论文标题

通过主动安排探索公交车队的驾驶传感能力

Exploring the drive-by sensing power of bus fleet through active scheduling

论文作者

Zhuang, Dai, Han, Ke

论文摘要

基于车辆的移动传感(又名开车传感)是通过利用公共或私人运输工具的流动性来调查城市环境的重要手段。公交车对于广泛的空间覆盖范围和可靠的操作,在开车时受到了很多关注。现有的研究集中在没有操作干预的一组线路或公共汽车上的传感器分配上,通常将其作为设置覆盖或子集选择问题提出。本文旨在通过允许仪器的公共汽车跨多条线循环以提供最佳的感应结果,从而通过主动调度来提高公交车队的传感能力。我们考虑一个由仪器和普通公共汽车组成的车队,并共同优化传感器分配,总线调度以及内线或互行重新搬迁,以最大化感应质量并最大程度地降低操作成本的目标,同时服务所有时间表。通过对传感实用程序函数进行一般假设,我们将问题提出为基于时间扩展网络的非线性整数程序。遵循线性化技术以有效解决该问题的批量调度算法,该算法有效地解决了该问题,该算法在中国成都的现实案例研究中进行了测试。结果表明,所提出的方案可以将传感目标提高12.0%-20.5%(单线计划)和16.3%-32.1%(多线计划),同时设法将运营成本节省1.0%。重要的是,为了达到相同的感应质量,我们发现,在考虑主动巴士计划时,传感器投资可以减少33%以上。提出了全面的比较和灵敏度分析,以产生管理洞察力和实践建议。

Vehicle-based mobile sensing (a.k.a drive-by sensing) is an important means of surveying urban environment by leveraging the mobility of public or private transport vehicles. Buses, for their extensive spatial coverage and reliable operations, have received much attention in drive-by sensing. Existing studies have focused on the assignment of sensors to a set of lines or buses with no operational intervention, which is typically formulated as set covering or subset selection problems. This paper aims to boost the sensing power of bus fleets through active scheduling, by allowing instrumented buses to circulate across multiple lines to deliver optimal sensing outcome. We consider a fleet consisting of instrumented and normal buses, and jointly optimize sensor assignment, bus dispatch, and intra- or inter-line relocations, with the objectives of maximizing sensing quality and minimizing operational costs, while serving all timetabled trips. By making general assumptions on the sensing utility function, we formulate the problem as a nonlinear integer program based on a time-expanded network. A batch scheduling algorithm is developed following linearization techniques to solve the problem efficiently, which is tested in a real-world case study in Chengdu, China. The results show that the proposed scheme can improve the sensing objective by 12.0%-20.5% (single-line scheduling) and 16.3%-32.1% (multi-line scheduling), respectively, while managing to save operational costs by 1.0%. Importantly, to achieve the same level of sensing quality, we found that the sensor investment can be reduced by over 33% when considering active bus scheduling. Comprehensive comparative and sensitivity analyses are presented to generate managerial insights and recommendations for practice.

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