基于椭圆传播模型的蜂窝无线网络移动位置估计数据融合方法

Junyang Zhou, J. Ng
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引用次数: 5

摘要

移动位置估计是无线通信领域中备受关注的问题。本文提出了一种新的估计方法——统计估计,它考虑了所有的信息,以减少信号波动和衰落的影响。统计估计是根据接收到的信号强度(RSSs)及其相应基站(BSs)的位置信息,然后估计移动基站(MS)的位置。统计估计利用所有的信息对MS的位置进行估计,可以提供准确的估计,减少信号波动和衰落的影响。它是一种处理信号波动和衰落问题的数据融合方法。我们用从香港收集的真实数据来测试我们的方法。实验结果表明,该方法在不同地形下的定位效果优于其他现有的位置估计算法。基于几何算法和迭代算法的改进率分别为18.87%和4.46%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Data Fusion Approach to Mobile Location Estimation based on Ellipse Propagation Model within a Cellular Radio Network
Mobile location estimation is drawing considerable attention in the field of wireless communications. In this paper, we present a new estimator which considers all the information to reduce the effect of signal fluctuation and fading-the statistical estimation. The Statistical Estimation is derived from the information of the received signal strengths (RSSs) and the locations of their corresponding base stations (BSs) and then estimates the location of the mobile station (MS). The statistical estimation uses all the information to provide the estimation of the location of the MS, which can provide an accurate estimation and reduce the effect of signal fluctuation and fading. It is a data fusion method to handle the signal fluctuation and fading problem. We test our approach with real data collected from Hong Kong. Experimental results show that our approach outperforms other existing location estimation algorithms among different kinds of terrains. The improvements based on the geometric algorithm with EPM and the iterative algorithm with EPM are 18.87% and 4.46%, respectively.
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