基于多层强化学习方法的无信号t形交叉口左转垂直策略研究

IF 16.4
Xuemei Chen, Jia Wu, Jiachen Hao, Yixuan Yang
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引用次数: 0

摘要

在无信号、无保护信号的t型十字路口进行左转,是自动驾驶领域面临的一个关键挑战。传统的基于规则的方法往往过于谨慎,无法有效管理不可预测的t型交叉路口环境中的驾驶任务。在复杂的交通场景下,单一模型的收敛效果较差,通过率较低,安全性较差。因此,本研究引入了多层强化学习模型,分别采用D3QN (Dueling Double DQN)和TD3 (Twin Delayed Deep Deterministic policy gradient algorithm)进行高级行为决策和垂直加速规划。在我们的实验研究中,我们基于Carla模拟器的驾驶行为设计了四个模拟场景,以复制真实的驾驶条件。验证和测试仿真结果表明,与其他单训练强化学习模型相比,本文提出的多层强化学习模型成功率最高。具体来说,验证场景的通过率与训练条件一致,达到了令人印象深刻的99.5%。综合测试场景通过率达到89.6%。这些实验明确表明,该方法在保证交通效率和安全性的同时,显著提高了t形交叉口的通过率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Research on vertical strategy for left turn at signal-free T-shaped intersections based on multi-layer reinforcement learning methods

Research on vertical strategy for left turn at signal-free T-shaped intersections based on multi-layer reinforcement learning methods
The task of executing left turns at signal-free T-shaped intersections without protective signals poses a critical challenge in the realm of autonomous driving. Conventional rule-based approaches tend to be excessively cautious, rendering them inadequate for effectively managing driving tasks within unpredictable T-shaped intersection environments. In the case of complex traffic scenarios, a single model is less effective in convergence and has a lower pass rate and poorer safety. Thus, this study introduces a multi-layer reinforcement learning model, employing D3QN (Dueling Double DQN) and TD3 (Twin Delayed Deep Deterministic policy gradient algorithm) for advanced behavioral decision-making and vertical acceleration planning, respectively. In our experimental investigation, we designed four simulation scenarios based on the driving behavior of the Carla simulator to replicate real-world driving conditions. Verification and test simulation outcomes substantiate that, in comparison to other single-trained reinforcement learning models, the multi-layer reinforcement learning model proposed in this study attains the highest success rate. Specifically, the pass rate in the verification scenario, consistent with the training conditions, achieves an impressive 99.5%. Furthermore, the pass rate in the comprehensive test scenario reaches 89.6%. These experiments unequivocally demonstrate the considerable enhancement in T-shaped intersections pass rates achieved by the proposed method while ensuring both traffic efficiency and safety.
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CiteScore
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