一种改进的WSN节点无线定位锚点选择策略

H. Ahmadi, F. Viani, A. Polo, R. Bouallègue
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引用次数: 15

摘要

基于接收信号强度指示器的室内定位方法在文献中被广泛使用,因为不需要额外的硬件来获取数据。本文提出了一种分类与回归相结合的定位算法,以提高基于回归树的定位精度。所提出的方法是基于在训练集生成和测试阶段选择最接近目标的三个锚点。使用在办公室获得的真实测量来评估性能。实验结果表明,与标准回归树定位算法相比,锚点选择过程提供了更高的精度。
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An improved anchor selection strategy for wireless localization of WSN nodes
Indoor localization methods based on the received signal strength indicator are widely used in the literature since no additional hardware is required for data acquisition. In this paper, a novel localization algorithm which combines both classification and regression methods is proposed to enhance the localization accuracy of previous methods based on regression tree. The proposed approach is based on the selection of the three anchors nearest to the target for the generation of the training set and during the testing phase. The performances are evaluated using real measurements acquired in office rooms. The experimental results show that the anchor selection procedure provides an increased accuracy if compared to the standard regression tree localization algorithm.
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