集成改进梯度投影的分布式计算方法,用于解决随机交通平衡问题

Honggang Zhang, Zhiyuan Liu, Yicheng Zhang, Weijie Chen, Chenyang Zhang
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摘要

本文提出了两种新的算法框架来解决基于 logit 的随机用户均衡流量分配问题(SUE-TAP)。根据梯度投影算法(称为 GP2)的不同变体,我们提出了一种针对 SUE-TAP 的改进型 GP2 算法(IGP)。这项研究首先提出了一种智能方法,用于确定向特定的出发地-目的地(OD)对分配更多或更少的努力。随后,TAP 可按不同的 OD 对进行分解,而所提出的 IGP 算法是基于串行方案(即高斯-赛德尔法)设计的。因此,我们提出了一种新的并行算法 P-IGP,它集成了块坐标下降(BCD)方法和 IGP 算法。具体来说,可以将独立的 OD 对分成若干块,并并行求解每块内基于 OD 的受限子问题。然后,我们概述了实现 P-IGP 算法以解决 SUE-TAP 的整个过程。我们进行了一些数值实验来验证所提出的算法。结果表明,与传统的 GP2 算法相比,所提出的 IGP 算法的收敛速度明显加快,达到了约 12% 的显著加速。此外,P-IGP 算法的性能也超过了所提出的 IGP 算法,其收敛效率可进一步显著提高 4-5 倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Distributed Computing Method Integrating Improved Gradient Projection for Solving Stochastic Traffic Equilibrium Problem

A Distributed Computing Method Integrating Improved Gradient Projection for Solving Stochastic Traffic Equilibrium Problem

This paper presents two novel algorithmic frameworks to address the logit-based stochastic user equilibrium traffic assignment problem (SUE-TAP). Following the different variant of the gradient projection (termed as GP2) algorithm, we propose an improved GP2 algorithm (IGP) for the SUE-TAP. This study initially presents a smart approach for determining the allocation of more or less effort to specific origin–destination (OD) pairs. Subsequently, the TAP can be decomposed by different OD pairs, whereas the proposed IGP algorithm is designed based on the serial scheme (i.e., the Gauss–Seidel method). Therefore, a new parallel algorithm P-IGP is proposed, which integrates the block coordinate descent (BCD) method and the IGP algorithm. In specific, the independent OD pairs can be separated into several blocks, and the OD-based restricted subproblems within each block can be solved in parallel. Then, we outline the entire process of implementing the P-IGP algorithm to address the SUE-TAP. Several numerical experiments are conducted to verify the proposed algorithms. The results reveal that the proposed IGP algorithm demonstrates significantly speeder convergence in comparison to the traditional GP2 algorithm, achieving a remarkable acceleration of approximately 12%. Furthermore, the performance of the P-IGP algorithm surpasses that of the proposed IGP algorithm, and it can further achieve a notable 4–5-fold enhancement in convergence efficiency.

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