用于不平衡数据条件下基于振动的轴承故障诊断的带输入处理的深度学习神经网络

J. Prawin
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摘要

深度学习(DL)网络,如卷积神经网络(CNN)和长短期记忆(LSTM),在利用原始振动信号进行轴承故障诊断方面越来越受欢迎。然而,在面对不平衡的真实世界数据集时,它们的准确性和稳定性会大打折扣。本研究调查了不平衡数据集的影响,并探索了与直接使用原始振动信号相比,信号处理技术在网络输入方面的潜力。所研究的 DL 技术包括 LSTM、一维 CNN 和二维 (2D) CNN,以及一种新颖的混合 2DCNNLSTM 算法,该算法结合了傅立叶变换和连续小波变换等信号处理方法,同时保持了几乎相等的参数和相同的基本架构。所提出的混合 2DCNNLSTM 算法结合了 LSTM 和 CNN 的优势,通过捕捉振动信号中的空间和时间信息来改进轴承诊断。拟议的 2DCNNLSTM 算法还考虑了多通道输入,增加了原始振动信号、均值和方差通道,以提取有意义的特征并提高分类效率。为了测试所提出的深度学习网络的准确性、有效性、鲁棒性和稳定性,我们使用了公开的凯斯西储大学基准轴承测试台数据集(包含 10 个故障类别)、帕德博恩大学数据集(包含 3 个故障类别)和 NASA 智能维护系统中心轴承数据集(包含 5 个故障类别)。研究结果表明,基于 2DCNNLSTM 的混合网络即使不进行输入处理,其性能也优于 CNN 和 LSTM 网络。此外,在使用基于 2DCNNLSTM 的网络时,通过用均值和方差值通道增强二维原始信号来利用多通道输入,证明在处理不平衡和复杂的数据集方面更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning neural networks with input processing for vibration-based bearing fault diagnosis under imbalanced data conditions
Deep learning (DL) networks, such as convolutional neural networks (CNNs) and long short-term memory (LSTM), have gained popularity for bearing fault diagnosis utilizing raw vibration signals. However, their accuracy and stability are compromised when facing imbalanced real-world datasets. This research investigates the impact of imbalanced datasets and explores the potential of signal processing techniques on network inputs compared to the direct use of raw vibration signals. The DL techniques studied include LSTM, one-dimensional CNN, and two-dimensional (2D) CNN, and a novel hybrid 2DCNNLSTM algorithm, incorporating signal processing methods such as Fourier transform and continuous wavelet transform while maintaining nearly equal parameters and the same base architecture. The proposed hybrid 2DCNNLSTM algorithm combines the strengths of LSTM and CNN, allowing for improved bearing diagnosis by capturing both spatial and temporal information in vibration signals. The proposed 2DCNNLSTM algorithm also considers multi-channel input augmenting raw vibration signal, mean, and variance channels to extract meaningful features and enhance classification efficiency. The publicly available Case Western Reserve University benchmark-bearing test rig dataset with ten fault classes, the Paderborn University dataset with three fault classes, and NASA Centre for Intelligent Maintenance Systems bearing datasets with five fault classes are utilized to test the proposed deep learning networks’ accuracy, effectiveness, robustness, and stability. The studies reveal that the hybrid 2DCNNLSTM-based networks outperform both CNN and LSTM networks, even without input processing. Further, utilizing multi-channel input by augmenting the 2D raw signal with mean and variance value channels proves to be more efficient in handling imbalanced and complex datasets while employing a 2DCNNLSTM-based network.
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