首页> 外文会议>International Conference on Systems and Informatics >Left-turn Vehicles Crossing Behavior Prediction and Modeling at Mixed Traffic Flow Intersection
【24h】

Left-turn Vehicles Crossing Behavior Prediction and Modeling at Mixed Traffic Flow Intersection

机译:左转车辆交叉行为预测和混合交通流量交叉口的建模

获取原文

摘要

It is a complicated driving maneuver that left-turn motor vehicles cross conflicted vehicles under non-protected phases, during which drivers' crossing behaviors varies. It is even more complex at mixed-flow intersections where left-turn vehicles interact with both motor and non-motorized vehicles. In this paper, 363 samples of left-turn vehicles crossing motorized straight vehicles, as well as 413 samples of crossing non-motorized straight vehicles are collected. Based on the data, it is found that left-turn vehicles process the entire crossing behaviors in significant two steps at mixed-flow intersections: drivers firstly cross opposite going-straight motor vehicles, and secondly cross non-motorized vehicles. Two logistic models are established to reflect drivers' decision during the two steps of the crossing behaviors. The results show that the prediction accuracies reach 98.9% and 85.2%, respectively. The crossing behaviors are further classified into three types based on their influence on going-straight motor vehicles, which are free crossing, cooperative crossing and forced crossing. Adecision-tree model is built to predict the three crossing behaviors. The predication accuracy is 81.5% on average. The result of this study may help to build a more accurate microscopic simulation model on mixed-flow intersection scenarios.
机译:它是一种复杂的驾驶机动,使得左转机动车在非保护阶段交叉冲突车辆,在此期间驱动器的交叉行为变化。在左转车辆与电动机和非电动车辆交互的情况下,它更复杂。本文中,收集了363辆左转车辆样品,以及收集413个交叉非机动直辆车辆的413个样品。基于数据,发现左转车辆在混合流量交叉口的重要两步中处理整个交叉行为:驾驶员首先交叉相反的直线机动车辆,以及第二交叉非机动车辆。建立了两个物流模型,以反映交叉行为的两个步骤中的司机决定。结果表明,预测精度分别达到98.9%和85.2%。交叉行为进一步分为三种类型,基于它们对直线机动车辆的影响,这是自由过渡,合作交叉和强制交叉的。建立了Adecision-Tree模型以预测三个交叉行为。预测精度平均为81.5%。本研究的结果可能有助于在混合流量交叉路口方案上建立更准确的显微仿真模型。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号