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A Study on Machine Learning and Artificial Intelligence Methods in Detecting the Minor Outer-Raceway Bearing Fault

机译:检测次巷道轴承故障的机器学习与人工智能方法研究

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To increase the reliability of induction motor (IM), several techniques have been proposed in condition monitoring and fault diagnosis. Bearings are the most sensitive part of IM, and fault occurring must be considered. In industry, scratch seems the most frequently occurring fault in bearing, and only few researches have encountered this issue. This paper is motivated by considering hole and scratch as faulty factor. A fast Fourier transform analysis is carried out, the features are extracted and used for training the diagnostic algorithm. Two types of diagnosis methods are proposed; machine learning algorithm and artificial intelligence method (AI). Among the various machine learning algorithms, Support Vector Machine (SVM) is selected because of its superiority over the data preprocessing. Deep Learning Algorithm (DL) is selected in case of AI because of its intrinsic property over feature learning. A Convolutional Neural Network (CNN) architecture is originally used for fault characterization. The advantage of both the diagnosis methods and the possibility in detecting the minor bearing faults are discussed. Finally, effectiveness of the proposed methods is validated based on the experimental and diagnosis results.
机译:为了提高感应电动机(IM)的可靠性,在状态监测和故障诊断中提出了几种技术。轴承是IM最敏感的部分,必须考虑发生故障。在工业中,划痕似乎是最常见的轴承故障,并且只有少数研究遇到了这个问题。本文通过考虑孔和划痕作为错误的因素而激励。进行快速傅里叶变换分析,提取特征并用于训练诊断算法。提出了两种类型的诊断方法;机器学习算法和人工智能方法(AI)。在各种机器学习算法中,由于其在数据预处理上的优越性,因此选择了支持向量机(SVM)。在AI的情况下选择深度学习算法(DL),因为其内在属性在特征学习中。卷积神经网络(CNN)架构最初用于故障表征。讨论了诊断方法的优点和检测次要轴承故障的可能性。最后,基于实验和诊断结果验证了所提出的方法的有效性。

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