In light of the premises of beyond fifth generation (B5G) networks, the need for better exploiting the capabilities of cloud-enabled networks arises, so as to cope with the large-scale interference resulting from the massive increase of data-hungry systems. A compound of several clouds, jointly managing inter-cloud and intra-cloud interference, constitutes a practical solution to account for the requirements of B5G networks. This paper considers a multi-cloud radio access network model (MC-RAN), where each cloud is connected to a distinct set of base stations (BSs) via limited capacity fronthaul links. The BSs are equipped with local cache storage and baseband processing capabilities, as a means to alleviate the fronthaul congestion problem. The paper then investigates the problem of jointly assigning users to clouds and determining their beamforming vectors so as to maximize the network-wide energy efficiency (EE) subject to fronthaul capacity and transmit power constraints. This paper solves such a mixed discrete-continuous, non-convex optimization problem using fractional programming (FP) and successive inner-convex approximation (SICA) techniques to deal with the non-convexity of the continuous part of the problem, and $l_0$-norm approximation to account for the binary association part. A highlight of the proposed algorithm is its capability of being implemented in a distributed fashion across the network's multiple clouds through a reasonable amount of information exchange. The numerical simulations illustrate the pronounced role the proposed algorithm plays in alleviating the interference of large-scale MC-RANs, especially in dense networks.
翻译:鉴于第五代(B5G)网络已超过第五代,因此需要更好地利用云驱动网络的能力,以便应对数据饥饿系统大量增加造成的大规模干扰。一些云层的复合体,共同管理云层间干扰和云层内干扰,是计算B5G网络需求的一个实际解决办法。本文考虑的是多层无线电接入网络模型(MC-RAN),每个云层通过有限的能力前厅链接与一组不同的基地站(BSs)连接。BS配备了本地缓冲存储和基带处理能力,以缓解数据饥饿系统大规模增长造成的大规模干扰。本文随后调查了将用户联合分配云层和确定其矢量的成型的问题,以便最大限度地实现全网络能效,但取决于前厅的能力和传输电力限制。本文用分数编程(FP)和连续的内基流流处理系统快速存储和内基流交易(SICA-IA)的快速流数据流流流转换能力,通过Ax连续流路段的计算,解决整个数字流流流流流中的拟议不连续流、不连续流流流流流流流流数据能力。