首页> 外文期刊>IEEE Transactions on Intelligent Transportation Systems >Target Vehicle Motion Prediction-Based Motion Planning Framework for Autonomous Driving in Uncontrolled Intersections
【24h】

Target Vehicle Motion Prediction-Based Motion Planning Framework for Autonomous Driving in Uncontrolled Intersections

机译:基于车辆运动预测的基于车辆运动预测,用于在不受控制的交叉口中的自主驾驶的运动规划框架

获取原文
获取原文并翻译 | 示例
       

摘要

This paper presents a motion-planning framework for urban autonomous driving at uncontrolled intersections. The intention and future state of the target vehicles are predicted using information obtained from the environment sensors. The target state prediction module employs an Interacting Multiple Model (IMM) filter to infer the intention of targets. The prediction results of each model of the IMM filter are fused to predict the future state of targets. The proposed predictor uses the intelligent driver model based-driver behavior model to construct the local filter of IMM. The driving mode decision is realized as a state machine consisting of two phases, 'Approach' and 'Risk Management'. The risk management phase is composed of two sub-modes, 'Cross' and 'Yield'. The state transition conditions between phases and modes are defined by introducing the concepts of 'Critical gap' and 'Follow-up gap'. Based on the determined driving mode, the motion planning module consists of two sub-modules for each phase. The required deceleration determination for the approach phase is proposed to consider the occluded region in order to prevent inevitable collisions caused by fast approaches. The model predictive controller for the risk management phase is designed to determine the desired acceleration to guarantee safety and prevent unnecessary deceleration simultaneously. Both computer simulation studies and vehicle tests are conducted to evaluate the proposed framework. The results indicate that the proposed framework ensures the safety at uncontrolled intersections with a driving pattern similar to that of a driver.
机译:本文为不受控制的交叉路口驾驶的城市自主行动计划框架。使用从环境传感器获得的信息预测目标车辆的意图和未来状态。目标状态预测模块采用相互作用的多模型(IMM)滤波器来推断目标的意图。 IMM滤清器的每个模型的预测结果被融合以预测未来的目标状态。所提出的预测器使用基于智能驱动程序模型的智能驱动程序模型模型来构建IMM的本地滤波器。驾驶模式决定被实现为由两个阶段,“方法”和“风险管理”组成的状态机。风险管理阶段由两个子模式,'跨'和“产量”组成。阶段和模式之间的状态过渡条件是通过引入“临界间隙”和“跟进差距”的概念来定义的。基于所确定的驾驶模式,运动规划模块由每个阶段的两个子模块组成。提出了接近阶段所需的减速确定,以考虑遮挡区域,以防止由快速方法引起的不可避免的碰撞。风险管理阶段的模型预测控制器旨在确定所需的加速,以保证安全性,并同时防止不必要的减速。进行计算机仿真研究和车辆测试以评估所提出的框架。结果表明,所提出的框架确保了不受控制的交叉点的安全性,其驱动模式类似于驾驶员的驱动模式。

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