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Solving the Zero-Sum Control Problem for Tidal Turbine System: An Online Reinforcement Learning Approach

Haiyang Fang, Maoguang Zhang, Shuping He, Xiaoli Luan, Fei Liu, Zhengtao Ding

2022IEEE Transactions on Cybernetics49 citationsDOI

Abstract

A novel completely mode-free integral reinforcement learning (CMFIRL)-based iteration algorithm is proposed in this article to compute the two-player zero-sum games and the Nash equilibrium problems, that is, the optimal control policy pairs, for tidal turbine system based on continuous-time Markov jump linear model with exact transition probability and completely unknown dynamics. First, the tidal turbine system is modeled into Markov jump linear systems, followed by a designed subsystem transformation technique to decouple the jumping modes. Then, a completely mode-free reinforcement learning algorithm is employed to address the game-coupled algebraic Riccati equations without using the information of the system dynamics, in order to reach the Nash equilibrium. The learning algorithm includes one iteration loop by updating the control policy and the disturbance policy simultaneously. Also, the exploration signal is added for motivating the system, and the convergence of the CMFIRL iteration algorithm is rigorously proved. Finally, a simulation example is given to illustrate the effectiveness and applicability of the control design approach.

Topics & Concepts

Reinforcement learningConvergence (economics)Markov decision processComputer scienceControl theory (sociology)Algebraic Riccati equationMathematical optimizationNash equilibriumZero-sum gameMarkov chainTransformation (genetics)Optimal controlMathematicsApplied mathematicsControl (management)Markov processRiccati equationArtificial intelligenceGeneChemistryDifferential equationBiochemistryEconomicsEconomic growthMathematical analysisMachine learningStatisticsAdaptive Dynamic Programming ControlReinforcement Learning in RoboticsSmart Grid Energy Management
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