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Adaptive Neural Network Time-varying Formation Tracking Control for Multi-agent Systems via Minimal Learning Parameter Approach

机译:基于最小学习参数方法的多主体系统自适应神经网络时变编队跟踪控制

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This paper investigates the time-varying formation tracking control problem for multi-agent systems with consideration of model uncertainties. For each dimension of an agent, a radial basis function neural network (RBFNN) is first adopted to approximate the model uncertainties online. Taking the square of the norm of the neural network weight vector as a newly developed adaptive parameter, a novel RBFNN-based adaptive control law with minimal learning parameter (MLP) approach is then constructed to tackle the time-varying formation tracking problem. The uniformly ultimately boundedness (UUB) of formation tracking errors is guaranteed through Lyapunov analysis. Compared with other traditional RBFNN-based formation tracking control laws for multi-agent systems, very few parameters need to be updated online in our proposed one, which can greatly lessen the computational burden. Finally, comparative simulation results demonstrate the effectiveness and superiority of the proposed adaptive control law.
机译:考虑模型不确定性,研究了多智能体系统的时变编队跟踪控制问题。对于代理的每个维度,首先采用径向基函数神经网络(RBFNN)在线近似模型不确定性。以神经网络权向量的范数平方为新开发的自适应参数,构建了一种基于RBFNN的最小学习参数自适应控制律(MLP),以解决随时间变化的编队跟踪问题。通过Lyapunov分析,可以保证地层跟踪误差的统一最终边界(UUB)。与其他传统的基于RBFNN的多智能体系统地层跟踪控制律相比,我们提出的参数很少需要在线更新,这可以大大减轻计算负担。最后,比较仿真结果证明了所提出的自适应控制律的有效性和优越性。

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