二阶智能体群的速度一致性与参考跟踪

Luigi D’Alfonso, P. Muraca
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引用次数: 0

摘要

针对团队参考跟踪问题,提出了一种二阶智能体群模型。所描述的模型是一个双积分器,其中每个智能体动态由一个控制输入控制,该控制输入由对参考位置和速度的吸引部分组成,并由一个控制智能体之间交互的排斥部分组成。将证明在该模型下,群体质心将渐近接近参考轨迹,各智能体的速度将在参考速度上达成共识,而它们的位置将固定在一个根据参考轨迹运动的参考系中。提出的工作的主要新颖之处在于代理之间的交互项,其效果可以通过修改交互矩阵来轻松调整,该交互矩阵可以调节代理相互作用对其各个组件的影响。正确选择这个矩阵,可以修改聚合属性,以确保所有代理进入并保持在参考轨迹周围的定义区域,并根据该区域移动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Speed Consensus and Reference Tracking for a Swarm of Second-order Agents
In this paper a second-order model for a swarm of agents is proposed to face the team reference tracking problem. The described model is a double integrator where each agent dynamic is ruled by a control input formed by attractive parts to the reference position and speed, and by a repulsive part that rules the interactions among agents. It will be proved that following the proposed model, the swarm centroid will asymptotically reach the reference trajectory and the agents’ speeds will reach a consensus on the reference speed while their positions will be fixed in a reference frame that moves according to the reference trajectory. The main novelty of the proposed work is the interaction term among agents, the effect of which can be easily tuned by modifying an interaction matrix that modulates the effect of agents interactions on their various components. Properly choosing this matrix, aggregation properties can be modified to ensure that all the agents enter and remain in a defined zone around the reference trajectory, moving according to it.
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