Northern Cthulhu Algorithm Optimized VMD Combined with SVM for Fault Diagnosis

Dengxue Cao, Luyi Liu, Wei-ming Lin
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Abstract

For a long time, in the face of complex signal processing, such as rolling bearings signals and other complex nonlinear signals, most of them are using traditional signal processing methods to extract signal features. However, it is difficult for general signal processing strategies to extract all the signal features contained in the signal one by one. With mature signal extraction methods like variational mode decomposition (VMD), the number of layers of signal decomposition determines the effect of final fault detection. To solve this problem, this paper proposes a northern goshawk optimization (NGO) algorithm to optimize the VMD and find the optimal decomposition parameter K, which further improve the detection effect. Finally, the experimental data simulated in the MATLAB software platform shows that the detection effect achieved by the optimized VMD of the NGO algorithm is improved by 6.4814%.
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Northern Cthulhu算法优化的VMD与SVM相结合的故障诊断
长期以来,面对复杂的信号处理,如滚动轴承信号等复杂非线性信号,大多采用传统的信号处理方法提取信号特征。然而,一般的信号处理策略很难逐一提取信号中包含的所有信号特征。在变分模态分解(VMD)等成熟的信号提取方法中,信号分解的层数决定了最终故障检测的效果。针对这一问题,本文提出了一种北苍鹰优化(NGO)算法,对VMD进行优化,找到最优分解参数K,进一步提高了检测效果。最后,在MATLAB软件平台上仿真实验数据表明,优化后的NGO算法的VMD检测效果提高了6.4814%。
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