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arxiv: 2606.04582 · v1 · pith:VMO4EJVOnew · submitted 2026-06-03 · ⚛️ physics.comp-ph · cs.LG· physics.app-ph

Reconstructing Unobservable Temperature Fields via Simulation-Aided Intelligent Sensing

classification ⚛️ physics.comp-ph cs.LGphysics.app-ph
keywords monitoringtemperatureapplicationsapproachdatasetshardwaremanyonly
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Real-time monitoring of the temperature distribution within components and sub-structures is a challenging topic in many systems due to restrictions on feasible sensor locations. While machine learning (ML) proves a versatile tool in many applications, its adoption for high-resolution thermal monitoring is hindered by the availability of high-quality datasets for training. In this work, we propose a novel approach for generating datasets for industrial applications based on randomized physics-based simulations. We demonstrate the approach in a proof-of-concept hardware setup: A neural network (NN) trained only on such a synthetic dataset, is used to reconstruct the internal temperature field from sparse sensors embedded in the hardware. The NN-based reconstructions do not only outperform Kriging in robustness but also enable real-time inference, making the method suitable for online monitoring of otherwise unobservable thermal states.

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