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An MEF-Based Localization Algorithm against Outliers in Wireless Sensor Networks

机译:基于MEF的无线传感器网络离群值定位算法

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摘要

Precise localization has attracted considerable interest in Wireless Sensor Networks (WSNs) localization systems. Due to the internal or external disturbance, the existence of the outliers, including both the distance outliers and the anchor outliers, severely decreases the localization accuracy. In order to eliminate both kinds of outliers simultaneously, an outlier detection method is proposed based on the maximum entropy principle and fuzzy set theory. Since not all the outliers can be detected in the detection process, the Maximum Entropy Function (MEF) method is utilized to tolerate the errors and calculate the optimal estimated locations of unknown nodes. Simulation results demonstrate that the proposed localization method remains stable while the outliers vary. Moreover, the localization accuracy is highly improved by wisely rejecting outliers.
机译:精确的定位已经引起了无线传感器网络(WSN)定位系统的极大兴趣。由于内部或外部干扰,离群点(包括距离离群点和锚点离群点)的存在严重降低了定位精度。为了同时消除两种离群值,提出了一种基于最大熵原理和模糊集理论的离群值检测方法。由于在检测过程中无法检测到所有异常值,因此利用最大熵函数(MEF)来容忍错误并计算未知节点的最佳估计位置。仿真结果表明,所提出的定位方法在异常值变化时保持稳定。此外,通过明智地剔除异常值可以极大地提高定位精度。

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