Summarization: In this work we propose and investigate the use of collaborative reinforcement learning methods for resolving demand-capacity imbalances during pre-tactical Air Traffic Management. By so doing, we also initiate the study of data-driven techniques for predicting multiple correlated aircraft trajectories; and, as such, respond to a need identified in contemporary research and practice in air-traffic management. Our simulations, designed based on real-world data, confirm the effectiveness of our methods in resolving the demand-capacity problem, even in extremely hard scenarios.Παρουσιάστηκε στο: 15th German Conference on Multiagent System Technologie
Research on reinforcement learning algorithms to play complex video games have brought forth control...
Future operations involving drones are expected to result in traffic densities that are orders of ma...
Reinforcement Learning (RL) techniques are being studied to solve the Demand and Capacity Balancing ...
Summarization: In this article, we explore the computation of joint policies for autonomous agents t...
Air traffic flow management (ATFM) is of crucial importance to the European Air Traffic Control Syst...
Increasing delays and congestion reported in many aviation sectors indicate that the current central...
With the objective to enhance human performance and maximize engagement during the performance of ta...
Reinforcement learning has shown that, when combined with deep learning techniques, is able to provi...
Motivated to solve complex demand-capacity imbalance problems in air traffic management at the pre-t...
Air traffic flow management (ATFM) is of crucial importance to the European Air Traffic Control Syst...
This paper studies the demand-capacity balancing (DCB) problem in air traffic flow management (ATFM)...
In this paper, we focus on the demand-capacity balancing (DCB) problem in air traffic flow managemen...
Recently, the advances in reinforcement learning have enabled an artificial intelligent agent to sol...
Air traffic demand has increased at an unprecedented rate in the last decade (albeit interrupted by ...
International audienceWith the continuous growth in the air transportation demand, air traffic contr...
Research on reinforcement learning algorithms to play complex video games have brought forth control...
Future operations involving drones are expected to result in traffic densities that are orders of ma...
Reinforcement Learning (RL) techniques are being studied to solve the Demand and Capacity Balancing ...
Summarization: In this article, we explore the computation of joint policies for autonomous agents t...
Air traffic flow management (ATFM) is of crucial importance to the European Air Traffic Control Syst...
Increasing delays and congestion reported in many aviation sectors indicate that the current central...
With the objective to enhance human performance and maximize engagement during the performance of ta...
Reinforcement learning has shown that, when combined with deep learning techniques, is able to provi...
Motivated to solve complex demand-capacity imbalance problems in air traffic management at the pre-t...
Air traffic flow management (ATFM) is of crucial importance to the European Air Traffic Control Syst...
This paper studies the demand-capacity balancing (DCB) problem in air traffic flow management (ATFM)...
In this paper, we focus on the demand-capacity balancing (DCB) problem in air traffic flow managemen...
Recently, the advances in reinforcement learning have enabled an artificial intelligent agent to sol...
Air traffic demand has increased at an unprecedented rate in the last decade (albeit interrupted by ...
International audienceWith the continuous growth in the air transportation demand, air traffic contr...
Research on reinforcement learning algorithms to play complex video games have brought forth control...
Future operations involving drones are expected to result in traffic densities that are orders of ma...
Reinforcement Learning (RL) techniques are being studied to solve the Demand and Capacity Balancing ...