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首页> 外文期刊>Intelligent Transportation Systems, IEEE Transactions on >Ant Colony Optimization for Simulated Dynamic Multi-Objective Railway Junction Rescheduling
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Ant Colony Optimization for Simulated Dynamic Multi-Objective Railway Junction Rescheduling

机译:模拟动态多目标路口重调度的蚁群优化

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摘要

Minimizing the ongoing impact of train delays has benefits to both the users of the railway system and the railway stakeholders. However, the efficient rescheduling of trains after a perturbation is a complex real-world problem. The complexity is compounded by the fact that the problem may be both dynamic and multi-objective. The aim of this research is to investigate the ability of ant colony optimization algorithms to solve a simulated dynamic multi-objective railway rescheduling problem and, in the process, to attempt to identify the features of the algorithms that enable them to cope with a multi-objective problem that is also dynamic. Results showed that, when the changes in the problem are large and frequent, retaining the archive of non-dominated solution between changes and updating the pheromones to reflect the new environment play an important role in enabling the algorithms to perform well on this dynamic multi-objective railway rescheduling problem.
机译:最大限度地减少火车延误的持续影响既有利于铁路系统的使用者,也有利于铁路利益相关者。但是,扰动后如何对火车进行有效的重新安排是一个复杂的现实问题。问题可能既是动态的又是多目标的,这使情况变得更加复杂。这项研究的目的是研究蚁群优化算法解决模拟的动态多目标铁路调度问题的能力,并在此过程中尝试找出使算法能够应对多目标的算法的特征。客观的问题也是动态的。结果表明,当问题的变化很大且频繁时,保留变化之间的非主导解的存档并更新信息素以反映新的环境在使算法在此动态多目标算法上表现良好方面起着重要作用。客观的铁路调度问题。

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