基于普适感知的城市动态研究:交通密度与空气污染的实验研究

Xiaoxiao Yu , Wenzhu Zhang , Lin Zhang , Victor O.K. Li , Jian Yuan , Ilsun You
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引用次数: 16

摘要

现代城市区域受到众多相互关联的人为因素和自然因素的影响,呈现出极其复杂的非线性和动态特性。作为连接物理世界和网络空间的桥梁,无处不在的传感技术使人们对城市环境的深入了解成为可能。实现它有两个相互关联的技术层面,即传感和计算。本文分别介绍了各技术层面的城市动力学研究进展。首先,我们设计并实现了一个基于汽车作为移动代理的原型城市传感系统,进行信息丰富的数据采集。然后,我们提出了一种基于半监督流形学习和正则化优化的时空纠缠分析(spatial-temporal - entangled Analysis, STEA)算法,从不完整的传感数据中提取语义信息,旨在通过不完整的传感数据更好地理解复杂物理过程的时空相关性以及人类活动与环境变化之间的相关性。最后,我们评估了STEA在实际城市传感中的应用。具体来说,该原型用于收集北京的交通和空气污染数据,并使用这些真实世界的数据集来评估STEA的有效性。所获得的结果非常有希望,显示了交通密度与空气污染之间的隐含相关性,表明了该技术在城市地区环境研究中的潜力。
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Understanding urban dynamics based on pervasive sensing: An experimental study on traffic density and air pollution

Modern urban areas are influenced by numerous inter-related human and natural factors and present extremely complicated non-linear and dynamic properties. As a bridge between the physical world and the cyber space, pervasive sensing technologies make it possible to have a deep understanding of urban environments. There are two inter-related technical planes to achieve it, namely, sensing and computing. In this paper, we introduce our work progress on the urban dynamics study for each technical plane, respectively. First, we design and implement a prototype urban sensing system based on automobiles as mobile agents, performing information-rich data collection. Then, we propose a Spatial–Temporal-Entangled Analysis (STEA) algorithm based on semi-supervised manifold learning and the regularized optimization to extract semantic information from incomplete sensing data, aiming for better understanding of the spatial–temporal correlation of a complex physical process and the correlation between human activities and environmental changes via incomplete sensing data. Finally, we evaluate STEA in a real urban sensing application. Specifically, the proposed prototype is used to collect traffic and air pollution data in Beijing, and such real-world datasets are used to evaluate the effectiveness of STEA. The results obtained are very promising and show an implicit correlation between the traffic density and the air pollution, demonstrating the potential of this technique in environmental studies for urban areas.

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Mathematical and Computer Modelling
Mathematical and Computer Modelling 数学-计算机:跨学科应用
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