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首页> 外文期刊>Networks and spatial economics >Method of Successive Weighted Averages (MSWA) and Self-Regulated Averaging Schemes for Solving Stochastic User Equilibrium Problem
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Method of Successive Weighted Averages (MSWA) and Self-Regulated Averaging Schemes for Solving Stochastic User Equilibrium Problem

机译:连续加权平均法(MSWA)和自调节平均方案来解决随机用户平衡问题

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摘要

Although stochastic user equilibrium (SUE) problem has been studied extensively in the past decades, the solution convergence of SUE is generally quite slow because of the use of the method of successive averages (MSA), in which the auxiliary flow pattern generated at each iteration contributes equally to the final solution. Realizing that the auxiliary flow pattern is in fact approaching to the solution point when the iteration number is large, in this paper, we introduce the method of successive weighted averages (MSWA) that includes a new step size sequence giving higher weights to the auxiliary flow patterns from the later iterations. We further develop a self-regulated averaging method, in which the step sizes are varying, rather than fixed, depending on the distance between intermediate solution and auxiliary point. The proposed step size sequences in both MSWA and self-regulated averaging method satisfy the Blum theorem, which guarantees the convergence of SUE problem. Computational results demonstrate that convergence speeds of MSWA and self-regulated averaging method are much faster than those of MSA and the speedup factors are in a manner of magnitude for high accuracy solutions. Besides SUE problem, the proposed methods can also be applied to other fixed-point problems where MSA is applicable, which have wide-range applications in the area of transportation networks.
机译:尽管在过去的几十年中已经广泛研究了随机用户平衡(SUE)问题,但是由于使用了逐次平均(MSA)方法,SUE的解决方案收敛通常很慢,其中每次迭代都会生成辅助流模式对最终解决方案做出同等贡献。当意识到迭代次数较大时辅助流模式实际上已逼近求解点时,本文介绍了连续加权平均值(MSWA)方法,该方法包括一个新的步长序列,以赋予辅助流更高的权重后续迭代中的模式。我们进一步开发了一种自调节平均方法,其中步长根据中间解和辅助点之间的距离而变化,而不是固定的。 MSWA和自调节平均方法中提出的步长序列都满足Blum定理,从而保证了SUE问题的收敛性。计算结果表明,MSWA和自调节平均方法的收敛速度比MSA的收敛速度快得多,并且加速因子在某种程度上可满足高精度解决方案的要求。除了SUE问题外,所提出的方法还可以应用于MSA适用的其他定点问题,这些问题在交通网络领域具有广泛的应用。

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