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C-TOL: Convex triangulation for optimal node localization with weighted uncertainties

机译:C-tol:凸三角测量,用于加权不确定性的最佳节点本地化

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There is always a need to reduce localization error in any wireless sensor network (WSN), and our aim is to observe the impact of localization uncertainty on network awareness. When nodes are deployed in a 2D plane and their l(2)-norm ranged triangulations are found, usually the unweighted localization uncertainty values become absurdly large with large triangulation cases. Moreover, there is no regard for the disparity between the lengths of any two links on the localization uncertainty. The upper bound of uncertainty keeps on rising with formation of asymmetric node triangulations with longer internodal distances and sharper vertices. To address this gap, a convex combination weighted approach (C-TOL, standing for Convex-Triangulation for Optimal node Localization) for solving the localization uncertainty problem is described here. The advantage of the proposed method is shown with the help of rigorous mathematical analysis of weighted uncertainty behaviour. The relationship of sensor node symmetry with triangulation uncertainty is formulated algebraically by considering both symmetric as well as asymmetric triangulations. Cramer Rao bound is derived to justify estimation under triangulation uncertainty. This approach paves the way for the WSN to prioritize different kinds of triangulations. Numerical results reveal that the weighted method prefers triangulations with more symmetry; hence it consistently achieves significantly lower values of mean and standard deviations than the existing unweighted localization technique, especially for densely connected sensor networks. Moreover, the proposed method shows robust localization performance for sparsely deployed networks as well, when compared to recent methods in literature. (C) 2021 Elsevier B.V. All rights reserved.
机译:总是需要减少任何无线传感器网络(WSN)中的本地化误差,我们的目标是观察本地化不确定性对网络意识的影响。当节点部署在2D平面中时,找到它们的L(2)-norm范围的三角形,通常在大型三角测量案件中,未加权的本地化不确定值变得荒谬大。此外,在本地化不确定性的任何两个链路的长度之间不可能考虑任何两个链路之间的差异。不确定度的上限保持上升,形成不对称节点三角形,具有更长的距离距离和锐利的顶点。为了解决该间隙,这里描述了用于解决本地化不确定性问题的凸组合加权方法(站立用于最佳节点定位的凸三角测量的C-TOL)。借助于对加权不确定性行为的严格数学分析,示出了所提出的方法的优点。通过考虑对称的对称和非对称三角结构,传感器节点对称性与三角测量不确定性的关系。克莱默RAO绑定是为了使三角测量不确定性下的估计证明。这种方法为WSN提供了优先考虑不同种类的三角形结构的方式。数值结果表明,加权方法更喜欢具有更多对称性的三角形;因此,它一直实现比现有的未加权定位技术的平均值和标准偏差值明显较低,特别是对于密集连接的传感器网络。此外,与文献中最近的方法相比,该方法也为稀疏部署网络的稳健本地化性能。 (c)2021 elestvier b.v.保留所有权利。

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