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基于参数优化的集对分析月径流预测
引用本文:刘冀,徐刚,彭涛,明波.基于参数优化的集对分析月径流预测[J].水文,2013,33(1):8-11.
作者姓名:刘冀  徐刚  彭涛  明波
作者单位:三峡大学水利与环境学院,湖北宜昌,443002
基金项目:国家自然科学基金项目(41101511)
摘    要:采用集对分析法进行月径流预报时,针对级别划分较多时不易确定差异度分量系数的问题,建立了基于SCEM-UA算法优化该系数的月径流预报方法.研究实例表明,本方法能够有效区分集对间不同差异度的影响,优化所得的差异度分量系数是有效的、合理的,能够提高月径流预报精度并发布概率预报.此外,分析表明集对分析预报中的参数不确定性在模型不确定性中占主导地位.

关 键 词:集对分析  径流预测  SCEM-UA  差异度分量系数
收稿时间:2012/3/23 0:00:00

Monthly Runoff Prediction Based on Set Pair Analysis with Parameters Optimization
LIU Ji,XU Gang,PENG Tao,MING Bo.Monthly Runoff Prediction Based on Set Pair Analysis with Parameters Optimization[J].Hydrology,2013,33(1):8-11.
Authors:LIU Ji  XU Gang  PENG Tao  MING Bo
Institution:(College of Hydraulic and Environmental Engineering,China Three Gorges University,Yichang 443002,China)
Abstract:When predicting monthly runoff with set pair analysis (SPA) method, it will become much difficult to determine the difference degree coefficients as the number of runoff levels increased. To solve this problem, the SCEM-UA algorithm was employedfor optimizing the difference degree coefficients of SPA. This method was applied to forecast the monthly runoff. The results showthat the proposed method can effectively distinguish the effects of difference degree among set pairs, and the difference degree co -efficient optimized by the method is effective and reasonable, the runoff prediction accuracy is improved greatly. Also, the parame -ter uncertainty occupies the largest proportion in the model uncertainty.
Keywords:set pair analysis  runoff prediction  SCEM-UA  difference degree coefficient
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