Aircraft Proximity Maps Based on Data-Driven Flow Modeling
Erwan Sala\"un, Maxime Gariel, Adan Vela, Eric Feron

TL;DR
This paper introduces 3D aircraft proximity maps that predict future aircraft presence, conflicts, and outliers to aid strategic air traffic management over medium to long-term horizons.
Contribution
It presents a novel data-driven approach for generating proximity maps that incorporate flow modeling, conflict probability, and outlier detection for air traffic management.
Findings
Maps effectively identify high-risk conflict regions.
Flow modeling accurately predicts aircraft distribution.
Outlier detection highlights non-conforming aircraft patterns.
Abstract
With the forecast increase in air traffic demand over the next decades, it is imperative to develop tools to provide traffic flow managers with the information required to support decision making. In particular, decision-support tools for traffic flow management should aid in limiting controller workload and complexity, while supporting increases in air traffic throughput. While many decision-support tools exist for short-term traffic planning, few have addressed the strategic needs for medium- and long-term planning for time horizons greater than 30 minutes. This paper seeks to address this gap through the introduction of 3D aircraft proximity maps that evaluate the future probability of presence of at least one or two aircraft at any given point of the airspace. Three types of proximity maps are presented: presence maps that indicate the local density of traffic; conflict maps that…
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