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Estimating entry counts and ATFM regulations during adverse weather conditions using machine learning

机译:使用机器学习期间估算在恶劣天气条件期间的入境计数和ATFM法规

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摘要

In recent years, convective weather has been the cause of significant delays in the European airspace. With climate experts anticipating the frequency and intensity of convective weather to increase in the future, it is necessary to find solutions that mitigate the impact of convective weather events on the airspace system. Analysis of historical air traffic and weather data will provide valuable insight on how to deal with disruptive convective events in the future. We propose a methodology for processing and integrating historic traffic and weather data to enable the use of machine learning algorithms to predict network performance during adverse weather. In this paper we develop regression and classification supervised learning algorithms to predict airspace performance characteristics such as entry count, number of flights impacted by weather regulations, and if a weather regulation is active. Examples using data from the Maastricht Upper Area Control Centre are presented with varying levels of predictive performance by the machine learning algorithms. Data sources include Demand Data Repository from EUROCONTROL and the Rapid Developing Thunderstorm product from EUMETSAT.
机译:近年来,对流天气一直是欧洲领空延误的原因。随着气候专家预测对流天气的频率和强度将来增加,有必要找到减轻对流天气事件对空域系统的影响的解决方案。历史空中交通和天气数据的分析将为未来处理破坏性对流事件提供有价值的见解。我们提出了一种处理和集成历史流量和天气数据的方法,以使得使用机器学习算法来预测在恶劣天气期间的网络性能。在本文中,我们开发回归和分类监督学习算法,以预测空域性能特征,如进入计数,由天气法规影响的航班数量,以及如果天气调节有效。使用来自Maastricht上部区域控制中心的数据的示例呈现了机器学习算法的不同水平的预测性能。数据源包括来自Eurocontrol的需求数据存储库,以及来自Eumetsat的快速发展雷暴产品。

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