模组:城市规模的低成本驾驶感应

Dhruv Agarwal, Srinivasan Iyengar, Manohar Swaminathan
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引用次数: 10

摘要

城市地区的环境空气污染严重危害健康,每年有420多万人因此死亡。应对这些挑战的关键一步是在精细的时空粒度上测量空气质量。在几个智能城市项目中,一种很有前途的方法被称为“行车感应”,即利用安装了不同传感器(污染监测器等)的车辆,以较低的成本提供所需的时空覆盖。然而,在城市范围内部署驾驶感应网络,以从大型车队中选择最佳车辆,仍未得到探索。在本文中,我们提出了Modulo——一个通过考虑诸如时空覆盖、预算约束等各个方面来引导驱动式传感部署的系统。Modulo非常适合满足独特的部署约束,例如与其他传感器的搭配(需要用于气体和PM传感器校准)等。我们将Modulo与现实世界出租车和公交车数据集上的两种基线算法进行比较。当车队由出租车和固定路线车辆(如公共交通巴士)组成时,Modulo的表现明显优于基线。最后,我们提出了一个现实世界的案例研究,使用模量来选择用于空气污染传感应用的车辆。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modulo: Drive-by Sensing at City-scale on the Cheap
Ambient air pollution in urban areas is a significant health hazard, with over 4.2 million deaths annually attributed to it. A crucial step in tackling these challenge is to measure air quality at a fine spatiotemporal granularity. A promising approach for several smart city projects, called drive-by sensing, is to leverage vehicles retrofitted with different sensors (pollution monitors, etc.) that can provide the desired spatiotemporal coverage at a fraction of the cost. However, deploying a drive-by sensing network at a city-scale to optimally select vehicles from a large fleet is still unexplored. In this paper, we propose Modulo -- a system to bootstrap drive-by sensing deployment by taking into consideration a variety of aspects such as spatiotemporal coverage, budget constraints. Modulo is well-suited to satisfy unique deployment constraints such as colocations with other sensors (needed for gas and PM sensor calibration), etc. We compare Modulo with two baseline algorithms on real-world taxi and bus datasets. Modulo significantly outperforms the baselines when a fleet comprises of both taxis and fixed-route vehicles such as public transport buses. Finally, we present a real-world case study that uses Modulo to select vehicles for an air pollution sensing application.
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