基于普适传感器网络的城市人口实时监测

Gautam Thakur, P. Kuruganti, M. Bobrek, S. Killough, J. Nutaro, Cheng Liu, W. Lu
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引用次数: 3

摘要

据估计,全球50%的人口居住在仅占地球表面0.4%的城市地区。了解城市活动包括监测城市环境中的人口密度及其随时间的变化。目前,对种群密度进行非侵入性实时监测的机制有限。移动电话在城市地区的普遍使用就是这样一种机制,它提供了一个独特的机会,可以通过监测几乎实时的移动模式来研究人口密度。像AT&T这样的手机运营商通过他们的手机信号塔收集这些数据;然而,这些数据是专有的,由于隐私问题,运营商限制访问。在这项工作中,我们提出了一个系统,该系统可以被动地感知人口密度,并通过使用每部手机的周期性信标监测蜂窝频段的功率谱密度来推断城市地区的移动模式,而不知道他们位于谁和哪里。正在开发一种无线传感器网络平台,用于执行频谱监测和环境测量。开发了算法来生成实时的高分辨率人口估计。
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Real-time urban population monitoring using pervasive sensor network
It is estimated that 50% of the global population lives in urban areas occupying just 0.4% of the Earth's surface. Understanding urban activity constitutes monitoring population density and its changes over time, in urban environments. Currently, there are limited mechanisms to non-intrusively monitor population density in real-time. The pervasive use of cellular phones in urban areas is one such mechanism that provides a unique opportunity to study population density by monitoring the mobility patterns in near real-time. Cellular carriers such as AT&T harvest such data through their cell towers; however, this data is proprietary and the carriers restrict access, due to privacy concerns. In this work, we propose a system that passively senses the population density and infers mobility patterns in an urban area by monitoring power spectral density in cellular frequency bands using periodic beacons from each cellphone without knowing who and where they are located. A wireless sensor network platform is being developed to perform spectral monitoring along with environmental measurements. Algorithms are developed to generate real-time fine-resolution population estimates.
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