从全球定位系统车辆轨迹数据中提取网络范围内道路段位置、方向和转向运动规则用于宏观仿真

Adham Badran;Ahmed El-Geneidy;Luis Miranda-Moreno
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引用次数: 0

摘要

道路使用者全球定位系统(GPS)轨迹数据的出现引起了人们对知识发现的兴趣,以改进与交通规划相关的方法和工具。事实上,具有gps功能的智能手机和移动互联网的广泛使用增加了此类数据的可用性和大小。随着GPS数据覆盖范围和可用性的增加,一些研究已将其应用范围扩大到估计全州范围内的车辆行驶里程,对道路安全评估的驾驶动作进行分类,或估计环境绩效指标,如车辆燃料消耗和污染排放。在计算机科学领域,研究使用GPS数据来推断道路网络地图。尽管推断的映射提供了正确的拓扑和连通性,但它们缺乏用于传输建模的基本细节。因此,本文提出了一种提取全网道路方向和转弯运动规则的方法。此外,在广泛使用的宏观交通建模软件下建立路网模型作为概念验证。进行敏感性分析以确定输出质量并建议未来的改进。准确提取道路段的几何形状和方向性(案例研究准确率为95%);然而,使用更大的GPS车辆轨迹样本可以更准确地提取转弯运动规则(案例研究精度为68%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extracting Networkwide Road Segment Location, Direction, and Turning Movement Rules From Global Positioning System Vehicle Trajectory Data for Macrosimulation
The emergence of road users' global positioning system (GPS) trajectory data is attracting increasing research interest in knowledge discovery to improve transport planning-related methods and tools. In fact, the widespread use of GPS-enabled smartphones and the mobile internet has increased the availability and size of such data. With the increase in GPS data coverage and availability, some research has expanded its use to estimate state-wide vehicle-miles travelled, to classify driving maneuvers for road safety assessment, or to estimate environmental performance indicators, such as vehicular fuel consumption and pollution emissions. In computer science, research has used GPS data to infer road network maps. Although the inferred maps provide a correct topology and connectivity, they lack the essential details to be used for transport modeling. Therefore, this work proposes a method to extract network-wide road direction and turning movement rules. In addition, building a road network model under the widely used macroscopic transport modeling software serves as a proof of concept. A sensitivity analysis was carried out to determine the output quality and recommend future improvements. Road segment geometry and directionality were extracted accurately (case study accuracy of 95 % ); however, turning movement rules can be extracted more accurately using a larger GPS vehicle trajectory sample (case study accuracy of 68%).
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