Physics-based Digital Twins for Integrated Thermal Energy Systems Using Active Learning
Umme Mahbuba Nabila, Paul Seurin, Linyu Lin, Majdi I. Radaideh

TL;DR
This paper introduces an active learning framework coupling physics-informed surrogates with system simulations to efficiently develop accurate, interpretable digital twins for thermal energy systems.
Contribution
It proposes a novel active learning approach that combines physics-informed and data-driven surrogates with tailored query strategies for efficient digital twin development.
Findings
GRU surrogate achieved highest predictive accuracy.
AL reduced required simulation trajectories to one-fifth of random sampling.
MvG-SINDyC enabled uncertainty quantification and computational gains.
Abstract
Real-time supervisory control of thermal energy distribution systems requires digital twins that are accurate, interpretable, and uncertainty-aware, yet remain data and computationally efficient. High-fidelity simulations alone are costly, while purely data-driven surrogates often lack robustness. To address these challenges, this work proposes an active learning (AL) framework that couples system-level Modelica simulations with four simpler physics-informed and data-driven surrogate modeling approaches: deterministic Sparse Identification of Nonlinear Dynamics with Control (SINDyC), its probabilistic multivariate-Gaussian extension (MvG-SINDyC), feedforward neural network (FNN), and gated recurrent unit (GRU) network. Tailored to each surrogate, model-specific AL query strategies are employed, including Mahalanobis-distance sampling in coefficient space for MvG-SINDyC and error-based…
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