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Federated Deep Reinforcement Learning for Energy Efficient Multi-Functional RIS-Assisted Low-Earth Orbit Networks

Federated Deep Reinforcement Learning for Energy Efficient Multi-Functional RIS-Assisted Low-Earth Orbit Networks

19 January 2025
Li-Hsiang Shen
Jyun-Jhe Huang
Kai-Ten Feng
Lie-liang Yang
Jen-Ming Wu
ArXiv (abs)PDFHTMLGithub

Papers citing "Federated Deep Reinforcement Learning for Energy Efficient Multi-Functional RIS-Assisted Low-Earth Orbit Networks"

1 / 1 papers shown
Multi-Functional RIS-Enabled in SAGIN for IoT: A Hybrid Deep Reinforcement Learning Approach with Compressed Twin-Models
Multi-Functional RIS-Enabled in SAGIN for IoT: A Hybrid Deep Reinforcement Learning Approach with Compressed Twin-Models
Li-Hsiang Shen
Jyun-Jhe Huang
163
0
0
22 Jul 2025
1
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