Noise Prediction Based on Machine Learning in Quantum Secured SWDM B5G Fronthaul Networks

ChengLong Wang, Yongmei Sun, Weiwen Kong, Yaoxian Gao
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Abstract

The fronthaul network is an essential way to improve the comprehensive performance of beyond fifth generation (B5G) communication network. Space-wavelength division multiplexing (SWDM) can effectively improve its capacity, and quantum key distribution technique can provide unconditional information security for it. In quantum secured SWDM B5G fronthaul network, quantum signals are affected by noises generated by classical signals, such as spontaneous Raman scattering, four-wave mixing and inter-core crosstalk. Evaluating these noises in real-time will increase the time delay of the whole network. In this paper, we propose two machine learning (ML) models (XGBoost and LightGBM) to predict these noises. Simulation results show that the ML models can reduce the noise evaluation time by up to 98.8%. Besides, the available channel predicting accuracy rate is close to 100%. The minimum noise predicting accuracy rate increases with the increasement of the channel occupancy rate and can reach 100% when channel occupancy is higher than 80%.
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量子安全SWDM B5G前传网络中基于机器学习的噪声预测
前传网络是提高超五代(B5G)通信网络综合性能的重要途径。空间波分复用(SWDM)可以有效地提高其容量,量子密钥分发技术可以为其提供无条件的信息安全。在量子安全SWDM B5G前传网络中,量子信号受到经典信号产生的自发拉曼散射、四波混频和核间串扰等噪声的影响。实时评估这些噪声会增加整个网络的时延。在本文中,我们提出了两个机器学习(ML)模型(XGBoost和LightGBM)来预测这些噪声。仿真结果表明,该模型可将噪声评估时间缩短98.8%。有效信道预测准确率接近100%。最小噪声预测准确率随信道占用率的增加而增加,当信道占用率大于80%时,最小噪声预测准确率可达到100%。
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