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Fault Diagnosis of Bearing by Utilizing LWT-SPSR-SVD-Based RVM with Binary Gravitational Search Algorithm

机译:基于LWT-SPSR-SVD的RVM与二值引力搜索算法相结合的轴承故障诊断

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摘要

The fault diagnosis method of bearing based on lifting wavelet transform (LWT)-self-adaptive phase space reconstruction (SPSR)-singular value decomposition (SVD)-based relevance vector machine (RVM) with binary gravitational search algorithm (BGSA) is presented in this study, among which LWT-SPSR-SVD (LSS) is presented for feature extraction of the bearing vibration signal, the dynamic characteristics of lifting wavelet coefficients' (LWCs') reconstructed signals of the bearing vibration signal can be reflected by SPSR for LWCs' reconstructed signals of the bearing vibration signal, and BGSA is used to select the embedding space dimension and time delay of phase space reconstruction (PSR) and kernel parameter of RVM. In order to show the superiority of LWT-SPSR-SVD-based RVM with BGSA (LSS-BGSA-RVM), the traditional RVM trained by the training samples with the features based on LWT-SVD (LS-RVM) is used to compare with the proposed LSS-BGSA-RVM method. The experimental result demonstrates that compared with LS-RVM, LSS-BGSA-RVM can achieve the higher diagnosis accuracy for bearing.
机译:提出了基于提升小波变换(LWT)-自适应相空间重构(SPSR)-基于奇异值分解(SVD)的关联向量机(RVM)的轴承故障诊断方法。这项研究,其中提出了LWT-SPSR-SVD(LSS)用于轴承振动信号的特征提取,轴承振动信号的提升小波系数'(LWCs')重构信号的动态特性可以通过SPSR反映LWCs重建轴承振动信号,然后BGSA用于选择嵌入空间尺寸和相空间重建(PSR)的时间延迟以及RVM的内核参数。为了展示基于LWT-SPSR-SVD的RVM与BGSA(LSS-BGSA-RVM)的优越性,使用了由训练样本训练的具有基于LWT-SVD(LS-RVM)的特征的传统RVM进行比较。提出的LSS-BGSA-RVM方法。实验结果表明,与LS-RVM相比,LSS-BGSA-RVM可以实现更高的轴承诊断精度。

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