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Analysis and Modeling of Air Traffic Trajectories Uncertainty in Chinese Airspace

机译:中国领空空中交通轨迹不确定性的分析与建模

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The increasing pressure on air traffic management (ATM) system has become a key issue that impedes the development of air transportation. Therefore, a transformation is underway to increase ATM safety, capacity, efficiency and environmental friendliness. As a fundamental element of the transformation, trajectory-based operation (TBO) considers the trajectory during all phases of flight and supports strategic planning to maximize the ATM system capacity. However, it is hard to guarantee the accuracy of trajectory due to the effects of meteorological conditions, airspace adjustments, airport capacity limitations and etc.. Thus, the analysis and modeling of trajectories uncertainty based on real data is proposed to quantify those effects. Firstly, the flight and trajectory data for Chinese airspace within three months are analyzed and the characteristic factors which have great influence on trajectories uncertainty are selected. Then, setting the key characteristic factors as input and the arrival time at the waypoint as output, the supervised learning model is established by SVM and RNN respectively. Finally, the predicted results of the two methods and the real data have been compared, and the accuracy of the core factors and the model have been verified.
机译:空中交通管理(ATM)系统的压力越来越大,已成为阻碍航空运输发展的关键问题。因此,正在进行改造以提高ATM的安全性,容量,效率和环境友好性。作为转换的基本要素,基于轨迹的操作(TBO)在飞行的所有阶段都考虑轨迹,并支持战略规划以最大化ATM系统的容量。然而,由于气象条件,空域调整,机场容量限制等因素的影响,很难保证航迹的准确性。因此,提出了基于真实数据的航迹不确定性分析和建模以量化这些影响。首先,分析了中国领空在三个月内的飞行和轨迹数据,选择了对轨迹不确定性有较大影响的特征因素。然后,将关键特征因子设置为输入,将到达路径点的时间设置为输出,分别通过SVM和RNN建立监督学习模型。最后,比较了两种方法的预测结果和实际数据,验证了核心因素和模型的准确性。

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