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Optimal Variable, Lane Group-Based Speed Limits at Freeway Lane Drops: A Multiobjective Approach

机译:高速公路车道下降的最佳变量,基于车道组的速度限制:一种多目标方法

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This study develops optimal variable, lane group-based, speed limits for traffic control at freeway lane drop areas (e.g., work zones). The proposed approach adopts a simulation-optimization framework that utilizes a calibrated and validated macroscopic traffic flow model METANET, along with the microscopic traffic simulation model VISSIM, to develop the optimal speed limits. A multiobjective optimization framework is implemented whereby the model primarily seeks to improve traffic safety by reducing the average number of stops, while taking other objectives, such as the average travel time and throughput, into consideration. For optimization, the heuristic, biologically-inspired optimization technique known as particle swarm optimization (PSO), is utilized, and the e-constraint method is adopted to allow for considering multiple objectives in the optimization process. The proposed traffic control strategy is then evaluated for a hypothetical freeway lane drop area under a real-world congested traffic scenario. The research findings show that the proposed lane group-based control strategy outperforms other link-based, variable speed limits reported in the literature. (C) 2020 American Society of Civil Engineers.
机译:本研究开发了高速公路巷道区域(例如,工作区)的交通管制的最佳变量,基于车道基础的速度限制。所提出的方法采用仿真优化框架,利用校准和验证的宏观流量流模型Metanet,以及微观流量仿真模型Vissim,以开发最佳速度限制。实现了多目标优化框架,其中模型主要寻求通过减少平均停止数,同时考虑到其他目标,例如平均旅行时间和吞吐量。为了优化,利用称为粒子群优化(PSO)的启发式,生物学激发优化技术,采用电子约束方法允许考虑优化过程中的多个目标。然后在真实拥挤的交通方案下评估所提出的交通管制策略,为一个假设的高速公路车道下降区域进行评估。研究结果表明,拟议的基于巷基的控制策略优于文献中报道的其他基于链路的可变速度限制。 (c)2020年美国土木工程师协会。

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