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Greedy Successive Anchorization for Localizing Machine Type Communication Devices

机译:贪婪的连续锚定用于定位机器类型的通信设备

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摘要

Localization of machine type communication (MTC) devices is essential for various types of location-based applications. In this paper, we investigate a distributed localization problem in noisy networks, where an estimated position of blind MTC machines (BMs) is obtained by using noisy measurements of distance between BM and anchor machines (AMs). We allow positioned BMs also to work as anchors that are referred to as virtual AMs (VAMs) in this paper. VAMs usually have greater position errors than (original) AMs, and, if used as anchors, the error propagates through the whole network. However, VAMs are necessary, especially when many BMs are distributed in a large area with an insufficient number of AMs. To overcome the error propagation, we propose a greedy successive anchorization process (GSAP). A round of GSAP consists of consecutive two steps. In the first step, a greedy selection of anchors among AMs and VAMs is done by which GSAP considers only those three anchors that possibly pertain to the localization accuracy. In the second step, each BM that can select three anchors in its neighbor determines its location with a proposed distributed localization algorithm. Iterative rounds of GSAP terminate when every BM in the network finds its location. To examine the performance of GSAP, a root mean square error (RMSE) metric is used and the corresponding Cramér–Rao lower bound (CRLB) is provided. By numerical investigation, RMSE performance of GSAP is shown to be better than existing localization methods with and without an anchor selection method and mostly close to the CRLB.
机译:对于各种类型的基于位置的应用程序,机器类型通信(MTC)设备的本地化至关重要。在本文中,我们研究了噪声网络中的分布式定位问题,其中通过使用BM与锚机(AM)之间距离的噪声测量来获得盲MTC机器(BM)的估计位置。我们允许定位的BM也充当锚,在本文中称为虚拟AM(VAM)。 VAM通常比(原始)AM具有更大的位置误差,并且,如果用作锚点,则误差会在整个网络中传播。但是,VAM是必需的,尤其是当许多BM分布在AM数量不足的大区域中时。为了克服错误传播,我们提出了一个贪婪的连续锚定过程(GSAP)。一轮GSAP包括连续的两个步骤。第一步,对AM和VAM之间的锚进行贪婪的选择,GSAP仅考虑可能与定位精度有关的那三个锚。在第二步中,可以在邻居中选择三个锚点的每个BM通过提议的分布式定位算法确定其位置。当网络中的每个BM找到其位置时,GSAP的迭代回合就会终止。为了检查GSAP的性能,使用了均方根误差(RMSE)度量标准,并提供了相应的Cramér-Rao下限(CRLB)。通过数值研究,表明GSAP的RMSE性能要优于现有的使用和不使用锚点选择方法的定位方法,并且大多接近CRLB。

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