Title
Reinforcement learning and adaptive optimization of a class of Markov jump systems with completely unknown dynamic information
Abstract
In this paper, an online adaptive optimal control problem of a class of continuous-time Markov jump linear systems (MJLSs) is investigated by using a parallel reinforcement learning (RL) algorithm with completely unknown dynamics. Before collecting and learning the subsystems information of states and inputs, the exploration noise is firstly added to describe the actual control input. Then, a novel parallel RL algorithm is used to parallelly compute the correspondingNcoupled algebraic Riccati equations by online learning. By this algorithm, we will not need to know the dynamic information of the MJLSs. The convergence of the proposed algorithm is also proved. Finally, the effectiveness and applicability of this novel algorithm is illustrated by two simulation examples.
Year
DOI
Venue
2020
10.1007/s00521-019-04180-2
NEURAL COMPUTING & APPLICATIONS
Keywords
DocType
Volume
Markov jump linear systems (MJLSs),Adaptive optimal control,Online,Reinforcement learning (RL),Coupled algebraic Riccati equations (AREs)
Journal
32.0
Issue
ISSN
Citations 
SP18
0941-0643
3
PageRank 
References 
Authors
0.38
0
6
Name
Order
Citations
PageRank
Shuping He1625.53
Maoguang Zhang230.38
Haiyang Fang3141.55
Fei Liu4655.57
Xiaoli Luan5484.81
Zhengtao Ding6315.53