IEEE Trans Cybern. 2022 Jul;52(7):7069-7083. doi: 10.1109/TCYB.2021.3049488. Epub 2022 Jul 4.
This study investigates a quantized feedback design problem for distributed adaptive leader-following consensus of uncertain strict-feedback nonlinear multiagent systems with state quantizers. It is assumed that all system nonlinearities of followers are unknown and heterogeneous, all state variables of each follower are quantized by a uniform state quantizer, and quantized states of followers are only communicated under a directed network. Compared with previous approximation-based distributed consensus tracking methods for uncertain lower triangular multiagent systems, the main contribution of this article is addressing the distributed quantized state communication problem in the adaptive leader-following consensus tracking field of uncertain lower triangular multiagent systems. A quantized-states-based local adaptive control law for each follower is derived by designing quantized-signals-based weight tuning laws for neural-network-based function approximators. By analyzing the boundedness of the local quantization errors, it is shown that the total closed-loop signals are uniformly ultimately bounded and the consensus tracking errors converge to a sufficiently small domain around the origin. Finally, simulation examples, including multiple ship steering systems, are considered to verify the effectiveness of the proposed theoretical approach.
本研究针对具有状态量化器的不确定严格反馈非线性多智能体系统的分布式自适应领导者跟随一致性问题,研究了一种量化反馈设计问题。假设所有跟随者的系统非线性都是未知的和异构的,每个跟随者的所有状态变量都由一个统一的状态量化器量化,并且只有在有向网络下才能通信跟随者的量化状态。与之前基于近似的不确定下三角多智能体系统的分布式一致性跟踪方法相比,本文的主要贡献在于解决不确定下三角多智能体系统自适应领导者跟随一致性跟踪领域的分布式量化状态通信问题。通过设计基于神经网络的函数逼近器的量化信号加权调整律,为每个跟随者推导了基于量化状态的局部自适应控制律。通过分析局部量化误差的有界性,证明了总的闭环信号是一致有界的,并且一致性跟踪误差在原点附近的一个足够小的域内收敛。最后,考虑了多个船舶转向系统的仿真示例,以验证所提出的理论方法的有效性。