Oscillation Resolution for Mobile Phone Cellular Tower Data to Enable Mobility Modelling

Wei Wu, Yue Wang, J. Gomes, D. Anh, S. Antonatos, Mingqiang Xue, Peng Yang, Ghim-Eng Yap, Xiaoli Li, S. Krishnaswamy, James Decraene, A. Nash
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引用次数: 44

Abstract

One major problem of using location data collected from mobile cellular networks for mobility modelling is the oscillation phenomenon. An oscillation occurs when a mobile phone intermittently switches between cell towers instead of connecting to the nearest cell tower. For the purpose of mobility modeling, the location data needs to be cleansed to approximate the mobile device's actual location. However, this constitutes a challenge because the mobile device's true location is not known. In this paper, we study the oscillation resolution problem. We propose an algorithm framework called DECRE (Detect, Expand, Check, Remove) to detect and remove oscillation logs. To make informed decisions DECRE includes four steps: Detect, to identify log sequences that may contain oscillation using a few heuristics based on the concepts of stable period and moving at impossible speed, Expand, to look before and after suspicious records to gain more information, Check, to check whether a cell tower is observed repeatedly (which is a strong indication of oscillation), and Remove, resolving oscillation by selecting a cell tower to approximate the mobile device's actual location. Our experimental results on travel diaries show that our oscillation resolution approach is able to remove records that are far from mobile device's ground-truth locations, improve the quality of the location data, and performs better than an existing method. Our performance study on large scale cell tower data shows that the MapReduce implementation of our approach is able to process 1 Terabyte of cell tower data in five hours using a small cluster.
移动电话蜂窝塔数据的振荡分辨率以实现移动建模
使用从移动蜂窝网络收集的位置数据进行移动性建模的一个主要问题是振荡现象。当手机间歇性地在信号塔之间切换,而不是连接到最近的信号塔时,就会发生振荡。为了进行移动性建模,需要清理位置数据以接近移动设备的实际位置。然而,这构成了一个挑战,因为移动设备的真实位置是未知的。本文主要研究振动的分辨问题。我们提出了一个名为DECRE (Detect, Expand, Check, Remove)的算法框架来检测和删除振荡日志。为了做出明智的决定,DECRE包括四个步骤:检测,使用基于稳定周期和以不可能的速度移动的概念的一些启发式方法来识别可能包含振荡的日志序列;扩展,查看可疑记录的前后以获得更多信息;检查,检查是否重复观察到一个信号塔(这是一个强烈的振荡指示);删除,通过选择一个信号塔来近似移动设备的实际位置来解决振荡。我们在旅行日记上的实验结果表明,我们的振荡分辨率方法能够去除远离移动设备真实位置的记录,提高位置数据的质量,并且比现有方法性能更好。我们对大规模蜂窝塔数据的性能研究表明,我们的方法的MapReduce实现能够在5小时内使用小型集群处理1tb的蜂窝塔数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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