李尚远

个人信息Personal Information

副研究员

硕士生导师

教师拼音名称:Shangyuan Li

学历:博士研究生毕业

在职信息:在职

毕业院校:清华大学

学术论文

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Optical spectrum feature analysis and recognition for optical network security with machine learning

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DOI码:10.1364/OE.27.024808

发表刊物:OPTICS EXPRESS

摘要:Physical layer attacks threaten services transmitted through optical networks. To detect attacks, we present an investigation of optical spectrum feature analysis (OSFA) and recognition. By analyzing the spectral features of optical signals, recognition and detection of unauthorized signals can be realized. In this paper, (1) we theoretically analyzed factors influencing optical spectrum (OS) features and simulated these factors. OSs collected from the simulation are quantitatively analyzed, spectral features are extracted by principal component analysis, and the theoretical derivation is validated. (2) We proposed support vector machine (SVM) and one-dimensional convolutional neural network (1D-CNN) machine-learning OSFA methods. (3) Experimentally collected OSs from commercial small form-factor pluggable modules are used to verify the performance of the SVM and 1D-CNN methods, which achieved 98.54% and 100% recognition accuracies, respectively, demonstrating that the methods are promising solutions for optical network security. (C) 2019 Optical Society of America under the terms of the OSA Open Access Publishing Agreement

第一作者:Li, Yanlong, Hua, Nan, Jiading, Zhong, Zhizhen, Li, Shangyuan, Zhao, Chen, Xue, Xiaoxiao, Zheng, Xiaoping

论文类型:J

文献类型:Article

卷号:27

期号:17

页面范围:24808

ISSN号:1094-4087

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