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Geometric Location Techniques With SSSD in Wireless Cellular Networks: A Comparative Performance Study

机译:使用SSSD在无线蜂窝网络中的几何定位技术:比较绩效研究

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Geometric location techniques involve using either distance or distance difference, which often results in a nonlinear least square (NLLS) estimation. Although many studies to tackle the NLLS estimation by iterative algorithm have been proposed, however in a practical environment for both distance and distance difference location techniques, there is no reported work on the achievable performance and still lacks a comparative performance study. Based on the stationary signal-strength-difference (SSSD) measurement data obtained from an experiment in a commercial wireless cellular network, we examine and compare the performance of both distance and distance difference location techniques, using two iterative algorithms, namely, Levenberg-Marquardt algorithm (LMA) and gradient descent algorithm (GDA). Results demonstrate that for both types of location techniques the performance achieved by LMA is significantly better than that achieved by GDA, and for both types of algorithms the performance of distance location technique is better than that of distance difference location technique.
机译:几何定位技术涉及使用距离或距离差异,这通常导致非线性最小二乘(NLL)估计。虽然已经提出了许多通过迭代算法解决NLLS估计的研究,但是在距离和距离差异位置技术的实际环境中,没有报告的可实现性能,并且仍然缺乏比较表现研究。基于从商业无线蜂窝网络的实验中获得的静止信号强度差(SSSD)测量数据,我们使用两个迭代算法,即Levenberg-Marquardt检查和比较距离和距离差分位置技术的性能。算法(LMA)和梯度下降算法(GDA)。结果表明,对于两种类型的位置技术,LMA实现的性能明显优于GDA实现的性能,并且对于两种类型的算法,距离位置技术的性能优于距离差定位技术的性能。

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