Parallel Temporal and Spatial Modeling for Interpretable Fault Detection and Isolation of Industrial Processes

Pengyu Song, Chunhui Zhao, Jinliang Ding, Youxian Sun, Xuanxuan Jin
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Abstract

The structure of modern industrial processes has been gradually complicated to adapt to diversified production requirements. Process variables generally have temporal characteristics. Meanwhile, complex spatial interactions between variables also pose challenges for process modeling. In this study, a parallel temporal and spatial feature extraction framework is proposed and applied to fault detection and isolation in industrial processes. On the one hand, unlike the existing methods with mixed spatiotemporal information, we design independent temporal and spatial modeling structures. The temporal characteristics of each process variable are simultaneously extracted in the designed temporal submodule. Furthermore, the spatial connections between variables are captured through sparse adjacency network extraction and information fusion. In this way, the temporal and spatial information can be individually observed to provide interpretable monitoring results. On the other hand, considering the different spatiotemporal anomalies caused by various fault types, we establish a targeted isolation strategy to provide reliable fault analysis. For temporal faults, the reconstruction error indicators are designed to quantify the abnormality of the variable. Moreover, a network reconstruction model is developed to measure the spatial structure deviation and locate the fault source. The performance of the proposed method is verified through a real industrial example.
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用于工业过程可解释故障检测和隔离的并行时空建模
现代工业过程的结构逐渐复杂化,以适应多样化的生产要求。过程变量通常具有时间特征。同时,变量之间复杂的空间相互作用也给过程建模带来了挑战。本文提出了一种并行的时空特征提取框架,并将其应用于工业过程中的故障检测与隔离。一方面,与现有的混合时空信息方法不同,我们设计了独立的时空建模结构。在时序子模块中同时提取各过程变量的时序特征。通过稀疏邻接网络提取和信息融合,捕捉变量之间的空间联系。这样,就可以单独观测时空信息,提供可解释的监测结果。另一方面,考虑到不同故障类型引起的不同时空异常,我们建立了有针对性的隔离策略,以提供可靠的故障分析。对于时序故障,设计重构误差指标来量化变量的异常情况。在此基础上,建立了网络重构模型,用于测量空间结构偏差和定位故障源。通过工业实例验证了该方法的有效性。
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