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首页> 外文期刊>Journal of Mechanical Science and Technology >Fault diagnosis method of rolling bearing using principal component analysis and support vector machine
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Fault diagnosis method of rolling bearing using principal component analysis and support vector machine

机译:主要成分分析和支持向量机滚动轴承故障诊断方法

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摘要

To effectively extract the fault feature information of rolling bearings and improve the performance of fault diagnosis, a fault diagnosis method based on principal component analysis and support vector machine was presented, and the rolling bearings signals with different fault states were collected. To address the limitation on effectively dealing with the raw vibration signals by the traditional signal processing technology based on Fourier transform, wavelet packet decomposition was employed to extract the features of bearing faults such as outer ring flaking, inner ring flaking, roller flaking and normal condition. Compared with the previous literature on fault diagnosis using principal component analysis (PCA) and support vector machine (SVM), one-to-one and one-to-many algorithms were taken into account. Additionally, the effect of four kernel functions, such as liner kernel function, polynomial kernel function, radial basis function and hyperbolic tangent kernel function, on the performance of SVM classifier was investigated, and the optimal hype-parameters of SVM classifier model were determined by genetic algorithm optimization. PCA was employed for dimension reduction, so as to reduce the computational complexity. The principal components that reached more than 95 % cumulative contribution rate were extracted by PCA and were input into SVM and BP neural network classifiers for identification. Results show that the fault feature dimensionality of the rolling bearing is reduced from 8-dimensions to 5-dimensions, which can still characterize the bearing status effectively, and the computational complexity is reduced as well. Compared with the raw feature set, PCA has a higher fault diagnosis accuracy (more than 97 %), and a shorter diagnosis time relatively. To better verify the superiority of the proposed method, SVM classification results were compared with the results of BP neural network. It is concluded that SVM classifier achieved a better performance than BP neural network classifier in terms of the classification accuracy and time-cost.
机译:为了有效地提取滚动轴承的故障特征信息,提高故障诊断性能,提出了基于主成分分析和支持向量机的故障诊断方法,收集了具有不同故障状态的滚动轴承信号。为了解决基于傅里叶变换的传统信号处理技术有效处理原始振动信号的限制,采用小波分组分解来提取轴承骨折,如外圈剥落,内圈剥落,滚筒剥落和正常情况的特征。与先前的文献相比,使用主成分分析(PCA)和支持向量机(SVM),考虑一对一和一对多算法。另外,研究了四个内核功能的效果,例如衬里内核功能,多项式内核功能,径向基函数和双曲线切线函数,在SVM分类器的性能上,并确定了SVM分类器模型的最佳炒作参数遗传算法优化。 PCA用于减少尺寸,以降低计算复杂性。 PCA提取达到95%以上的累积贡献率的主要成分,并输入SVM和BP神经网络分类器以进行识别。结果表明,滚动轴承的故障特征维度从8维减小到5维,这仍然可以有效地表征轴承状态,并且还减少了计算复杂性。与原始功能集相比,PCA具有更高的故障诊断精度(超过97%),相对较短的诊断时间。为了更好地验证所提出的方法的优越性,将SVM分类结果与BP神经网络的结果进行了比较。结论是,在分类准确度和时间成本方面,SVM分类器在比BP神经网络分类器中实现了更好的性能。

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