Artificial intelligence for reducing the carbon emissions of 5G networks in China

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Nature Sustainability | 2023年 / 6卷
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A data-driven framework has been developed to assess the carbon emissions of mobile networks in China, revealing that the launch of 5G networks leads to a decline in carbon efficiency. A deep reinforcement learning algorithm, DeepEnergy, is proposed to increase the carbon efficiency of mobile networks and reduce carbon emissions.
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页码:1522 / 1523
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