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首页> 外文期刊>IEEE transactions on industrial informatics >Multiscale Kernel Based Residual Convolutional Neural Network for Motor Fault Diagnosis Under Nonstationary Conditions
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Multiscale Kernel Based Residual Convolutional Neural Network for Motor Fault Diagnosis Under Nonstationary Conditions

机译:基于MultiScale内核的剩余卷积神经网络,用于非间断条件下的电机故障诊断

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摘要

Motor fault diagnosis is imperative to enhance the reliability and security of industrial systems. However, since motors are often operated under nonstationary conditions, the high complexity of vibration signals raises notable difficulties for fault diagnosis. Therefore, considering the special physical characteristics of motor signals under nonstationary conditions, in this article, we propose a multiscale kernel based residual convolutional neural network (CNN) for motor fault diagnosis. Our contributions mainly fall into two aspects. First, we notice that each motor fault category has various patterns in vibration signals due to the changing operational conditions of the motor. To capture these patterns, a multiscale kernel algorithm is applied in the CNN architecture. Second, since the motor vibration signals are made up of many different components from different transfer paths, they are very complex and variable. To enable the architecture to extract fault features from deep and hierarchical representation spaces, sufficient depth of the network is needed, which will lead to the degradation problem. In the proposed method, residual learning is embedded into the multiscale kernel CNN to avoid performance degradation and build a deeper network. To validate the effectiveness of the proposed networks, a normal motor and five motors with different failures are tested. The results and comparisons with state-of-the-art methods highlight the superiority of the proposed method.
机译:电机故障诊断必须增强工业系统的可靠性和安全性。然而,由于电动机通常在非视野条件下运行,因此振动信号的高度复杂性引起了故障诊断的显着困难。因此,考虑到在非视野条件下的电动机信号的特殊物理特性,在本文中,我们提出了一种用于电机故障诊断的多尺寸内核的残余卷积神经网络(CNN)。我们的贡献主要属于两个方面。首先,我们注意到由于电动机的操作条件改变,每个电机故障类别具有振动信号中的各种模式。为了捕获这些模式,在CNN架构中应用了多尺度内核算法。其次,由于电动机振动信号由来自不同转移路径的许多不同组件构成,因此它们非常复杂和变量。为了使架构能够从深层和分层表示空间中提取故障特征,需要足够的网络深度,这将导致劣化问题。在该方法中,剩余学习嵌入多尺度内核CNN中以避免性能下降并构建更深的网络。为了验证所提出的网络的有效性,测试了具有不同故障的正常电机和五个电动机。最先进的方法的结果和比较突出了所提出的方法的优越性。

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