Quantile Regression-Based Estimation of Dynamic Statistical Contingency Fuel

Lei Kang, M. Hansen
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引用次数: 3

Abstract

Reducing fuel consumption is a unifying goal across the aviation industry. One fuel-saving opportunity for airlines is reducing contingency fuel loading by dispatchers. Many airlines’ flight planning systems (FPSs) provide recommended contingency fuel for dispatchers in the form of statistical contingency fuel (SCF). However, because of limitations of the current SCF estimation procedure, the application of SCF is limited. In this study, we propose to use quantile regression–based machine learning methods to account for fuel burn uncertainties and estimate more reliable SCF values. Utilizing a large fuel burn data set from a major U.S.-based airline, we find that the proposed quantile regression method outperforms the airline’s FPS. The benefit of applying the improved SCF models is estimated to be in the range $19 million–$65 million in fuel expense savings as well as 132 million–451 million kilograms of carbon dioxide emission reductions per year, with the lower savings being realized even while maintaining the current, extremely low risk of tapping the reserve fuel. The proposed models can also be used to predict benefits from reduced fuel loading enabled by increasing system predictability, for example, with improved air traffic management.
基于分位数回归的动态统计应急燃料估计
减少燃油消耗是整个航空业的统一目标。航空公司节约燃料的一个机会是减少调度员的应急燃油负荷。许多航空公司的飞行计划系统(fps)以统计应急燃料(SCF)的形式为调度员提供推荐的应急燃料。然而,由于现有的SCF估计方法的局限性,限制了SCF的应用。在本研究中,我们建议使用基于分位数回归的机器学习方法来考虑燃料燃烧的不确定性,并估计更可靠的SCF值。利用美国一家主要航空公司的大型燃油消耗数据集,我们发现所提出的分位数回归方法优于该航空公司的FPS。应用改进的SCF模型的好处估计在1900万至6500万美元的燃料费用节省范围内,以及每年减少1.32亿至4.51亿公斤的二氧化碳排放量,即使在保持目前极低的使用储备燃料的风险的情况下,也能实现较低的节省。所提出的模型还可以用于预测通过提高系统可预测性(例如,改进空中交通管理)来减少燃油负荷所带来的好处。
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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