A Multi-Scale Deep Learning Attention-based Feature Method for Rolling Elements Bearing Fault Detection in Industrial Motor Drives

Y. L. Karnavas, Spyridon Plakias, I. Chasiotis
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引用次数: 1

Abstract

In the last decade, convolutional neural networks have achieved great success in the automated fault diagnosis of rotating equipment in electrical machines. However, the application of convolutional models encounters some challenges to deal with such as (i) the requirement of a vast amount of training data and (ii) the selection of the neural architecture, and particularly the sizes of the convolutional kernels that effectively extract features from the raw input signal. To alleviate the above challenges, we propose a deep learning network consisting of multiple independent densely connected convolutional streams with different sizes of kernels and of a simple attention mechanism that fuses the extracted features, producing a feature mapping with generalization and discrimination power. Simulation cases with a widely used bearing fault detection benchmark show the effectiveness of the proposed approach, especially in cases of a restricted amount of training samples.
基于多尺度深度学习的工业电机驱动滚动轴承故障检测方法
近十年来,卷积神经网络在电机旋转设备故障自动诊断方面取得了巨大的成功。然而,卷积模型的应用遇到了一些挑战,如(i)对大量训练数据的要求和(ii)神经结构的选择,特别是从原始输入信号中有效提取特征的卷积核的大小。为了缓解上述挑战,我们提出了一个深度学习网络,该网络由多个独立的具有不同大小核的密集连接的卷积流和一个简单的注意机制组成,该机制融合了提取的特征,产生具有泛化和判别能力的特征映射。用一个广泛使用的轴承故障检测基准的仿真实例表明了该方法的有效性,特别是在训练样本数量有限的情况下。
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