A variable-speed-condition fault diagnosis method for crankshaft bearing in the RV reducer with WSO-VMD and ResNet-SWIN

IF 2.2 3区 工程技术 Q3 ENGINEERING, INDUSTRIAL
Guangqi Qiu, Yu Nie, Yulong Peng, Peng Huang, Junjie Chen, Yingkui Gu
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引用次数: 0

Abstract

Due to the noise interference and the weak characterization ability of the fault vibration signal of rotation vector (RV) reducer crankshaft bearing, it is difficult to obtain satisfactory results for the available fault diagnosis methods. For that, this paper proposes a variable-speed-condition fault diagnosis method with WSO-VMD and ResNet-SWIN. A signal reconstruction method with WSO-VMD was carried out, Firstly, the performance of VMD algorithm is improved by using war strategy optimization algorithm to select parameters adaptively. Then the signal is reconstructed considering the fault characteristic frequency, so as to realize the noise reduction of the signal. By using the residual network module and attention mechanism to replace the first stage of the original SWIN model, a novel ResNet-SWIN fault diagnosis model is established to enhance the feature extraction ability for the weak signal. The experiments with the constant-operating-condition and the variable-operating-condition are carried out to verify the effectiveness of the proposed method. The results show that, whether at variable-speed or constant-speed conditions, WSO algorithm has been proven to be the fastest convergence speed compared with WOA, SSA, and NGO optimization algorithms, and by the signal reconstruction with WSO-VMD, the variance evaluation indicator of the reconstructed signal has 36%, 21%, 46%, and 40%, respectively. ResNet-SWIN model has achieved the optimal diagnosis accuracy compared with SWIN, VIT, and CNN-SVM models in both variable-speed and constant-speed conditions.
利用 WSO-VMD 和 ResNet-SWIN 的 RV 减速器曲轴轴承变速条件故障诊断方法
由于旋转矢量(RV)减速机曲轴轴承故障振动信号的噪声干扰和表征能力较弱,现有的故障诊断方法很难获得令人满意的结果。为此,本文提出了一种采用 WSO-VMD 和 ResNet-SWIN 的变速条件故障诊断方法。首先,利用战争策略优化算法自适应选择参数,提高了 VMD 算法的性能。然后考虑故障特征频率对信号进行重构,从而实现信号降噪。利用残差网络模块和注意力机制替代原有 SWIN 模型的第一阶段,建立了新型 ResNet-SWIN 故障诊断模型,增强了对微弱信号的特征提取能力。为了验证所提方法的有效性,分别在恒定运行条件和可变运行条件下进行了实验。结果表明,无论是在变速还是恒速条件下,WSO 算法与 WOA、SSA 和 NGO 优化算法相比,收敛速度都是最快的,用 WSO-VMD 进行信号重构,重构信号的方差评价指标分别为 36%、21%、46% 和 40%。与 SWIN、VIT 和 CNN-SVM 模型相比,ResNet-SWIN 模型在变速和恒速条件下都达到了最佳诊断精度。
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来源期刊
CiteScore
4.90
自引率
21.70%
发文量
181
审稿时长
6 months
期刊介绍: Quality and Reliability Engineering International is a journal devoted to practical engineering aspects of quality and reliability. A refereed technical journal published eight times per year, it covers the development and practical application of existing theoretical methods, research and industrial practices. Articles in the journal will be concerned with case studies, tutorial-type reviews and also with applications of new or well-known theory to the solution of actual quality and reliability problems in engineering. Papers describing the use of mathematical and statistical tools to solve real life industrial problems are encouraged, provided that the emphasis is placed on practical applications and demonstrated case studies. The scope of the journal is intended to include components, physics of failure, equipment and systems from the fields of electronic, electrical, mechanical and systems engineering. The areas of communications, aerospace, automotive, railways, shipboard equipment, control engineering and consumer products are all covered by the journal. Quality and reliability of hardware as well as software are covered. Papers on software engineering and its impact on product quality and reliability are encouraged. The journal will also cover the management of quality and reliability in the engineering industry. Special issues on a variety of key topics are published every year and contribute to the enhancement of Quality and Reliability Engineering International as a major reference in its field.
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