Oscillation Resolution for Massive Cell Phone Traffic Data

Ling Qi, Yuanyuan Qiao, F. Abdesslem, Zhanyu Ma, Jie Yang
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引用次数: 18

Abstract

Cellular towers capture logs of mobile subscribers whenever their devices connect to the network. When the logs show data traffic at a cell tower generated by a device, it reveals that this device is close to the tower. The logs can then be used to trace the locations of mobile subscribers for different applications, such as studying customer behaviour, improving location-based services, or helping urban planning. However, the logs often suffer from an oscillation phenomenon. Oscillations may happen when a device, even when not moving, does not only connect to the nearest cell tower, but is instead unpredictably switching between multiple cell towers because of random noise, load balancing, or simply dynamic changes in signal strength. Detecting and removing oscillations are a challenge when analyzing location data collected from the cellular network. In this paper, we propose an algorithm called SOL (Stable, Oscillation, Leap periods) aimed at discovering and reducing oscillations in the collected logs. We apply our algorithm on real datasets which contain about 18.9~TB of traffic logs generated by more than 3~million mobile subscribers covering about 21000 cell towers and collected during 27~days from both GSM and UMTS networks in northern China. Experimental results demonstrate the ability and effectiveness of SOL to reduce oscillations in cellular network logs.
海量手机流量数据的振荡分辨率
每当移动用户的设备连接到网络时,蜂窝发射塔就会捕获他们的日志。当日志显示某个设备生成的蜂窝塔上的数据流量时,就表明该设备靠近蜂窝塔。然后,这些日志可以用于追踪不同应用的移动用户的位置,例如研究客户行为,改进基于位置的服务,或帮助城市规划。然而,原木经常遭受振荡现象。当一个设备,即使没有移动,也不只是连接到最近的蜂窝塔,而是由于随机噪声、负载平衡或仅仅是信号强度的动态变化而在多个蜂窝塔之间不可预测地切换时,就可能发生振荡。在分析从蜂窝网络收集的位置数据时,检测和消除振荡是一个挑战。在本文中,我们提出了一种称为SOL(稳定,振荡,跳跃周期)的算法,旨在发现和减少收集日志中的振荡。我们将我们的算法应用于真实数据集上,这些数据集包含约18.9~TB的流量日志,这些数据集由中国北方GSM和UMTS网络在27~天内收集的,覆盖约21000个蜂窝塔,超过300万移动用户产生。实验结果证明了该方法在减少蜂窝网络日志振荡方面的能力和有效性。
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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