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Spatio-Temporal Coverage Enhancement in Drive-By Sensing Through Utility-Aware Mobile Agent Selection

机译:通过使用实用程序感知移动代理选择来通过传感的时空覆盖增强

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In recent years, the drive-by sensing paradigm has become increasingly popular for cost-effective monitoring of urban areas. Drive-by sensing is a form of crowdsensing wherein sensor-equipped vehicles (aka, mobile agents) are the primary data gathering agents. Enhancing the efficacy of drive-by sensing poses many challenges, an important one of which is to select non-dedicated mobile agents on which a limited number of sensors are to be mounted. This problem, which we refer to as the mobile-agent selection problem, has a significant impact on the spatio-temporal coverage of the drive-by sensing platforms and the resultant datasets. The challenge here is to achieve maximum spatiotemporal coverage while taking the relative importance levels of geographical areas into account. In this paper, we address this problem in the context of the SCOUTS project [1], the goal of which is to map and analyze the urban heat island phenomenon accurately. Our work makes several significant technical contributions. First, we delineate a model for representing the mobile agent selection problem. This model takes into account the trajectories of the vehicles (public transportation buses in our case) and the relative importance of the urban regions, and formulates it as an optimization problem. Second, we provide an algorithm based on the utility (coverage) values of mobile agents, namely, a hotspot-based algorithm that limits the search space to important sub-regions. Third, we design a highly efficient coverage redundancy minimization algorithm that, at each step, chooses the mobile agent, which provides maximal improvement to the spatio-temporal coverage. This paper reports a series of experiments on a real-world dataset from Athens, GA, USA, to demonstrate the effectiveness of the proposed approaches.
机译:近年来,通过传感范式的传感范式越来越受到城市地区经济高效监测的流行。通过感测驱动是一种众包的形式,其中配备传感器的车辆(AKA,移动代理)是主要数据收集代理。通过感测增强驱动的功效造成许多挑战,其中一个重要的是选择要安装有限数量的传感器的非专用移动代理。我们称之为移动代理选择问题的此问题对驱动器的时空覆盖范围和所得到的数据集具有显着影响。这里的挑战是实现最大的时空覆盖范围,同时考虑到地理区域的相对重要性。在本文中,我们在侦察兵项目[1]的背景下解决了这个问题,其目标是准确地映射和分析城市热岛现象。我们的工作提出了几项重大技术贡献。首先,我们描绘了一种代表移动代理选择问题的模型。该模式考虑到车辆(我们案件中的公共交通公共汽车)的轨迹以及城市地区的相对重要性,并将其作为优化问题。其次,我们提供了一种基于移动代理的实用程序(覆盖范围)值的算法,即基于热点的算法将搜索空间限制为重要的子区域。第三,我们设计了一个高效的覆盖冗余最小化算法,在每个步骤中选择移动代理,这为时空覆盖范围提供了最大的改进。本文在美国雅典乔科的真实数据集中报告了一系列实验,以证明拟议方法的有效性。

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