利用多项式混沌展开量化飞机轨迹预测的不确定性

Enrique Casado, M. L. Civita, M. Vilaplana, E. McGookin
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引用次数: 8

摘要

提出了一种基于多项式混沌(PC)理论的飞机轨迹预测不确定性量化方法。该方法依赖于影响轨迹预测过程的不确定性源的单变量多项式描述。这些描述用于建立多元多项式展开式,表示飞机状态变量沿预测轨迹的可变性。一个案例研究比较了经典蒙特卡罗方法与应用所谓的任意多项式混沌展开(aPCE)产生的结果。本文提供的结果表明,这种新方法可以用非常低的计算量精确地量化轨迹预测的不确定性,从而能够在很短的时间间隔内计算数千个航班的交通样本的单个轨迹的不确定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantification of aircraft trajectory prediction uncertainty using polynomial chaos expansions
A novel approach to quantify the uncertainty associated with any aircraft trajectory prediction based on the application of the Polynomial Chaos (PC) theory is presented. The proposed method relies on univariate polynomial descriptions of the uncertainty sources affecting the trajectory prediction process. Those descriptions are used to build the multivariate polynomial expansions that represent the variability of the aircraft state variables along the predicted trajectory. A case study compares the results obtained by a classical Monte Carlo approach with those generated by applying the so-called arbitrary Polynomial Chaos Expansions (aPCE). The results provided herein lead to conclude that this new methodology can be used to accurately quantify trajectory prediction uncertainty with a very low computational effort, enabling the capability of computing the uncertainty of the individual trajectories of a traffic sample of thousands flights within very short time intervals.
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