Wang Shenglong, Jiao Xiaoxuan, Jing Bo, Pan Jinxin, Meng Xiangzhen, Huang Yifeng, Pei Shaoting
Aeronautics Engineering College, Air Force Engineering University, Xi'an 710038, China.
Sensors (Basel). 2024 Oct 2;24(19):6391. doi: 10.3390/s24196391.
Coupling faults that simultaneously occur during the operation of mechanical equipment are widespread. These faults encompass a diverse range of high-order coupling relationships, involving multiple base fault types. Based on the advantages of hypergraphs for higher-order relationship descriptions, two coupling fault diagnosis architectures based on the hypergraph neural network are proposed in this paper: 1. In the coupling fault diagnosis framework based on feature generation, the base faults serve as the hypergraph nodes, and each hyperedge connects the base faults. The generator, which consists of the hypergraph neural network, generates coupling faults as negative samples to enforce regularization constraints for the discriminator training. 2. In the coupling fault diagnosis framework based on feature extraction, each node represents a fault mode, and each hyperedge connects nodes with common failure modes. The multi-head attention mechanism extracts the features of base faults, and the common fault features in a hyperedge are aggregated via the hypergraph neural network. The inner product correlation is used to diagnose the fault modes. The results show that the diagnostic accuracy for coupling faults with the two frameworks reaches 88.6% and 86.76%, respectively. Both frameworks can be used for the diagnosis and analysis of high-order coupling faults.
机械设备运行过程中同时出现的耦合故障很常见。这些故障包含各种高阶耦合关系,涉及多种基本故障类型。基于超图在高阶关系描述方面的优势,本文提出了两种基于超图神经网络的耦合故障诊断架构:1. 在基于特征生成的耦合故障诊断框架中,基本故障作为超图节点,每条超边连接基本故障。由超图神经网络组成的生成器生成耦合故障作为负样本,以对鉴别器训练施加正则化约束。2. 在基于特征提取的耦合故障诊断框架中,每个节点代表一种故障模式,每条超边连接具有共同故障模式的节点。多头注意力机制提取基本故障的特征,超图神经网络聚合超边中的共同故障特征。使用内积相关性来诊断故障模式。结果表明,两种框架对耦合故障的诊断准确率分别达到88.6%和86.76%。两种框架均可用于高阶耦合故障的诊断与分析。