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Multi-fault Diagnosis of Roller Bearings Using Support Vector Machines with an Improved Decision Strategy

机译:改进决策策略的支持向量机对滚动轴承的多故障诊断

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This paper proposes an efficient fault diagnosis methodology based on an improved one-against-all multiclass support vector machine (OAA-MCSVM) for diagnosing faults inherent in rotating machinery. The methodology employs time and frequency domain techniques to extract features of diverse bearing defects. In addition, the proposed method introduces a new reliability measure (SVMReM) for individual SVMs in the multiclass framework. The SVMReM achieves optimum results irrespective of the test sample location by using a new decision strategy for the proposed OAA-MCSVM based method. Finally, each SVM is trained with optimized kernel parameters using a grid search technique to enhance the classification accuracy of the proposed method. Experimental results show that the proposed method is superior to conventional approaches, yielding an average classification accuracy of 97 % for five different rotational speed conditions, eight different fault types and two different crack sizes.
机译:本文提出了一种基于改进的反对所有多类支持向量机(OAA-MCSVM)的高效故障诊断方法,用于诊断旋转机械固有的故障。该方法采用时域和频域技术来提取各种轴承缺陷的特征。此外,所提出的方法为多类框架中的单个SVM引入了一种新的可靠性度量(SVMReM)。通过为基于OAA-MCSVM的建议方法使用新的决策策略,SVMReM可获得最佳结果,而与测试样品的位置无关。最后,使用网格搜索技术以优化的内核参数对每个SVM进行训练,以提高所提出方法的分类准确性。实验结果表明,该方法优于常规方法,在五个不同的转速条件,八个不同的断层类型和两个不同的裂纹尺寸下,平均分类精度为97%。

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