A hybrid motion planning framework for autonomous driving in mixed traffic flow

Lei Yang , Chao Lu , Guangming Xiong , Yang Xing , Jianwei Gong
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引用次数: 2

Abstract

As a core part of an autonomous driving system, motion planning plays an important role in safe driving. However, traditional model- and rule-based methods lack the ability to learn interactively with the environment, and learning-based methods still have problems in terms of reliability. To overcome these problems, a hybrid motion planning framework (HMPF) is proposed to improve the performance of motion planning, which is composed of learning-based behavior planning and optimization-based trajectory planning. The behavior planning module adopts a deep reinforcement learning (DRL) algorithm, which can learn from the interaction between the ego vehicle (EV) and other human-driven vehicles (HDVs), and generate behavior decision commands based on environmental perception information. In particular, the intelligent driver model (IDM) calibrated based on real driving data is used to drive HDVs to imitate human driving behavior and interactive response, so as to simulate the bidirectional interaction between EV and HDVs. Meanwhile, trajectory planning module adopts the optimization method based on road Frenet coordinates, which can generate safe and comfortable desired trajectory while reducing the solution dimension of the problem. In addition, trajectory planning also exists as a safety hard constraint of behavior planning to ensure the feasibility of decision instruction. The experimental results demonstrate the effectiveness and feasibility of the proposed HMPF for autonomous driving motion planning in urban mixed traffic flow scenarios.

Abstract Image

混合交通流下自动驾驶的混合运动规划框架
运动规划作为自动驾驶系统的核心部分,对安全驾驶起着重要的作用。然而,传统的基于模型和规则的方法缺乏与环境交互学习的能力,基于学习的方法在可靠性方面仍然存在问题。为了克服这些问题,提出了一种混合运动规划框架(HMPF),该框架由基于学习的行为规划和基于优化的轨迹规划组成,以提高运动规划的性能。行为规划模块采用深度强化学习(deep reinforcement learning, DRL)算法,可以从自我车辆(EV)与其他人类驾驶车辆(HDVs)之间的交互中学习,并根据环境感知信息生成行为决策命令。其中,利用基于真实驾驶数据标定的智能驾驶员模型(IDM)驱动HDVs,模拟人的驾驶行为和交互响应,模拟电动汽车与HDVs的双向交互。同时,轨迹规划模块采用基于道路Frenet坐标的优化方法,在降低问题求解维数的同时生成安全舒适的理想轨迹。此外,轨迹规划还作为行为规划的安全硬约束存在,以保证决策指令的可行性。实验结果验证了该算法在城市混合交通流场景下自动驾驶运动规划中的有效性和可行性。
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CiteScore
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