Vehicle volume serves as a critical metric and the fundamental basis for traffic signal control, transportation project prioritization, road maintenance plans and more. Traditional methods of quantifying vehicle volume rely on manual counting, video cameras, and loop detectors at a limited number of locations. These efforts require significant labor and cost for expansions. Researchers and private sector companies have also explored alternative solutions such as probe vehicle data, while still suffering from a low penetration rate. In recent years, along with the technological advancement in mobile sensors and mobile networks, Mobile Device Location Data (MDLD) have been growing dramatically in terms of the spatiotemporal coverage of the population and its mobility. This paper presents a big-data driven framework that can ingest terabytes of MDLD and estimate vehicle volume at a larger geographical area with a larger sample size. The proposed framework first employs a series of cloud-based computational algorithms to extract multimodal trajectories and trip rosters. A scalable map matching and routing algorithm is then applied to snap and route vehicle trajectories to the roadway network. The observed vehicle counts on each roadway segment are weighted and calibrated against ground truth control totals, i.e., Annual Vehicle-Miles of Travel (AVMT), and Annual Average Daily Traffic (AADT). The proposed framework is implemented on the all-street network in the state of Maryland using MDLD for the entire year of 2019. Results indicate that our proposed framework produces reliable vehicle volume estimates and also demonstrate its transferability and the generalization ability.
翻译:车辆数量是交通信号控制、运输项目优先排序、道路维护计划等重要衡量标准,也是交通信号控制、运输项目优先排序、道路维护计划的基本基础。对车辆数量进行量化的传统方法依靠数量有限的地点的人工计数、录像摄像机和环形探测器。这些努力需要大量人力,而且需要大量扩充费用。研究人员和私营部门公司也探索了其他解决办法,如车辆数据探测,同时仍然受到低渗透率的困扰。近年来,随着移动传感器和移动网络的技术进步,移动设备位置数据(MDLD)在人口及其流动性的广度覆盖方面急剧增长。本文展示了一个大型数据驱动能力框架,可以吸收MDLD的兆字节,并在更大范围内估算车辆数量。拟议框架首先使用一系列基于云的计算算法来提取多轨迹和旅行名册。随着移动传感器和行车道网络的技术进展,移动车辆总轨迹计数在每一条路段的每个路段上都得到观测到的车辆数量是加权和校准能力,在更大地域范围内估算所有车辆总流量。拟议的车辆总流量和车辆总轨迹控制框架。