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A Microscopic Model for Lane-Less Traffic

机译:Lane的流量微观模型

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In this paper, a new model is introduced for traffic on broad roads, where the drivers do not follow lane-discipline. For both longitudinal and lateral motions, the driver reactions are assumed to be influenced by possibly a number of vehicles, obstacles, and unmodeled entities in visibility cones to the front and to the sides of each vehicle. The network of influences and the resultant interaction is modeled by "influence graphs." In congested traffic situations, it is assumed that the influence structure is time invariant and all drivers are forced to behave homogeneously. Then, the collection converges to a layered formation with fixed intervehicle distances. In sparse and heterogeneous traffic, the velocity and intervehicle separations in the set of modeled vehicles, though can oscillate continuously, are uniformly bounded. These model-based predictions are verified experimentally. Videos of typical traffic on a sample road in Mumbai city, India, are recorded. Detailed motion information of groups of cars is extracted through image processing techniques. The proposed model is initialized with the extracted data and the computed trajectories are compared with the actual ones calculated from the images. It is verified that the proposed model, in addition to macroscopic patterns, can also accurately predict complex maneuvers, such as overtaking, sideways movements and avoiding collisions with slower moving vehicles.
机译:在本文中,为广阔道路上的交通引入了一种新模型,司机不遵循车道纪律。对于纵向和横向运动,假设驱动器反应可能受到在每个车辆的前部和侧面的可见性锥中的许多车辆,障碍物和未拼接的实体的影响。影响网络和由此产生的相互作用是“影响图”的建模。在拥挤的交通情况下,假设影响结构是时间不变,并且所有司机都被迫均匀地表现。然后,该收集到具有固定的界面距离的分层形成。在稀疏和异构的交通中,在模型车辆集合中分离的速度和腔间分离,但是可以连续振荡,是均匀的界限。基于模型的预测是通过实验验证的。记录了印度孟买市样本路上的典型交通视频。通过图像处理技术提取汽车组的详细运动信息。所提出的模型用提取的数据初始化,并将计算的轨迹与从图像计算的实际计算的数据进行比较。验证了所提出的模型,除了宏观图案之外,还可以准确地预测复杂的操作,例如超车,侧向运动,避免与移动车辆较慢的碰撞。

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