Real-time optimal protocol prediction of quantum key distribution using machine learning

IF 0.6 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
A. R., Nayana J. S., Rajarshee Mondal
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引用次数: 0

Abstract

Purpose The purpose of optimal protocol prediction and the benefits offered by quantum key distribution (QKD), including unbreakable security, there is a growing interest in the practical realization of quantum communication. Realization of the optimal protocol predictor in quantum key distribution is a critical step toward commercialization of QKD. Design/methodology/approach The proposed work designs a machine learning model such as K-nearest neighbor algorithm, convolutional neural networks, decision tree (DT), support vector machine and random forest (RF) for optimal protocol selector for quantum key distribution network (QKDN). Findings Because of the effectiveness of machine learning methods in predicting effective solutions using data, these models will be the best optimal protocol selectors for achieving high efficiency for QKDN. The results show that the best machine learning method for predicting optimal protocol in QKD is the RF algorithm. It also validates the effectiveness of machine learning in optimal protocol selection. Originality/value The proposed work was done using algorithms like the local search algorithm or exhaustive traversal, however the major downside of using these algorithms is that it takes a very long time to revert back results, which is unacceptable for commercial systems. Hence, machine learning methods are proposed to see the effectiveness of prediction for achieving high efficiency.
基于机器学习的量子密钥分配实时最优协议预测
为了实现最优协议预测,以及量子密钥分发(QKD)提供的不可破解的安全性,人们对量子通信的实际实现越来越感兴趣。量子密钥分配中最优协议预测器的实现是实现量子密钥分配商业化的关键一步。设计/方法/方法本文设计了一种机器学习模型,如k近邻算法、卷积神经网络、决策树(DT)、支持向量机和随机森林(RF),用于量子密钥分发网络(QKDN)的最优协议选择器。由于机器学习方法在使用数据预测有效解决方案方面的有效性,这些模型将成为实现QKDN高效率的最佳协议选择器。结果表明,预测QKD中最优协议的最佳机器学习方法是RF算法。验证了机器学习在最优协议选择中的有效性。原创性/价值建议的工作是使用局部搜索算法或穷举遍历等算法完成的,但是使用这些算法的主要缺点是需要很长时间才能恢复结果,这对于商业系统来说是不可接受的。因此,提出了机器学习方法来观察预测的有效性,以实现高效率。
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来源期刊
International Journal of Pervasive Computing and Communications
International Journal of Pervasive Computing and Communications COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
6.60
自引率
0.00%
发文量
54
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