作者
Claudio Fiandrino, Chaoyun Zhang, Paul Patras, Albert Banchs, Joerg Widmer
发表日期
2020/6
期刊
IEEE Communications Magazine
卷号
58
期号
6
页码范围
20-25
出版商
IEEE
简介
5G and beyond are not only sophisticated and difficult to manage, but must also satisfy a wide range of stringent performance requirements and adapt quickly to changes in traffic and network state. Advances in machine learning and parallel computing underpin new powerful tools that have the potential to tackle these complex challenges. In this article, we develop a general machinelearning- based framework that leverages artificial intelligence to forecast future traffic demands and characterize traffic features. This makes it possible to exploit such traffic insights to improve the performance of critical network control mechanisms, such as load balancing, routing, and scheduling. In contrast to prior works that design problem-specific machine learning algorithms, our generic approach can be applied to different network functions, allowing reuse of existing control mechanisms with minimal modifications. We explain …
引用总数
20202021202220232024211783
学术搜索中的文章
C Fiandrino, C Zhang, P Patras, A Banchs, J Widmer - IEEE Communications Magazine, 2020