DIAGNOSA KERUSAKAN BANTALAN BOLA MENGGUNAKAN METODE SUPPORT VECTOR MACHINE

M. Fathurrohman, D. Susilo
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引用次数: 1

Abstract

Bearings are the critical part of any rotating machine. The catastrophic failure of the bearing can lead to fatal and harmful to the operation of the machine. Therefore, predictive maintenance based on condition monitoring of bearing is very important. The objective of this research is to apply Support Vector Machine (SVM) method for fault diagnosis of the ball bearing. The research was carried out at the bearing test rig. Four types of ball bearing condition, such as normal, inner race defect, ball defect, and outer race defect were measured of the vibration signals using data acquisition with a sampling frequency of 20 kHz at the constant speed of 1400 RPM. Various features were extracted from vibration signals in time domain, such as RMS, variance, standard deviation, crest factor, shape factor, skewness, kurtosis, log energy entropy and sure entropy. PCA transformation was employed to reduce the dimension of feature extracted data. SVM classification problems were solved using MATLAB 2016a. The results showed that the application of RBF kernel function with the C parameter =1 was the best configuration. The training model accuracy was 98.93% and the testing accuracy of SVM was 97.5%. Finally, the research results show that the SVM classification method can be used to diagnose the fault condition of the ball bearing..
使用矢量引擎支持系统诊断滚珠轴承损坏
轴承是任何旋转机器的关键部件。轴承的灾难性故障会对机器的运行造成致命和有害的影响。因此,基于轴承状态监测的预测性维护是非常重要的。本研究的目的是将支持向量机(SVM)方法应用于滚珠轴承的故障诊断。研究是在轴承试验台进行的。采用数据采集技术,在1400 RPM的恒转速下,采样频率为20 kHz,测量了正常、内圈缺陷、球圈缺陷和外圈缺陷四种球轴承状态下的振动信号。从振动信号中提取时域特征,如均方根、方差、标准差、波峰因子、形状因子、偏度、峰度、对数能量熵和确定熵。采用PCA变换对特征提取数据进行降维处理。利用MATLAB 2016a对SVM分类问题进行求解。结果表明,采用参数C =1的RBF核函数是最佳配置。训练模型的准确率为98.93%,SVM的测试准确率为97.5%。最后,研究结果表明,支持向量机分类方法可用于诊断滚珠轴承的故障状态。
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