Chen Dongyue, Xie Zongxia, Liu Ruonan, Yu Wenlong, Hu Qinghua, Li Xianling, Ding Steven X
IEEE Trans Neural Netw Learn Syst. 2024 Dec;35(12):18635-18648. doi: 10.1109/TNNLS.2023.3319468. Epub 2024 Dec 2.
Deep learning (DL) methods have been widely applied to intelligent fault diagnosis of industrial processes and achieved state-of-the-art performance. However, fault diagnosis with point estimate may provide untrustworthy decisions. Recently, Bayesian inference shows to be a promising approach to trustworthy fault diagnosis by quantifying the uncertainty of the decisions with a DL model. The uncertainty information is not involved in the training process, which does not help the learning of highly uncertain samples and has little effect on improving the fault diagnosis performance. To address this challenge, we propose a Bayesian hierarchical graph neural network (BHGNN) with an uncertainty feedback mechanism, which formulates a trustworthy fault diagnosis on the Bayesian DL (BDL) framework. Specifically, BHGNN captures the epistemic uncertainty and aleatoric uncertainty via a variational dropout approach and utilizes the uncertainty information of each sample to adjust the strength of the temporal consistency (TC) constraint for robust feature learning. Meanwhile, the BHGNN method models the process data as a hierarchical graph (HG) by leveraging the interaction-aware module and physical topology knowledge of the industrial process, which integrates data with domain knowledge to learn fault representation. Moreover, the experiments on a three-phase flow facility (TFF) and secure water treatment (SWaT) show superior and competitive performance in fault diagnosis and verify the trustworthiness of the proposed method.
深度学习(DL)方法已被广泛应用于工业过程的智能故障诊断,并取得了领先的性能。然而,基于点估计的故障诊断可能会提供不可靠的决策。最近,贝叶斯推理显示出是一种通过使用DL模型量化决策的不确定性来进行可靠故障诊断的有前途的方法。不确定性信息未参与训练过程,这无助于对高度不确定的样本进行学习,并且对提高故障诊断性能影响甚微。为应对这一挑战,我们提出了一种具有不确定性反馈机制的贝叶斯分层图神经网络(BHGNN),它在贝叶斯深度学习(BDL)框架上构建了可靠的故障诊断。具体而言,BHGNN通过变分随机失活方法捕获认知不确定性和随机不确定性,并利用每个样本的不确定性信息来调整时间一致性(TC)约束的强度,以进行鲁棒的特征学习。同时,BHGNN方法通过利用工业过程的交互感知模块和物理拓扑知识将过程数据建模为分层图(HG),从而将数据与领域知识集成以学习故障表示。此外,在三相流设施(TFF)和安全水处理(SWaT)上进行的实验在故障诊断方面显示出卓越且具有竞争力的性能,并验证了所提方法的可靠性。