移动信标定位传感器网络的静态路径规划

Rui Huang, G. Záruba
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引用次数: 157

摘要

本文研究了以无线传感器网络定位为主要目标的静态路径规划问题。我们考虑一个模型,其中传感器被假设均匀地部署到预定义的部署区域。然后,我们部署一个机器人作为移动信标,以实现传感器节点的定位。机器人沿着预先确定的静态路径,周期性地向附近的传感器广播其当前位置坐标。静态路径规划问题在保证路径长度有界的情况下,寻找具有更好的定位精度和传感器网络覆盖的好路径。我们提出了两种新的路径类型,圆圈和s -曲线,专门设计用于减少定位过程中的共线性。我们使用Cramer Rao界(CRB)作为评价工具,将我们的解与现有的解进行比较,无论使用何种定位算法,它都给出了一个无偏的评价。评价表明,我们的解比以前的解能更有效地处理共线性。在共线性是最大问题的情况下,我们的解决方案提供了更好的定位精度和覆盖范围
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Static Path Planning for Mobile Beacons to Localize Sensor Networks
In this paper, we study the static path planning problem with wireless sensor network localization as the primary objective. We consider a model in which sensors are assumed to be uniformly deployed to a predefined deployment area. We then deploy a robot to serve as a mobile beacon to enable the localization of the sensor nodes. The robot follows a pre-determined static path while periodically broadcasting its current location coordinates to the nearby sensors. The static path planning problem looks for good paths that result in better localization accuracy and coverage of the sensor network while keeping the path length bounded. We propose two new path types, CIRCLES and S-CURVES, that are specifically designed to reduce the collinearity during localization. We compare our solution with existing ones using the Cramer Rao bound (CRB) as the evaluation tool, which gives an unbiased evaluation regardless of localization algorithm used. The evaluation shows that our solutions cope with collinearity in a more effective manner than previous solutions. Our solutions provide significantly better localization accuracy and coverage in the cases where collinearity is the greatest problem
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