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基于粗糙集的BP神经网络在震例中的应用研究
引用本文:董晓娜,苏道磊,李希亮,曲利,张慧峰,吴晨. 基于粗糙集的BP神经网络在震例中的应用研究[J]. 地震研究, 2012, 35(2): 251-259,296
作者姓名:董晓娜  苏道磊  李希亮  曲利  张慧峰  吴晨
作者单位:1. 山东省地震局,山东济南,250014
2. 济南市地震局,山东济南,250001
基金项目:中国地震局地震科技星火计划项目,山东省地震局合同制项目
摘    要:采用《中国震例》作为数据源,通过初步整理分析和预处理,构建了较完备的震例研究样本集。尝试将粗糙集与BP神经网络相结合的方法引入到震例研究中,用基于粗糙集的属性约简算法从众多复杂的地震异常指标中筛选出对最终分类起决定作用的核心异常作为输入,震级作为输出,构建了泛化能力强的BP神经网络模型来模拟异常与地震之间的不确定关系。仿真测试结果表明:地震震级预测精度误差基本控制在-0.5~0.5级之间。

关 键 词:粗糙集  神经网络  震例研究  地震异常指标

Application of BP Neural Network Based on Rough Set in the Earthquake Case
DONG Xiao-na , SU Dao-lei , LI Xi-liang , QU Li , ZHANG Hui-feng , WU Chen. Application of BP Neural Network Based on Rough Set in the Earthquake Case[J]. Journal of Seismological Research, 2012, 35(2): 251-259,296
Authors:DONG Xiao-na    SU Dao-lei    LI Xi-liang    QU Li    ZHANG Hui-feng    WU Chen
Affiliation:1(1.Earthquake Administration of Shandong Province,Jinan 250014,Shandong,China)(2.Earthquake Administration of Jinan Municipality,Jinan 250001,Shandong,China)
Abstract:Firstly,using "China earthquake case" as data source,we built a fairly complete sample set for earthquake case study through preliminary analysis and pretreatment and introduced the combination of Rough Set and BP Neural Network to the earthquake case.Secondly,we selected the core abnormalities which plays a decisive role in final classification from a number of complex seismic anomaly indicators as the input by use of attribute reduction algorithm based on Rough Set,and took the discrete magnitude as the output.Furthermore,we built a generalized BP Neural Network model to simulate the uncertain relationship between the seismic anomaly and the earthquake.Finally,the result of simulation tests showed that the precision errors of earthquake magnitude prediction is between-0.5 and 0.5.
Keywords:Rough Set  Neural Network  study of earthquake cases  seismic anomaly indicator
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