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Device Association for RAN Slicing Based on Hybrid Federated Deep Reinforcement Learning

机译:基于混合联邦深增强学习的RAN切片装置协会

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摘要

Network slicing (NS) has been widely identified as a key architectural technology for 5G-and-beyond systems by supporting divergent requirements in a sustainable way. In radio access network (RAN) slicing, due to the device-base station (BS)-NS three layer association relationship, device association (including access control and handoff management) becomes an essential yet challenging issue. With the increasing concerns on stringent data security and device privacy, exploiting local resources to solve device association problem while enforcing data security and device privacy becomes attractive. Fortunately, recently emerging federated learning (FL), a distributed learning paradigm with data protection, provides an effective tool to address this type of issues in mobile networks. In this paper, we propose an efficient device association scheme for RAN slicing by exploiting a hybrid FL reinforcement learning (HDRL) framework, with the aim to improve network throughput while reducing handoff cost. In our proposed framework, individual smart devices train a local machine learning model based on local data and then send the model features to the serving BS/encrypted party for aggregation, so as to efficiently reduce bandwidth consumption for learning while enforcing data privacy. Specifically, we use deep reinforcement learning to train the local model on smart devices under a hybrid FL framework, where horizontal FL is employed for parameter aggregation on BS, while vertical FL is employed for NS/BS pair selection aggregation on the encrypted party. Numerical results show that the proposed HDRL scheme can achieve significant performance gain in terms of network throughput and communication efficiency in comparison with some state-of-the-art solutions.
机译:通过以可持续方式支持不同的要求,网络切片(NS)已被广泛被识别为5G-and-超越系统的关键架构技术。在无线电接入网络(RAN)切片中,由于设备基站(BS)-NS三层关联关系,设备关联(包括访问控制和切换管理)成为必不可少的挑战性问题。随着严格数据安全性和设备隐私的越来越多的问题,利用本地资源来解决数据安全性问题,同时执行数据安全性和设备隐私变得有吸引力。幸运的是,最近出现了带有数据保护的分布式学习范例的联邦学习(FL)提供了一种有效的工具来解决移动网络中的这种类型的问题。在本文中,我们通过利用混合流动钢筋学习(HDRL)框架提出了一种有效的设备关联方案,以提高网络吞吐量,同时降低切换成本。在我们提出的框架中,个体智能设备根据本地数据训练本地机器学习模型,然后将模型功能发送到服务BS /加密方以进行聚合,以便在执行数据隐私时有效降低学习的带宽消耗。具体而言,我们使用深度增强学习在混合流动框架下培训智能设备上的本地模型,其中水平FL用于BS上的参数聚合,而在加密方对NS / BS对选择聚合采用垂直FL。数值结果表明,与某些最先进的解决方案相比,该提议的HDRL方案可以在网络吞吐量和通信效率方面实现显着性能。

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