基于深度强化学习的多车道高速公路车辆控制交通影响分析

Yuta Kataoka, Hao Yang, Shalini Keshavamurthy, Ippei Nishitani, K. Oguchi
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引用次数: 0

摘要

强化学习是实现最优驾驶的方法之一。大多数研究都集中在评估一小部分由强化学习控制的车辆的学习性能上。目前还不清楚这些受控车辆如何影响其他车辆。我们进行了几个实验,研究了通过强化学习控制的多车辆对交通流的影响。模拟是在一条三车道的高速公路上进行的,其中一条车道的尽头有车道调节。受控制的车辆被训练得尽可能快地行驶,并且不合作地运行。我们发现控制车辆比人类驾驶的车辆跑得更快。此外,我们预计,如果多辆车自私自利地行驶,将对交通流量产生不利影响。与预期相反,实验结果表明,即使大量受控车辆自私驾驶,对整体交通的负面影响也很小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Traffic Impact Analysis of a Deep Reinforcement Learning-based Multi-lane Freeway Vehicle Control
Reinforcement learning is one of the methods that has been used to realize optimal driving. Most studies have focused on evaluating learning performance of a fraction of vehicles controlled by reinforcement learning. It is unclear how these controlled vehicles influence other vehicles. We conducted several experiments examining the impact of multiple vehicles controlled by reinforcement learning on traffic flow. The simulations were performed on a three-lane freeway with lane regulation at the end of one of the lanes. The controlled vehicles were trained to drive as fast as possible and run non-cooperatively. We found out that controlled vehicles could run faster than human-driven vehicles. Moreover, we anticipated that if multiple vehicles were run selfishly, it would adversely affect traffic flow. Contrary to expectations, the experimental results showed that even if numerous controlled vehicles drive selfishly, the negative impact on overall traffic would be small.
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