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基于多证据融合模型的洪水预测研究
引用本文:吴蔚,张海波,王道席.基于多证据融合模型的洪水预测研究[J].水力发电,2005,31(12):22-24.
作者姓名:吴蔚  张海波  王道席
作者单位:1. 浙江大学,浙江,杭州,310027;浙江水利水电专科学校,浙江,杭州,310018
2. 浙江水利水电专科学校,浙江,杭州,310018
3. 水利部黄河水利委员会,河南,郑州,450003
基金项目:国家重点基础研究发展规划(973)资助项目(G19990436);浙江省水利厅科技项目(RC0509)
摘    要:针对单一模型解决洪水预测问题存在的算法复杂度高、分类准确率低等问题,提出了BP神经网络联合与Ds证据推理相融合的模型,不仅实现了多个领域不同层次的全部主,客观证据的特征级融合,还实现了多个模型的优势互补。通过实验对该方法和传统的单一神经网络方法比较得出,主/客观证据融合方法不仅提高了4.4%的分类精度,还降低了算法的时间和复杂度。

关 键 词:信息融合  洪水预测  神经网络  DS证据理论
文章编号:0559-9342(2005)12-0022-03
收稿时间:08 30 2005 12:00AM
修稿时间:2005-08-30

Study of flood prediction based on multi-evidential fusion model
Wu Wei,Zhang Hai-bo,Wang Dao-xi.Study of flood prediction based on multi-evidential fusion model[J].Water Power,2005,31(12):22-24.
Authors:Wu Wei  Zhang Hai-bo  Wang Dao-xi
Affiliation:1. Zhejiang University, Hangzhou Zhejiang 310027; 2. ZhejiangWater Conservancy And Hydropower College, Hangzhou Zhejiang 310018; 3.Yellow River Conservancy Commission, Zhengzhou Henan 450003
Abstract:There are problems such as high complexity of algorithms and low accuracy rate of classifications lie in the flood prediction using single models.To solve these problems,the paper presents a model by combining BP neural network and DS evidential reasoning,which not only achieves the feature level fusion of all subjective and objective evidences in various domains and layers,but also makes distinct models complement each other.Comparing with traditional single neural network by the experiment,this method improves classification precision by 4.4 percent and reduces the time complexity of algorithm.
Keywords:information fusion  flood prediction  neural network  DS evidential theory
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