Please use this identifier to cite or link to this item: https://dspace.iiti.ac.in/handle/123456789/13998
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dc.contributor.authorMaheshwari, Abhilashaen_US
dc.date.accessioned2024-07-18T13:48:06Z-
dc.date.available2024-07-18T13:48:06Z-
dc.date.issued2024-
dc.identifier.citationBrahmbhatt, P., Patel, R., Maheshwari, A., & Gudi, R. D. (2024). Improved fault detection and diagnosis using graph auto encoder and attention-based graph convolution networks. Digital Chemical Engineering. Scopus. https://doi.org/10.1016/j.dche.2024.100158en_US
dc.identifier.issn2772-5081-
dc.identifier.otherEID(2-s2.0-85194962879)-
dc.identifier.urihttps://doi.org/10.1016/j.dche.2024.100158-
dc.identifier.urihttps://dspace.iiti.ac.in/handle/123456789/13998-
dc.description.abstractA powerful fault detection and diagnosis (FDD) system plays a pivotal role in achieving operational excellence by maximizing system performance, optimizing maintenance strategies, and ensuring the longevity and resilience of process plants. In the context of FDD for multivariate sensor data, this study presents an improved FDD approach using graph-based neural networks. This graph neural network uses an adjacency matrix developed by extracting the expert domain knowledge and topological information of the multi-sensor system. This additional graph representation of the system is incorporated along with multivariate sensor data to capture the spatial and temporal information in neural networks efficiently. In this regard, we propose and evaluate: 1) A Graph Auto Encoder (GAE) based fault detection strategy and 2) An Attention-based Spatial Temporal Graph Convolution Network (ASTGCN) based fault diagnosis methodology. By leveraging the additional knowledge in the form of graphs, the GAE captures the complex relationships and dependencies among sensors, enabling effective anomaly detection, which identifies abnormal patterns and deviations from normal behavior, thus indicating potential faults in the system. The ASTGCN incorporates attention mechanisms to selectively focus on relevant sensor nodes and capture their spatial and temporal dependencies for fault diagnosis. The effectiveness of the proposed FDD approach is demonstrated using the benchmark Tennessee Eastman Process (TEP) problem. The results show that the proposed approaches outperform traditional methods and highlight the importance of leveraging graph-based knowledge for FDD in complex systems. © 2024en_US
dc.language.isoenen_US
dc.publisherElsevier Ltden_US
dc.sourceDigital Chemical Engineeringen_US
dc.subjectAttention mechanismen_US
dc.subjectFault detection and diagnosisen_US
dc.subjectGraph auto encoderen_US
dc.subjectGraph convolution networken_US
dc.subjectGraph neural networksen_US
dc.subjectKnowledge-based graphen_US
dc.subjectTennessee Eastman processen_US
dc.titleImproved fault detection and diagnosis using graph auto encoder and attention-based graph convolution networksen_US
dc.typeJournal Articleen_US
Appears in Collections:Department of Civil Engineering

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