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基于支持向量机的电路故障诊断模型
引用本文:嵇斗,王向军,张民.基于支持向量机的电路故障诊断模型[J].微计算机信息,2007,23(1S):198-200.
作者姓名:嵇斗  王向军  张民
作者单位:湖北武汉海军工程大学电气与信息工程学院,430033
基金项目:海军青年科研项目基金资助(编号不公开)
摘    要:提出了一种基于遗传编程和支持向量机的故障诊断模型。通过遗传编程对时域指标进行特征选择和提取,得到更能反映信号本质的特征信号,该特征信号可作为识别特征输入多类支持向量机,实现对模拟电路不同类型软故障的识别。实验结果表明,同传统时域指标相比,经过遗传选择和提取的特征对模拟电路的软故障具有更好的识别能力,进而提高了多类支持向量机的分类准确性。

关 键 词:故障诊断  支持向量机  遗传编程  模拟电路
文章编号:1008-0570(2007)01-1-0198-03
修稿时间:2006-08-242006-09-22

Circuit Fault Detection Based on Support Vector Machines
JI DOU WANG XIANGJUN ZHANG MIN.Circuit Fault Detection Based on Support Vector Machines[J].Control & Automation,2007,23(1S):198-200.
Authors:JI DOU WANG XIANGJUN ZHANG MIN
Affiliation:College of Elecamd Info.Engineering Naval Univ.of Engineering Wuhan,430033,China
Abstract:A new classification model based on genetic programming and support vector machine for circuit fault detection was proposed. In this model, genetic programming constructs and selects features from original feature set . The selected features form input feature set of support vector machines. Then multi-class support vector machine is applied to detect abnormal cases from normal ones. Experiments of circuit fault detection are carried out to test the performance of this model. Practical results show that the compound features generated by genetic programming possess better recognition ability than the initial time domain features do. The classification ability of multi-class support vector machine is improved after feature extraction and selection.
Keywords:fault detection  support vector machines  genetic programming  circuit fault
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