基于强化学习的自动出租车路线选择

Miyoung Han, P. Senellart, S. Bressan, Huayu Wu
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引用次数: 34

摘要

新加坡的智慧国家愿景包括发展高效的交通工具。政府的目标是利用新技术为需求驱动的智能交通模式创造服务,包括私家车、公共交通和出租车。新加坡政府大力鼓励和支持自动驾驶汽车,特别是自动驾驶出租车的技术研发。智能路由算法的设计与实现是自动驾驶出租车部署的关键之一。在本文中,我们证明了q学习家族的强化学习算法,基于定制的探索和开发策略,能够在新加坡城市规模的真实场景中学习自动驾驶出租车的最佳路线,其中包含1000辆出租车的上下车事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Routing an Autonomous Taxi with Reinforcement Learning
Singapore's vision of a Smart Nation encompasses the development of effective and efficient means of transportation. The government's target is to leverage new technologies to create services for a demand-driven intelligent transportation model including personal vehicles, public transport, and taxis. Singapore's government is strongly encouraging and supporting research and development of technologies for autonomous vehicles in general and autonomous taxis in particular. The design and implementation of intelligent routing algorithms is one of the keys to the deployment of autonomous taxis. In this paper we demonstrate that a reinforcement learning algorithm of the Q-learning family, based on a customized exploration and exploitation strategy, is able to learn optimal actions for the routing autonomous taxis in a real scenario at the scale of the city of Singapore with pick-up and drop-off events for a fleet of one thousand taxis.
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