Network localization from range measurements: Algorithms and numerical experiments

G. Calafiore, L. Carlone, Mingzhu Wei
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引用次数: 1

Abstract

The problem of estimating node positions in sensor networks and multi agent formations has been extensively studied in the last decade for the purpose of enabling self-configurable and autonomous systems. A typical scenario involves the nodes to estimate their locations using relative measurements from neighbors. When full relative positions (coordinates or, equivalently, range and angle) between pairs of nodes are available, the problem reduces to linear estimation. Contrary, when distance-only (range) measurements are available, the localization problem is strongly NP-hard, and convergence of general-purpose optimization techniques can no longer be guaranteed. In the present paper we analyze three ad-hoc numerical techniques for solving the network localization problem under range-only measurements, namely an iterative Least-Squares algorithm, a Trust-Region method, and a Global Continuation method based on Gaussian smoothing. The global convergence properties of these techniques are then tested through numerical simulations.
距离测量的网络定位:算法和数值实验
在过去的十年中,为了实现自配置和自治系统,传感器网络和多智能体编队中节点位置的估计问题得到了广泛的研究。一个典型的场景涉及节点使用邻居的相对测量值来估计它们的位置。当对节点之间的完整相对位置(坐标或相等的距离和角度)可用时,问题就简化为线性估计。相反,当只有距离(距离)测量可用时,定位问题是强np困难的,并且不能再保证通用优化技术的收敛性。在本文中,我们分析了三种用于解决仅距离测量下网络定位问题的特别数值方法,即迭代最小二乘算法、信任域方法和基于高斯平滑的全局延拓方法。然后通过数值模拟验证了这些技术的全局收敛性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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