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A network-based dynamic air traffic flow model for short-term en route traffic prediction

机译:基于网络的短期空中交通流量动态预测模型

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This paper presents a dynamic network-based approach for short-term air traffic flow prediction in en route airspace. A dynamic network characterizing both the topological structure of airspace and the dynamics of air traffic flow is developed, based on which the continuity equation in fluid mechanics is adopted to describe the continuous behaviour of the en route traffic. Building on the network- based continuity equation, the space division concept in cell transmission model is introduced to discretize the proposed model both in space and time. The model parameters are sequentially updated based on the statistical properties of the recent radar data and the new predicting results. The proposed method is applied to a real data set from Shanghai Area Control Center for the short-term air traffic flow prediction both at flight path and en route sector level. The analysis of the case study shows that the developed method can characterize well the dynamics of the en route traffic flow, thereby providing satisfactory prediction results with appropriate uncertainty limits. The mean relative prediction errors are less than 0.10 and 0.14, and the absolute errors fall in the range of 0 to 1 and 0 to 3 in more than 95% time intervals respectively, for the flight path and en route sector level. Copyright (C) 2017 John Wiley & Sons, Ltd.
机译:本文提出了一种基于动态网络的航路短期空中交通流量预测方法。建立了同时表征空域拓扑结构和空中交通流动力学的动态网络,在此基础上采用流体力学的连续性方程式描述了路途交通的连续性。在基于网络的连续性方程的基础上,引入了小区传输模型中的空间划分概念,以在时间和空间上离散化所提出的模型。根据最近雷达数据的统计特性和新的预测结果,依次更新模型参数。将该方法应用于上海区域控制中心的真实数据集,以进行飞行路径和航路扇区级别的短期空中交通流量预测。案例分析表明,所开发的方法能够很好地描述路途交通流的动态特性,从而在适当的不确定性范围内提供令人满意的预测结果。对于飞行路径和航路扇区,平均相对预测误差小于0.10和0.14,并且绝对误差分别在大于95%的时间间隔内分别位于0到1和0到3的范围内。版权所有(C)2017 John Wiley&Sons,Ltd.

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