An Anti-Noise Gearbox Fault Diagnosis Method based on Multi-Scale Transformer Convolution and Transfer Learning

Jinliang Wu, Xiaoyang Zheng, X. Pei
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引用次数: 0

Abstract

Gearbox fault diagnosis methods based on deep learning usually require a large amount of sample data for training, and these data are usually ideal experimental data without noise. However, due to the influence of complex environmental factors, a large number of effective fault samples may not be available and the sample data can be interfered with by noise, which affects the identification accuracy of fault diagnosis methods and the stability of diagnosis results. To improve the resistance to noise while achieving high diagnosis accuracy, a multi-scale Transformer convolution network (MTCN) based on transfer learning is proposed in this paper. Concretely, a multi-scale coarse-grained procedure is incorporated to capture different and complementary features from multiple scales and filter random noises to some extent. Meanwhile, the Transformer composed of an attention mechanism is utilized to extract high-level and effective features and the transfer learning strategy is applied to overcome the limitation of insufficient fault samples for model training. Finally, the experiments are conducted to verify the effectiveness of the proposed method. The results show that the proposed method has higher accuracy and robustness under noisy environments compared with previous methods.
基于多尺度变压器卷积和迁移学习的齿轮箱抗噪声故障诊断方法
基于深度学习的齿轮箱故障诊断方法通常需要大量的样本数据进行训练,而这些数据通常是理想的无噪声实验数据。然而,由于复杂环境因素的影响,可能无法获得大量有效的故障样本,并且样本数据会受到噪声的干扰,影响了故障诊断方法的识别精度和诊断结果的稳定性。为了在提高诊断精度的同时提高抗噪声能力,提出了一种基于迁移学习的多尺度变压器卷积网络(MTCN)。具体而言,采用多尺度粗粒度方法捕获多尺度的不同特征和互补特征,并在一定程度上滤除随机噪声。同时,利用由注意机制组成的Transformer提取高阶有效特征,并采用迁移学习策略克服故障样本不足的限制进行模型训练。最后,通过实验验证了所提方法的有效性。结果表明,与已有方法相比,该方法在噪声环境下具有更高的精度和鲁棒性。
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