A semisupervised fault frequency analysis method for rotating machinery based on restricted self-attention network

Huaqin Zhang, Jichao Hong, Haixu Yang, Xinyang Zhang, Fengwei Liang, Chi Zhang, Zhongguo Huang
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Abstract

With the development of informatization and digitalization, condition monitoring has been applied to industrial equipment such as rotating machinery. Collecting and storing large amounts of equipment operating data enable the detection of mechanical equipment faults using historical operational data. This article proposes a semisupervised data-driven approach to analyze the fault frequencies of rotating machinery. Frequency band information and the degree of association with faults are obtained through the variance of attention values. To address the inherent issue of decoupling information between data segments in deep learning, restrictive layers are proposed. These layers prevent the flow of information between data segments from rendering interpretable information ineffective. Bearing and gearbox datasets are used to validate the proposed method. The fault frequencies extracted by this method correspond to actual faults. The preferred deep learning framework achieves an accuracy exceeding 99% on both datasets. The method is compared with various signal processing methods and identifies fault frequencies that are difficult to identify using traditional methods. Furthermore, the unreliability of traditional deep learning in fault diagnosis is also exposed. In this study, semisupervised deep learning fault frequency extraction is achieved for the first time.
基于受限自注意网络的旋转机械半监督故障频率分析方法
随着信息化和数字化的发展,状态监测已应用于旋转机械等工业设备。通过收集和存储大量设备运行数据,可以利用历史运行数据检测机械设备故障。本文提出了一种半监督数据驱动方法来分析旋转机械的故障频率。通过关注值的方差来获取频段信息以及与故障的关联程度。为了解决深度学习中数据段之间信息解耦的固有问题,提出了限制层。这些层可以防止数据段之间的信息流使可解释的信息失效。轴承和齿轮箱数据集被用来验证所提出的方法。该方法提取的故障频率与实际故障相符。首选的深度学习框架在这两个数据集上的准确率都超过了 99%。该方法与各种信号处理方法进行了比较,识别出了传统方法难以识别的故障频率。此外,还暴露了传统深度学习在故障诊断中的不稳定性。本研究首次实现了半监督深度学习故障频率提取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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