Categorizing Flight Paths using Data Visualization and Clustering Methodologies
Abstract
This work leverages the U.S. Federal Aviation Administration's Traffic Flow Management System dataset and DV8, a recently developed tool for highly interactive visualization of air traffic data, to develop clustering algorithms for categorizing air traffic by their varying flight paths. Two clustering methodologies, a spatial-based geographic distance model, and a vector-based cosine similarity model, are demonstrated and compared for their clustering effectiveness. Examples of their applications reveal successful, realistic clustering based on automated clustering result determination and human-in-the-loop processes, with geographic distance algorithms performing better for enroute portions of flight paths and cosine similarity algorithms performing better for near-terminal operations, such as arrival paths. A point extraction technique is applied to improve computation efficiency.
Cite
@article{arxiv.2310.00773,
title = {Categorizing Flight Paths using Data Visualization and Clustering Methodologies},
author = {Yifan Song and Keyang Yu and Seth Young},
journal= {arXiv preprint arXiv:2310.00773},
year = {2023}
}
Comments
Published in the 9th International Conference on Research in Air Transportation (ICRAT'20): https://www.icrat.org/previous-conferences/9th-international-conference/papers/