Reinforcement Learning (RL) techniques are being studied to solve the Demand and Capacity Balancing (DCB) problems to fully exploit their computational performance. A locally generalised Multi-Agent Reinforcement Learning (MARL) for real-world DCB problems is proposed. The proposed method can deploy trained agents directly to unseen scenarios in a specific Air Traffic Flow Management (ATFM) region to quickly obtain a satisfactory solution. In this method, agents of all flights in a scenario form a multi-agent decision-making system based on partial observation. The trained agent with the customised neural network can be deployed directly on the corresponding flight, allowing it to solve the DCB problem jointly. A cooperation coefficient is ...
Reinforcement learning (RL) techniques have been studied for solving the conflict resolution (CR) pr...
Reinforcement learning has shown that, when combined with deep learning techniques, is able to provi...
Reinforcement learning (RL) is currently used in various real-life applications. RL-based solutions ...
To effectively solve Demand and Capacity Balancing (DCB) in large-scale and high-density scenarios t...
Summarization: In this article, we explore the computation of joint policies for autonomous agents t...
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...
With the objective to enhance human performance and maximize engagement during the performance of ta...
Air traffic flow management (ATFM) is of crucial importance to the European Air Traffic Control Syst...
Air traffic flow management (ATFM) is of crucial importance to the European Air Traffic Control Syst...
Motivated to solve complex demand-capacity imbalance problems in air traffic management at the pre-t...
International audienceThis paper presents the network load balancing problem, a challenging real-wor...
With the urban air mobility (UAM) quickly evolving, the great demand for public airborne transit and...
Deep reinforcement learning has advanced signifi-cantly in recent years, and it is now used in embed...
Summarization: In this work we propose and investigate the use of collaborative reinforcement learni...
Reinforcement learning (RL) techniques have been studied for solving the conflict resolution (CR) pr...
Reinforcement learning has shown that, when combined with deep learning techniques, is able to provi...
Reinforcement learning (RL) is currently used in various real-life applications. RL-based solutions ...
To effectively solve Demand and Capacity Balancing (DCB) in large-scale and high-density scenarios t...
Summarization: In this article, we explore the computation of joint policies for autonomous agents t...
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...
With the objective to enhance human performance and maximize engagement during the performance of ta...
Air traffic flow management (ATFM) is of crucial importance to the European Air Traffic Control Syst...
Air traffic flow management (ATFM) is of crucial importance to the European Air Traffic Control Syst...
Motivated to solve complex demand-capacity imbalance problems in air traffic management at the pre-t...
International audienceThis paper presents the network load balancing problem, a challenging real-wor...
With the urban air mobility (UAM) quickly evolving, the great demand for public airborne transit and...
Deep reinforcement learning has advanced signifi-cantly in recent years, and it is now used in embed...
Summarization: In this work we propose and investigate the use of collaborative reinforcement learni...
Reinforcement learning (RL) techniques have been studied for solving the conflict resolution (CR) pr...
Reinforcement learning has shown that, when combined with deep learning techniques, is able to provi...
Reinforcement learning (RL) is currently used in various real-life applications. RL-based solutions ...