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Recurrent Neural Network Controllers Synthesis with Stability Guarantees for Partially Observed Systems

Fangda Gu, He Yin, Laurent El Ghaoui, Murat Arcak, Peter Seiler, Ming Jin

2022Proceedings of the AAAI Conference on Artificial Intelligence25 citationsDOIOpen Access PDF

Abstract

Neural network controllers have become popular in control tasks thanks to their flexibility and expressivity. Stability is a crucial property for safety-critical dynamical systems, while stabilization of partially observed systems, in many cases, requires controllers to retain and process long-term memories of the past. We consider the important class of recurrent neural networks (RNN) as dynamic controllers for nonlinear uncertain partially-observed systems, and derive convex stability conditions based on integral quadratic constraints, S-lemma and sequential convexification. To ensure stability during the learning and control process, we propose a projected policy gradient method that iteratively enforces the stability conditions in the reparametrized space taking advantage of mild additional information on system dynamics. Numerical experiments show that our method learns stabilizing controllers with fewer samples and achieves higher final performance compared with policy gradient.

Topics & Concepts

Control theory (sociology)Lemma (botany)Stability (learning theory)Flexibility (engineering)Artificial neural networkRecurrent neural networkComputer scienceQuadratic equationProperty (philosophy)Process (computing)Dynamical systems theoryController (irrigation)Control (management)MathematicsArtificial intelligenceMachine learningPhilosophyQuantum mechanicsOperating systemBiologyGeometryAgronomyEpistemologyEcologyStatisticsPoaceaePhysicsModel Reduction and Neural NetworksAdvanced Control Systems OptimizationFault Detection and Control Systems
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