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Skew log-normal channel model for indoor cooperative localization

机译:室内协同定位的偏斜对数正态通道模型

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The performance of cooperative localization using received signal strength (RSS) benefits from accurate radio channel modeling. While log-normal shadowing is commonly used to model the relationship between RSS and range, the RSS error distribution in indoor environments has been observed to be neither normal nor symmetric. In this paper, we propose a skew log-normal channel model, which includes the standard log-normal model as a special case. We further propose an algorithm for using this model for RSS based cooperative localization. The algorithm was evaluated using data from an electro-magnetic simulation of an aircraft cabin, and was shown to generate more accurate node locations compared to the use of log-normal shadowing in the same localization algorithm.
机译:使用接收信号强度(RSS)进行协作定位的性能得益于准确的无线电信道建模。虽然通常使用对数正态阴影来建模RSS和范围之间的关系,但已观察到室内环境中的RSS错误分布既非正态也不对称。在本文中,我们提出了一种偏斜对数正态通道模型,其中包括标准对数正态模型。我们进一步提出了一种使用该模型进行基于RSS的协作定位的算法。使用来自飞机机舱电磁仿真的数据对算法进行了评估,与在同一定位算法中使用对数正态阴影相比,该算法显示出更准确的节点位置。

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