供需不确定性下的跨时交通网络改进策略

Xinxin Yu, Guoyi Tang, Zonghao Rao, Xiongjun Han, Changzhi Bian, Ying Liu, J. Shao, Heling Liu
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引用次数: 0

摘要

传统的交通规划是建立在确定性假设的基础上的,容易导致规划方案得出不合理的结论。研究了跨时间决策条件下的网络优化问题。假设供需服从已知的随机分布,进一步给出了随机双层规划的网络设计模型。上层模型的目标函数是最大化系统的净现值,下层模型使用传统的用户均衡模型。采用蒙特卡罗遗传算法求解供需不确定情况下的跨时交通网络设计问题。苏福尔斯网络实例表明,该模型可以应用于中型网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cross-time transportation network improvement strategies under supply and demand uncertainty
Traditional transportation planning is based on deterministic assumptions which can result in unreasonable conclusion in the planning scheme. This paper considers the network optimization problem under the condition of cross-time decision-making. Assuming that supply and demand obey the known random distribution, we further give the network design model of stochastic bi-level programming. The objective function of the upper model is to maximize the net present value of the system, and the lower model uses traditional user equilibrium model. Genetic algorithm with Monte Carlo is used to solve the cross-time transportation network design problem under supply and demand uncertainty. The Sioux Falls network example shows that the model can be applied to medium-sized networks.
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