Jayasinghe Amila, Sano Kazushi, Abenayake C Chethika, Mahanama P K S
Department of Town & Country Planning, University of Moratuwa, Moratuwa, 10400, Sri Lanka.
Urban Transport Engineering and Planning Lab, Nagaoka University of Technology, Nagaoka, 940-2137, Japan.
MethodsX. 2019 Apr 29;6:1147-1163. doi: 10.1016/j.mex.2019.04.024. eCollection 2019.
The study proposes a novel method for modeling traffic volumes at the road segment level of large-scale urban road networks. This study has been placed in a milieu where existing methods on modeling vehicular traffic volume are hampered by data and cost constraints, especially in developing countries. Emerging traffic modeling methods, based on centrality and space syntax provides a technically-efficient approach to overcome the above-mentioned constraints. Nevertheless, those methods are yet to be popular among practitioners due to limited accuracy and validity. This study modifies the existing methods and validates in five case cities to make them practice-ready. Findings of this study indicated that the proposed method is competent enough to estimate traffic volume of road segments on a par with the internationally accepted standards. •The proposed method combines two network centrality measures abstracting the traffic volume on a road segment as the sum of origin-destination trips (i.e., Closeness-Centrality) and pass-by trips (i.e., Betweenness-Centrality).•The study modifies the 'distance' variable in the existing formula as 'path-distance' which captures topological and mobility characteristics of roads.•The method does not require extensive data and can be implemented by utilizing publicly available open-source network analysis software, hence, ideal for resource-scarce situations.
该研究提出了一种在大规模城市道路网络路段层面上对交通流量进行建模的新方法。本研究所处的环境是,现有车辆交通流量建模方法受到数据和成本限制的阻碍,尤其是在发展中国家。基于中心性和空间句法的新兴交通建模方法提供了一种技术上高效的方法来克服上述限制。然而,由于准确性和有效性有限,这些方法在从业者中尚未普及。本研究对现有方法进行了改进,并在五个案例城市进行了验证,使其具备实际应用价值。本研究结果表明,所提出的方法足以按照国际公认标准估算路段交通流量。•所提出的方法结合了两种网络中心性度量,将路段上的交通流量抽象为起讫点出行(即接近中心性)和途经出行(即中介中心性)之和。•该研究将现有公式中的“距离”变量修改为“路径距离”,以捕捉道路的拓扑和移动性特征。•该方法不需要大量数据,并且可以通过使用公开可用的开源网络分析软件来实现,因此,对于资源稀缺的情况非常理想。