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Off-policy reinforcement learning for tracking control of discrete-time Markov jump linear systems with completely unknown dynamics
Journal article   Peer reviewed

Off-policy reinforcement learning for tracking control of discrete-time Markov jump linear systems with completely unknown dynamics

Zhen Huang, Yidong Tu, Haiyang Fang, Hai Wang, Liang Zhang, Kaibo Shi and Shuping He
Journal of the Franklin Institute, Vol.360(3), pp.2361-2378
2023

Abstract

In this paper, a model-free off-policy reinforcement learning (RL) algorithm is proposed to address the optimal tracking control (OTC) problem for discrete-time Markov jump linear systems (MJLSs). The tracking reference signal is firstly augmented into discrete-time MJLSs, whereby the original tracking control problem is converted to the optimal control problem of the augmented system. The corresponding augmented coupled game algebraic Riccati equation (ACGARE) is then derived. On this basis, an online RL algorithm is developed to solve the OTC problem by using the policy iteration (PI) technique. Then, a novel model-free method is proposed, which eliminates the requirement of the system dynamics and transition probability. Finally, a simulation example is provided to prove the convergence and validate the effectiveness of the proposed algorithm.

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