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ROS Integration of External Vehicle Motion Simulations with an AIMSUN Traffic Simulator as a Tool to Assess CAV Impacts on Traffic

机译:使用AIMSUN交通模拟器作为评估CAV对交通影响的工具的外部车辆运动模拟

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A challenge with predicting the in-traffic performance of Connected and Autonomous Vehicles (CAV) is that CAV algorithms are often analyzed on a per-vehicle basis, but their effects and interactions with surrounding traffic require analysis of traffic-network behaviors. The tools for CAV simulations generally encompass two domains: 1) traffic micro-or macro-simulations which encompass traffic laws and large groups of vehicles guided by simple behavioral algorithms, and 2) on-vehicle system simulations enabling the complex algorithms for sensing and control within the immediate vicinity of the ego-vehicle. In this paper, an example is presented that bridges these two tools. Specifically, AIMSUN, a traffic modeling and traffic network simulation tool, is integrated with Robot Operating System (ROS), an open-source meta-operating system, to develop a co-simulation platform bridging traffic simulations with ego-vehicle CAV simulations. Establishing such a co-simulation platform requires a bi-directional data-flow bridge between the two software platforms wherein the motion of the ego-vehicle at each time-step in ROS is a function of the traffic scenarios as simulated by AIMSUN. User Datagram Protocol (UDP) which allows for large amounts of data transmission with low latency is used as the communication protocol for the bridge. The time latency of the bridge is analyzed by performing a loop-back test and obtaining the time delay statistics. A step-by-step tutorial is presented in this paper to guide the reader through the process of implementing such a bridge within a driving simulator environment. The co-simulation platform is demonstrated through an application example where a user can virtually drive an ego vehicle through an AIMSUN traffic network, and the co-simulation behavior is assessed by the Time-To-Collision (TTC) parameter.
机译:通过预测连接和自主车辆(CAV)的交通绩效的挑战是CAM算法通常在每辆车上进行分析,但它们的效果和与周围交通的互动需要分析交通网络行为。 CAV模拟的工具通常包括两个域:1)交通微观或宏观模拟,包括简单行为算法引导的交通规律和大型车辆,以及2)车载系统模拟,使得复杂算法用于传感和控制在自我车辆的直接附近。在本文中,提出了一个桥接这两个工具的示例。具体而言,AIMSUN,流量建模和流量网络仿真工具与机器人操作系统(ROS)集成,开源元操作系统,开发具有自助式探测器的共模平台桥接业务仿真。建立这种共模平台需要两个软件平台之间的双向数据流桥,其中自由车辆在ROS中的每个时间步骤的运动是由AimsUn模拟的交通场景的函数。允许具有低延迟的大量数据传输的用户数据报协议(UDP)用作桥的通信协议。通过执行环回测试并获得时间延迟统计来分析桥的时间延迟。本文介绍了逐步教程,以引导读者通过在驾驶模拟器环境中实现这种桥的过程。通过应用示例演示共模平台,其中用户可以通过AIMSUN业务网络实际驱动EGO车辆,并且通过碰撞时间(TTC)参数来评估共模行为。

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