择为例,验证Copula熵的适用性。比较研究表明:基于Copula熵因子选择的BP神经网络预报结果最好,好于常用的线性相关系数法,为探讨水文相关性分析提供了一条新的途径。 Hydrological events are usually characterized by several correlated variables. There is a great need to estimate the correlation of hydrological variables. In this study, the current hydrologic correlation analysis methods were reviewed, the disadvantages of which were also discussed. The concept of copula entropy was introduced to estimate the dependences. The relationship between copula entropy and mutual information was discussed and the calculation procedures of copula entropy were given. Finally, the proposed method was used for selecting the inputs of artificial neural network for flood forecasting. The comparative study results show that the proposed method performs better than conventional linear regression method and provides a new way for hydrological correlation analysis.

在线客服:
对外合作:
联系方式:400-6379-560
投诉建议:feedback@hanspub.org
客服号

人工客服,优惠资讯,稿件咨询
公众号

科技前沿与学术知识分享