基于自位置反馈的尺寸缩放多智能体形成

Djati Wibowo Djamari, Muhamad Rausyan Fikri, Malik Athafarras, N. Maulidati, Steven Mark Levy, Abdul Dwi Nur Cahyo, Maria Anggi Octaviani, Mohammad Farhan Ramdhany, F. Triawan
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引用次数: 0

摘要

本工作研究了多智能体系统(MASs)的地层控制,其地层大小可通过缩放因子(可扩展地层)进行扩展。以往关于可伸缩形的研究仅限于固定无向图或具有k根图条件的固定有向图。本文提出了一种基于自位置反馈的分布式可扩展编队算法。当假设智能体能够测量自身位置时,该算法在有向交换图下是有效的。在有向固定图设置下,设计了一种只需要相对位置的分布式观测器。证明了有向固定图集合上的生成树条件是实现可伸缩生成的充分必要条件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Agent Formation with Size Scaling via Self-Position Feedback
This work studies formation control of Multi-Agent Systems (MASs) where its formation size is scalable via a scaling factor (scalable formation). Past works on scalable formation are limited to either fixed undirected graph or fixed directed graph with k-rooted graph condition. This work proposes a new distributed algorithm for scalable formation based on self-position feedback. When agent is assumed to be able to measure its own position, the proposed algorithm is shown to work under directed switching graph. Under directed fixed graph setting, a distributed observer is designed such that only relative position is needed in the algorithm. Spanning tree condition on directed fixed graph setting is shown to be the necessary and sufficient condition to achieve the scalable formation.
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