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Solving the stochastic multi-class traffic assignment problem with asymmetric interactions, route overlapping, and vehicle restrictions

机译:解决具有不对称交互,路线重叠和车辆限制的随机多类交通分配问题

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In this paper, we develop a customized path-based algorithm for solving the stochastic multi-class traffic assignment problem with asymmetric interactions, route overlapping, and vehicle restrictions. The algorithm consists of an iterative balancing scheme to find the search direction, a self-regulated averaging line search scheme to determine a suitable stepsize, and a column generation scheme to generate a universal path set for multiple vehicle classes. These three schemes work together in the customized path-based algorithm to solve the stochastic multi-class traffic assignment problem. The solution algorithm simultaneously considers the asymmetric interactions among different vehicle types through the link travel time functions, various vehicle restrictions in a transportation network, and route overlapping using the path-size logit model for accounting random perceptions of network conditions in a stochastic user equilibrium framework. A real network in the city of Winnipeg, Canada, is used to examine the computational performance of the customized path-based algorithm. In addition, sensitivity analyses are conducted to test the algorithmic effectiveness with respect to several model parameters and percentages of trucks in the transportation network. Numerical results reveal that the path-based algorithm with the self-regulated averaging line search scheme is computationally effective in solving the stochastic multi-class traffic assignment problem with different modeling considerations. The algorithm is also computationally robust against various model parameters in the sensitivity analyses. Copyright (c) 2015 John Wiley & Sons, Ltd.
机译:在本文中,我们开发了一种定制的基于路径的算法,用于解决具有非对称相互作用,路线重叠和车辆限制的随机多类交通分配问题。该算法包括用于找到搜索方向的迭代平衡方案,用于确定合适步长的自调节平均线搜索方案以及用于为多个车辆类别生成通用路径集的列生成方案。这三种方案在定制的基于路径的算法中协同工作,以解决随机的多类交通分配问题。该解决方案算法通过链接行程时间函数,交通网络中的各种车辆限制以及路线重叠使用路径大小对数模型同时考虑了不同车辆类型之间的不对称相互作用,以解决随机用户均衡框架中对网络条件的随机感知。加拿大温尼伯市的真实网络用于检查定制的基于路径的算法的计算性能。此外,进行了敏感性分析,以测试关于运输网络中几个模型参数和卡车百分比的算法有效性。数值结果表明,具有自调节平均线搜索方案的基于路径的算法在解决具有不同建模考虑因素的随机多类交通分配问题时,在计算上是有效的。该算法在灵敏度分析中对各种模型参数也具有强大的计算能力。版权所有(c)2015 John Wiley&Sons,Ltd.

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