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An ant colony algorithm based on opportunities for scheduling the preventive railway maintenance

机译:一种基于机会的蚁群算法,用于调度铁路预防性维修

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Railway infrastructure maintenance is of fundamental importance in order to ensure a good service in terms of punctuality, safety and efficiently operation of trains on railway track and also for passenger comfort. Track maintenance covers a large amount of different activities such as inspections, repairs, replacement of failed components or modules and renewals. In this paper, we address the problem of scheduling the preventive railway maintenance activities. The goal is to prevent track failure probability and breakdowns to guarantee a stable and safe service in specified conditions. These activities ensure the increasing of the system reliability and its availability but require considerable resources and large costs, which can be minimized by scheduling the maintenance operations. This problem is proven to be NP-hard, and consequently the development of heuristic and meta-heuristic approaches to solve it is well justified. Thus, we propose an ant colony optimization (ACO) method based on opportunities to deal with this problem. The performance of our proposed ACO algorithm is tested by numerical experiments on a large number of randomly generated instances. A comparison with optimal solutions are presented. The results show the effectiveness of our proposed method.
机译:铁路基础设施维护对于确保按时,安全和有效地在铁路轨道上运行列车以及确保乘客舒适度方面具有良好的服务至关重要。轨道维护涵盖了许多不同的活动,例如检查,维修,更换有故障的组件或模块以及进行更新。在本文中,我们解决了安排预防性铁路维护活动的问题。目的是防止轨道故障的可能性和故障,以确保在特定条件下的稳定和安全服务。这些活动确保了系统可靠性及其可用性的提高,但需要大量资源和大量成本,可以通过安排维护操作将其最小化。事实证明,此问题是NP难题,因此开发解决此问题的启发式和元启发式方法是合理的。因此,我们提出了基于机会来解决这个问题的蚁群优化(ACO)方法。通过大量随机生成的实例的数值实验,测试了我们提出的ACO算法的性能。提出了与最佳解决方案的比较。结果表明了该方法的有效性。

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