d3ac/MetaRL-for-UAV-Anti-jamming
Patent : An anti-jamming communication method for unmanned cluster based on meta-reinforcement learning
This project offers a method for unmanned aerial vehicle (UAV) clusters to maintain communication despite jamming attempts. It takes environmental data and jamming patterns to produce optimized communication strategies, helping drone operators ensure reliable drone swarm operations. It is for anyone managing or deploying drone fleets in potentially hostile signal environments.
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Use this if you need your drone clusters to maintain stable and efficient communication links even when facing electronic jamming, adapting quickly to new jamming threats.
Not ideal if your primary concern is not anti-jamming communication for UAV clusters, or if you need solutions for ground-based or single-drone communication.
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Jupyter Notebook
License
MIT
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Last pushed
Oct 29, 2024
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