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Automatic fault detection of sensors in leather cutting control system under GWO-SVM algorithm

机译:GWO-SVM算法下皮革切割控制系统传感器自动故障检测

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The purposes are to meet the individual needs of leather production, improve the efficiency of leather cutting, and increase the product’s competitiveness. According to the existing problems in current leather cutting systems, a Fault Diagnosis (FD) method combining Convolutional Neural Network (CNN) and the Support Vector Machine (SVM) of Gray Wolf Optimizer (GWO) is proposed. This method first converts the original signal into a scale spectrogram and then selects the pre-trained CNN model, AlexNet, to extract the signal scale spectrogram’s features. Next, the Principal Component Analysis (PCA) reduces the obtained feature’s dimensionality. Finally, the normalized data are input into GWO’s SVM classifier to diagnose the bearing’s faults. Results demonstrate that the proposed model has higher cutting accuracy than the latest fault detection models. After model optimization, when c is 25 and g is 0.2, the model accuracy can reach 99.24%, an increase of 66.96% compared with traditional fault detection models. The research results can provide ideas and practical references for improving leather cutting enterprises’ process flow.
机译:目的是满足皮革生产的个体需求,提高皮革切割效率,提高产品的竞争力。根据当前皮革切割系统的现有问题,提出了结合卷积神经网络(CNN)的故障诊断(FD)方法和灰狼优化器(GWO)的支持向量机(SVM)。该方法首先将原始信号转换为刻度谱图,然后选择预先训练的CNN模型AlexNet,以提取信号谱谱图的特征。接下来,主成分分析(PCA)减少了所获得的特征的维度。最后,归一化数据输入GWO的SVM分类器以诊断轴承的故障。结果表明,所提出的模型比最新故障检测模型具有更高的切削精度。在模型优化之后,当C为25且G为0.2时,模型精度可达到99.24%,比传统故障检测模型增加66.96%。研究结果可以为改善皮革切割企业的过程流程提供思路和实践参考。

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