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Event-Triggered ADP for Nonzero-Sum Games of Unknown Nonlinear Systems

Zhao Qing-tao, Jian Sun, Gang Wang, Jie Chen

2021IEEE Transactions on Neural Networks and Learning Systems56 citationsDOI

Abstract

For nonzero-sum (NZS) games of nonlinear systems, reinforcement learning (RL) or adaptive dynamic programming (ADP) has shown its capability of approximating the desired index performance and the optimal input policy iteratively. In this article, an event-triggered ADP is proposed for NZS games of continuous-time nonlinear systems with completely unknown system dynamics. To achieve the Nash equilibrium solution approximately, the critic neural networks and actor neural networks are utilized to estimate the value functions and the control policies, respectively. Compared with the traditional time-triggered mechanism, the proposed algorithm updates the neural network weights as well as the inputs of players only when a state-based event-triggered condition is violated. It is shown that the system stability and the weights' convergence are still guaranteed under mild assumptions, while occupation of communication and computation resources is considerably reduced. Meanwhile, the infamous Zeno behavior is excluded by proving the existence of a minimum inter-event time (MIET) to ensure the feasibility of the closed-loop event-triggered continuous-time system. Finally, a numerical example is simulated to illustrate the effectiveness of the proposed approach.

Topics & Concepts

Artificial neural networkConvergence (economics)Nonlinear systemReinforcement learningComputer scienceNash equilibriumControl theory (sociology)Event (particle physics)Stability (learning theory)Mathematical optimizationOptimal controlBellman equationDynamic programmingControl (management)MathematicsArtificial intelligencePhysicsEconomicsMachine learningEconomic growthQuantum mechanicsAdaptive Dynamic Programming ControlReinforcement Learning in RoboticsFrequency Control in Power Systems