首页> 外文期刊>Journal of the Optical Society of America, B. Optical Physics >Wavelength attack recognition based on mach in learning optical spectrum analysis for the practical continuous-variable quantum key distribution system
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Wavelength attack recognition based on mach in learning optical spectrum analysis for the practical continuous-variable quantum key distribution system

机译:基于Mach在学习光谱分析中的波长攻击识别实用连续变量量子密钥分布系统

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摘要

The imperfect devices in the practical continuous-variable quantum key distribution (CVQKD) system leave security loopholes that an eavesdropper may exploit. For example, the wavelength attacks can be implemented successfully by utilizing the wavelength-dependent properties of beam splitters (BSs). Eliminating the potential and existing security loopholes is essential for the practical CVQKD system. In this paper, an intelligent monitoring technology based on optical spectrum analysis is proposed for the practical CVQKD system. Through the machine learning-based optical spectrum analysis technique, an abnormal optical spectrum signal can be detected automatically by using the linear discriminant analysis support vector machine (LDA-SVM) algorithm, so as to realize attack detection and intelligent monitoring of the system. Simulation and experimental results show that the original spectral data and the abnormal spectral data after the attack can be accurately identified by the LDA-SVM algorithm, and the trained model can well resist the wavelength attacks. (C) 2020 Optical Society of America
机译:实际连续变量量子密钥分布(CVQKD)系统中的不完美器件留下了窃听者可能会利用的安全漏洞。例如,可以通过利用波束分离器(BSS)的波长相关属性来成功实现波长攻击。消除潜在和现有的安全漏洞对于实际的CVQKD系统至关重要。本文提出了一种基于光谱分析的智能监控技术,用于实用CVQKD系统。通过基于机器学习的光谱分析技术,可以通过使用线性判别分析支持向量机(LDA-SVM)算法自动检测异常光谱信号,以实现系统的攻击检测和智能监控。模拟和实验结果表明,通过LDA-SVM算法可以准确地识别出攻击后的原始光谱数据和异常光谱数据,训练模型可以很好地抵抗波长攻击。 (c)2020美国光学学会

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