Data-driven augmentation of first-principles models under constraint-free well-posedness and stability guarantees
For researchers in system identification and model augmentation, this work provides theoretically grounded solutions to key practical limitations of LFR-based augmentation, enabling more reliable and automated model development.
The paper addresses well-posedness and stability issues in data-driven augmentation of first-principles models using linear fractional representations, proposing constraint-free parametrizations that guarantee well-posedness and stability via contraction, along with an efficient identification pipeline for automatic model order selection. The approach is demonstrated on simulation and benchmark examples.
The integration of first-principles models with learning-based components, i.e., model augmentation, has gained increasing attention, as it offers higher model accuracy and faster convergence properties compared to black-box approaches, while generating physically interpretable models. Recently, a unified formulation has been proposed that generalizes existing model augmentation structures, utilizing linear fractional representations (LFRs). However, several potential benefits of the approach remain underexplored. In this work, we address three key limitations. First, the added flexibility of LFRs also introduces possible algebraic loops, i.e., a problem of well-posedness. To address this challenge, we propose a constraint-free direct parametrization of the model structure with a well-posedness guarantee. Second, we introduce a constraint-free parametrization that ensures stability of the overall model augmentation structure via contraction. Third, we adopt an efficient identification pipeline capable of handling non-smooth cost functions, such as group-lasso regularization, which facilitates automatic model order selection and discovery of the required augmentation configuration. These contributions are demonstrated on various simulation and benchmark identification examples.