학술논문

Decomposing FANET to Counter Massive UAV Swarm Based on Reinforcement Learning
Document Type
Article
Source
IEEE Communications Letters; 2023, Vol. 27 Issue: 7 p1784-1788, 5p
Subject
Language
ISSN
10897798; 15582558
Abstract
Armed and autonomous unmanned aerial vehicle (UAV) swarms are a new type of aerial threat due to their numerical superiority and cooperative communication, and existing countermeasures cannot completely eliminate whole swarms. In this letter, we design an algorithm based on deep reinforcement learning called GCPDDQN to find the optimal attack sequence for large-scale UAV swarm, so as to achieve the purpose of decomposing the network into small pieces and destroying swarm communications. Numerical simulations show that GCPDDQN can speed up the collapse of the network using only the simplest features and network architectures which are changeable to adjust to different scenarios.