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A comparative study on classification of features by SVM and PSVM extracted using Morlet wavelet for fault diagnosis of spur bevel gear box

机译:利用Morlet小波提取SVM和PSVM进行特征分类的比较研究。

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摘要

The condition of an inaccessible gear in an operating machine can be monitored using the vibration signal of the machine measured at some convenient location and further processed to unravel the significance of these signals. This paper deals with the effectiveness of wavelet-based features for fault diagnosis using support vector machines (SVM) and proximal support vector machines (PSVM). The statistical feature vectors from Morlet wavelet coefficients are classified using J48 algorithm and the predominant features were fed as input for training and testing SVM and PSVM and their relative efficiency in classifying the faults in the bevel gear box was compared.
机译:可以使用在某些方便位置测量的机器振动信号来监视操作机器中无法触及的齿轮的状况,并对其进行进一步处理以揭示这些信号的重要性。本文使用支持向量机(SVM)和近端支持向量机(PSVM)处理基于小波的特征进行故障诊断的有效性。使用J48算法对Morlet小波系数的统计特征向量进行分类,并将主要特征作为训练和测试SVM和PSVM的输入,并比较了它们在锥齿轮箱故障分类中的相对效率。

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