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Improving the Critic Learning for Event-Based Nonlinear $H_{\infty }$ Control Design

Ding Wang, Haibo He, Derong Liu

Year
2017
Citations
95

Abstract

control problem is regarded as a two-player zero-sum game and the adaptive critic mechanism is used to achieve the minimax optimization under event-based environment. Then, based on an improved updating rule, the event-based optimal control law and the time-based worst-case disturbance law are obtained approximately by training a single critic neural network. The initial stabilizing control is no longer required during the implementation process of the new algorithm. Next, the closed-loop system is formulated as an impulsive model and its stability issue is handled by incorporating the improved learning criterion. The infamous Zeno behavior of the present event-based design is also avoided through theoretical analysis on the lower bound of the minimal intersample time. Finally, the applications to an aircraft dynamics and a robot arm plant are carried out to verify the efficient performance of the present novel design method.

Keywords

Nonlinear systemControl (management)Event (particle physics)Computer scienceControl theory (sociology)Artificial intelligencePhysics

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