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A Distributed Technique for Localization of Agent Formations from Relative Range Measurements

机译:一种从相对距离测量中确定代理形成的分布式技术

摘要

Autonomous agents deployed or moving on land for the purpose of carrying out coordinated tasks need to have good knowledge of their absolute or relative position. For large formations it is often impractical to equip each agent with an absolute sensor such as GPS, whereas relative range sensors measuring inter-agent distances are cheap and commonly available. In this setting, the paper considers the problem of autonomous, distributed estimation of the position of each agent in a networked formation, using noisy measurements of inter- agent distances. The underlying geometrical problem has been studied quite extensively in various fields, ranging from molecular biology to robotics, and it is known to lead to a hard non-convex optimization problem. Centralized algorithms do exist that work reasonably well in finding local or global minimizers for this problem (e.g. semidefinite programming relaxations). Here, we explore a fully decentralized approach for localization from range measurements, and we propose a computational scheme based on a distributed gradient algorithm with Barzilai-Borwein stepsizes. The advantage of this distributed approach is that each agent may autonomously compute its position estimate, exchanging information only with its neighbors, without need of communicating with a central station and without needing complete knowledge of the network structure
机译:为了执行协调任务而在陆地上部署或移动的自治特工需要对他们的绝对或相对位置有充分的了解。对于大型编队,为每个特工配备绝对传感器(例如GPS)通常是不切实际的,而测量特工之间距离的相对距离传感器则便宜且普遍可用。在这种情况下,本文考虑了使用代理间距离的噪声测量来自动,分布式估计网络化地层中每个代理位置的问题。潜在的几何问题已在从分子生物学到机器人技术的各个领域中进行了广泛的研究,已知会导致硬的非凸优化问题。确实存在集中的算法,可以很好地找到该问题的局部或全局最小化器(例如半定程序松弛)。在这里,我们从距离测量中探索了一种完全分散的定位方法,并提出了基于带有Barzilai-Borwein步长的分布式梯度算法的计算方案。这种分布式方法的优势在于,每个代理可以自主地计算其位置估计,仅与邻居进行信息交换,而无需与中心站进行通信,也不需要完全了解网络结构

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