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Fault diagnosis of car assembly line based on fuzzy wavelet kernel support vector classifier machine and modified genetic algorithm

机译:基于模糊小波核支持向量机和改进遗传算法的汽车装配线故障诊断

摘要

This paper presents a new version of fuzzy wavelet support vector classifier machine to diagnosing the nonlinear fuzzy fault system with multi-dimensional input variables. Since there exist problems of finite samples and uncertain data in complex fuzzy fault system, the input and output variables are described as fuzzy numbers. Then by integrating the fuzzy theory, wavelet analysis theory and v-support vector classifier machine, fuzzy wavelet v-support vector classifier machine (FW nu-SVCM) is proposed. To seek the optimal parameters of FW nu-SVCM, genetic algorithm (GA) is also applied to optimize unknown parameters of FW nu-SVCM. A diagnosing method based on FWv-SVCM and GA is put forward. The results of the application in car assembly line diagnosis confirm the feasibility and the validity of the diagnosing method. Compared with the traditional model and other SVCM methods, FW nu-SVCM method requires fewer samples and has better diagnosing precision.
机译:提出了一种新的模糊小波支持向量分类器,用于诊断具有多维输入变量的非线性模糊故障系统。由于复杂模糊故障系统中存在有限样本和不确定数据的问题,因此将输入和输出变量描述为模糊数。然后,通过将模糊理论,小波分析理论和v-支持向量分类器机器相结合,提出了模糊小波v-支持向量分类器(FW nu-SVCM)。为了寻找FW nu-SVCM的最佳参数,遗传算法(GA)也被用于优化FW nu-SVCM的未知参数。提出了一种基于FWv-SVCM和遗传算法的诊断方法。在汽车装配线诊断中的应用结果证实了该诊断方法的可行性和有效性。与传统模型和其他SVCM方法相比,FW nu-SVCM方法需要更少的样本,并且具有更高的诊断精度。

著录项

  • 作者

    Wu Q; Law R; Wu S;

  • 作者单位
  • 年度 2011
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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