IEEE Trans Neural Netw Learn Syst. 2018 Jun;29(6):2419-2428. doi: 10.1109/TNNLS.2017.2696966. Epub 2017 May 5.
This paper is devoted to distributed adaptive containment control for a class of nonlinear multiagent systems with input quantization. By employing a matrix factorization and a novel matrix normalization technique, some assumptions involving control gain matrices in existing results are relaxed. By fusing the techniques of sliding mode control and backstepping control, a two-step design method is proposed to construct controllers and, with the aid of neural networks, all system nonlinearities are allowed to be unknown. Moreover, a linear time-varying model and a similarity transformation are introduced to circumvent the obstacle brought by quantization, and the controllers need no information about the quantizer parameters. The proposed scheme is able to ensure the boundedness of all closed-loop signals and steer the containment errors into an arbitrarily small residual set. The simulation results illustrate the effectiveness of the scheme.
本文致力于研究一类具有输入量化的非线性多智能体系统的分布式自适应牵制控制。通过采用矩阵分解和一种新颖的矩阵归一化技术,放宽了现有结果中涉及控制增益矩阵的一些假设。通过融合滑模控制和反推控制技术,提出了一种两步设计方法来构造控制器,并借助神经网络允许所有系统非线性都是未知的。此外,引入了线性时变模型和相似变换来规避量化带来的障碍,并且控制器不需要关于量化器参数的信息。所提出的方案能够确保所有闭环信号的有界性,并将牵制误差引导到任意小的残差集内。仿真结果验证了该方案的有效性。