MEC-enabled Federated Learning for Network Slicing

Ruijie Ou, Daniel Ayepah-Mensah, Guisong Liu
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Abstract

Network slicing divides wireless networks into multiple logical networks to support different applications with different performance requirements. In recent times, centralized slice controllers based on Deep Learning have been utilized to gain insight from base stations to facilitate the dynamic network slicing process. However, centralized controllers suffer from high data communication overhead due to a large amount of user data, and most network slices are unwilling to share private network dataAs a means of achieving scalable and privacy for network slices, we propose a multi-access edge-based federated learning approach for network slicing through which distributed base stations can dynamically allocate resources across multiple slices without having to share any personal or network data with a central orchestrator. The experimental results show that the proposed dynamic network slicing algorithm can dynamically allocate resources for multiple slices and satisfy the corresponding quality of service requirements.
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支持mec的网络切片联邦学习
网络切片将无线网络划分为多个逻辑网络,以支持具有不同性能要求的不同应用。近年来,基于深度学习的集中式切片控制器被用于从基站获取洞察力,以促进动态网络切片过程。但是,集中式控制器由于用户数据量大,数据通信开销高,而且大多数网络切片不愿意共享私有网络数据,作为实现网络切片可扩展性和保密性的手段,我们提出了一种用于网络切片的基于多访问边缘的联邦学习方法,通过该方法,分布式基站可以跨多个切片动态分配资源,而无需与中央编排器共享任何个人或网络数据。实验结果表明,所提出的动态网络切片算法能够为多个切片动态分配资源,满足相应的服务质量要求。
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