EEMD-CNN based Method for Compound Fault Diagnosis of Bearing

Anubhuti Singh, Arun C. S. Kumar
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Abstract

After a prolonged use of a faulty bearing, cracks are created on more than one parts of the bearing, which is a compound fault condition. This situation is tougher than the single fault condition. This combined faulty bearing creates a complex vibration signal with significant amount of noise, where it becomes very difficult to identify the fault frequencies by signal processing methods. This paper deals with a novel machine learning method for the compound fault diagnosis of Rolling bearing, where compound fault signals are decomposed into Intrinsic Mode Functions (IMF) by Ensemble Empirical Mode Decomposition (EEMD). The proposed method uses Convolution NeuralNetwork (CNN) based technique, which receives the decomposed signals of compound fault signal as input to CNN. These IMFs consists of groups of different frequencies. When these IMFs are given as input to CNN it classifies it effectively into different faults existing on bearing. CNN yields almost 96% accuracy which is better than any other previous performance for compound faultclassification.
基于EEMD-CNN的轴承复合故障诊断方法
故障轴承在长时间使用后,在轴承的多个部分产生裂纹,这是一种复合故障条件。这种情况比单故障情况更困难。这种组合故障轴承产生了具有大量噪声的复杂振动信号,其中通过信号处理方法识别故障频率变得非常困难。本文提出了一种新的滚动轴承复合故障诊断的机器学习方法,该方法将复合故障信号通过集成经验模态分解(EEMD)分解为内禀模态函数(IMF)。该方法采用基于卷积神经网络(CNN)的技术,接收复合故障信号的分解信号作为CNN的输入。这些国际货币基金组织由不同频率的组组成。当这些imf作为输入输入到CNN时,它可以有效地将其分类为轴承上存在的不同故障。CNN的准确率接近96%,优于以往任何一种复合故障分类方法。
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