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Fault Diagnosis of Rolling Bearing Using Multiscale Amplitude-Aware Permutation Entropy and Random Forest

机译:基于多尺度振幅置换熵和随机森林的滚动轴承故障诊断

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摘要

A rolling bearing is an important connecting part between rotating machines. It is susceptible to mechanical stress and wear, which affect the running state of bearings. In order to effectively identify the fault types and analyze the fault severity of rolling bearings, a rolling bearing fault diagnosis method based on multiscale amplitude-aware permutation entropy (MAAPE) and random forest is proposed in this paper. The vibration signals of rolling bearings to be analyzed are decomposed into different coarse-grained time series by using the coarse-graining procedure in multiscale entropy, highlighting the fault dynamic characteristics of vibration signals at different scales. The fault features contained in the coarse-grained time series at different time scales are extracted by using amplitude-aware permutation entropy’s sensitive characteristics to signal amplitude and frequency changes to form fault feature vectors. The fault feature vector set is used to establish the random forest multi-classifier, and the fault type identification and fault severity analysis of rolling bearings is realized through random forest. In order to demonstrate the feasibility and effectiveness of the proposed method, experiments were fully conducted in this paper. The experimental results show that multiscale amplitude-aware permutation entropy can effectively extract fault features of rolling bearings from vibration signals, and the extracted feature vectors have high separability. Compared with other rolling bearing fault diagnosis methods, the proposed method not only has higher fault type identification accuracy, but also can analyze the fault severity of rolling bearings to some extent. The identification accuracy of four fault types is up to 96.0% and the fault recognition accuracy under different fault severity reached 92.8%.
机译:滚动轴承是旋转机械之间的重要连接部件。它易受机械应力和磨损的影响,从而影响轴承的运行状态。为了有效识别滚动轴承的故障类型并分析其严重性,提出了一种基于多尺度幅度感知置换熵(MAAPE)和随机森林的滚动轴承故障诊断方法。利用多尺度熵的粗粒度程序,将待分析的滚动轴承的振动信号分解为不同的粗粒度时间序列,突出了不同尺度振动信号的故障动态特征。利用幅度感知置换熵对信号幅度和频率变化的敏感特性,提取出不同时间尺度上的粗粒度时间序列中包含的故障特征,以形成故障特征向量。利用故障特征向量集建立随机森林多分类器,并通过随机森林实现滚动轴承的故障类型识别和故障严重性分析。为了证明该方法的可行性和有效性,本文进行了充分的实验。实验结果表明,多尺度振幅感知置换熵可以有效地从振动信号中提取滚动轴承的故障特征,并且提取的特征向量具有较高的可分离性。与其他滚动轴承故障诊断方法相比,该方法不仅具有较高的故障类型识别精度,而且可以在一定程度上分析滚动轴承的故障严重程度。四种故障类型的识别精度高达96.0%,不同故障严重度下的故障识别精度达到92.8%。

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