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Rolling Bearing Fault Diagnosis Method Based on Eigenvalue Selection and Dimension Reduction Algorithm

机译:基于特征值选择和尺寸减少算法的滚动轴承故障诊断方法

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摘要

The bearings used in the mechanical equipment that bear and transfer the load are vulnerable parts. In this paper, a rolling bearing fault diagnosis method based on eigenvalue selection and dimensionality reduction is presented. This is suitable for analyzing fault signals with nonstationary characteristics, and it has a good recognition rate. The characteristic quantity of vibration signals in the time domain and the frequency domain is calculated, and the characteristic quantity is selected by calculating the degree of difference. A dimension reduction algorithm is proposed, which is based on a neural network and ISOMAP. Its performance is compared using PCA, LTSA, and ISOMAP algorithms. Fault diagnosis is carried out by using KNN and SVM classification algorithms, and good recognition results are obtained.
机译:用于承担和转移负载的机械设备中使用的轴承是易受攻击的部分。 本文提出了一种基于特征值选择和维数减少的滚动轴承故障诊断方法。 这适用于分析具有非间断特性的故障信号,并且具有良好的识别率。 计算时域和频域中的振动信号的特征量,并且通过计算差异来选择特征量。 提出了一种基于神经网络和ISOMAP的尺寸减少算法。 它的性能使用PCA,LTSA和ISOMAP算法进行比较。 通过使用KNN和SVM分类算法进行故障诊断,获得良好的识别结果。

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