多模式智能深度(心灵)交通信号控制器

Soheil Mohamad Alizadeh Shabestary, B. Abdulhai
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引用次数: 9

摘要

世界各地的人口增长导致对交通的需求达到了一个具有挑战性的水平。由于空间、资金和环境的限制,建设新的基础设施并不总是首选。公共交通通常被认为是一种更经济、更可持续的选择,因为一辆公共交通工具比普通交通工具可以搭载更多的乘客。在城市中心,相当一部分的出行时间都花在等待交通信号上。交通信号优先(TSP)方法近年来出现,以减少交通信号的过境延误。交通信号通常针对常规交通进行优化,并添加TSP系统来调整背景信号授时计划,为过境车辆提供优先权。因此,这两种模式似乎在不断争夺绿灯信号,提高一方的行驶时间导致另一方的行驶时间恶化。在这项研究中,我们引入了一种新的多式联运交通信号控制器,它明确地考虑了普通车辆和过境车辆,并优化了人而不是车辆的吞吐量,无论他们处于哪种模式。为此,我们使用深度强化学习来开发和测试一个多模式智能深度(MiND)交通信号控制器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multimodal iNtelligent Deep (MiND) Traffic Signal Controller
Population growth around the world has led to a challenging level of demand for transportation. Constructing new infrastructure is not always the first option due to spatial, financial, and environmental constrains. Public transit is often considered to be a more affordable and sustainable option, as one transit vehicle can carry significantly higher number of passengers compared to regular vehicles. In urban cores, a considerable portion of travel time is spent waiting at traffic signals. Transit Signal Priority (TSP) methods has emerged over the years to reduce transit delays at traffic signals. Traffic signals are often optimized for regular traffic and TSP systems are added to adjust the background signal timing plans to provide priority for transit vehicles. Therefore, these two modes seem to constantly fight for the green signal, and improving one’s travel time leads to deterioration of the other’s. In this research we introduce a new multimodal traffic signal controller that explicitly considers both regular and transit vehicles and optimizes the throughput of people rather than vehicles, irrespective of what mode they are on. For this purpose, we use deep reinforcement learning to develop and test a Multimodal iNtelligent Deep (MiND) traffic signal controller.
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