2023
DOI: 10.47852/bonviewjdsis3202998
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Federated-Based Deep Reinforcement Learning (Fed-DRL) for Energy Management in a Distributive Wireless Network

Abstract: Studies on developing future-generation wireless systems are expected to support increased infrastructure development and device subscriptions with densely deployed base stations (BSs). Economically, decreasing BS energy consumption levels and achieving "greenness" remain key factors for the giant industry. Some research works have proposed deep reinforcement techniques to solve energy management (EM) issues in cellular networks. However, these techniques are inefficient in a distributive network environment a… Show more

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Cited by 3 publications
(1 citation statement)
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“…In order to quantitatively analyze the depth map prediction framework, four indicators including mean square error (MSE), mean relative error (MRE), average logarithmic error, and multi-threshold accuracy are used to measure the accuracy of depth map prediction. 21 Choosing appropriate indicators helps to analyze the performance of the proposed depth map prediction framework. MSE, MRE, mean logarithmic error, and multi-threshold accuracy are commonly used indicators to measure prediction accuracy.…”
Section: Perspective Fusion Networkmentioning
confidence: 99%
“…In order to quantitatively analyze the depth map prediction framework, four indicators including mean square error (MSE), mean relative error (MRE), average logarithmic error, and multi-threshold accuracy are used to measure the accuracy of depth map prediction. 21 Choosing appropriate indicators helps to analyze the performance of the proposed depth map prediction framework. MSE, MRE, mean logarithmic error, and multi-threshold accuracy are commonly used indicators to measure prediction accuracy.…”
Section: Perspective Fusion Networkmentioning
confidence: 99%