Fault Diagnosis of Imbalance and Misalignment in Rotor-Bearing Systems Using Deep Learning

IF 2 3区 工程技术 Q2 ENGINEERING, MARINE
Fayou Liu, Weijia Li, Yaozhong Wu, Yuhang He, Tianyun Li
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引用次数: 0

Abstract

Rotor-bearing systems are important components of rotating machinery and transmission systems, and imbalance and misalignment are inevitable in such systems. At present, the main challenges faced by state-of-the-art fault diagnosis methods involve the extraction of fault features under strong background noise and the classification of different fault modes. In this paper, a fault diagnosis method based on an improved deep residual shrinkage network (IDRSN) is proposed with the aim of achieving end-to-end fault diagnosis of a rotor-bearing system. First, a method called wavelet threshold denoising and variational mode decomposition (WTD-VMD) is proposed, which can process original noisy signals into intrinsic mode functions (IMFs) with a salient feature. These one-dimensional IMFs are then transformed into two-dimensional images using a Gramian angular field (GAF) to give datasets for the deep residual shrinkage network (DRSN), which can achieve high levels of accuracy under strong background noise. Finally, a comprehensive test platform for a rotor-bearing system is built to verify the effectiveness of the proposed method in the field. The true test accuracy of the model at a 95% confidence interval is found to range from 84.09% to 86.51%. The proposed model exhibits good robustness when dealing with noisy samples and gives the best classification results for fault diagnosis under misalignment, with a test accuracy of 100%. It also achieves a higher testing accuracy compared to fault diagnosis methods based on convolutional neural networks and deep residual networks without improvement. In summary, IDRSN has significant value for deep learning engineering applications involving the fault diagnosis of rotor-bearing systems.
利用深度学习诊断转子轴承系统中的不平衡和不对中问题
转子轴承系统是旋转机械和传动系统的重要组成部分,不平衡和不对中在此类系统中不可避免。目前,最先进的故障诊断方法面临的主要挑战包括在强背景噪声下提取故障特征以及对不同故障模式进行分类。本文提出了一种基于改进型深度残差收缩网络(IDRSN)的故障诊断方法,旨在实现转子轴承系统的端到端故障诊断。首先,提出了一种称为小波阈值去噪和变模分解(WTD-VMD)的方法,它可以将原始噪声信号处理成具有突出特征的本征模态函数(IMF)。然后,利用格拉米安角场(GAF)将这些一维 IMF 转化为二维图像,从而为深度残差收缩网络(DRSN)提供数据集,该网络可在强背景噪声下实现高精度。最后,建立了一个转子轴承系统综合测试平台,以验证所提方法在现场的有效性。结果发现,在 95% 的置信区间内,模型的真实测试精度在 84.09% 至 86.51% 之间。所提出的模型在处理噪声样本时表现出良好的鲁棒性,在错位情况下的故障诊断中给出了最好的分类结果,测试准确率达到 100%。与基于卷积神经网络和深度残差网络的故障诊断方法相比,IDRSN 的测试准确率也有所提高。总之,IDRSN 对于涉及转子轴承系统故障诊断的深度学习工程应用具有重要价值。
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来源期刊
Polish Maritime Research
Polish Maritime Research 工程技术-工程:海洋
CiteScore
3.70
自引率
45.00%
发文量
20
审稿时长
>12 weeks
期刊介绍: The scope of the journal covers selected issues related to all phases of product lifecycle and corresponding technologies for offshore floating and fixed structures and their components. All researchers are invited to submit their original papers for peer review and publications related to methods of the design; production and manufacturing; maintenance and operational processes of such technical items as: all types of vessels and their equipment, fixed and floating offshore units and their components, autonomous underwater vehicle (AUV) and remotely operated vehicle (ROV). We welcome submissions from these fields in the following technical topics: ship hydrodynamics: buoyancy and stability; ship resistance and propulsion, etc., structural integrity of ship and offshore unit structures: materials; welding; fatigue and fracture, etc., marine equipment: ship and offshore unit power plants: overboarding equipment; etc.
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