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首页> 外文期刊>International journal of materials & product technology >Research on early warning of rolling bearing wear failure based on empirical mode decomposition
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Research on early warning of rolling bearing wear failure based on empirical mode decomposition

机译:基于经验模式分解的滚动轴承磨损失效预警研究

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摘要

In order to solve the problems of low precision and long time-consuming of traditional methods, this paper designs a rolling bearing wear fault early warning method based on empirical mode decomposition (EMD). Based on the wear reason of rolling bearing, the acceleration sensor is used to collect its vibration signal, and the EMD algorithm is used to stabilise the signal to obtain multi-scale signal. Each multi-scale signal is decomposed into sub-band to get multi-scale sub-band signal, then the multi-scale sub-band sample entropy is obtained, and the optimisation function of local preserving projection algorithm is constructed to obtain the eigenvalue and eigenvector of wear failure fault, and finally the fault early warning is realised. The simulation results show that the signal denoising effect of this method is good, the early warning accuracy is always above 94%, and the average alarm time is close to 0.27 s.
机译:为了解决高精度和传统方法耗费长期耗时的问题,本文设计了一种基于经验模式分解(EMD)的滚动轴承磨损故障预警方法。 基于滚动轴承的磨损原因,加速度传感器用于收集其振动信号,EMD算法用于稳定信号以获得多尺度信号。 每个多尺度信号被分解成副频带以获得多尺度子带信号,然后获得多尺度子带采样熵,构造局部保留投影算法的优化功能以获得特征值和 磨损故障故障的特征向量,最后实现了故障预警。 仿真结果表明,这种方法的信号去噪效果好,预警精度始终高于94%,平均警报警时间接近0.27秒。

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