Department of Mechanical Engineering, Politecnico di Milano, via La Masa 1, Milan 20156, Italy.
School of Computing and Engineering, University of Huddersfield, Queensgate, Huddersfield, HD1 3DH, UK.
Neural Netw. 2024 Nov;179:106518. doi: 10.1016/j.neunet.2024.106518. Epub 2024 Jul 14.
Graph convolutional networks (GCNs) as the emerging neural networks have shown great success in Prognostics and Health Management because they can not only extract node features but can also mine relationship between nodes in the graph data. However, the most existing GCNs-based methods are still limited by graph quality, variable working conditions, and limited data, making them difficult to obtain remarkable performance. Therefore, it is proposed in this paper a two stage importance-aware subgraph convolutional network based on multi-source sensors named ISGCN to address the above-mentioned limitations. In the real-world scenarios, it is found that the diagnostic performance of the most existing GCNs is commonly bounded by the graph quality because it is hard to get high quality through a single sensor. Therefore, we leveraged multi-source sensors to construct graphs that contain more fault-based information of mechanical equipment. Then, we discovered that unsupervised domain adaptation (UDA) methods only use single stage to achieve cross-domain fault diagnosis and ignore more refined feature extraction, which can make the representations contained in the features inadequate. Hence, it is proposed the two-stage fault diagnosis in the whole framework to achieve UDA. In the first stage, the multiple-instance learning is adopted to obtain the importance factor of each sensor towards preliminary fault diagnosis. In the second stage, it is proposed ISGCN to achieve refined cross-domain fault diagnosis. Moreover, we observed that deficient and limited data may cause label bias and biased training, leading to reduced generalization capacity of the proposed method. Therefore, we constructed the feature-based graph and importance-based graph to jointly mine more effective relationship and then presented a subgraph learning strategy, which not only enriches sufficient and complementary features but also regularizes the training. Comprehensive experiments conducted on four case studies demonstrate the effectiveness and superiority of the proposed method for cross-domain fault diagnosis, which outperforms the state-of-the art methods.
图卷积网络(GCNs)作为新兴的神经网络,在预测和健康管理方面取得了巨大的成功,因为它们不仅可以提取节点特征,还可以挖掘图数据中节点之间的关系。然而,大多数现有的基于 GCN 的方法仍然受到图质量、多变的工况和有限的数据的限制,使得它们难以获得显著的性能。因此,本文提出了一种基于多源传感器的两阶段重要感知子图卷积网络(ISGCN)来解决上述限制。在实际场景中,我们发现大多数现有的 GCN 的诊断性能通常受到图质量的限制,因为很难通过单个传感器获得高质量的图。因此,我们利用多源传感器构建包含更多机械设备故障信息的图。然后,我们发现无监督领域自适应(UDA)方法仅使用单阶段来实现跨域故障诊断,而忽略了更精细的特征提取,这可能导致特征中包含的表示不足。因此,在整个框架中提出了两阶段故障诊断来实现 UDA。在第一阶段,采用多实例学习来获得每个传感器对初步故障诊断的重要性因素。在第二阶段,提出了 ISGCN 来实现精细的跨域故障诊断。此外,我们观察到,数据的不足和有限可能导致标签偏差和有偏训练,从而降低了所提出方法的泛化能力。因此,我们构建了基于特征的图和基于重要性的图来共同挖掘更有效的关系,然后提出了一种子图学习策略,该策略不仅丰富了充足和互补的特征,还对训练进行了正则化。在四个案例研究上的综合实验证明了所提出的方法在跨域故障诊断中的有效性和优越性,优于现有的方法。