Carbon emissions of 5G mobile networks in China

被引:0
|
作者
Tong Li
Li Yu
Yibo Ma
Tong Duan
Wenzhen Huang
Yan Zhou
Depeng Jin
Yong Li
Tao Jiang
机构
[1] Tsinghua University,Beijing National Research Center for Information Science and Technology (BNRist), Department of Electronic Engineering
[2] China Mobile Research Institute,Research Center of 6G Mobile Communications
[3] National Digital Switching System Engineering and Technological Research Center,undefined
[4] Huazhong University of Science and Technology,undefined
来源
Nature Sustainability | 2023年 / 6卷
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Telecommunication using 5G plays a vital role in our daily lives and the global economy. However, the energy consumption and carbon emissions of 5G mobile networks are concerning. Here we develop a large-scale data-driven framework to quantitatively assess the carbon emissions of 5G mobile networks in China, where over 60% of the global 5G base stations are implemented. We reveal a carbon efficiency trap of 5G mobile networks leading to additional carbon emissions of 23.82 ± 1.07 Mt in China, caused by the spatiotemporal misalignment between cellular traffic and energy consumption in mobile networks. To address this problem, we propose an energy-saving method, called DeepEnergy, leveraging collaborative deep reinforcement learning and graph neural networks, to make it possible to effectively coordinate the working state of 5G cells, which could help over 71% of Chinese provinces avoid carbon efficiency traps. The application of DeepEnergy can potentially reduce carbon emissions by 20.90 ± 0.98 Mt at the national level in 2023. Furthermore, the mobile network in China could accomplish more than 50% of its net-zero goal by integrating DeepEnergy with solar energy systems. Our study deepens the insights into carbon emission mitigation in 5G networks, paving the way towards sustainable and energy-efficient telecommunication infrastructures.
引用
收藏
页码:1620 / 1631
页数:11
相关论文
共 50 条
  • [41] 5G Campus Networks: Communication Technology for Mobile Robots?
    Lackner T.
    Hermann J.
    Kuhn C.
    Palm D.
    WT Werkstattstechnik, 2024, 114 (04): : 121 - 127
  • [42] Deep Learning at the Mobile Edge: Opportunities for 5G Networks
    McClellan, Miranda
    Cervello-Pastor, Cristina
    Sallent, Sebastia
    APPLIED SCIENCES-BASEL, 2020, 10 (14):
  • [43] Hardware-Accelerated Firewall for 5G Mobile Networks
    Ricart-Sanchez, Ruben
    Malagon, Pedro
    Alcaraz-Calero, Jose M.
    Wang, Qi
    2018 IEEE 26TH INTERNATIONAL CONFERENCE ON NETWORK PROTOCOLS (ICNP), 2018, : 446 - 447
  • [44] Towards Integration of Industrial Ethernet with 5G Mobile Networks
    Neumann, Arne
    Wisniewski, Lukasz
    Ganesan, Rakash SivaSiva
    Rost, Peter
    Jasperneite, Juergen
    2018 14TH IEEE INTERNATIONAL WORKSHOP ON FACTORY COMMUNICATION SYSTEMS (WFCS 2018), 2018,
  • [45] Optical Technologies Supporting 5G/6G Mobile Networks
    Zakrzewski, Zbigniew
    Glabowski, Mariusz
    Zwierzykowski, Piotr
    Eramo, Vincenzo
    Lavacca, Francesco Giacinto
    PHOTONICS, 2024, 11 (09)
  • [46] CHINA AND 5G
    Bartholomew, Carolyn
    ISSUES IN SCIENCE AND TECHNOLOGY, 2020, 36 (02) : 50 - 57
  • [47] Radio Network Aggregation for 5G Mobile Terminals in Heterogeneous Wireless and Mobile Networks
    Tomislav Shuminoski
    Toni Janevski
    Wireless Personal Communications, 2014, 78 : 1211 - 1229
  • [48] Radio Network Aggregation for 5G Mobile Terminals in Heterogeneous Wireless and Mobile Networks
    Shuminoski, Tomislav
    Janevski, Toni
    WIRELESS PERSONAL COMMUNICATIONS, 2014, 78 (02) : 1211 - 1229
  • [49] When 5G meets ICN: An ICN-based caching approach for mobile video in 5G networks
    Zhang, Zhe
    Lung, Chung-Horng
    Lambadaris, Ioannis
    St-Hilaire, Marc
    COMPUTER COMMUNICATIONS, 2018, 118 : 81 - 92
  • [50] QoE Sustainability on 5G and Beyond 5G Networks
    Kao, Hsiao-Wen
    Wu, Eric Hsiao-Kuang
    IEEE WIRELESS COMMUNICATIONS, 2023, 30 (01) : 118 - 125