A Deep Reinforcement Learning-Based Framework for Dynamic Resource Allocation in Multibeam Satellite Systems
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Rong Chen | Weidong Wang | Xin Hu | Shuaijun Liu | Chunting Wang | Chun-Ting Wang | Weidong Wang | Shuaijun Liu | Xin Hu | Rong Chen
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