A Reinforcement Learning based Path Guidance Scheme for Long-range Autonomous Valet Parking in Smart Cities

Muhammad Khalid, N. Aslam, Liang Wang
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引用次数: 5

Abstract

Finding a parking slot in the city centre has always been a great challenge. In many cases, drivers spend a lot of time roaming around looking for an empty and suitable parking slot. The emerging machine learning technologies in intelligent transport system has made it more flexible for Electric Autonomous Vehicle (EAV) to find a parking slot and get parked. The Long-range Autonomous Valet Parking (LAVP) allows an EAV to drop user at a suitable drop-off spot and select an economical parking slot. With the evolution of battery operated vehicles, the primary concern is efficient use of battery resources. This can be done either by maximizing battery capacity or by smartly using battery with existing capacity. During the parking process, most of the energy is consumed by finding an optimal path to parking slot. The work proposed in this paper guides EAV from a random starting point to nearest drop-off spot and CP. A Reinforcement Learning based Autonomous Valet Parking technique (RL-LAVP) has been designed to guide EAV to drop-off spot, CP and minimize the total distance covered during this process. The RL-LAVP results show a significant improvement towards minimizing covered distance and consumed energy when compared with RaNdom (RN) parking and LAVP parking techniques.
基于强化学习的智慧城市远程自主代客泊车路径引导方案
在市中心找个停车位一直是个很大的挑战。在许多情况下,司机花了很多时间到处寻找一个空的和合适的停车位。智能交通系统中新兴的机器学习技术使电动自动驾驶汽车(EAV)找到停车位和停车更加灵活。远程自动代客泊车(LAVP)允许EAV将用户送到合适的下客点,并选择一个经济的停车位。随着电动汽车的发展,电池资源的有效利用成为人们关注的主要问题。这可以通过最大化电池容量或巧妙地使用现有容量的电池来实现。在停车过程中,大部分能量消耗在寻找最优停车路径上。本文提出了一种基于强化学习的自动代客泊车技术(RL-LAVP),用于引导自动代客泊车从随机起点到最近的落客点和CP,并在此过程中最小化所覆盖的总距离。与RaNdom (RN)停车和LAVP停车技术相比,RL-LAVP停车技术在最小化覆盖距离和消耗能量方面有显著改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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