Application of Depth Online Wavelet Extreme Learning Machine in Rotating Machinery Fault Diagnosis
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摘要: 由于旋转机械故障诊断模型训练时间长,容易过拟合以及传统的极限学习机只能处理批量数据,实效性差等问题。提出一种基于深度在线小波极限学习机的旋转机械故障诊断方法。将自编码器的思想引入小波极限学习机中,堆叠形成WELM-AE,将底层的故障特征向更加抽象的高级特征转换。再采用在线极限学习机作为顶层分类器进行故障识别。实验结果验证:该算法在旋转机械故障诊断上的可行性,继承了极限学习机训练速度快的特点,相较于BP、SVM、SAE、CNN有更高的准确率。
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关键词:
- 旋转机械 /
- 故障诊断 /
- 深度小波极限学习机自编码器 /
- 在线极限学习机
Abstract: Due to the long training time of the rotating machinery fault diagnosis model, it is easy to overfit and the traditional extreme learning machine can only handle batch data, and the effectiveness is poor. A fault diagnosis method for rotating machinery based on deep online wavelet extreme learning machine is proposed. Introducing the idea of autoencoder into the wavelet extreme learning machine, stacking to form WELM-AE converts the underlying fault features to more abstract and advanced features. And the online extreme learning machine is used as the top-level classifier for fault identification. The experimental results verify the feasibility of the method in the fault diagnosis of rotating machinery, inheriting the characteristics of the fast training speed of the extreme learning machine, and having a higher accuracy rate than BP, SVM, SAE and CNN. -
表 1 隐含层参数选择
Table 1. Selection of hidden layer parameters
隐含层参数选择 准确率/% 时间/s N1=10, N2=10 89.17 3.15 N1=10, N2=20 89.72 3.62 N1=10, N2=30 89.72 4.07 N1=20, N2=20 93.89 4.20 N1=20, N2=30 93.61 4.94 N1=30, N2=30 95.00 5.80 N1=30, N2=40 94.44 6.42 N1=10, N2=10, N3=10 90.28 3.53 N1=10, N2=20, N3=30 90.56 5.45 N1=20, N2=20, N3=20 93.89 4.98 N1=30, N2=30, N3=30 95.28 6.19 N1=40, N2=40, N3=40 94.44 8.92 表 2 齿轮箱故障类别
Table 2. Gearbox fault categories
运行状态 类别 正常 1 点蚀故障 2 点磨(大齿轮点蚀和小齿轮磨损) 3 断齿故障 4 断磨(大齿轮断齿和小齿轮磨损) 5 磨损故障 6 表 3 诊断结果对比
Table 3. Comparison of diagnostic results
模型 平均准确率/% 训练时间/s SVM 90.73 0.30 BP 91.24 0.20 ELM 92.67 0.19 SAE 91.85 9.19 CNN 93.29 17.19 DELM 92.59 2.95 本文方法 95.35 5.32 表 4 滚动轴承故障类别
Table 4. Rolling bearing fault categories
运行状态 类别标签 正常 1 滚动体故障 2 内圈故障 3 外圈故障 4 表 5 诊断结果对比
Table 5. Comparison of diagnostic results
模型 平均准确率/% 训练时间/s SVM 92.56 0.21 BP 90.73 0.19 ELM 93.67 0.16 SAE 91.85 6.50 CNN 92.78 14.23 DELM 90.36 1.82 本文方法 96.73 4.74 -
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