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基于高维随机矩阵特征值之差的滚动轴承状态异常检测算法
引用本文:朱文昌,何雅娟,王建波,王恒. 基于高维随机矩阵特征值之差的滚动轴承状态异常检测算法[J]. 振动与冲击, 2022, 0(4): 14-20
作者姓名:朱文昌  何雅娟  王建波  王恒
作者单位:南通大学机械工程学院;南通大学工程训练中心
基金项目:国家重点研发计划项目(2019YFB2005302);江苏省“六大人才高峰”高层次人才项目(GDZB-048);江苏省研究生科研创新计划项目(KYCX20_2822);南通市基础科学研究项目(JC2019060)。
摘    要:针对滚动轴承异常检测准确性差、精度低及数据维度灾难造成检测困难等问题,提出一种基于随机矩阵特征值之差指标的滚动轴承状态异常检测算法.运用平移时间窗对不同时刻的轴承信息锁定,并通过分段、随机化、扩增和维度重构等方法构造出高维随机特征矩阵;利用随机矩阵理论对高维数据良好的处理能力,给出了滚动轴承特征值之差指标的构造方法及动...

关 键 词:滚动轴承  随机矩阵理论  异常检测  检测阈值  特征值之差

A rolling bearing state anomaly detection algorithm based on the difference of high-dimensional random matrix eigenvalues
ZHU Wenchang,HE Yajuan,WANG Jianbo,WANG Heng. A rolling bearing state anomaly detection algorithm based on the difference of high-dimensional random matrix eigenvalues[J]. Journal of Vibration and Shock, 2022, 0(4): 14-20
Authors:ZHU Wenchang  HE Yajuan  WANG Jianbo  WANG Heng
Affiliation:(School of Mechanical Engineering,Nantong University,Nantong 226019,China;Engineering Training Center,Nantong University,Nantong 226019,China)
Abstract:A rolling bearing state anomaly detection algorithm based on the difference index of random matrix eigenvalues was proposed to solve problems of poor accuracy, low precision, and difficulty of detection caused by data dimension disasters in rolling bearing anomaly detection. The bearing information at different times was locked by using a moving time window, and a high-dimensional random feature matrix was constructed through methods such as segmentation, randomization, amplification and dimensional reconstruction. The use of random matrix theory has a good processing ability of high-dimensional data, and the construction method of the difference index of the rolling bearing eigenvalues and the mathematical formula of the dynamic detection threshold were provided, which can reduce the interference of noise, improve the robustness of the detection index and the accuracy of the detection result. By using intelligent maintenance system(IMS) rolling bearing full-life data for application research, the impact of different false alarm rates on the detected results were analyzed. From the perspective of index construction, threshold setting and abnormal detection, the difference between the eigenvalue algorithm and the eigenvalue ratio algorithm were compared. The results show that the construction of the detection index and threshold setting in the algorithm of the difference between the maximum and minimum eigenvalues are more in line with the actual working state, more accurate detection of abnormal state of rolling bearings, and more sensitive to the identification of early abnormal state.
Keywords:rolling bearing  random matrix theory  anomaly detection  detection threshold  difference between eigenvalues
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