刚性货车的交通态势管理介绍,自我车道内转向避物试验

S. Janardhanan, Mansour Keshavarz, L. Laine
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引用次数: 1

摘要

对交通状况的感知和在复杂场景下的有效机动是主动安全和自动驾驶汽车应用的一项关键任务。由于该任务的复杂性,可以将其分配为单独的功能层。本文提出了一种用于自主重型车辆应用的参考开发框架——交通态势管理功能层。然后,通过开发基于参考框架的转向实时自动防撞功能来验证该功能层。卡车的运动被限制在现有车道内,代表有其他车辆的部分横向干扰的情况,在纵向和横向方向上都有安全的操作距离。车道标志作为参考,引导车辆在自我车道内避让机动。根据交通情景和自我车辆状态生成逃生路径。一个简单的前馈和基于PD的反馈控制器被用来跟踪生成的路径。在一辆6X2刚性重型卡车上进行了物理测试,以验证所提出的功能。结果表明,在测试运行中,规避函数和安全边际的性能令人满意。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Introduction of Traffic Situation Management for a Rigid Truck, Tests Conducted on Object Avoidance by Steering within Ego Lane
Awareness in traffic situations and manoeuvring efficiently through complex scenarios is a critical task to be managed for active safety and autonomous vehicle applications. This task could be assigned as a separate functionality layer due to its complexity. A reference development framework for autonomous heavy vehicle applications called Traffic Situation Management functionality layer is presented in this study. This functionality layer is then verified by developing a real time autonomous rear end collision avoidance function by steering based on the reference framework. The motion of the truck is restricted within the existing lane, representing situations where there is a partial lateral interference by other vehicles, with safe distance to manoeuvre both in the longitudinal and lateral directions. Lane markings are used as a reference to guide the vehicle within the ego lane during the avoidance manoeuvre. Based on the traffic scenario and ego vehicle states an escape path is generated. A simple feed-forward and PD based feedback controller is used to track the generated path. Physical tests are conducted on a 6X2 rigid heavy truck to verify the proposed function. Results indicate satisfactory performance of the avoidance function and safe margins during the test runs.
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