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Step-by-step Fault Diagnosis of Rolling Bearings Based on EMD and Random Forest

机译:基于EMD和随机森林的滚动轴承逐步故障诊断

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A step-by-step fault diagnosis method based on Empirical Mode Decomposition (EMD) combined with Random Forest algorithm was proposed for actual requirements of rolling bearing vibration fault diagnosis. Firstly, the preliminary fault monitoring was carried out, and a Linear Support Vector Machine model was established by extracting the Permutation Entropy of vibration signals as characteristic parameters to judge whether the bearing was faulty or not. Then, the fault location identification and the fault degree determination were carried out, and high-dimensional characteristic parameters in time domain, frequency domain and time-frequency domain are respectively extracted as inputs of the Random Forest algorithm. Finally, through the step-by-step diagnostic test of rolling bearing vibration data, the results show that each step of diagnosis can achieve 100% diagnostic accuracy and appropriate training time, which proves that EMD and Random Forest have good effect on step-by-step fault diagnosis of rolling bearing.
机译:针对滚动轴承振动故障诊断的实际需求,提出了一种基于经验模式分解(EMD)结合随机森林算法的逐步故障诊断方法。首先,进行了初步的故障监测,通过提取振动信号的置换熵作为特征参数,建立了轴承故障的线性支持向量机模型。然后,进行故障位置识别和故障程度确定,并分别提取时域,频域和时频域的高维特征参数作为随机森林算法的输入。最后,通过滚动轴承振动数据的逐步诊断测试,结果表明,每个诊断步骤都可以达到100%的诊断准确度和适当的训练时间,证明EMD和Random Forest对循序渐进具有良好的效果。滚动轴承的多步故障诊断。

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