Optical Communication Technology, Volume. 48, Issue 3, 1(2024)

Intelligent prediction technology for optical path quality of transmission

GU Zhiqun... ZHOU Yuhang, ZHANG Jiawei and JI Yuefeng |Show fewer author(s)
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    References(31)

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    GU Zhiqun, ZHOU Yuhang, ZHANG Jiawei, JI Yuefeng. Intelligent prediction technology for optical path quality of transmission[J]. Optical Communication Technology, 2024, 48(3): 1

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    Paper Information

    Received: Feb. 29, 2024

    Accepted: --

    Published Online: Aug. 2, 2024

    The Author Email:

    DOI:10.13921/j.cnki.issn1002-5561.2024.03.0001

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