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An Algorithm for the Mixed Transportation Network Design Problem

机译:混合交通网络设计问题的算法

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摘要

This paper proposes an optimization algorithm, the dimension-down iterative algorithm (DDIA), for solving a mixed transportation network design problem (MNDP), which is generally expressed as a mathematical programming with equilibrium constraint (MPEC). The upper level of the MNDP aims to optimize the network performance via both the expansion of the existing links and the addition of new candidate links, whereas the lower level is a traditional Wardrop user equilibrium (UE) problem. The idea of the proposed solution algorithm (DDIA) is to reduce the dimensions of the problem. A group of variables (discrete/continuous) is fixed to optimize another group of variables (continuous/discrete) alternately; then, the problem is transformed into solving a series of CNDPs (continuous network design problems) and DNDPs (discrete network design problems) repeatedly until the problem converges to the optimal solution. The advantage of the proposed algorithm is that its solution process is very simple and easy to apply. Numerical examples show that for the MNDP without budget constraint, the optimal solution can be found within a few iterations with DDIA. For the MNDP with budget constraint, however, the result depends on the selection of initial values, which leads to different optimal solutions (i.e., different local optimal solutions). Some thoughts are given on how to derive meaningful initial values, such as by considering the budgets of new and reconstruction projects separately.
机译:本文提出了一种优化算法,即降维迭代算法(DDIA),用于解决混合交通网络设计问题(MNDP),通常将其表达为带有平衡约束的数学规划(MPEC)。 MNDP的上层旨在通过扩展现有链路和添加新的候选链路来优化网络性能,而下层是传统的Wardrop用户均衡(UE)问题。提出的解决方案算法(DDIA)的想法是减小问题的范围。固定一组变量(离散/连续)以交替优化另一组变量(连续/离散);然后,将问题转换为反复解决一系列CNDP(连续网络设计问题)和DNDP(离散网络设计问题),直到问题收敛到最佳解决方案为止。该算法的优点是其求解过程非常简单,易于应用。数值示例表明,对于没有预算约束的MNDP,最佳解决方案可以在DDIA的几次迭代中找到。然而,对于具有预算约束的MNDP,结果取决于初始值的选择,这导致不同的最优解(即,不同的局部最优解)。对于如何获得有意义的初始值,例如通过分别考虑新项目和重建项目的预算,提出了一些想法。

著录项

  • 期刊名称 other
  • 作者

    Xinyu Liu; Qun Chen;

  • 作者单位
  • 年(卷),期 -1(11),9
  • 年度 -1
  • 页码 e0162618
  • 总页数 18
  • 原文格式 PDF
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