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Research on the Initial Fault Prediction Method of Rolling Bearings Based on DCAE-TCN Transfer Learning

机译:基于DCAE-TCN转移学习的滚动轴承初始故障预测方法研究

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In actual working conditions, the initial faults of rolling bearings are difficult to effectively predict due to the lack of evolution knowledge, weak fault information, and strong noise interference. In this paper, a rolling bearing initial fault prediction model that is based on transfer learning and the DCAE-TCN is presented. Firstly, a deep autoencoder (DAE as the first two hidden layers and CAE as the last hidden layer) is used to extract fault features from the rolling bearing vibration signal data. Then, the balanced distributed adaptation (BDA) is used to minimise the distribution difference and class spacing between extracted fault features, and a common feature set is constructed. The temporal features of the original vibration signal in the target domain are extracted using the advantages of the TCN. The experiments are conducted on the publicly available XJTU-SY dataset. The experimental results show that the proposed method can effectively learn the transferable features and compensate the differences between the source and target domains and has a promising application with higher accuracy and robustness for the prediction of early failures of rolling bearings.
机译:在实际工作条件下,由于缺乏进化知识,弱故障信息和强烈的噪声干扰,滚动轴承的初始故障难以有效地预测。本文提出了一种基于转移学习和DCAE-TCN的滚动轴承初始故障预测模型。首先,使用深度自动阳极(DAE作为前两个隐藏层和CAE作为最后一个隐藏层)来从滚动轴承振动信号数据中提取故障特征。然后,使用平衡分布式适应(BDA)来最小化提取的故障特征之间的分布差和类间距,并且构造了共同的特征集。使用TCN的优点提取目标域中的原始振动信号的时间特征。实验是在公开的XJTU-SY数据集上进行的。实验结果表明,该方法可以有效地学习可转移特征,并补偿源极和靶域之间的差异,并具有更高的准确性和鲁棒性的有希望的应用,用于预测滚动轴承的早期故障。

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