Development, Calibration, and Validation of a Large-Scale Traffic Simulation Model: Belgium Road Network

Behzad Bamdad Mehrabani, L. Sgambi, S. Maerivoet, M. Snelder
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引用次数: 1

Abstract

Development of large-scale traffic simulation models have always been challenging for transportation researchers. One of the essential steps in developing traffic simulation models, which needs lots of resources, is travel demand modeling. Therefore, proposing travel demand models that require less data than classical travel demand models is highly important, especially in large-scale networks. This paper first presents a travel demand model named as probabilistic travel demand model, then it reports the process of development, calibration and validation of Belgium traffic simulation model. The probabilistic travel demand model takes cities' population, distances between the cities, yearly vehicle-kilometer traveled, and yearly truck trips as inputs. The extracted origin-destination matrices are imported into the SUMO traffic simulator. Mesoscopic traffic simulation and the dynamic user equilibrium traffic assignment are used to build the base case model. This base case model is calibrated using the traffic count data. Al-so, the validation of the model is performed by comparing the real (extracted from Google Map API) and simulated travel times between the cities. The validation results ensure that the model is a superior representation of reality with a high level of accuracy. The model will be helpful for road authorities, planners, and decision-makers to test different scenarios, such as the im-pact of abnormal conditions or the impact of connected and autonomous vehicles on the Belgium road network.
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大规模交通模拟模型的开发、校准和验证:比利时道路网络
大规模交通仿真模型的开发一直是交通研究人员面临的挑战。交通仿真模型的开发需要大量的资源,其中一个重要的步骤就是建立交通需求模型。因此,提出比经典出行需求模型需要更少数据的出行需求模型是非常重要的,特别是在大规模网络中。本文首先提出了一个概率出行需求模型,然后报告了比利时交通仿真模型的开发、标定和验证过程。概率出行需求模型以城市人口、城市间距离、车辆年行驶公里数和卡车年行驶里程数作为输入。将提取的出发地-目的地矩阵导入SUMO交通模拟器。采用介观交通仿真和动态用户均衡交通分配方法建立基本情况模型。此基本情况模型使用流量计数数据进行校准。此外,通过比较真实的(从谷歌Map API中提取的)和模拟的城市之间的旅行时间来验证模型。验证结果确保该模型具有较高的精度和较好的现实表现。该模型将有助于道路当局、规划者和决策者测试不同的场景,例如异常条件的影响或连接和自动驾驶车辆对比利时道路网络的影响。
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