Safe Model-Based Reinforcement Learning for Systems With Parametric Uncertainties

Mahmud, S. M. Nahid and Nivison, Scott A. and Bell, Zachary I. and Kamalapurkar, Rushikesh (2021) Safe Model-Based Reinforcement Learning for Systems With Parametric Uncertainties. Frontiers in Robotics and AI, 8. ISSN 2296-9144

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Abstract

Reinforcement learning has been established over the past decade as an effective tool to find optimal control policies for dynamical systems, with recent focus on approaches that guarantee safety during the learning and/or execution phases. In general, safety guarantees are critical in reinforcement learning when the system is safety-critical and/or task restarts are not practically feasible. In optimal control theory, safety requirements are often expressed in terms of state and/or control constraints. In recent years, reinforcement learning approaches that rely on persistent excitation have been combined with a barrier transformation to learn the optimal control policies under state constraints. To soften the excitation requirements, model-based reinforcement learning methods that rely on exact model knowledge have also been integrated with the barrier transformation framework. The objective of this paper is to develop safe reinforcement learning method for deterministic nonlinear systems, with parametric uncertainties in the model, to learn approximate constrained optimal policies without relying on stringent excitation conditions. To that end, a model-based reinforcement learning technique that utilizes a novel filtered concurrent learning method, along with a barrier transformation, is developed in this paper to realize simultaneous learning of unknown model parameters and approximate optimal state-constrained control policies for safety-critical systems.

Item Type: Article
Subjects: Librbary Digital > Mathematical Science
Depositing User: Unnamed user with email support@librbarydigit.com
Date Deposited: 23 Jun 2023 06:58
Last Modified: 06 Jul 2024 08:01
URI: http://info.openarchivelibrary.com/id/eprint/1045

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