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Indoor WSN Region Localization Based on Time Window Statistics

机译:基于时间窗统计的室内无线传感器网络区域定位

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In recent years, indoor localization is getting more and more attention. The uncertainty of data commonly exists due to the inaccuracy of measurement instrument and the irregularity (multipath, diffraction and obstacle) of wireless signal transmission model in indoor environment. This uncertainty will affect positioning precision. In order to solve such issue, a distributed localization algorithm RLTWS (Region Localization Based on Time Window Statistics) is proposed based on pattern matching principles. RLTWS is a two phase algorithm. First, an unknown node can determine its own sub-region by means of RSSI probability distribution Second, its position in sub-region can be calculated more accurately on the basis of optimal reference node. The distributed algorithm can make full use of the calculating capability of nodes and greatly reduce the amount of network traffic. The field experiments show that more stable position information is achieved compared with traditional methods and that outliers are reduced effectively, as long as the time window matches the sub-region accurately.
机译:近年来,室内定位越来越受到关注。由于测量仪器的不准确以及室内环境中无线信号传输模型的不规则性(多径,衍射和障碍),数据的不确定性通常存在。这种不确定性将影响定位精度。为了解决这一问题,提出了一种基于模式匹配原理的分布式定位算法RLTWS(基于时间窗统计的区域定位)。 RLTWS是一种两阶段算法。首先,未知节点可以通过RSSI概率分布确定自己的子区域。其次,可以在最佳参考节点的基础上更准确地计算其在子区域中的位置。分布式算法可以充分利用节点的计算能力,大大减少网络流量。现场实验表明,与传统方法相比,只要时间窗口与子区域精确匹配,位置信息就更加稳定,并且离群值得到有效降低。

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