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Neural network-based adaptive output feedback formation control for multi-agent systems

机译:基于神经网络的多智能体系统自适应输出反馈形成控制

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摘要

This paper investigates the problem of output feedback formation tracking control for secondorder multi-agent systems under an undirected connected graph and in the presence of dynamic uncertainties and bounded external disturbances. Two state tracking error measures (i.e., absolute and relative state tracking errors) are considered for each individual agent in the formation, and linear reducedorder observers are constructed based on the lumped state tracking errors which include absolute and relative state tracking errors. Chebyshev neural networks are used to approximate unknown nonlinear function in the agent dynamics on-line, and the implementation of the basis functions of Chebyshev neural networks depends only on the desired signals. The smooth projection algorithm is applied to guarantee that the estimated parameters remain in some known bounded sets. Numerical simulations are presented to illustrate the performance of the proposed controller.
机译:本文研究了无向连通图,存在动态不确定性和有界外部干扰的情况下,二阶多智能体系统的输出反馈形成跟踪控制问题。对于地层中的每个个体,考虑了两个状态跟踪误差量度(即,绝对和相对状态跟踪误差),并且基于包括绝对和相对状态跟踪误差的集总状态跟踪误差来构造线性降阶观测器。 Chebyshev神经网络用于在线估计代理动力学中的未知非线性函数,而Chebyshev神经网络的基本函数的实现仅取决于所需的信号。应用平滑投影算法以确保估计的参数保留在某些已知的有界集中。数值仿真表明了所提出的控制器的性能。

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