5G Network Slicing Algorithm Development using Bagging based-Gaussian Naive Bayes

A. Vijayalakshmi, E. Abishek B, Abdulsamath G, S. N, Mohamed Absar M, Arul Stephen. C
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Abstract

Existing cellular communications and future communication networks requires very low latency, high reliability standards, increased capacity, enhanced security, and efficient user communication. The ability to accommodate several independent devices is a feature that mobile operators are seeking for a programmable solution, comparable functional networks technical foundation. Through the use of the Network Slicing concept, 5G networks enable end-to-end deployment of network resources (NS). Due to the surge in traffic and the acceleration of 5G network performance, emerging communication networks will demand data-driven strategic planning. This paper has to implement machine learning based network slicing algorithm to divide 5G network IoT devices into effective network slices such as eMBB, mMTC, URLLC for the traffic. The GNB and B-GNB algorithms are used to classify the usecase devices under the three network slices. This work developed bagging integrated with GNB algorithm and its performance metrics have been analysed. The B-GNB algorithm works well for prediction of best slice and strategic recommendations even there is network interruption, be able to predict the best network slice and implement strategic recommendations. The performance metrics such as sensitivity, F-score, precision and accuracy have also been analyzed. The comparative analysis shows B-GNB classify the slices with 86% of accuracy.
基于Bagging -高斯朴素贝叶斯的5G网络切片算法开发
现有的蜂窝通信和未来的通信网络需要非常低的延迟、高可靠性标准、增加的容量、增强的安全性和高效的用户通信。容纳多个独立设备的能力是移动运营商正在寻求的一种可编程解决方案,具有可比较功能的网络技术基础。通过使用网络切片概念,5G网络可以实现网络资源的端到端部署。由于流量的激增和5G网络性能的加速,新兴通信网络将需要数据驱动的战略规划。本文需要实现基于机器学习的网络切片算法,将5G网络物联网设备划分为eMBB、mMTC、URLLC等有效的网络切片,用于流量处理。使用GNB和B-GNB算法对三个网络切片下的用例设备进行分类。本文开发了与GNB算法相结合的装袋系统,并对其性能指标进行了分析。在存在网络中断的情况下,B-GNB算法也能很好地预测最佳网络切片和策略推荐,能够预测最佳网络切片并实现策略推荐。对灵敏度、f值、精密度、准确度等性能指标进行了分析。对比分析表明,B-GNB对切片的分类准确率为86%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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