使用迭代学习改进基于连接的定位性能

N. Maung, M. Kawai
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引用次数: 6

摘要

无线自组织网络和高级网络的资源限制禁止基于距离的定位方案,这些方案需要专门的硬件来实现高定位精度。另一方面,仅依赖于连通性信息的低成本无距离方案精度较低,且仅适用于大规模网络。本文提出了一种利用接收信号强度(RSS)测量的有效定位方案,在不需要额外硬件支持的情况下提高无距离定位方案的定位精度,并解决了适用性问题。提出的迭代定位学习算法利用节点间的连通性信息和基于rss的距离信息来估计节点的位置,从而获得更精确的位置估计。为了使我们提出的方案适用于小型和大型网络,我们使用可用的RSS测量值和预定义的RSS阈值来配置连接信息。将要定位的特定网络的误差最小化的最佳RSS阈值作为节点总数和网络大小的函数导出。通过引入可调节跳数值,进一步提高了该方案的准确性。实验结果表明,该方法显著提高了定位精度,在不同网络配置下都能很好地工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance improvement of connectivity-based localization using iterative learning
Resource constraints of wireless ad-hoc and senior networks prohibit range-based localization schemes which squire specialized hardware for high location accuracy. On he other hand, cost effective range-free schemes which depend only on connectivity information offer lower accuracy and grant heir applicability only to large-scale networks. This paper propose an efficient localization scheme which applies received signal strength (RSS) measurements to improve the localization accuracy of range-free schemes without any extra hardware support and to solve the applicability problem. Locations of the lodes are estimated with the proposed iterative location learning algorithm which utilizes both connectivity information and RSS-based distance information between the nodes to get more precise location estimation. To make our proposed scheme applicable or both small and large scale networks, we configure the connectivity information using the available RSS measurements and a predefined RSS threshold. Optimal RSS threshold value that minimizes the error for a particular network to be localized is derived as a function of the total number of nodes and the network size. The accuracy of the proposed scheme is further improved by introducing the use of regulated hop-count values. Experimental results show that our proposed scheme significantly improves the localization accuracy and works well under different network configurations.
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