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首页> 外文期刊>Journal of Mechanical Science and Technology >A rolling bearing fault diagnosis strategy based on improved multiscale permutation entropy and least squares SVM
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A rolling bearing fault diagnosis strategy based on improved multiscale permutation entropy and least squares SVM

机译:基于改进的多尺度排列熵和最小二乘SVM的滚动轴承故障诊断策略

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摘要

A novel rolling bearing fault diagnosis strategy is proposed based on Improved multiscale permutation entropy (IMPE), Laplacian score (LS) and Least squares support vector machine-Quantum behaved particle swarm optimization (QPSO-LSSVM). Entropy-based concepts have attracted attention recently within the domain of physiological signals and vibration data collected from human body or rotating machines. IMPE, which was developed to reduce the variability of entropy estimation in time series, was used to obtain more precise and reliable values in rolling element bearing vibration signals. The extracted features were then refined by LS approach to form a new feature vector containing main unique information. By constructing the fault feature, the effective characteristic vector was input to QPSO-LSSVM classifier to distinguish the health status of rolling bearings. The comparative test results indicate that the proposed methodology led to significant improvements in bearing defect identification.
机译:提出了一种基于改进的多尺度排列熵(厄普),拉普拉斯评分(LS)和最小二乘支持向量机 - 量子表现粒子群综合优化(QPSO-LSSVM)的新型滚动轴承故障诊断策略。基于熵的概念最近引起了从人体或旋转机器收集的生理信号和振动数据的区域内引起的关注。厄尔开发的推动以减少时间序列中的熵估计的可变性,用于在滚动元件轴承振动信号中获得更精确和可靠的值。然后通过LS方法改进提取的特征以形成包含主要独特信息的新特征向量。通过构造故障特征,将有效的特征向量输入到QPSO-LSSVM分类器以区分滚动轴承的健康状态。比较试验结果表明,所提出的方法导致轴承缺陷识别的显着改进。

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