Buildings affect mobile patterns: developing a new urban mobility model

Zimu Zheng, Feng Wang, Dan Wang, L. Zhang
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引用次数: 12

Abstract

Urban Mobility Models (UMMs) are fundamental tools for estimating the population in urban sites and their spatial movements over time. They have great value for such applications as managing the resources of cellular networks, predicting traffic congestion, and city planning. Most existing UMMs were developed primarily in 2D. However, we argue that people's movements and living patterns involve 3D space, i.e., buildings, which can heavily affect the accuracy of UMMs. In this paper, we for the first time conduct a comprehensive study on the impacts of buildings on human movements, and the effect on UMMs. In particular, we start from an extensive trace analysis of two different real-world datasets. Our key observation is that human patterns of movement among urban sites are affected by buildings, with buildings being able to "temporarily hold" human mobility. We innovatively capture this property by extending Markov processes, which have been widely used in developing UMMs, with semi-absorbing states. We then develop a Semi-absorbing Urban Mobility model (SUM) and theoretically prove its properties to capture the intrinsic impacts of buildings with an analysis of SUM on its difference from that of previous UMMs. Our evaluation also demonstrates that, as a basis for supporting mobile applications in an intracity and hourly scale, the SUM is far superior to previous UMMs. Our real-world case study on cellular network resource allocations further reveals the effectiveness of our SUM model. We show that the performance of the resource allocation scheme in a cellular network substantially improves by using SUM, with a reduction in the packet loss probability of 3.19 times.
建筑影响移动模式:发展新的城市移动模式
城市流动模型(UMMs)是估算城市人口及其随时间的空间运动的基本工具。它们对于管理蜂窝网络资源、预测交通拥堵和城市规划等应用具有很大的价值。大多数现有的umm主要是在2D中开发的。然而,我们认为人们的运动和生活模式涉及到3D空间,即建筑物,这可能会严重影响umm的准确性。在本文中,我们首次全面研究了建筑物对人类运动的影响,以及对umm的影响。特别是,我们从两个不同的现实世界数据集的广泛跟踪分析开始。我们的主要观察是,人类在城市场所的活动模式受到建筑物的影响,而建筑物能够“暂时保持”人类的流动性。我们通过扩展马尔可夫过程创新地捕获了这一特性,马尔可夫过程已广泛用于开发具有半吸收状态的umm。然后,我们开发了一个半吸收型城市交通模型(SUM),并从理论上证明了它的特性,以捕捉建筑物的内在影响,并分析了SUM与以前的umm的区别。我们的评估还表明,作为支持城市和小时尺度移动应用程序的基础,SUM远远优于以前的umm。我们对蜂窝网络资源分配的实际案例研究进一步揭示了我们的SUM模型的有效性。我们表明,通过使用SUM,蜂窝网络中资源分配方案的性能得到了显着提高,丢包概率降低了3.19倍。
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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