2021
DOI: 10.48550/arxiv.2105.05316
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A Computational Framework for Modeling Complex Sensor Network Data Using Graph Signal Processing and Graph Neural Networks in Structural Health Monitoring

Abstract: Complex networks lend themselves to the modeling of multidimensional data, such as relational and/or temporal data. In particular, when such complex data and their inherent relationships need to be formalized, complex network modeling and its resulting graph representations enable a wide range of powerful options. In this paper, we target this -connected to specific machine learning approaches on graphs for structural health monitoring on an analysis and predictive (maintenance) perspective. Specifically, we p… Show more

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“…Some existing research used sensor clustering as nodes and modeled behaviors based on the input sensor graphs [61,64]. Other works directly used sensors as graph nodes, and modeled the interactions between each sensor pair as edges, have proven to be helpful in fluid intake monitoring [255,256], sleep stage detection [110], and structural health monitoring [26].…”
Section: Health Inference and Informaticsmentioning
confidence: 99%
“…Some existing research used sensor clustering as nodes and modeled behaviors based on the input sensor graphs [61,64]. Other works directly used sensors as graph nodes, and modeled the interactions between each sensor pair as edges, have proven to be helpful in fluid intake monitoring [255,256], sleep stage detection [110], and structural health monitoring [26].…”
Section: Health Inference and Informaticsmentioning
confidence: 99%