基于图卷积神经网络的工业网络故障检测与隔离

H. Khorasgani, Arman Hasanzadeh, Ahmed K. Farahat, Chetan Gupta
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引用次数: 15

摘要

工业网络代表了由几个相互作用的组件组成的大规模系统。在本文中,我们提出了一种在具有相同类型组件(电气,机械等)的工业网络(如电网和供水网络)中进行故障检测和隔离(FDI)的解决方案。传统的FDI算法被训练为通过考虑该组件或邻近组件的特征来检测和隔离单个组件级别的故障。这些算法是次优的,因为它们独立地应用于单个组件,而没有明确地考虑工业网络中共存的几个组件之间的依赖关系。组件之间的交互使得故障隔离具有挑战性。一个组件的操作变化或故障会影响到邻近的组件。当我们为每个组件设计独立的诊断器时,这会对诊断准确性产生负面影响。另一方面,在不考虑网络结构的情况下设计全局诊断器会导致过拟合,严重降低诊断性能,特别是在训练数据有限的情况下。此外,由于这些系统中有大量的部件,单故障假设可能站不住脚。这增加了问题的复杂性。为了解决这个问题,我们首先将工业网络建模为一个加权无向图结构。图结构表示连接的组件。权重量化了这些联系。然后,我们应用图卷积神经网络(GCNN)来检测和隔离这些系统中的故障组件。在案例研究中,我们将我们的解决方案应用于一个具有100个组件的模拟工业网络。案例研究表明,GCNN优于几种基准算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault Detection and Isolation in Industrial Networks using Graph Convolutional Neural Networks
Industrial networks represent large-scale systems that consist of several interacting components. In this paper, we present a solution for Fault Detection and Isolation (FDI) in industrial networks with same type of components (electrical, mechanical, etc.) such as power grids, and water supply networks. Traditional FDI algorithms are trained to detect and isolate faults on the level of a single component by considering features from this component and sometimes from nearby components. These algorithms are sub-optimal as they are independently applied to individual components without explicitly taking into consideration the dependency between the several components that co-exist in industrial network. The interaction between the components makes fault isolation challenging. An operation change or a fault in a component can affect the neighboring components. This negatively impact the diagnosis accuracy when we design an independent diagnoser for each component. On the other hand, designing a global diagnoser without considering the network structure can lead to overfitting which can degrade the diagnosis performance significantly specially when the training data is limited. Moreover, because of the large number of components in these systems, the single fault assumption may not stand. This increases the complexity of the problem. In order to solve this problem, we first model the industrial network as a weighted undirected graph structure. The graph structure represents the connected components. The weights quantify these connections. We then apply Graph Convolutional Neural Networks (GCNN) to detect and isolate faulty components in these systems. In the case study, we apply our solution to a simulated industrial network with 100 components. The case study shows that GCNN outperforms several baseline algorithms.
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