论文标题

经过逐步的飞行轨迹预测,深度学习

Phased Flight Trajectory Prediction with Deep Learning

论文作者

Zhang, Kai, Chen, Bowen

论文摘要

未来十年,商业航空公司和私人喷气机的前所未有的增长给空中交通管制带来了挑战。精确的飞行轨迹预测在航空运输管理中具有重要意义,这有助于安全和有序的航班决策。现有的研究和应用主要集中在基于历史轨迹的序列生成上,而拥挤的空域中的飞机空气飞机相互作用,尤其是繁忙机场附近的空域的飞机相互作用被忽略了。另一方面,不同飞行阶段的空气动力学特征不同,并且该轨迹可能会受到各种不确定性的影响,例如天气和空中交通管制员的咨询。但是,没有文献充分考虑所有这些问题。因此,我们提出了一个分阶段的飞行轨迹预测框架。使用复发神经网络(RNN)混合物的变体分析和开采了多源和多模式数据集。具体来说,我们首先将时空图引入低空气道预测问题,并将飞机的运动约束嵌入到推理过程中,以获得可靠的预测结果。在途中,采用双重注意机制从整体数据集中自适应提取更重要的功能,以在动态环境中学习隐藏的模式。实验结果表明,我们提出的框架可以胜过大型乘客/运输飞机的飞行轨迹预测的最先进方法。

The unprecedented increase of commercial airlines and private jets over the next ten years presents a challenge for air traffic control. Precise flight trajectory prediction is of great significance in air transportation management, which contributes to the decision-making for safe and orderly flights. Existing research and application mainly focus on the sequence generation based on historical trajectories, while the aircraft-aircraft interactions in crowded airspace especially the airspaces near busy airports have been largely ignored. On the other hand, there are distinct characteristics of aerodynamics for different flight phases, and the trajectory may be affected by various uncertainties such as weather and advisories from air traffic controllers. However, there is no literature fully considers all these issues. Therefore, we proposed a phased flight trajectory prediction framework. Multi-source and multi-modal datasets have been analyzed and mined using variants of recurrent neural network (RNN) mixture. To be specific, we first introduce spatio temporal graphs into the low-altitude airway prediction problem, and the motion constraints of an aircraft are embedded to the inference process for reliable forecasting results. In the en-route phase, the dual attention mechanism is employed to adaptively extract much more important features from overall datasets to learn the hidden patterns in dynamical environments. The experimental results demonstrate our proposed framework can outperform state-of-the-art methods for flight trajectory prediction for large passenger/transport airplanes.

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