Deep Q-learning for 5G network slicing with diverse resource stipulations and dynamic data traffic

Debaditya Shome, Ankit Kudeshia
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引用次数: 7

Abstract

5G wireless networks use the network slicing technique that provides a suitable network to a service requirement raised by a network user. Further, the network performs effective slice management to improve the throughput and massive connectivity along with the required latency towards an appropriate resource allocation to these slices for service requirements. This paper presents an online Deep Q-learning based network slicing technique that considers a sigmoid transformed Quality of Experience, price satisfaction, and spectral efficiency as the reward function for bandwidth allocation and slice selection to serve the network users. The Next Generation Mobile Network (NGMN) vertical use cases have been considered for the simulations which also deals with the problem of international roaming and diverse intra-use case requirement variations by using only three standard network service slices termed as enhanced Mobile Broadband (eMBB), Ultra Reliable Low Latency Communication (uRLLC), and massive Machine Type Communication (mMTC). Our Deep Q-Learning model also converges significantly faster than the conventional Deep Q-Learning based approaches used in this field. The environment has been prepared based on ITU specifications for eMBB, uRLLC, mMTC. Our proposed method demonstrates a superior Quality-of-experience for the different users and the higher network bandwidth efficiency compared to the conventional slicing technique.
基于深度q学习的5G网络切片,具有多种资源规定和动态数据流量
5G无线网络使用网络切片技术,根据网络用户提出的业务需求提供合适的网络。此外,网络执行有效的片管理,以提高吞吐量和大规模连接,以及为满足服务需求向这些片分配适当的资源所需的延迟。本文提出了一种基于深度q学习的在线网络切片技术,该技术将体验质量、价格满意度和频谱效率作为奖励函数,用于带宽分配和切片选择,以服务于网络用户。模拟考虑了下一代移动网络(NGMN)垂直用例,该用例还通过仅使用三种标准网络服务切片(称为增强型移动宽带(eMBB),超可靠低延迟通信(uRLLC)和大规模机器类型通信(mMTC)来处理国际漫游问题和不同的用例内部需求变化。我们的深度Q-Learning模型也比该领域使用的传统深度Q-Learning方法收敛得快得多。环境是根据国际电联的eMBB、uRLLC、mMTC规范准备的。与传统的切片技术相比,我们提出的方法对不同的用户具有更好的体验质量和更高的网络带宽效率。
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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