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Support Vector Machine for Mechanical Faults Diagnosis

机译:支持向量机用于机械故障诊断

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摘要

Aiming at the difficulty that Support Vector Machine (SVM) model selection of classification algorithm affect classification accuracy, it research relevant factors that influence the precision of fault classifiers based on the typical fault data samples obtained by experimental setup of rotor-bearing systems. The results show that different SVM classifiers, in which different kernel functions and different kernel functions parameters are adopted, will influence the precision of fault classifiers in conditions that fault data samples is small. It can be conveniently applied to choose appropriate kernel functions and kernel functions parameters in engineering application.
机译:针对分类算法的支持向量机(SVM)模型选择影响分类精度的困难,基于转子轴承系统实验装置获得的典型故障数据样本,研究了影响故障分类器精度的相关因素。结果表明,在故障数据样本较小的情况下,采用不同核函数和不同核函数参数的不同支持向量机分类器会影响故障分类器的精度。可在工程应用中方便地选择合适的内核功能和内核功能参数。

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