弯曲物分解加速铁路干预优化方案的确定

IF 1.9 Q3 MANAGEMENT Infrastructure Asset Management Pub Date : 2023-07-20 DOI:10.1680/jinam.22.00039
H. Mehranfar, B. Adey, M. Burkhalter, Saviz Moghtadernejad
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引用次数: 0

摘要

铁路资产管理者的一项重要任务是制定干预方案。除了资产状况及其最佳干预策略外,这些干预措施还需要考虑网络层面的协同效应和约束。考虑到这些问题可能导致比资产干预策略中规定的更早或更晚地执行干预,以达到最优状态。协同效应包括这样一个事实,即同时执行多个干预措施只会干扰列车运行一次。约束包括预算限制和不能同时关闭平行线。尽管许多铁路资产管理公司目前以相当定性的迭代方式确定干预计划,但人们对利用数字化来改进这一过程的兴趣越来越大。这种兴趣导致了对混合整数线性规划发展的研究的增加,以更有效地确定最优规划。然而,这些强大的模型仍然存在复杂的干预计划问题,使得它们的使用速度比预期的要慢。本文研究了Benders分解的潜在用途,以加速确定2.2公里爱尔兰铁路网的最佳铁路干预方案。研究结果表明,对于所研究的实例,确定最佳干预方案的速度提高了30%。
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Benders decomposition to accelerate determination of optimal railway intervention programs
An important task of railway asset managers is to develop intervention programs. These interventions need to be developed considering network-level synergies and constraints, in addition to the condition of the assets and their optimal intervention strategies. Considering these concerns may lead to executing interventions earlier or later than specified in asset intervention strategies to reach optimality. Synergies include the fact that the simultaneous execution of more than one intervention only disrupts train movements once. Constraints include budget limits and not closing parallel lines simultaneously. Although many railway asset managers currently determine intervention programs in a rather qualitative iterative fashion, there is an increasing interest in exploiting digitalisation to improve the process. This interest has led to a rise in research focused on the development of mixed-integer linear programs to determine optimal programs more efficiently and effectively. These powerful models, however, still have issues with complicated intervention planning problems, making their use slower than desired. This paper investigates the potential use of Benders decomposition to accelerate the determination of optimal railway intervention programs for 2.2 km of the Irish Rail network. It is found that the optimal intervention program is determined up to 30% faster for the studied example.
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来源期刊
CiteScore
2.70
自引率
14.30%
发文量
18
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