计算机科学
排队
交叉口(航空)
弹道
实时计算
交通拥挤
概率逻辑
可扩展性
模拟
数学优化
运输工程
工程类
数学
计算机网络
人工智能
物理
天文
数据库
作者
Xingmin Wang,Zachary Jerome,Zihao Wang,Chenhao Zhang,Shengyin Shen,Vivek Kumar,Bin Fan,Paul E. Krajewski,Danielle Deneau,Jawad Ahmad,Rachel Jones,Gary Piotrowicz,Henry Liu
标识
DOI:10.1038/s41467-024-45427-4
摘要
Abstract Traffic light optimization is known to be a cost-effective method for reducing congestion and energy consumption in urban areas without changing physical road infrastructure. However, due to the high installation and maintenance costs of vehicle detectors, most intersections are controlled by fixed-time traffic signals that are not regularly optimized. To alleviate traffic congestion at intersections, we present a large-scale traffic signal re-timing system that uses a small percentage of vehicle trajectories as the only input without reliance on any detectors. We develop the probabilistic time-space diagram, which establishes the connection between a stochastic point-queue model and vehicle trajectories under the proposed Newellian coordinates. This model enables us to reconstruct the recurrent spatial-temporal traffic state by aggregating sufficient historical data. Optimization algorithms are then developed to update traffic signal parameters for intersections with optimality gaps. A real-world citywide test of the system was conducted in Birmingham, Michigan, and demonstrated that it decreased the delay and number of stops at signalized intersections by up to 20% and 30%, respectively. This system provides a scalable, sustainable, and efficient solution to traffic light optimization and can potentially be applied to every fixed-time signalized intersection in the world.
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