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Variable predictive model class discrimination using novel predictive models and adaptive feature selection for bearing fault identification

机译:使用新型预测模型和轴承故障识别的自适应特征选择可变预测模型类歧视

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摘要

A complete fault diagnosis for the rolling bearing is proposed in this paper. Variable predictive model class discrimination (VPMCD) is a conventional pattern recognition method; however, in practice, when the fault diagnosis method is applied to small samples or in multi-correlative feature space, the stability of the VPM constructed based on the least squares (LS) method is not sufficient. Based on affinity propagation (AP) clustering, RReliefF, and sequential forward search, the ARSFS is proposed to select the significant subset of original feature set and to reduce the dimension and multiple correlations of the feature space. Further, this paper uses two kinds of Gaussian Neural Network, namely the Radial Basis Function Neural Network (RBF) and the Generalized Regression Neural Network (GRNN), instead of the LS method to construct predictive models of VPMCD, called AOR-VPMCD. Compared with the conventional VPMCD and its improvements, based on sufficient experiments, the entire process presented in this paper can effectively identify the fault of the rolling bearing. (c) 2018 Elsevier Ltd. All rights reserved.
机译:本文提出了对滚动轴承的完全故障诊断。可变预测模型类别歧视(VPMCD)是一种传统的模式识别方法;然而,在实践中,当故障诊断方法应用于小样本或多相关特征空间时,基于最小二乘(LS)方法构造的VPM的稳定性是不够的。基于关联传播(AP)群集,RRELIEFF和顺序前进搜索,建议ARSFS选择原始特征集的重要子集,并降低特征空间的维度和多个相关性。此外,本文采用了两种高斯神经网络,即径向基函数神经网络(RBF)和广义回归神经网络(GRNN),而不是LS方法构建VPMCD的预测模型,称为AOR-VPMCD。与传统的VPMCD及其改进相比,基于足够的实验,本文提出的整个过程可以有效地识别滚动轴承的故障。 (c)2018年elestvier有限公司保留所有权利。

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