Kavitha R J, Ilakkiaselvan D
Department of Electronics and Communication Engineering, University College of Engineering, Panruti, Tamil Nadu, India.
Network. 2024 Nov;35(4):379-402. doi: 10.1080/0954898X.2024.2375391. Epub 2024 Jul 16.
Quantum key distribution (QKD) is a secure communication method that enables two parties to securely exchange a secret key. The secure key rate is a crucial metric for assessing the efficiency and practical viability of a QKD system. There are several approaches that are utilized in practice to calculate the secure key rate. In this manuscript, QKD and error rate optimization based on optimized multi-head self-attention and gated-dilated convolutional neural network (QKD-ERO-MSGCNN) is proposed. Initially, the input signals are gathered from 6G wireless networks which face obstacles to channel. For extending maximum transmission distances and improving secret key rates, the signals are fed to the variable velocity strategy particle swarm optimization algorithm, then the signals are fed to MSGCNN for analysing the quantum bit error rate reduction. The MSGCNN is optimized by intensified sand cat swarm optimization. The performance of the QKD-ERO-MSGCNN approach attains 15.57%, 23.89%, and 31.75% higher accuracy when analysed with existing techniques, like device-independent QKD utilizing random quantum states, practical continuous-variable QKD and feasible optimization parameters, entanglement and teleportation in QKD for secure wireless systems, and QKD for large scale networks methods, respectively.
量子密钥分发(QKD)是一种安全通信方法,可使双方安全地交换密钥。安全密钥率是评估QKD系统效率和实际可行性的关键指标。在实践中有几种方法用于计算安全密钥率。在本论文中,提出了基于优化多头自注意力和门控扩张卷积神经网络的量子密钥分发与误码率优化(QKD-ERO-MSGCNN)。首先,从面临信道障碍的6G无线网络收集输入信号。为了扩展最大传输距离并提高密钥率,将信号输入到变速策略粒子群优化算法,然后将信号输入到MSGCNN以分析量子误码率的降低情况。通过强化沙猫群优化对MSGCNN进行优化。与现有技术相比,如利用随机量子态的设备无关QKD、实际连续变量QKD和可行优化参数、用于安全无线系统的QKD中的纠缠和隐形传态以及大规模网络方法的QKD,当对QKD-ERO-MSGCNN方法进行分析时,其性能分别提高了15.57%、23.89%和31.75%的准确率。