基于核密度估计的空中交通预测模型

Yi Cao, Lingsong Zhang, Dengfeng Sun
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引用次数: 6

摘要

本文重新研究了一种用于全国空中交通预测的链路传输模型。预测精度依赖于对历史轨迹的统计分析得出的各环节遍历时间的估计。作为最直接的方法,平均遍历时间经常在模型实现中使用。但是数据样本中固有的异常值很容易扭曲估计。为了解决这一问题,本文提出使用数据样本概率密度函数到达峰值值所对应的遍历次数模式。连续概率密度函数的估计使用非参数方法,核密度估计。由于该模型具有抗离群值的特性,因此使用该模型对链路传输模型进行参数化是一种鲁棒性更好的方法。基于三个月历史交通数据的模拟表明,与传统的平均方法相比,在扇区计数预测中使用核密度估计可以减少6%的建模误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An air traffic prediction model based on kernel density estimation
This paper revisits a link transmission model that is designed for nationwide air traffic prediction. The prediction accuracy relies on the estimate of traversal time of each link, which is obtained through statistical analysis of historical trajectories. As the most straightforward approach, the average traversal time is often used in the model implementation. But the outliers inherent in the data samples can easily distort the estimate. To address this issue, this paper proposes to use the mode of the traversal times which corresponds to the value reaching the peak of the probability density function of data samples. The continuous probability density function is estimated using a non-parametric approach, kernel density estimation. As the mode is resistant to the outliers, using the mode to parameterize the link transmission model is a more robust approach. Simulations based on historical traffic data of three months show that, in comparison with the conventional mean approach, use of the kernel density estimation in the sector count prediction leads to a 6% reduction in modeling errors.
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