卡车
标记
运输工程
计算机科学
弹性(材料科学)
双层优化
流量(计算机网络)
流量网络
遗传算法
功能(生物学)
工程类
运筹学
持续性
障碍物
修剪
启发式
轴
行车道
作者
Shaghayegh Nouhi,Michael Levin
标识
DOI:10.1177/03611981251387596
摘要
Road closures resulting from construction activities significantly disrupt traffic flow and often divert heavy truck traffic onto alternative routes. These detours, if not properly planned, can funnel trucks onto roads not designed for high axle loads, accelerating pavement deterioration and increasing maintenance needs. To address this challenge, this research proposes a comprehensive bilevel modeling framework that integrates vehicle-type-specific traffic flow prediction with detour signage placement optimization. Employing a user equilibrium traffic assignment model solved by paired alternative segments algorithm, the study predicts traffic distributions before and after road closures, identifying road segments vulnerable to increased truck traffic. A genetic algorithm is utilized to solve the bilevel optimization framework to strategically determine optimal detour signage placement. The primary objective is to minimize a fitness function that incorporates both infrastructure considerations and network efficiency measures, prioritizing the restriction of heavy trucks from vulnerable or prohibited road segments while accounting for network total travel times. The model is demonstrated through application to the entire Minneapolis transportation network, illustrating its capability to handle complex, large-scale real-world scenarios effectively. Results show that the optimized signage placement significantly reduces truck usage of vulnerable roads while maintaining efficient traffic operations, offering valuable insights for policymakers and planners aiming to enhance resilience and sustainability in detour management strategies.
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