Bearing Health State Detection Based on Informer and CNN + Swin Transformer

Machines Pub Date : 2024-07-04 DOI:10.3390/machines12070456
Chunyang Liu, Weiwei Zou, Zhilei Hu, Hongyu Li, X. Sui, Xiqiang Ma, Fang Yang, Nan Guo
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Abstract

In response to the challenge of timely fault identification in the spindle bearings of machine tools operating in complex environments, this study proposes a method based on a combination of infrared imaging with an Informer and a CNN + Swin Transformer. The aim is to achieve real-time monitoring of bearing faults, precise fault localization, and classification of fault severity. To accomplish this, an angular contact ball bearing was chosen as the research subject. Initially, an infrared image dataset was constructed, encompassing various fault positions and degrees, by simulating different forms of bearing faults. Subsequently, an Informer-based bearing temperature prediction model was established to select faulty bearing data. Lastly, the faulty data were input into the CNN + Swin Transformer model for bearing fault recognition and classification. The results demonstrate that the Informer model accurately identifies abnormal temperature rises during bearing operation, effectively screening out faulty bearings. Under steady-state conditions, the model achieves a classification accuracy of 97.8%. Furthermore, after employing the Informer screening process, the proposed model exhibits a recognition precision of 98.9%, surpassing other models such as CNN, SVM, and Swin Transformer, which are mentioned in this paper.
基于 Informer 和 CNN + Swin 变换器的轴承健康状态检测
为应对在复杂环境中运行的机床主轴轴承的及时故障识别挑战,本研究提出了一种基于红外成像与 Informer 和 CNN + Swin 变换器相结合的方法。其目的是实现轴承故障的实时监控、精确故障定位和故障严重程度分类。为此,我们选择了角接触球轴承作为研究对象。首先,通过模拟不同形式的轴承故障,构建了一个包含各种故障位置和程度的红外图像数据集。随后,建立了基于 Informer 的轴承温度预测模型,以选择故障轴承数据。最后,将故障数据输入 CNN + Swin Transformer 模型,进行轴承故障识别和分类。结果表明,Informer 模型能准确识别轴承运行过程中的异常温度升高,有效筛选出故障轴承。在稳态条件下,该模型的分类准确率达到 97.8%。此外,在采用 Informer 筛选过程后,所提出的模型显示出 98.9% 的识别精度,超过了本文提到的其他模型,如 CNN、SVM 和 Swin Transformer。
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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