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Bearing fault diagnostics using EEMD processing and convolutional neural network methods

机译:使用EEMD处理和卷积神经网络方法轴承故障诊断

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摘要

The development of an intelligent fault diagnosis system to identify automatically and accurately micro-faults affecting motors continues to be a challenge for industrial rotary machinery and needs to be addressed. In this paper, we put forward a novel approach based on ensemble empirical mode decomposition (EEMD) processing for incipient fault diagnosis of rotating machinery. Accurate selection and reconstruction processes are performed to reconstruct new vibration signals with less noise through the application of EEMD processing to original vibration signals. After the rebuilt of vibration signals, manually extracted features from the reconstructed vibration signals are fed then into a multi-class support vector machine and simultaneously to the mentioned technique, generated image representations of the same raw signals are taken afterward as an input to a deep convolutional neural network (CNN) for classification and fault diagnosis. The comparison between these developed methods demonstrates the effectiveness of the deep learning approach that identifies the differences between classes automatically and can successfully classify and locate the faulty bearing status with very high accuracy for the small size of training data.
机译:开发智能故障诊断系统,以自动和准确地影响电动机的微型故障仍然是工业旋转机械的挑战,需要解决。在本文中,我们提出了一种基于集合经验模型分解(EEMD)处理的新方法,用于旋转机械的初期故障诊断。通过将EEMD处理应用于原始振动信号来执行精确的选择和重建过程以重建具有较少噪声的新振动信号。在重建振动信号之后,从重建的振动信号手动提取的特征被馈送到多级支持向量机中并同时到所提到的技术,后面的相同原始信号的生成图像表示作为输入到深度卷积神经网络(CNN)用于分类和故障诊断。这些开发方法之间的比较展示了深度学习方法的有效性,可以自动识别类之间的差异,并可以成功分类和定位具有非常高的精度的训练数据的高精度。

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