Distributed Cooperative Formation Control of Nonlinear Multi-Agent System (UGV) Using Neural Network

Si Kheang Moeurn
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Abstract

The paper presented in this article deals with the issue of distributed cooperative formation of multi-agent systems (MASs). It proposes the use of appropriate neural network control methods to address formation requirements (uncertainties dynamic model). It considers an adaptive leader-follower distributed cooperative formation control based on neural networks (NNs) developed for a class of second-order nonlinear multi-agent systems and neural networks Neural networks are used to compute system data that inputs layer (position, velocity), hidden layers, and output layer. Through collaboration between leader-follower approaches and neural networks with complex systems or complex conditions receive an effective cooperative formation control method. The sufficient conditions for the system stability were derived using Lyapunov stability theory, graph theory, and state space methods. By simulation, the results of this study can be obtained from the main data of the multi-agent system in formation control and verified that the system can process consistency, stability, reliability, and accuracy in cooperative formation.
利用神经网络实现非线性多代理系统(UGV)的分布式合作编队控制
本文论述了多代理系统(MAS)的分布式合作组建问题。它提出使用适当的神经网络控制方法来满足编队要求(不确定性动态模型)。神经网络用于计算输入层(位置、速度)、隐藏层和输出层的系统数据。利用李亚普诺夫稳定性理论、图论和状态空间方法推导出了系统稳定性的充分条件。通过仿真,可以获得编队控制中多代理系统的主要数据,并验证了该系统在协同编队中的过程一致性、稳定性、可靠性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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