Intelligent Traffic Signal Control System using Deep Q-network

Hyunjin Joo, Y. Lim
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Abstract

Traffic congestion is one of the common urban problems caused by increased traffic. Traffic congestion accelerates environmental pollution by wasting drivers’ time and fuel and generating more fumes. Therefore, traffic congestion is an important issue to be solved. Currently, as technologies develop, a smart city that efficiently manages data information collected is in the spotlight. The smart transportation system utilizes the infrastructure and network built in the smart city to analyze traffic flow and control traffic in real-time. Accordingly, traffic congestion can be effectively alleviated. This paper proposes a smart traffic signal control system using a Deep Q-network (DQN), a type of reinforcement learning. The proposed algorithm distributes the optimal green signal time by collecting and learning information about the intersection situation. The proposed algorithm is designed to improve the performance in terms of throughput. As a result, the number of waiting vehicles also decreased. To validate the algorithm, we evaluate the performance in various traffic scenarios.
基于深度q网络的智能交通信号控制系统
交通拥堵是由交通量增加引起的常见城市问题之一。交通拥堵通过浪费司机的时间和燃料以及产生更多的烟雾来加速环境污染。因此,交通拥堵是一个需要解决的重要问题。目前,随着技术的发展,高效管理收集到的数据信息的智慧城市备受关注。智能交通系统利用智慧城市的基础设施和网络,对交通流量进行实时分析和控制。因此,可以有效地缓解交通拥堵。本文提出了一种基于深度q网络(Deep Q-network, DQN)的智能交通信号控制系统。该算法通过收集和学习交叉口情况信息来分配最优绿灯时间。提出的算法旨在提高吞吐量方面的性能。因此,等候车辆的数量也减少了。为了验证该算法,我们评估了各种交通场景下的性能。
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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