Skip to content

SECNetLabUNM/Federated-Reinforcement-Learning-for-Autonomous-UAV-Control-in-Air-Corridors

Repository files navigation

<<<<<<< HEAD

Transformer-based Multi-agent Reinforcement Learning for Multiple Unmanned Aerial Vehicle Coordination in Air Corridors

Animation on torus-cylinder-cylinder-torus

cylinder-torus-torus-cylinder.gif

D3MOVE_v4.py for visualization of UAVs coordination in air corridors.

Air Corridor Modeling

UAVs need to traverse several air corridors to reach their destinations. Air corridors are modelled as cylinder and partial torus.

Cylinder and Torus

Air_corridor.jpg

RL Training

Network Structure

  • H(), embedding layer, normalizes the input values and standardize the input dimensions.
  • G(), transformer layer, deals with stochastic neighbors information
  • F(), actor-critic network combined. TransRL.jpg

network function.png

Training File

main.py

=======

Federated-Reinforcement-Learning-for-Autonomous-UAV-Control-in-Air-Corridors

bd2ba4e (first commit)

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages