Graph Neural Networks for Virtual Sensing in Complex Systems: Addressing Heterogeneous Temporal Dynamics
Mengjie Zhao, Cees Taal, Stephan Baggerohr, Olga Fink

TL;DR
This paper introduces HTGNN, a graph neural network framework designed to handle heterogeneous temporal dynamics in virtual sensing, significantly improving system monitoring accuracy under varying conditions.
Contribution
The paper presents a novel HTGNN framework that explicitly models diverse sensor signals and operational conditions for virtual sensing in complex systems.
Findings
HTGNN outperforms baseline methods in bearing load prediction.
HTGNN achieves higher accuracy in bridge load estimation.
The approach is robust under varying operational conditions.
Abstract
Real-time condition monitoring is crucial for the reliable and efficient operation of complex systems. However, relying solely on physical sensors can be limited due to their cost, placement constraints, or inability to directly measure certain critical parameters. Virtual sensing addresses these limitations by leveraging readily available sensor data and system knowledge to estimate inaccessible parameters or infer system states. The increasing complexity of industrial systems necessitates deployments of sensors with diverse modalities to provide a comprehensive understanding of system states. These sensors capture data at varying frequencies to monitor both rapid and slowly varying system dynamics, as well as local and global state evolutions of the systems. This leads to heterogeneous temporal dynamics, which, particularly under varying operational end environmental conditions, pose…
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Taxonomy
TopicsNeural Networks and Applications
MethodsGraph Neural Network
