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Trajectory Planning for Automated Parking Systems Using Deep Reinforcement Learning

机译:利用深增强学习自动化停车系统的轨迹规划

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摘要

Deep reinforcement learning (DRL) has been successfully adopted in many tasks, such as autonomous driving and gaming, to achieve or surpass human-level performance. This paper proposes a DRL-based trajectory planner for automated parking systems (APS). A thorough review of literature in this field is presented. A simulation study is conducted to investigate the trajectory planning performance of the parking agent for: (i) different neural-network architectures; (ii) different training set-ups; (iii) efficacy of human-demonstration. Real-time capability of the proposed planner on various embedded hardware platforms is also discussed by the paper, showing promising performance. Insights of the use of DRL for APS are concluded at the end of the paper.
机译:深度加强学习(DRL)已成功地采用了许多任务,例如自主驾驶和游戏,实现或超越人级性能。 本文提出了用于自动停车系统(APS)的基于DRL的轨迹计划。 介绍了对该领域的文献彻底审查。 进行了仿真研究,以研究停车剂的轨迹规划性能:(i)不同的神经网络架构; (ii)不同的培训设置; (iii)人类示范的功效。 纸张还讨论了各种嵌入式硬件平台上提出的计划员的实时能力,展示了有希望的性能。 在纸张结束时结束了对APS使用DRL的洞察。

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