Sortie-based aircraft component demand rate to predict requirements

Q3 Decision Sciences
T. O'Neal, J. Dickens, L. Champagne, Aaron V. Glassburner, Jason Anderson, Timothy W. Breitbach
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Abstract

PurposeForecasting techniques improve supply chain resilience by ensuring that the correct parts are available when required. In addition, accurate forecasts conserve precious resources and money by avoiding new start contracts to produce unforeseen part requests, reducing labor intensive cannibalization actions and ensuring consistent transportation modality streams where changes incur cost. This study explores the effectiveness of the United States Air Force’s current flying hour-based demand forecast by comparing it with a sortie-based demand forecast to predict future spare part needs.Design/methodology/approachThis study employs a correlation analysis to show that demand for reparable parts on certain aircraft has a stronger correlation to the number of sorties flown than the number of flying hours. The effect of using the number of sorties flown instead of flying hours is analyzed by employing sorties in the United States Air Force (USAF)’s current reparable parts forecasting model. A comparative analysis on D200 forecasting error is conducted across F-16 and B-52 fleets.FindingsThis study finds that the USAF could improve its reparable parts forecast, and subsequently part availability, by employing a sortie-based demand rate for particular aircraft such as the F-16. Additionally, our findings indicate that forecasts for reparable parts on aircraft with low sortie count flying profiles, such as the B-52 fleet, perform better modeling demand as a function of flying hours. Thus, evidence is provided that the Air Force should employ multiple forecasting techniques across its possessed, organically supported aircraft fleets. The improvement of the forecast and subsequent decrease in forecast error will be presented in the Results and Discussion section.Research limitations/implicationsThis study is limited by the data-collection environment, which is only reported on an annual basis and is limited to 14 years of historical data. Furthermore, some observations were not included because significant data entry errors resulted in unusable observations.Originality/valueThere are few studies addressing the time measure of USAF reparable component failures. To the best of the authors’ knowledge, there are no studies that analyze spare component demand as a function of sortie numbers and compare the results of forecasts made on a sortie-based demand signal to the current flying hour-based approach to spare parts forecasting. The sortie-based forecast is a novel methodology and is shown to outperform the current flying hour-based method for some aircraft fleets.
基于架次的飞机部件需求率预测需求
目的预测技术通过确保在需要时提供正确的部件来提高供应链的弹性。此外,准确的预测可以节省宝贵的资源和金钱,避免新的启动合同产生不可预见的零件要求,减少劳动密集型的同类行为,并确保一致的运输模式流,其中变化会产生成本。本研究通过比较美国空军当前基于飞行小时的需求预测与基于架次的需求预测来预测未来备件需求的有效性。设计/方法/方法本研究采用相关分析表明,某些飞机的可修理部件需求与飞行架次的相关性强于与飞行小时数的相关性。利用美国空军现有的可修复部件预测模型中的飞行架次,分析了使用飞行架次数代替飞行小时的效果。对F-16和B-52机队的D200预测误差进行了对比分析。本研究发现,美国空军可以通过对特定飞机(如F-16)采用基于架次的需求率来提高其可修复部件的预测,以及随后的部件可用性。此外,我们的研究结果表明,对低架次飞行剖面的飞机(如B-52机队)的可修复部件的预测,作为飞行小时的函数,表现出更好的建模需求。因此,有证据表明,空军应在其拥有的有机支持机队中采用多种预测技术。预测的改进和随后的预测误差的减少将在结果和讨论部分提出。研究局限性/启示本研究受到数据收集环境的限制,仅以年度为基础进行报告,并且仅限于14年的历史数据。此外,由于严重的数据输入错误导致观测结果不可用,一些观测结果未被包括在内。原创性/价值很少有研究解决美国空军可修复部件故障的时间测量。据作者所知,目前还没有研究将备件需求作为架次数的函数进行分析,并将基于架次的需求信号的预测结果与当前基于飞行小时的备件预测方法进行比较。基于架次的预测方法是一种新颖的方法,对某些机队来说,其性能优于当前基于飞行小时的预测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
0.90
自引率
0.00%
发文量
5
审稿时长
12 weeks
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