基于交通流预测的城市交通信号控制系统

Chun-Yao Jiang, Xiao-Min Hu, Wei-neng Chen
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引用次数: 10

摘要

如何提高出行效率、缓解交通拥堵一直是智能交通系统的关键问题。交通信号控制是城市交通管理的基本工具。传统上,红绿灯调度优化与交通流预测是分开研究的。本文旨在将这两种技术结合起来,提出一种基于交通流预测的城市交通信号控制系统。目标是使道路网络中所有信号交叉口的阻塞车辆总数最小化。首先,提出了一种包含交通流预测和信号控制优化的城市交通控制系统新框架。其次,设计了一种自适应红绿灯调度策略来缓解交通拥堵。为了验证所提出的系统,在阿里云天池平台提供的真实交通数据上进行了实验。对比结果表明,所提出的系统和信号控制优化策略具有良好的性能。
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An Urban Traffic Signal Control System Based on Traffic Flow Prediction
How to improve travel efficiency and alleviate traffic congestion has long been a key problem in intelligent transportation systems. Traffic signal control is a basic tool for urban traffic management. Traditionally, the optimization of traffic light schedule and the prediction of traffic flows are studied separately. In this paper, we aim to combine these two techniques together and propose an urban traffic signal control system based on traffic flow prediction. The objective is to minimize the total number of blocked vehicles at all signalized intersections in the road network. Firstly, a new framework of urban traffic control system including both traffic flow forecasting and signal control optimization is proposed. Secondly, an adaptive traffic light scheduling strategy is designed to alleviate congestion. To validate the proposed system, experiments are performed on the real-world traffic data provided by the Aliyun Tianchi platform. The comparison results show that the proposed system and the signal control optimization strategy perform well.
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