Bridging Data and Physics: A Graph Neural Network-Based Hybrid Twin Framework
M. Gorpinich (1, 2), B. Moya (2), S. Rodriguez (2), F. Meraghni (2), Y. Jaafra (1), A. Briot (1), M. Henner (1), R. Leon (1), F. Chinesta (2, 3) ((1) Valeo, (2) PIMM Lab. ENSAM Institute of Technology, (3) CNRS@CREATE LTD. Singapore)

TL;DR
This paper introduces a hybrid modeling framework combining physics-based simulations with graph neural networks to efficiently learn and correct for unmodeled effects in complex physical phenomena, reducing data needs.
Contribution
It proposes a novel GNN-based hybrid twin approach that models the ignorance component, enabling accurate corrections with sparse data across various spatial configurations.
Findings
GNN effectively captures missing physics in heat transfer simulations.
The hybrid model improves accuracy across different meshes and geometries.
The approach reduces data requirements for reliable modeling.
Abstract
Simulating complex unsteady physical phenomena relies on detailed mathematical models, simulated for instance by using the Finite Element Method (FEM). However, these models often exhibit discrepancies from the reality due to unmodeled effects or simplifying assumptions. We refer to this gap as the ignorance model. While purely data-driven approaches attempt to learn full system behavior, they require large amounts of high-quality data across the entire spatial and temporal domain. In real-world scenarios, such information is unavailable, making full data-driven modeling unreliable. To overcome this limitation, we model of the ignorance component using a hybrid twin approach, instead of simulating phenomena from scratch. Since physics-based models approximate the overall behavior of the phenomena, the remaining ignorance is typically lower in complexity than the full physical response,…
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Taxonomy
TopicsModel Reduction and Neural Networks · Advanced Graph Neural Networks · Advanced Multi-Objective Optimization Algorithms
