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Estimation of the Path-Loss Exponent by Bayesian Filtering Method

机译:贝叶斯滤波方法估算路径损失指数

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摘要

Regarding wireless sensor network parameter estimation of the propagation model is a most important issue. Variations of the received signal strength indicator (RSSI) parameter are a fundamental problem of a system based on signal strength. In the present paper, we propose an algorithm based on Bayesian filtering techniques for estimating the path-loss exponent of the log-normal shadowing propagation model for outdoor RSSI measurements. Furthermore, in a series of experiments, we will demonstrate the usefulness of the particle filter for estimating the RSSI data. The stability of this algorithm and the differences in determined path-loss exponent for both method were also analysed. The proposed method of dynamic estimation results in significant improvements of the accuracy of RSSI values when compared with the experimental measurements. It should be emphasised that the path-loss exponent mainly depends on the RSSI data. Our results also indicate that increasing the number of inserted particles does not significantly raise the quality of the estimated parameters.
机译:关于传播模型的无线传感器网络参数估计是最重要的问题。接收信号强度指示符(RSSI)参数的变型是基于信号强度的系统的基本问题。在本文中,我们提出了一种基于贝叶斯滤波技术的算法,用于估计用于室外RSSI测量的日志普通阴影传播模型的路径损耗指数。此外,在一系列实验中,我们将展示粒子滤波器用于估计RSSI数据的有用性。还分析了该算法的稳定性及其两种方法的确定路径损耗指数的差异。与实验测量相比,所提出的动态估计方法导致RSSI值的准确性的显着改进。应该强调的是,路径损失指数主要取决于RSSI数据。我们的结果还表明,增加插入的粒子数量不会显着提高估计参数的质量。

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