A novel pedestrian road crossing simulator for dynamic traffic light scheduling systems

Dayuan Tan, Mohamed Younis, Wassila Lalouani, Shuyao Fan, Guozhi Song
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引用次数: 0

Abstract

The major advances in intelligent transportation systems are pushing societal services toward autonomy where road management is to be more agile in order to cope with changes and continue to yield optimal performance. However, the pedestrian experience is not sufficiently considered. Particularly, signalized intersections are expected to be popular if not dominant in urban settings where pedestrian density is high. This paper presents the design of a novel environment for simulating human motion on signalized crosswalks at a fine-grained level. Such a simulation not only captures typical behavior, but also handles cases where large pedestrian groups cross from both directions. The proposed simulator is instrumental for optimized road configuration management where the pedestrians' quality of experience, for example, waiting time, is factored in. The validation results using field data show that an accuracy of 98.37 percent can be obtained for the estimated crossing time. Other results using synthetic data show that our simulator enables optimized traffic light scheduling that diminishes pedestrians' waiting time without sacrificing vehicular throughput.
用于动态交通灯调度系统的新型行人过马路模拟器
智能交通系统的重大进步正推动社会服务向自主化方向发展,道路管理必须更加灵活,以应对各种变化并持续获得最佳性能。然而,行人的体验却没有得到充分考虑。特别是在行人密度较高的城市环境中,信号灯控制的交叉路口即使不占主导地位,也会很受欢迎。本文介绍了一种新型环境的设计,用于在细粒度水平上模拟人在信号灯控制的人行横道上的运动。这种模拟不仅能捕捉典型行为,还能处理大量行人群体从两个方向过马路的情况。所提出的模拟器有助于优化道路配置管理,其中行人的体验质量(例如等待时间)是考虑因素之一。使用现场数据的验证结果表明,估计过街时间的准确率可达 98.37%。使用合成数据的其他结果表明,我们的模拟器可以优化交通灯调度,在不影响车辆通行量的情况下减少行人的等待时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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