Frontiers of Optoelectronics, Volume. 14, Issue 4, 513(2021)

A QoT prediction technique based on machine learning and NLSE for QoS and new lightpaths in optical communication networks

Yongfeng FU1、*, Jing CHEN1, Weiming WU1, Yu HUANG2, Jie HONG1, Long CHEN1, and Zhongbin LI3
Author Affiliations
  • 1Hainan Power Grid Co., Ltd., Haikou 570100, China
  • 2Power Dispatching Control Center of China, Southern Power Grid, Shenzhen 5180008, China
  • 3China Southern Power Grid Digital Power Grid Research Institute Co., Ltd., Guangzhou 511458, China
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    Yongfeng FU, Jing CHEN, Weiming WU, Yu HUANG, Jie HONG, Long CHEN, Zhongbin LI. A QoT prediction technique based on machine learning and NLSE for QoS and new lightpaths in optical communication networks[J]. Frontiers of Optoelectronics, 2021, 14(4): 513

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    Paper Information

    Category: RESEARCH ARTICLE

    Received: Jul. 29, 2020

    Accepted: Oct. 1, 2020

    Published Online: Jan. 10, 2022

    The Author Email: FU Yongfeng (lizhou@csg.cn)

    DOI:10.1007/s12200-020-1079-y

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