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Cluster-Based RF Fingerprint Positioning Using LTE and WLAN Signal Strengths

机译:利用LTE和WLAN信号强度的基于集群的RF指纹定位

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Wireless Local Area Network (WLAN) positioning has become a popular localization system due to its low-cost installation and widespread availability of WLAN access points. Traditional grid-based radio frequency (RF) fingerprinting (GRFF) suffers from two drawbacks. First it requires costly and non-efficient data collection and updating procedure; secondly the method goes through time-consuming data pre-processing before it outputs user position. This paper proposes Cluster-based RF Fingerprinting (CRFF) to overcome these limitations by using modified Minimization of Drive Tests data which can be autonomously collected by cellular operators from their subscribers. The effect of environmental changes and device variation on positioning accuracy has been carried out. Experimental results show that even under these variations CRFF can improve positioning accuracy by 15.46 and 22.30% in 95 percentile of positioning error as compared to that of GRFF and K-nearest neighbour methods respectively.
机译:由于其低成本的安装和WLAN接入点的广泛可用性,无线局域网(WLAN)定位已成为一种流行的本地化系统。传统的基于网格的射频(RF)指纹识别(GRFF)具有两个缺点。首先,它需要昂贵且效率低下的数据收集和更新程序;其次,该方法在输出用户位置之前要经过耗时的数据预处理。本文提出了基于群集的RF指纹(CRFF),以通过使用修改后的最小化路测数据来克服这些局限,这些数据可由蜂窝运营商从其订户中自动收集。已经进行了环境变化和设备变化对定位精度的影响。实验结果表明,与GRFF和K近邻法相比,即使在这些变化下,CRFF仍可以在95%的定位误差中将定位精度提高15.46和22.30%。

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