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Automated Route Clustering for Air Traffic Modeling

机译:用于空中交通建模的自动路线聚类

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An approach for identifying and approximating well-traveled routes in a historical dataset of flight trajectories is presented. The intent is to use these routes to construct a network model of air traffic flow for use in strategic planning. The flight trajectories are clustered based on spatial and dynamic similarity measures. A coarse clustering process first groups trajectories using origin, destination, and average ground speed information; then a fine clustering process uses the Frechet distance between pairs of trajectories in the coarse clusters as the more accurate measure of spatial similarity to further divide the trajectories into smaller clusters. The number of resulting clusters is automatically determined by employing a combination of three performance indices. This two-step clustering process has two benefits. It reduces the computational burden because the Frechet distance computations are required for fewer trajectory pairs due to the initial coarse clustering step. Secondly no manual tuning is required to determine the final number of clusters. A method of detecting and categorizing outliers is presented which fits well with the clustering process. The clustering and outlier processes are demonstrated on a historical dataset for a region composed of 6 Centers with 21 airports.
机译:提出了一种在飞行轨迹的历史数据集中识别和逼近良好行驶的路线的方法。目的是使用这些路线来构建用于战略规划的空中交通流量网络模型。飞行轨迹基于空间和动态相似性度量进行聚类。粗略的聚类过程首先使用起点,目的地和平均地面速度信息对轨迹进行分组。然后精细的聚类过程将粗聚类中的成对轨迹之间的Frechet距离用作空间相似性的更准确度量,以将轨迹进一步划分为较小的聚类。通过使用三个性能指标的组合,可以自动确定生成的群集的数量。这个分为两步的群集过程有两个好处。它减少了计算负担,因为由于初始的粗聚类步骤,需要较少的轨迹对进行弗雷歇距离计算。其次,不需要手动调整即可确定集群的最终数量。提出了一种检测和分类离群值的方法,该方法非常适合聚类过程。聚类和离群过程在由6个中心和21个机场组成的区域的历史数据集中进行了演示。

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