Ke Haobin, Chen Zhiwen, Fan Xinyu, Yang Chao, Wang Hongwei
The School of Automation, Central South University, Changsha 410083, PR China; The Department of Electrical and Electronic Engineering, The Hong Kong Polytechnic University, Hong Kong.
The School of Automation, Central South University, Changsha 410083, PR China.
ISA Trans. 2024 Nov;154:299-310. doi: 10.1016/j.isatra.2024.08.019. Epub 2024 Aug 28.
Neural network (NN)-based methods are extensively used for intelligent fault diagnosis in industrial systems. Nevertheless, due to the limited availability of faulty samples and the presence of noise interference, most existing NN-based methods perform limited diagnosis performance. In response to these challenges, a self-adaptive selection graph pooling method is proposed. Firstly, graph encoders with sharing parameters are designed to extract local structure-feature information (SFI) of multiple sensor-wise sub-graphs. Then, the temporal continuity of the SFI is maintained through time-by-time concatenation, resulting in a global sensor graph and reducing the dependency on data volume from the perspective of adding prior knowledge. Subsequently, leveraging a self-adaptive node selection mechanism, the noise interference of redundant and noisy sensor-wise nodes in the graph is alleviated, allowing the networks to concentrate on the fault-attention nodes. Finally, the local max pooling and global mean pooling of the node-selection graph are incorporated in the readout module to get the multi-scale graph features, which serve as input to a multi-layer perceptron for fault diagnosis. Two experimental studies involving different mechanical and electrical systems demonstrate that the proposed method not only achieves superior diagnosis performance with limited data, but also maintains strong anti-interference ability in noisy environments. Additionally, it exhibits good interpretability through the proposed self-adaptive node selection mechanism and visualization methods.
基于神经网络(NN)的方法在工业系统的智能故障诊断中得到了广泛应用。然而,由于故障样本的可用性有限以及噪声干扰的存在,大多数现有的基于NN的方法诊断性能有限。针对这些挑战,提出了一种自适应选择图池化方法。首先,设计具有共享参数的图编码器来提取多个传感器子图的局部结构特征信息(SFI)。然后,通过逐时拼接来保持SFI的时间连续性,从而得到一个全局传感器图,并从添加先验知识的角度减少对数据量的依赖。随后,利用自适应节点选择机制,减轻图中冗余和噪声传感器节点的噪声干扰,使网络能够专注于故障关注节点。最后,将节点选择图的局部最大池化和全局平均池化纳入读出模块,以获得多尺度图特征,作为多层感知器进行故障诊断的输入。两项涉及不同机械和电气系统的实验研究表明,该方法不仅在有限数据下实现了卓越的诊断性能,而且在噪声环境中保持了强大的抗干扰能力。此外,通过所提出的自适应节点选择机制和可视化方法,它还具有良好的可解释性。