Sun Tieyang, Gao Jianxiong
School of Mechanical Engineering, Xinjiang University, Urumqi 830046, China.
Sensors (Basel). 2024 Sep 1;24(17):5700. doi: 10.3390/s24175700.
The fault diagnosis of rolling bearings is faced with the problem of a lack of fault data. Currently, fault diagnosis based on traditional convolutional neural networks decreases the diagnosis rate. In this paper, the developed adaptive residual shrinkage network model is combined with transfer learning to solve the above problems. The model is trained on the Case Western Reserve dataset, and then the trained model is migrated to a small-sample dataset with a scaled-down sample size and the Jiangnan University bearing dataset to conduct the experiments. The experimental results show that the proposed method can efficiently learn from small-sample datasets, improving the accuracy of the fault diagnosis of bearings under variable loads and variable speeds. The adaptive parameter-rectified linear unit is utilized to adapt the nonlinear transformation. When rolling bearings are in operation, noise production is inevitable. In this paper, soft thresholding and an attention mechanism are added to the model, which can effectively process vibration signals with strong noise. In this paper, the real noise is simulated by adding Gaussian white noise in migration task experiments on small-sample datasets. The experimental results show that the algorithm has noise resistance.
滚动轴承的故障诊断面临着故障数据匮乏的问题。当前,基于传统卷积神经网络的故障诊断会降低诊断率。本文将所开发的自适应残差收缩网络模型与迁移学习相结合来解决上述问题。该模型在凯斯西储大学数据集上进行训练,然后将训练好的模型迁移到样本量缩减的小样本数据集以及江南大学轴承数据集上进行实验。实验结果表明,所提方法能够从小样本数据集中高效学习,提高变负荷和变速情况下轴承故障诊断的准确率。利用自适应参数修正线性单元来适配非线性变换。滚动轴承运行时,不可避免会产生噪声。本文在模型中加入软阈值处理和注意力机制,能够有效处理强噪声振动信号。在小样本数据集的迁移任务实验中,通过添加高斯白噪声来模拟真实噪声。实验结果表明该算法具有抗噪声能力。