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应用 VMD 和 ResNet101 于电机故障智能诊断。

Application Combining VMD and ResNet101 in Intelligent Diagnosis of Motor Faults.

机构信息

Graduate Institute of Vehicle Engineering, National Changhua University of Education, No.1, Jin-De Road, Changhua City, Changhua County 50007, Taiwan.

出版信息

Sensors (Basel). 2021 Sep 10;21(18):6065. doi: 10.3390/s21186065.

Abstract

Motor failure is one of the biggest problems in the safe and reliable operation of large mechanical equipment such as wind power equipment, electric vehicles, and computer numerical control machines. Fault diagnosis is a method to ensure the safe operation of motor equipment. This research proposes an automatic fault diagnosis system combined with variational mode decomposition (VMD) and residual neural network 101 (ResNet101). This method unifies the pre-analysis, feature extraction, and health status recognition of motor fault signals under one framework to realize end-to-end intelligent fault diagnosis. Research data are used to compare the performance of the three models through a data set released by the Federal University of Rio de Janeiro (UFRJ). VMD is a non-recursive adaptive signal decomposition method that is suitable for processing the vibration signals of motor equipment under variable working conditions. Applied to bearing fault diagnosis, high-dimensional fault features are extracted. Deep learning shows an absolute advantage in the field of fault diagnosis with its powerful feature extraction capabilities. ResNet101 is used to build a model of motor fault diagnosis. The method of using ResNet101 for image feature learning can extract features for each image block of the image and give full play to the advantages of deep learning to obtain accurate results. Through the three links of signal acquisition, feature extraction, and fault identification and prediction, a mechanical intelligent fault diagnosis system is established to identify the healthy or faulty state of a motor. The experimental results show that this method can accurately identify six common motor faults, and the prediction accuracy rate is 94%. Thus, this work provides a more effective method for motor fault diagnosis that has a wide range of application prospects in fault diagnosis engineering.

摘要

电机故障是风力发电设备、电动汽车、数控机床等大型机械设备安全可靠运行的最大问题之一。故障诊断是确保电机设备安全运行的一种方法。本研究提出了一种结合变分模态分解(VMD)和残差神经网络 101(ResNet101)的自动故障诊断系统。该方法将电机故障信号的预分析、特征提取和健康状态识别统一在一个框架内,实现了端到端的智能故障诊断。研究数据使用里约热内卢联邦大学(UFRJ)发布的数据集,通过对比三种模型的性能,对三种模型进行了比较。VMD 是一种适合处理变工况下电机设备振动信号的非递归自适应信号分解方法。应用于轴承故障诊断,提取出高维故障特征。深度学习以其强大的特征提取能力在故障诊断领域具有绝对优势。ResNet101 用于构建电机故障诊断模型。使用 ResNet101 进行图像特征学习的方法可以提取图像中每个图像块的特征,并充分发挥深度学习的优势,从而获得准确的结果。通过信号采集、特征提取和故障识别与预测三个环节,建立了机械智能故障诊断系统,以识别电机的健康或故障状态。实验结果表明,该方法能够准确识别六种常见的电机故障,预测准确率为 94%。因此,这项工作为电机故障诊断提供了一种更有效的方法,在故障诊断工程中有广泛的应用前景。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3dbb/8473405/3d35589af76e/sensors-21-06065-g001.jpg

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