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Heuristic approaches for operational aircraft maintenance routing problem with maximum flying hours and man-power availability considerations

机译:具有最大飞行时间和人力可用性考虑因素的启发式方法用于飞机运行维护路线问题

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摘要

Purpose - The purpose of this paper is twofold. First, to propose an operational model for aircraft maintenance routing problem (AMRP) rather than tactical models that are commonly used in the literature. Second, to develop a fast and responsive solution method in order to cope with the frequent changes experienced in the airline industry. Design/methodology/approach - Two important operational considerations were considered, simultaneously. First one is the maximum flying hours, and second one is the man-power availability. On the other hand, ant colony optimization (ACO), simulated annealing (SA), and genetic algorithm (GA) approaches were proposed to solve the model, and the upper bound was calculated to be the criteria to assess the performance of each meta-heuristic. After attempting to solve the model by these meta-heuristics, the authors noticed further improvement chances in terms of solution quality and computational time. Therefore, a new solution algorithm was proposed, and its performance was validated based on 12 real data from the EgyptAir carrier. Also, the model and experiments were extended to test the effect of the operational considerations on the profit. Findings - The computational results showed that the proposed solution algorithm outperforms other meta-heuristics in finding a better solution in much less time, whereas the operational considerations improve the profitability of the existing model. Research limitations/implications - The authors focused on some operational considerations rather than tactical considerations that are commonly used in the literature. One advantage of this is that it improves the profitability of the existing models. On the other hand, identifying future research opportunities should help academic researchers to develop new models and improve the performance of the existing models. Practical implications - The experiment results showed that the proposed model and solution methods are scalable and can thus be adopted by the airline industry at large. Originality/value - In the literature, AMRP models were cast with approximated assumption regarding the maintenance issue, while neglecting the man-power availability consideration. However, in this paper, the authors attempted to relax that maintenance assumption, and consider the man-power availability constraints. Since the result showed that these considerations improve the profitability by 5.63 percent in the largest case. The proposed operational considerations are hence significant. Also, the authors utilized ACO, SA, and GA to solve the model for the first time, and developed a new solution algorithm. The value and significance of the new algorithm appeared as follow. First, the solution quality was improved since the average improvement ratio over ACO, SA, and GA goes up to 8.30, 4.45, and 4.00 percent, respectively. Second, the computational time was significantly improved since it does not go beyond 3 seconds in all the 12 real cases, which is considered much lesser compared to ACO, SA, and GA.
机译:目的-本文的目的是双重的。首先,提出飞机维修航线问题(AMRP)的操作模型,而不是文献中通常使用的战术模型。其次,开发一种快速响应的解决方案方法,以应对航空业经历的频繁变化。设计/方法/方法-同时考虑了两个重要的操作注意事项。第一个是最大飞行时间,第二个是人力可用性。另一方面,提出了蚁群优化(ACO),模拟退火(SA)和遗传算法(GA)的方法来求解模型,并计算上限作为评估每个元数据性能的标准启发式。在尝试通过这些元启发式方法求解模型后,作者注意到在求解质量和计算时间方面有进一步的改进机会。因此,提出了一种新的求解算法,并基于埃及航空公司的12个真实数据验证了其性能。此外,还扩展了模型和实验,以测试运营考虑因素对利润的影响。发现-计算结果表明,所提出的解决方案算法在短得多的时间内找到更好的解决方案的性能优于其他元启发式算法,而操作方面的考虑则提高了现有模型的盈利能力。研究的局限性/含义-作者侧重于一些操作上的考虑,而不是文献中常用的战术上的考虑。这样做的优点之一是可以提高现有模型的盈利能力。另一方面,确定未来的研究机会应有助于学术研究人员开发新模型并改善现有模型的性能。实际意义-实验结果表明,所提出的模型和解决方案方法具有可扩展性,因此可以被整个航空业采用。原创性/价值-在文献中,关于维修问题的AMRP模型是在近似假设的前提下进行的,而忽略了人力可用性的考虑。但是,在本文中,作者试图放宽该维护假设,并考虑人力可用性约束。由于结果表明,这些考虑因素在最大的情况下可将利润率提高5.63%。因此,建议的操作考虑很重要。此外,作者首次使用ACO,SA和GA求解模型,并开发了新的求解算法。新算法的价值和意义如下。首先,由于相对于ACO,SA和GA的平均改进率分别达到8.30%,4.45%和4.00%,解决方案质量得到了提高。其次,计算时间得到了显着改善,因为在所有12个实际案例中,计算时间都不会超过3秒,与ACO,SA和GA相比,这要少得多。

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