The COVID-19 pandemic has recently exacerbated the fierce competition in the transportation businesses. The airline industry took one of the biggest hits as the closure of international borders forced aircraft operators to suspend their international routes, keeping aircraft on the ground without generating revenues while at the same time still requiring adequate maintenance. To maintain their operational sustainability, finding a good balance between cost reductions measure and safety standards fulfillment, including its maintenance procedure, becomes critical. This paper proposes an AI-assisted predictive maintenance scheme that synthesizes prognostics modeling and simulation-based optimization to help airlines decide their optimal engine maintenance approach. The proposed method enables airlines to utilize their diagnostics measurements and operational settings to design a more customized maintenance strategy that takes engine operations conditions into account. Our numerical experiments on the proposed approach resulted in significant cost savings without compromising the safety standards. The experiments also show that maintenance strategies tailored to the failure mode and operational settings (that our framework enables) yield 13% more cost savings than generic optimal maintenance strategies. The generality of our proposed framework allows the extension to other intelligent, safety-critical transportation systems.
翻译:COVID-19大流行最近加剧了运输业的激烈竞争,航空业因关闭国际边界而成为最大的打击之一,迫使飞机运营商暂停其国际航线,在不产生收入的同时使飞机留在地面,同时仍需要适当的维修;为了保持其业务可持续性,在降低成本措施和达到安全标准(包括其维护程序)之间找到一个良好的平衡,从而保持其业务可持续性,本文件提议了一个由AI协助的预测性维护计划,将预测性模型和模拟优化结合起来,以帮助航空公司决定其最佳的引擎维护方法; 拟议的方法使航空公司能够利用诊断性测量和操作环境设计一个更符合用户需要的维护战略,将引擎运行条件考虑在内; 我们对拟议方法的量化试验在不损害安全标准的情况下节省了大量费用; 实验还表明,根据故障模式和业务环境(我们的框架所允许的)制定的维护战略比一般最佳维护战略节省了13%的费用; 我们提出的框架的笼统性使得其他智能和安全临界运输系统得以扩展。