As a new multi-class discrimination approach, variable prediction model class discrimination (VPMCD) can make full use of the intrinsic relationship among f'/> VPMCD based novelty detection method on and its application to fault identification for local characteristic-scale decomposition
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VPMCD based novelty detection method on and its application to fault identification for local characteristic-scale decomposition

机译:基于VPMCD的新颖性检测方法及其在本地特征级分解的故障识别应用中的应用

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AbstractAs a new multi-class discrimination approach, variable prediction model class discrimination (VPMCD) can make full use of the intrinsic relationship among fault features to built variable prediction model for different working conditions and to accomplish multi-class discrimination according to prediction error square sum. It has been effectively used to multi-fault diagnosis when typical fault samples and fault modes can be obtained. However, in most application cases, there only exists normal samples, or there are short of typical fault modes; therefore the variable prediction model is unable to be established and there appear a challenge. Aiming at this problem, VPMCD-based novelty detection (VPMCD-ND) method is put forward in this paper. In VPMCD-ND method, the classifiers are trained only by normal samples firstly. Subsequently, the threshold of prediction error square sum is set according to Chebyshev’s inequality. Lastly, the novelty (from abnormal class) is detected by whether the prediction error square sum is larger than the threshold. Combing with Local characteristic-scale decomposition, a fault diagnosis method is developed and applied to roller bearings. The results show that the proposed VPMCD-ND method not only is more effective than the support vector data description method, but is benefit for online fault diagnosis.
机译:<标题> ara id =“par3”>作为新的多级辨别方法,可变预测模型类歧视(VPMCD)可以充分利用故障特征之间的内在关系来构建可变预测模型根据预测误差方总和,不同的工作条件和实现多级别歧视。当可以获得典型故障样本和故障模式时,它已得到有效地用于多故障诊断。但是,在大多数应用程序中,只存在正常的样本,或者缺乏典型的故障模式;因此,无法建立可变预测模型,并且存在挑战。针对这个问题,本文提出了基于VPMCD的新颖性检测(VPMCD-ND)方法。在VPMCD-ND方法中,分类器仅通过正常样本培训。随后,根据Chebyshev的不等式来设置预测误差方总和的阈值。最后,通过预测误差方总和是否大于阈值来检测新颖性(来自异常类)。梳理与局部特征级分解,开发故障诊断方法并施加到滚子轴承上。结果表明,所提出的VPMCD-ND方法不仅比支持载体数据描述方法更有效,而且有利于在线故障诊断。

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