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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    In this paper, we proposed a quality of transmission (QoT) prediction technique for the quality of service (QoS) link setup based on machine learning classifiers, with synthetic data generated using the transmission equations instead of the Gaussian noise (GN) model. The proposed technique uses some link and signal characteristics as input features. The bit error rate (BER) of the signals was compared with the forward error correction threshold BER, and the comparison results were employed as labels. The transmission equations approach is a better alternative to the GN model (or other similar margin-based models) in the absence of real data (i.e., at the deployment stage of a network) or the case that real data are scarce (i.e., for enriching the dataset/reducing probing lightpaths); furthermore, the three classifiers trained using the data of the transmission equations are more reliable and practical than those trained using the data of the GN model. Meanwhile, we noted that the priority of the three classifiers should be support vector machine (SVM)>K nearest neighbor (KNN)>logistic regression (LR) as shown in the results obtained by the transmission equations, instead of SVM>LR>KNN as in the results of the GN model.

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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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