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Fuzzy-Based adaptive optimization of unknown Discrete-Time Nonlinear Markov jump systems with Off-Policy reinforcement learning
Journal article   Peer reviewed

Fuzzy-Based adaptive optimization of unknown Discrete-Time Nonlinear Markov jump systems with Off-Policy reinforcement learning

H. Fang, Y. Tu, H. Wang, S. He, F. Liu, Z. Ding and S.S. Cheng
IEEE Transactions on Fuzzy Systems, Vol.30(12), pp.5276-5290
2022

Abstract

This paper explores a novel adaptive optimal control strategy for a class of sophisticated discrete-time nonlinear Markov jump systems (DTNMJSs) via Takagi-Sugeno (T-S) fuzzy models and reinforcement learning (RL) techniques. Firstly, the original nonlinear system model is represented by fuzzy approximation, while the relevant optimal control problem is equivalent to designing fuzzy controllers for linear fuzzy systems with Markov jumping parameters. Subsequently, we derive the fuzzy coupled algebraic Riccati equations (FCAREs) for the fuzzy-based discrete-time linear Markov jump systems by using Hamiltonian-Bellman methods. Following this, an online fuzzy optimization algorithm for DTNMJSs as well as the associated equivalence proof is given. Then, a fully model-free off-policy fuzzy RL algorithm is derived with proved convergence for the DTNMJSs without using the information of system dynamics and transition probability. Finally, two simulation examples respectively related to the single-link robotic arm and the half-car active suspension are given to verify the effectiveness and good performance of the proposed approach.

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Collaboration types
Domestic collaboration
International collaboration
Citation topics
4 Electrical Engineering, Electronics & Computer Science
4.116 Robotics
4.116.862 Reinforcement Learning
Web Of Science research areas
Computer Science, Artificial Intelligence
Engineering, Electrical & Electronic
ESI research areas
Engineering
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