2021
DOI: 10.20944/preprints202102.0396.v1
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A Unified, Clustering-Based Framework for Detection of Spatial and Energy Anomalies in Trajectories Utilizing ADS-B Data

Abstract: As air traffic demand grows, robust, data-driven anomaly detection methods are required to ensure that aviation systems become safer and more efficient. The terminal airspace is identified as the most critical airspace for both individual flight-level and system-level safety and efficiency. As such, developing data-driven anomaly detection methods to analyze terminal airspace operations is paramount. With the expansion of ADS-B technology, open-source flight tracking data has become more readily available to e… Show more

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Cited by 3 publications
(1 citation statement)
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“…Andrew M. Churchill and Michael Bloem [111] proposed a method for clustering aircraft taxi trajectories to ultimately identify anomalous trajectories. In addition to the clustering of aircraft taxi trajectories, Samantha J. Corrado et al [112] Given that the groups clustered by the HDBSCAN algorithm still contained a large number of flights, a median case of each cluster group was identified by computing the Hausdorff distance for all of the cases in the cluster group. For example, Figure 6.…”
Section: Flight Trajectory Clusteringmentioning
confidence: 99%
“…Andrew M. Churchill and Michael Bloem [111] proposed a method for clustering aircraft taxi trajectories to ultimately identify anomalous trajectories. In addition to the clustering of aircraft taxi trajectories, Samantha J. Corrado et al [112] Given that the groups clustered by the HDBSCAN algorithm still contained a large number of flights, a median case of each cluster group was identified by computing the Hausdorff distance for all of the cases in the cluster group. For example, Figure 6.…”
Section: Flight Trajectory Clusteringmentioning
confidence: 99%