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A Simple Outlier Data Rejection Algorithm for An RSSI-based ML Location Estimation in Wireless Sensor Networks

机译:用于无线传感器网络中的基于RSSI的ML位置估计的简单异常数据抑制算法

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This paper proposes a simple outlier data rejection algorithm for a received signal strength indicator (RSSI)-based maximum likelihood (ML) location estimation in wireless sensor networks. The RSSI-based ML location method usually requires a pre-determined statistical model on the variation of RSSI in a sensing area. However, when estimating the location of a target, due to several reasons, we often measure the RSSIs which do not follow the statistical model, in other words, which are outlier on the statistical model. As a result, the effect of the outlier RSSI data worsens the estimation accuracy. In order to improve the estimation accuracy, the proposed algorithm intentionally rejects such outlier RSSIs data. From our experiments, we show the proposed algorithm performs better with much less computational complexity than a previously proposed outlier RSSI data rejection algorithm.
机译:本文提出了一种用于在无线传感器网络中获得的接收信号强度指示符(RSSI)的最大似然(RSSI)的简单异常数据抑制算法。基于RSSI的ML位置方法通常需要对传感区域中RSSI的变化进行预先确定的统计模型。但是,在估计目标的位置时,由于几个原因,我们经常测量不遵循统计模型的RSSI,换句话说,这是统计模型的异常值。结果,异常值RSSI数据的效果恶化了估计准确性。为了提高估计精度,所提出的算法故意拒绝此类异常值RSSIS数据。从我们的实验中,我们显示所提出的算法比以前提出的异常rssi数据抑制算法更少的计算复杂性更好地执行更好。

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