论文标题

从整个行业参数到以飞机为中心的机上推理:通过机器学习改善航空绩效预测

From industry-wide parameters to aircraft-centric on-flight inference: improving aeronautics performance prediction with machine learning

论文作者

Dewez, Florent, Guedj, Benjamin, Vandewalle, Vincent

论文摘要

飞机性能模型在航空公司运营中起着关键作用,尤其是在计划燃油式飞行方面。在实践中,制造商提供的指南在整个飞机生命周期中通过单个因素进行了略微修改,从而实现了更好的燃料预测。但是,这有局限性,特别是它们并不能反映出影响飞机性能的每个功能的演变。我们的目标是克服这一限制。本文的关键贡献是促进使用机器学习来利用飞机执行的航班过程中连续记录的大量数据,并提供反映其实际和个人性能的模型。我们通过关注记录的飞行数据的阻力和提升系数的估计来说明我们的方法。由于这些系数未直接记录,因此我们诉诸空气动力学近似。作为安全检查,我们提供了界限,以评估空气动力学近似和方法的统计性能的准确性。我们为机器学习算法的集合提供了数值结果。我们报告了现实生活中的出色准确性,并具有与空气动力学原理相干的经验证据来支持我们的建模。

Aircraft performance models play a key role in airline operations, especially in planning a fuel-efficient flight. In practice, manufacturers provide guidelines which are slightly modified throughout the aircraft life cycle via the tuning of a single factor, enabling better fuel predictions. However this has limitations, in particular they do not reflect the evolution of each feature impacting the aircraft performance. Our goal here is to overcome this limitation. The key contribution of the present article is to foster the use of machine learning to leverage the massive amounts of data continuously recorded during flights performed by an aircraft and provide models reflecting its actual and individual performance. We illustrate our approach by focusing on the estimation of the drag and lift coefficients from recorded flight data. As these coefficients are not directly recorded, we resort to aerodynamics approximations. As a safety check, we provide bounds to assess the accuracy of both the aerodynamics approximation and the statistical performance of our approach. We provide numerical results on a collection of machine learning algorithms. We report excellent accuracy on real-life data and exhibit empirical evidence to support our modelling, in coherence with aerodynamics principles.

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