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A quantum evolutionary algorithm for the second-best congestion pricing problem in urban traffic networks

机译:一种解决城市交通网络次优拥挤定价问题的量子进化算法

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This paper investigates the congestion pricing problem in urban traffic networks. A first-best strategy, a second-best strategy for toll leveling in closed cordons and a second-best strategy for determining both toll levels and toll points are considered. The problem is known to be a mixed integer programming model and formulated as a bi-level optimization problem, with an objective of maximizing the social welfare. A method is presented to solve the problem, based on a novel metaheuristic algorithm, namely quantum evolutionary algorithm (QEA). To verify the proposed method, the widely used genetic algorithm (GA) is also applied to solve the problem. The problem is solved for a medium-size urban traffic network and the results of the QEA are compared against the conventional GA. Computational results show that the QEA outperforms the GA in solution quality.
机译:本文研究了城市交通网络中的拥堵定价问题。考虑了封闭式警戒线收费水平的最佳策略,最佳策略和确定收费水平和收费点的最佳策略。已知该问题是混合整数规划模型,并被表述为两级优化问题,目的是最大化社会福利。提出了一种基于新型启发式算法量子进化算法(QEA)的求解方法。为了验证所提出的方法,还应用了广泛使用的遗传算法(GA)来解决该问题。解决了中型城市交通网络的问题,并将QEA的结果与常规GA进行了比较。计算结果表明,QEA在解决方案质量方面优于GA。

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