数据驱动的飞机估计到达时间预测

C. Kern, I. Medeiros, T. Yoneyama
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引用次数: 22

摘要

在飞行途中预测飞机的预计到达时间(ETA)可能是一项具有挑战性的工作。影响航班准点的因素有很多,从飞行员完全可以控制的事情,比如飞行水平和巡航空速,一直到通常很难预测的环境情况,比如天气现象和机场拥堵。因此,飞机的ETA预测往往严重依赖于飞机性能模型,以及参数化或基于物理的轨迹模型,只有有时通过简单的统计考虑来增强,例如在一年中特定时期飞行路径上遇到的平均风速。这项工作提出了一种通过应用机器学习技术来增强飞机ETA预测的方法,同时考虑到有关飞行以及天气和空中交通的一般信息。在特征生成和选择上投入了大量的精力,随后从具有代表性的航班、天气和空中交通数据构建模型,从而提高预测精度。讨论了由于数据的性质而产生的一些挑战,例如天气信息自然地被分割成许多变量,这使得在没有覆盖所有可能情景的大量样本的情况下很难从中提取价值。结果表明,利用考虑飞行、空中交通和天气信息之间观测到的统计关系的模型对传统方法获得的ETA预测进行校正是可能的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-driven aircraft estimated time of arrival prediction
Predicting an aircraft's Estimated Time of Arrival (ETA) while enroute can be a challenging endeavor. The great number of factors that can affect a flight's punctuality range from things well under the pilot's control, such as flight level and cruise airspeed, all the way to environmental circumstances that are generally very hard to predict, such as weather phenomena and airport congestion. Therefore, aircraft ETA predictions tend to rely heavily on aircraft performance models, along with either parametric or physics-based trajectory models, being only sometimes enhanced by simplistic statistical considerations, such as the average winds encountered in a flight path during a certain period of the year. This work presents a method for enhancing aircraft ETA predictions by applying machine learning techniques, taking into account general information about the flight as well as weather and air traffic. A good amount of effort is put into feature generation and selection, and subsequently a model is built from representative flight, weather and air traffic data, allowing for an increase in prediction accuracy. Some of the challenges that arise from the nature of the data are discussed, such as the fact that weather information is naturally fragmented into a great number of variables, which makes it difficult to extract value from it without a very large number of samples covering all possible scenarios. The results show that it is possible to enhance the ETA predictions obtained from traditional methods by correcting them with a model that takes into account the statistical relationships observed between flight, air traffic and weather information.
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