基于策略的均衡交通分配问题的Hyperbush算法

Zhandong Xu, Jun Xie, Xiaobo Liu, Y. Nie
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引用次数: 5

摘要

基于策略的均衡交通分配(SETA)问题将出行选择广义地定义为一种策略,而不是一条简单的路径。旅行者在基于策略的网络中导航,最终会遵循一条超路径。SETA非常适合表示发生在路线节点上的丰富的旅行选择集,例如过境乘客的换乘决策、卡车司机的投标决策和出租车司机的重新定位决策。本文认识并强调了经典和新兴SETA问题之间的共性,并建议将它们统一到基于超图概念的同一建模框架中。将超图分解为基于目标的超丛,提出了一种通用超丛算法(HBA)。通过构造超丛并限制对它们的流量分配,HBA承诺以更低的计算成本(CPU时间和内存消耗)获得更精确的解决方案,以解决更大的SETA问题实例。为了证明它的通用性和效率,我们定制HBA来解决两个SETA问题。结果证实HBA的性能始终优于文献中的基准算法,包括两种最先进的基于超路径的算法。为了获得实际大小的SETA实例的高质量平衡解决方案,HBA的运行速度比最佳竞争对手快五倍,而内存消耗只是其一小部分。
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Hyperbush Algorithm for Strategy-Based Equilibrium Traffic Assignment Problems
Strategy-based equilibrium traffic assignment (SETA) problems define travel choice broadly as a strategy rather than a simple path. Travelers navigating through a network based on a strategy end up following a hyperpath. SETA is well suited to represent a rich set of travel choices that take place en route at nodes, such as transit passengers’ transfer decisions, truckers’ bidding decisions, and taxi drivers’ reposition decisions. This paper recognizes and highlights the commonalities among classical and emerging SETA problems and proposes to unify them within the same modeling framework, built on the concept of a hypergraph. A generic hyperbush algorithm (HBA) is developed by decomposing a hypergraph into destination-based hyperbushes. By constructing hyperbushes and limiting traffic assignments to them, HBA promises to obtain more precise solutions to larger instances of SETA problems at a lower computational cost, both in terms of CPU time and memory consumption. To demonstrate its generality and efficiency, we tailor HBA to solve two SETA problems. The results confirm that HBA consistently outperforms the benchmark algorithms in the literature, including two state-of-the-art hyperpath-based algorithms. To obtain high-quality equilibrium solutions for SETA instances of practical size, HBA runs up to five times faster than the best competitor with a fraction of its memory consumption.
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