Lightweight Ghost Enhanced Feature Attention Network: An Efficient Intelligent Fault Diagnosis Method under Various Working Conditions

Huaihao Dong, Kai Zheng, Siguo Wen, Zheng Zhang, Yuyan Li, Bobin Zhu
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Abstract

Recent advancements in applications of deep neural network for bearing fault diagnosis under variable operating conditions have shown promising outcomes. However, these approaches are limited in practical applications due to the complexity of neural networks, which require substantial computational resources, thereby hindering the advancement of automated diagnostic tools. To overcome these limitations, this study introduces a new fault diagnosis framework that incorporates a tri-channel preprocessing module for multidimensional feature extraction, coupled with an innovative diagnostic architecture known as the Lightweight Ghost Enhanced Feature Attention Network (GEFA-Net). This system is adept at identifying rolling bearing faults across diverse operational conditions. The FFE module utilizes advanced techniques such as Fast Fourier Transform (FFT), Frequency Weighted Energy Operator (FWEO), and Signal Envelope Analysis to refine signal processing in complex environments. Concurrently, GEFA-Net employs the Ghost Module and the Efficient Pyramid Squared Attention (EPSA) mechanism, which enhances feature representation and generates additional feature maps through linear operations, thereby reducing computational demands. This methodology not only significantly lowers the parameter count of the model, promoting a more streamlined architectural framework, but also improves diagnostic speed. Additionally, the model exhibits enhanced diagnostic accuracy in challenging conditions through the effective synthesis of local and global data contexts. Experimental validation using datasets from the University of Ottawa and our dataset confirms that the framework not only achieves superior diagnostic accuracy but also reduces computational complexity and accelerates detection processes. These findings highlight the robustness of the framework for bearing fault diagnosis under varying operational conditions, showcasing its broad applicational potential in industrial settings. The parameter count was decreased by 63.74% compared to MobileVit, and the recorded diagnostic accuracies were 98.53% and 99.98% for the respective datasets.
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轻量级幽灵增强型特征注意网络:各种工作条件下的高效智能故障诊断方法
最近,深度神经网络在可变运行条件下轴承故障诊断方面的应用取得了令人鼓舞的进展。然而,由于神经网络的复杂性,这些方法在实际应用中受到限制,需要大量的计算资源,从而阻碍了自动诊断工具的发展。为了克服这些局限性,本研究引入了一种新的故障诊断框架,该框架结合了用于多维特征提取的三通道预处理模块,以及一种称为轻量级幽灵增强特征注意网络(GEFA-Net)的创新诊断架构。该系统善于识别各种运行条件下的滚动轴承故障。FFE 模块利用快速傅立叶变换 (FFT)、频率加权能量运算器 (FWEO) 和信号包络分析等先进技术来完善复杂环境下的信号处理。同时,GEFA-Net 还采用了 Ghost 模块和高效金字塔平方注意(EPSA)机制,通过线性运算增强特征表示并生成额外的特征图,从而降低计算需求。这种方法不仅大大减少了模型的参数数量,促进了更精简的架构框架,还提高了诊断速度。此外,通过有效综合本地和全局数据背景,该模型在具有挑战性的条件下表现出更高的诊断准确性。使用渥太华大学的数据集和我们的数据集进行的实验验证证实,该框架不仅实现了卓越的诊断准确性,还降低了计算复杂性并加快了检测过程。这些发现凸显了该框架在不同运行条件下进行轴承故障诊断的鲁棒性,展示了其在工业环境中的广泛应用潜力。与 MobileVit 相比,参数数量减少了 63.74%,而各自数据集的诊断准确率分别为 98.53% 和 99.98%。
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