Yang Zheng, Chen Fei, Xu Binbin, Ma Boquan, Qu Zege, Zhou Xin
School of Mechanical and Aerospace Engineering, Jilin University, Changchun 130025, China.
Sino-German College of Intelligent Manufacturing, Shenzhen Technology University, Shenzhen 518118, China.
Sensors (Basel). 2023 Aug 4;23(15):6951. doi: 10.3390/s23156951.
The lack of labeled data and variable working conditions brings challenges to the application of intelligent fault diagnosis. Given this, extracting labeled information and learning distribution-invariant representation provides a feasible and promising way. Enlightened by metric learning and semi-supervised architecture, a triplet-guided path-interaction ladder network (Tri-CLAN) is proposed based on the aspects of algorithm structure and feature space. An encoder-decoder structure with path interaction is built to utilize the unlabeled data with fewer parameters, and the network structure is simplified by CNN and an element additive combination activation function. Metric learning is introduced to the feature space of the established algorithm structure, which enables the mining of hard samples from extremely limited labeled data and the learning of working condition-independent representations. The generalization and applicability of Tri-CLAN are proved by experiments, and the contribution of the algorithm structure and the metric learning in the feature space are discussed.
缺乏标注数据和可变的工作条件给智能故障诊断的应用带来了挑战。鉴于此,提取标注信息并学习分布不变表示提供了一种可行且有前景的方法。受度量学习和半监督架构的启发,基于算法结构和特征空间的方面提出了一种三元组引导的路径交互阶梯网络(Tri-CLAN)。构建了具有路径交互的编码器-解码器结构,以利用参数较少的未标注数据,并通过卷积神经网络(CNN)和元素相加组合激活函数简化了网络结构。将度量学习引入到所建立算法结构的特征空间中,这使得能够从极其有限的标注数据中挖掘困难样本,并学习与工作条件无关的表示。通过实验证明了Tri-CLAN的泛化能力和适用性,并讨论了算法结构和特征空间中的度量学习的贡献。