基于区域的自动驾驶车辆路径与公共交通导流集成仿真建模框架

S. Ware, Antonis F. Lentzakis, R. Su
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引用次数: 0

摘要

在本文中,我们提出了一个模拟建模框架,该框架可以容纳多个旅行者类别,并集成了几个不同的特征,这些特征又可以与每个旅行者类别相关联,从而为任何潜在用户提供灵活性和所谓的鸟瞰图。具体而言,我们将多个特征集成到多类别基于区域的动态交通模型中,称为多类别网络传输模型(McNTM),包括公共交通导流组件,以及与不同旅行者类别相关的路由方法。定义了三个不同的旅行者类别,第一类旅行者配备了自动驾驶车辆,第二类旅行者包括配备了rgis的传统车辆,第三类旅行者包括没有装备的传统车辆。对每个旅行者等级都做了一定的假设。如果系统中有头等舱和二等舱乘客,则整体性能的提升幅度在0.78% - 23.43%之间。一等舱和二等舱分别采用的基于区域的路由方法不仅有利于整体网络性能,而且当它们各自的市场渗透率超过一定阈值时,可以证明对其他旅客等级的个人性能是有益的。
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A Simulation Modeling Framework with Autonomous Vehicle Region-based Routing and Public Transit Diversion Integration
In this paper, we present a simulation modeling framework that can accommodate multiple classes of travelers and integrates several distinct features, which in turn can be associated with each of the traveler classes, thus providing flexibility and a so-called bird’s-eye view to any potential user. Concretely, we integrate into the multi-class region-based dynamic traffic model, called multi-class Network Transmission Model (McNTM), several features, including a public transit diversion component, as well as routing methods associated with different traveler classes. Three distinct traveler classes are defined, the 1st class of travelers equipped with autonomous vehicles, the 2nd traveler class comprising of RGIS-equipped, conventional vehicles and the 3rd traveler class comprising of unequipped, conventional vehicles. Certain assumptions are made for each traveler class. The gain in overall performance for the case where 1st and 2nd class travelers are present in the system, ranges from 0.78% - 23.43%. Region-based routing methods employed by the 1st and 2nd class respectively, not only benefit overall network performance, but with their respective market penetration rates exceeding certain thresholds, can prove beneficial to the individual performance of other traveler classes.
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