Tri-MCL: Synergistic Localization for Mobile Ad-Hoc and Wireless Sensor Networks

Arne Bochem, Yali Yuan, D. Hogrefe
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引用次数: 6

Abstract

Localization is a highly important topic in wireless sensor networks as well as in many Internet of Things applications. Many current localization algorithms are based on the Sequential Monte Carlo Localization method (MCL), the accuracy of which is bounded by the radio range. High computational complexity in the sampling step is another issue of these approaches. We present Tri-MCL which significantly improves on the accuracy of the Monte Carlo Localization algorithm. To do this, we leverage three different distance measurement algorithms based on range-free approaches. Using these, we estimate the distances between unknown nodes and anchor nodes to perform more fine-grained filtering of the particles as well as for weighting the particles in the final estimation step of the algorithm. Simulation results illustrate that the proposed algorithm achieves better accuracy than the MCL and SA-MCL algorithms. Furthermore, it also exhibits high efficiency in the sampling step.
三mcl:移动Ad-Hoc和无线传感器网络的协同定位
在无线传感器网络以及许多物联网应用中,定位是一个非常重要的话题。目前许多定位算法都是基于顺序蒙特卡罗定位方法(MCL),其精度受无线电距离的限制。采样步骤的高计算复杂度是这些方法的另一个问题。我们提出的Tri-MCL显著提高了蒙特卡罗定位算法的精度。为此,我们利用了三种基于无距离方法的不同距离测量算法。利用这些,我们估计未知节点和锚节点之间的距离,对粒子进行更细粒度的过滤,并在算法的最后估计步骤中对粒子进行加权。仿真结果表明,该算法比MCL和SA-MCL算法具有更好的精度。此外,它在采样步骤中也表现出很高的效率。
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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