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Efficient RSS-based collaborative localisation in wireless sensor networks

机译:无线传感器网络中基于RSS的高效协作定位

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摘要

This paper presents a new collaborative location estimation method for wireless sensor networks (WSN), referred to as an iterative tree search algorithm (I-TSA). The proposed method is based on the grid search least square estimator (LSE), which provides efficient estimation in the presence of noisy received signal strength (RSS) range measurements. The complexity analysis of the I-TSA algorithm showed that the computational requirement by each unknown-location sensor node scales linearly with the number of its neighbouring nodes, and that only a small communication overhead is required until its location estimate converges. This, in contrast to centralised methods, such as maximum likelihood estimator (MLE) and multidimensional scaling (MDS), provides a feasible solution for distributed computation in large scale WSN. Furthermore, the performance of I-TSA, is evaluated with reference to the Cramer-Rao bound (CRB) and compared with MLE, MDS and MDS-MLE methods. The results showed that I-TSA achieves lower standard deviations and biases for various simulation scenarios.
机译:本文提出了一种新的无线传感器网络协作位置估计方法(WSN),称为迭代树搜索算法(I-TSA)。所提出的方法基于网格搜索最小二乘估计器(LSE),该方法在存在噪声的接收信号强度(RSS)范围测量值的情况下提供有效的估计。 I-TSA算法的复杂度分析表明,每个未知位置传感器节点的计算要求均与其相邻节点的数量成线性比例关系,并且仅需要很小的通信开销,直到其位置估计收敛为止。与集中式方法(例如最大似然估计器(MLE)和多维缩放(MDS))相比,这为大规模WSN中的分布式计算提供了可行的解决方案。此外,参考Cramer-Rao结合(CRB)评估了I-TSA的性能,并与MLE,MDS和MDS-MLE方法进行了比较。结果表明,I-TSA在各种模拟情况下均实现了较低的标准偏差和偏差。

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