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首页> 外文期刊>Journal of Sound and Vibration >Early fault diagnosis of rolling bearings based on hierarchical symbol dynamic entropy and binary tree support vector machine
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Early fault diagnosis of rolling bearings based on hierarchical symbol dynamic entropy and binary tree support vector machine

机译:基于等级符号动态熵和二叉树支持向量机的滚动轴承的早期故障诊断

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摘要

Early fault diagnosis of rolling bearings is crucial to operating andmaintenance cost reduction of the equipmentwith bearings. This paper aims to propose a novel early fault feature extraction method based on the proposed hierarchical symbol dynamic entropy (HSDE) and the binary tree support vector machine (BT-SVM). Multiscale symbolic dynamic entropy (MSDE) has been recently proposed to characterize the dynamical behavior of time series. MSDE has several merits comparing with multiscale sample entropy (MSE) and multiscale permutation entropy (MPE), such as high computational efficiency and robustness to noise. However, MSDE only utilizes the fault information in the low frequency components and consequently the fault information hidden in the high frequency components is discarded. To address this shortcoming, a new method, namely HSDE, is proposed to extract the fault information in the high frequency components. Then, the BT-SVM is utilized to automatically complete the fault type identification. The effectiveness of the proposedmethod is validated using simulated and experimental vibration signals. Meanwhile, a comparison is conducted between MPE, hierarchical permutation entropy (HPE), MSE, hierarchical sample entropy (HSE), MSDE and HSDE. Results show that the proposed method performs best to recognize the early fault types of rolling bearings. (c) 2018 Elsevier Ltd. All rights reserved.
机译:滚动轴承的早期故障诊断对于操作和轴承的设备降低,滚动轴承是至关重要的。本文旨在提出基于所提出的分层符号动态熵(HSDE)和二叉树支持向量机(BT-SVM)的新型早期故障特征提取方法。最近提出了多尺度符号动态熵(MSDE)来表征时间序列的动态行为。 MSDE具有与多尺度样本熵(MSE)和多尺度排列熵(MPE)进行比较的优点,例如高计算效率和对噪声的鲁棒性。然而,MSDE仅利用低频分量中的故障信息,因此丢弃了在高频分量中隐藏的故障信息。为了解决此缺点,建议采用新方法,即HSDE,以提取高频分量中的故障信息。然后,使用BT-SVM自动完成故障类型标识。使用模拟和实验振动信号验证了BucoSedmethod的有效性。同时,在MPE,层级置换熵(HPE),MSE,分层样本熵(HSE),MSDE和HSDE之间进行比较。结果表明,该方法表现最佳可识别滚动轴承的早期故障类型。 (c)2018年elestvier有限公司保留所有权利。

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