Automatically Learning Hybrid Digital Twins of Dynamical Systems
Samuel Holt, Tennison Liu, Mihaela van der Schaar

TL;DR
This paper introduces HDTwinGen, an evolutionary algorithm that uses Large Language Models to automatically generate and optimize hybrid digital twins combining mechanistic and neural components, improving generalization and sample efficiency.
Contribution
It presents a novel method employing LLMs to autonomously specify and optimize hybrid digital twins, addressing the complexity of model design and enhancing their adaptability.
Findings
HDTwinGen produces models with better generalization.
The approach improves sample efficiency in model training.
Hybrid models show increased evolvability and robustness.
Abstract
Digital Twins (DTs) are computational models that simulate the states and temporal dynamics of real-world systems, playing a crucial role in prediction, understanding, and decision-making across diverse domains. However, existing approaches to DTs often struggle to generalize to unseen conditions in data-scarce settings, a crucial requirement for such models. To address these limitations, our work begins by establishing the essential desiderata for effective DTs. Hybrid Digital Twins () represent a promising approach to address these requirements, modeling systems using a composition of both mechanistic and neural components. This hybrid architecture simultaneously leverages (partial) domain knowledge and neural network expressiveness to enhance generalization, with its modular design facilitating improved evolvability. While existing hybrid models rely on…
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Taxonomy
TopicsNeural Networks and Applications
