This article evaluates Machine Learning (ML) classification techniques applied to air-traffic conflict detection. The methodology develops a static approach in which the conflict prediction is performed when an aircraft pierces into the airspace. Conflict detection does not evaluate separation infringements but a Situation of Interest (SI). An aircraft pair constitutes a SI when it is expected to get with a horizontal separation between both aircraft closer than 10 Nautical Miles (NM) and a vertical separation closer than 1000 feet (ft). Therefore, the ML predictor classifies aircraft pairs between SI or No SI pairs. Air traffic information is extracted from The OpenSky Network that provides ADS-B trajectories. ADS-B trajectories do not off...
The objective of this paper is to present a machine learning approach for the prediction of the Requ...
In recent years, air travel has been an increasingly popular and essential means of transportation. ...
Air traffic systems have long relied on automated short-term conflict prediction algorithms to warn ...
Given the ongoing interest in the application of Machine Learning (ML) techniques, the development o...
International audienceClosest Point of Approach (CPA) is one of the main problems in aircraft Confli...
Probabilistic conflict detection methods typically require high computational burden to deal with co...
Conformal automation allows for increased acceptability of automation tools in air traffic control. ...
The growing interest in Unmanned Aerial Systems has led, especially in recent years, to the need for...
L'augmentation de la demande de trafic a mis à rude épreuve le système de contrôle de la circulation...
Today’s air traffic management (ATM) system evolves around the air traffic controllers and pilots. T...
Airspace’s increasing demand is a current concern without a solution. Different research projects ai...
Recently, Artificial intelligence (AI) algorithms have received increasable interest in various appl...
The increasing number of small Unmanned Aircraft System (sUAS) encounters with manned aircraft or ai...
Conflicts between taxiing aircraft are resolved by making the aircraft with lower priority wait, slo...
Detection of air traffic conflicts in a weather constrained airspace is challenging given the inhere...
The objective of this paper is to present a machine learning approach for the prediction of the Requ...
In recent years, air travel has been an increasingly popular and essential means of transportation. ...
Air traffic systems have long relied on automated short-term conflict prediction algorithms to warn ...
Given the ongoing interest in the application of Machine Learning (ML) techniques, the development o...
International audienceClosest Point of Approach (CPA) is one of the main problems in aircraft Confli...
Probabilistic conflict detection methods typically require high computational burden to deal with co...
Conformal automation allows for increased acceptability of automation tools in air traffic control. ...
The growing interest in Unmanned Aerial Systems has led, especially in recent years, to the need for...
L'augmentation de la demande de trafic a mis à rude épreuve le système de contrôle de la circulation...
Today’s air traffic management (ATM) system evolves around the air traffic controllers and pilots. T...
Airspace’s increasing demand is a current concern without a solution. Different research projects ai...
Recently, Artificial intelligence (AI) algorithms have received increasable interest in various appl...
The increasing number of small Unmanned Aircraft System (sUAS) encounters with manned aircraft or ai...
Conflicts between taxiing aircraft are resolved by making the aircraft with lower priority wait, slo...
Detection of air traffic conflicts in a weather constrained airspace is challenging given the inhere...
The objective of this paper is to present a machine learning approach for the prediction of the Requ...
In recent years, air travel has been an increasingly popular and essential means of transportation. ...
Air traffic systems have long relied on automated short-term conflict prediction algorithms to warn ...