Claudia Sbardi

1paper

1 Paper

37.9SYMar 26
Physics-informed structured learning of a class of recurrent neural networks with guaranteed properties

Daniele Ravasio, Claudia Sbardi, Marcello Farina et al.

This paper proposes a physics-informed learning framework for a class of recurrent neural networks tailored to large-scale and networked systems. The approach aims to learn control-oriented models that preserve the structural and stability properties of the plant. The learning algorithm is formulated as a convex optimisation problem, allowing the inclusion of linear matrix inequality constraints to enforce desired system features. Furthermore, when the plant exhibits structural modularity, the resulting optimisation problem can be parallelised, requiring communication only among neighbouring subsystems. Simulation results show the effectiveness of the proposed approach.