Lu Kaixin, Liu Zhi, Lai Guanyu, Chen C L Philip, Zhang Yun
IEEE Trans Cybern. 2021 Jan;51(1):405-415. doi: 10.1109/TCYB.2019.2933436. Epub 2020 Dec 22.
In this article, we consider the leader-follower consensus control problem of uncertain multiagent systems, aiming to achieve the improvement of system steady state and transient performance. To this end, a new adaptive neural control approach is proposed with a novel design of the Lyapunov function, which is generated with a class of positive functions. Guided by this idea, a series of smooth functions is incorporated into backstepping design and Lyapunov analysis to develop a performance-oriented controller. It is proved that the proposed controller achieves a perfect asymptotic consensus performance and a tunable L transient performance of synchronization errors, whereas most existing results can only ensure the stability. Simulation demonstrates the obtained results.
在本文中,我们考虑不确定多智能体系统的领导者-跟随者一致性控制问题,旨在实现系统稳态和暂态性能的提升。为此,提出了一种新的自适应神经控制方法,其具有一种新颖的李雅普诺夫函数设计,该函数由一类正函数生成。基于这一思想,一系列光滑函数被纳入反步法设计和李雅普诺夫分析中,以开发一种面向性能的控制器。证明了所提出的控制器实现了完美的渐近一致性性能以及同步误差的可调L暂态性能,而大多数现有结果只能确保稳定性。仿真验证了所得结果。