IEEE Access (Jan 2020)
Iterative Learning Control for Nonlinear Multi-Agent Systems With Initial Shifts
Abstract
In this paper, a discussion is made on the consensus tracking control by iterative learning method for high-order nonlinear multi-agent systems. Among them, all agents with initial state errors are enabled to perform a given repetitive task over a finite interval. The method proposed can achieve consensus tracking through a series of initial shifts correction actions. In the process of tracking, this algorithm rectifies the initial error of the state $x_{n}$ of each agent at first, then the error of $x_{n-1}$ , and so on. All of these rectifying actions are finished in a specified interval. Furthermore, the algorithm has shown effective in the improvement of tracking performance through simulation.
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