基于SABO优化VMD-WTD-SVM的滚动轴承故障诊断模型

A rolling bearing fault diagnosis model based on SABO optimized VMD-WTD-SVM

  • 摘要: 针对滚动轴承在运转过程中发生故障时故障类型难以提取和识别的问题,文章提出了一种基于减法平均优化器(subtraction-average-based optimizer,SABO)优化变分模态分解(variational mode decomposition,VMD)联合小波阈值去噪(wavelet threshold denoising,WTD)来提取故障特征,并与支持向量机(SVM)相融合的滚动轴承故障诊断模型。首先,以最小包络熵为适应度函数,通过SABO优化VMD中关键参数组合(Kα)的选取。其次,根据得到的参数对故障信号进行VMD分解,通过包络熵值和峭度值选择其中的有效分量再次进行WTD处理,重构后得到最佳信号分量。最后,计算最佳信号分量对应的9个特征数据作为当前信号的特征向量,并输入到SVM进行训练和故障识别。与其他方法相比,本模型在滚动轴承故障诊断方面表现更为突出,故障识别准确率达到了98.666 7%,具有良好的实际应用价值。

     

    Abstract: Aiming at the problem that it is difficult to extract and identify the fault type when the rolling bearing fails during operation, this paper proposes a rolling bearing fault diagnosis model based on subtraction-average-based optimizer (SABO) optimized variational mode decomposition(VMD) combined with wavelet threshold denoising (WTD) to extract the fault features, and fused with support vector machine (SVM). Firstly, the selection of the key parameter combination (K, α) in the VMD is optimized by SABO using the minimum envelope entropy as the fitness function. Secondly, the fault signal is decomposed by VMD according to the obtained parameters, and the effective component among them is selected by the envelope entropy value and craggy value to be processed by WTD again, and the optimal signal component IMF is obtained after reconstruction. Finally, the nine-feature data corresponding to the best signal component IMF are calculated as the feature vector of the current signal, and input them into the SVM for training and fault identification. Compared with other methods, this model performs more outstandingly in rolling bearing fault diagnosis, and the fault identification accuracy reaches 98.666 7%, which has good practical application value.

     

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