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Mobile location estimation using density-based clustering technique for NLoS environments

机译:在NLoS环境中使用基于密度的聚类技术进行移动位置估计

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Mobile location technologies have drawn much attention to cope with the mass demands of wireless communication services. Although clustering spatial data is viewed as an effective way to access the objects located in a physical space, little has been done in estimating mobile location. In wireless communication, one of the main problems with accurate location is nonline of sight (NLoS) propagation. To solve the problem, we present a new location algorithm with clustering technique by utilizing the geometrical feature of cell layout, time of arrival range measurements, and three base stations. The mobile location is estimated by solving the optimal solution of the objective function based on the high density cluster. Furthermore, our proposed algorithm only needs three range measurements and does not distinguish between NLoS and LoS environments. Simulations study was conducted to evaluate the performance of the algorithm for different NLoS error distributions and various upper bound of NLoS error. The results of our experiments demonstrate that the proposed algorithm is significantly more effective in location accuracy than range scaling algorithm, linear lines of position algorithm, and Taylor series algorithm, and also satisfies the location accuracy demand of E-911.
机译:移动定位技术已经引起了人们的广泛关注,以应对无线通信服务的大量需求。尽管聚类空间数据被视为访问位于物理空间中的对象的有效方法,但是在估计移动位置方面却做得很少。在无线通信中,准确定位的主要问题之一是视线(NLoS)传播。为了解决这个问题,我们利用小区布局的几何特征,到达时间测量的时间和三个基站,提出了一种采用聚类技术的新定位算法。通过基于高密度聚类求解目标函数的最优解来估计移动位置。此外,我们提出的算法仅需要进行三个范围的测量,而无需区分NLoS和LoS环境。进行了仿真研究,以评估该算法对不同NLoS误差分布和各种NLoS误差上限的性能。实验结果表明,与范围缩放算法,直线位置算法和泰勒级数算法相比,该算法在定位精度上有明显的提高,并且满足了E-911的定位精度要求。

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