...
首页> 外文期刊>Transportation research >DCL-AIM: Decentralized coordination learning of autonomous intersection management for connected and automated vehicles
【24h】

DCL-AIM: Decentralized coordination learning of autonomous intersection management for connected and automated vehicles

机译:DCL-AIM:联网和自动驾驶的自动交叉路口管理的分散式协调学习

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Conventional intersection managements, such as signalized intersections, may not necessarily be the optimal strategies when it comes to connected and automated vehicles (CAVs) environment. Autonomous intersection management (AIM) is tailored for CAVs aiming at replacing the conventional traffic control strategies. In this work, using the communication and computation technologies of CAVs, the sequential movements of vehicles through intersections are modelled as multi-agent Markov decision processes (MAMDPs) in which vehicle agents cooperate to minimize intersection delay with collision-free constraints. To handle the huge dimension scale incurred by the nature of multi-agent decision making problems, the state space of CAVs are decomposed into independent part and coordinated part by exploiting the structural properties of the AIM problem, and a decentralized coordination multi-agent learning approach (DCL-AIM) is proposed to solve the problem efficiently by exploiting both global and localized agent coordination needs in MM. The main feature of the proposed approach is to explicitly identify and dynamically adapt agent coordination needs during the learning process so that the curse of dimensionality and environment nonstationarity problems in multi-agent learning can be alleviated.The effectiveness of the proposed method is demonstrated under a variety of traffic conditions. The comparison analysis is performed between DCL-AIM and the First-Come-First-Serve based AIM (FCFS-AIM), with Longest-Queue-First (LQF-AIM) policy and the signal control based on the Webster's method (Signal) as benchmarks. Experimental results show that the sequential decisions from DCL-AIM outperform the other control policies.
机译:常规的路口管理,例如信号交叉口,在连接和自动车辆(CAV)环境中不一定是最佳策略。自主交叉路口管理(AIM)专为CAV量身定制,旨在取代传统的交通控制策略。在这项工作中,利用CAV的通信和计算技术,将车辆通过交叉路口的顺序运动建模为多智能体马尔可夫决策过程(MAMDP),在这种过程中,车辆智能体协同工作以最大程度地减少无碰撞约束的交叉路口延迟。为了处理多智能体决策问题的性质所产生的巨大尺度规模,利用AIM问题的结构特性,通过分散的协调多智能体学习方法,将CAV的状态空间分解为独立的部分和协调的部分。提出(DCL-AIM)以通过利用MM中的全局和局部代理协调需求来有效解决问题。该方法的主要特点是在学习过程中明确识别并动态适应智能体协调需求,从而减轻多智能体学习中的维数和环境非平稳性问题的诅咒。各种交通状况。使用最长队列优先(LQF-AIM)策略和基于Webster方法(信号)的信号控制,在DCL-AIM和基于先来先服务的AIM(FCFS-AIM)之间进行比较分析。作为基准。实验结果表明,DCL-AIM的顺序决策优于其他控制策略。

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