2022
DOI: 10.1002/eng2.12497
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Resource allocation of fog radio access network based on deep reinforcement learning

Abstract: With the development of energy harvesting technologies and smart grid, the future trend of radio access networks will present a multi‐source power supply. In this article, joint renewable energy cooperation and resource allocation scheme of the fog radio access networks (F‐RANs) with hybrid power supplies (including both the conventional grid and renewable energy sources) is studied. In this article, our objective is to maximize the average throughput of F‐RAN architecture with hybrid energy sources while sati… Show more

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Cited by 14 publications
(7 citation statements)
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References 45 publications
(63 reference statements)
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“…𝑄-learning is a renowned reinforcement learning algorithms 33 . During the interaction with the environment, the agent receives rewards 𝑅 corresponding to executed action 𝑎.…”
Section: The Designed Q-learning Algorithmmentioning
confidence: 99%
“…𝑄-learning is a renowned reinforcement learning algorithms 33 . During the interaction with the environment, the agent receives rewards 𝑅 corresponding to executed action 𝑎.…”
Section: The Designed Q-learning Algorithmmentioning
confidence: 99%
“…For a fully connected network with J layers, the operation time of each update is given by J−1 j=0 u j u j+1 , where u j denotes the number of neurons in layer j. Therefore, the time complexity for deep Q-learning is expressed by O(mt J−1 j=0 u j u j+1 ) [34]. Training time for Q-learning is relatively shorter due to the more straightforward structure of updating the Qtable, which does not require the extensive computational resources that deep neural networks demand.…”
Section: Complexity Analysismentioning
confidence: 99%
“…AI has been proven effective for network optimization and management of satellite and terrestrial networks in previous studies [101]- [105]. However, previous applications of AI in networking rely on external simulation tools, e.g., TensorFlow and PyTorch.…”
Section: Ai Integration With Stin Simulationmentioning
confidence: 99%