IEEE Trans Cybern. 2019 Apr;49(4):1365-1376. doi: 10.1109/TCYB.2018.2801345. Epub 2018 Feb 19.
By applying the fractional Lyapunov direct method, we investigate the robust consensus tracking problem for a class of uncertain fractional-order multiagent systems with a leader whose input is unknown and bounded. More specifically, multiple fractional-order systems with heterogeneous unknown nonlinearities and external disturbances are considered in this paper, which include the second-order multiagent systems as its special cases. First, a discontinuous neural network-based (NN-based) distributed robust adaptive algorithm is designed to guarantee the consensus tracking error exponentially converges to zero under a fixed topology. Also the derived results are further extended to the case of switching topology by appropriately choosing multiple Lyapunov functions. Second, a continuous NN-based distributed robust adaptive algorithm is further proposed to eliminate the undesirable chattering phenomenon of the discontinuous controller, where the consensus tacking error is uniformly ultimately bounded and can be reduced as small as desired. It is worth noting that all the proposed NN-based robust adaptive algorithms are independent of any global information and thus are fully distributed. Finally, numerical simulations are provided to validate the correctness of the proposed algorithms.
运用分数阶 Lyapunov 直接法,研究了一类具有未知有界输入的不确定分数阶多智能体系统的鲁棒一致性跟踪问题。具体来说,本文考虑了具有异类未知非线性和外部干扰的多个分数阶系统,其中包括二阶多智能体系统作为其特例。首先,设计了一种基于不连续神经网络(NN)的分布式鲁棒自适应算法,以保证在固定拓扑下,一致性跟踪误差指数收敛到零。此外,通过适当选择多个 Lyapunov 函数,将所得结果进一步扩展到切换拓扑的情况。其次,进一步提出了一种基于连续 NN 的分布式鲁棒自适应算法,以消除不连续控制器的不良抖振现象,其中一致性跟踪误差是一致有界的,可以根据需要减小到任意小。值得注意的是,所提出的基于 NN 的鲁棒自适应算法都不依赖于任何全局信息,因此是完全分布式的。最后,通过数值仿真验证了所提出算法的正确性。