Data-Driven Supervision of a Thermal-Hydraulic Process Towards a Physics-Based Digital Twin
- URL: http://arxiv.org/abs/2602.22267v1
- Date: Wed, 25 Feb 2026 07:09:39 GMT
- Title: Data-Driven Supervision of a Thermal-Hydraulic Process Towards a Physics-Based Digital Twin
- Authors: Osimone Imhogiemhe, Yoann Jus, Hubert Lejeune, Saïd Moussaoui,
- Abstract summary: This paper develops a digital twin dedicated to fault detection and diagnosis in the context of a thermal-hydraulic process supervision.<n>The proposed fault detection and diagnosis algorithm is validated on a specific test scenario.
- Score: 2.0135920996943604
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The real-time supervision of production processes is a common challenge across several industries. It targets process component monitoring and its predictive maintenance in order to ensure safety, uninterrupted production and maintain high efficiency level. The rise of advanced tools for the simulation of physical systems in addition to data-driven machine learning models offers the possibility to design numerical tools dedicated to efficient system monitoring. In that respect, the digital twin concept presents an adequate framework that proffers solution to these challenges. The main purpose of this paper is to develop such a digital twin dedicated to fault detection and diagnosis in the context of a thermal-hydraulic process supervision. Based on a numerical simulation of the system, in addition to machine learning methods, we propose different modules dedicated to process parameter change detection and their on-line estimation. The proposed fault detection and diagnosis algorithm is validated on a specific test scenario, with single one-off parameter change occurrences in the system. The numerical results show good accuracy in terms of parameter variation localization and the update of their values.
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