首页> 外文会议>ASME Dynamic Systems and Control Conference >ANALYSIS OF A NOVEL COMMAND GOVERNOR-BASED ADAPTIVE CRUISE CONTROLLER FOR NON-COOPERATIVE VEHICLE FOLLOWING
【24h】

ANALYSIS OF A NOVEL COMMAND GOVERNOR-BASED ADAPTIVE CRUISE CONTROLLER FOR NON-COOPERATIVE VEHICLE FOLLOWING

机译:基于新型指挥官的非合作车辆自适应巡航控制器分析

获取原文

摘要

This paper presents a novel adaptive cruise control (ACC) strategy that utilizes a command governor (CG) to enforce vehicle following constraints. The CG formulation relies on knowledge of the maximum possible braking deceleration of the lead vehicle and a tunable assumption regarding the lead vehicle velocity profile (offering different levels of conservatism) to modify wheel torque commands to ensure safe following. In particular, a safe following distance is defined as one in which the ego vehicle can avoid collision with the lead vehicle and maintain a sufficient following distance in the event that the lead vehicle exerts maximum braking deceleration. The CG seeks to adjust the wheel torque command such that the aforementioned constraint is satisfied at every step in a prediction horizon (i.e., at every step, if the lead vehicle exerts maximum braking deceleration, the ego vehicle can brake and remain outside of the aforementioned buffer zone), which requires an estimate of future lead vehicle behavior. In this work, we explore different levels of conservatism with regard to this assumption. Simulations are presented for a heavy-duty truck, using a stochastic lead vehicle model that has been calibrated with actual traffic data. Even for the most conservative lead vehicle prediction models, results show that this CG-based ACC strategy can reduce braking energy expended (used as a surrogate for fuel wasted) by up to 78%, while improving drivability and reducing total trip time.
机译:本文提出了一种新颖的自适应巡航控制(ACC)策略,该策略利用命令调节器(CG)来执行车辆跟随约束。 CG公式依赖于对领先车辆的最大可能制动减速度的了解以及关于领先车辆速度曲线(提供不同级别的保守性)的可调假设,以修改车轮扭矩指令以确保安全跟随。特别地,安全的跟随距离被定义为这样的距离,其中,在引导车辆施加最大的制动减速度的情况下,自我车辆可以避免与引导车辆的碰撞并保持足够的跟随距离。 CG试图调整车轮扭矩命令,以便在预测范围内的每个步骤都满足上述约束(即,在每个步骤中,如果领先车辆施加最大制动减速度,则自我车辆可以制动并停留在上述外部缓冲区),这需要对未来的主要车辆行为进行估算。在这项工作中,我们针对这一假设探索了不同级别的保守主义。使用已根据实际交通数据校准的随机铅车模型,对重型卡车进行了仿真。即使对于最保守的领先车辆预测模型,结果也表明,这种基于CG的ACC策略可以将制动能量消耗(用作燃料浪费的替代物)减少多达78%,同时改善了驾驶性能并减少了总行程时间。

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