...
首页> 外文期刊>Journal of communications and networks >QoS provisioning and energy saving scheme for distributed cognitive radio networks using deep learning
【24h】

QoS provisioning and energy saving scheme for distributed cognitive radio networks using deep learning

机译:用于使用深度学习的分布式认知无线电网络的QoS供应和节能方案

获取原文
获取原文并翻译 | 示例
           

摘要

One of the major challenges facing the realization of cognitive radios (CRs) in future mobile and wireless communications is the issue of high energy consumption. Since future network infrastructure will host real-time services requiring immediate satisfaction, the issue of high energy consumption will hinder the full realization of CRs. This means that to offer the required quality of service (QoS) in an energy-efficient manner, resource management strategies need to allow for effective trade-offs between QoS provisioning and energy saving. To address this issue, this paper focuses on single base station (BS) management, where resource consumption efficiency is obtained by solving a dynamic resource allocation (RA) problem using bipartite matching. A deep learning (DL) predictive control scheme is used to predict the traffic load for better energy saving using a stacked auto-encoder (SAE). Considered here was a base station (BS) processor with both processor sharing (PS) and first-come-first-served (FCFS) sharing disciplines under quite general assumptions about the arrival and service processes. The workload arrivals are defined by a Markovian arrival process while the service is general. The possible impatience of customers is taken into account in terms of the required delays. In this way, the BS processor is treated as a hybrid switching system that chooses a better packet scheduling scheme between mean slowdown (MS) FCFS and MS PS. The simulation results presented in this paper indicate that the proposed predictive control scheme achieves better energy saving as the traffic load increases, and that the processing of workload using MS PS achieves substantially superior energy saving compared to MS FCFS.
机译:在未来的移动和无线通信中实现认知收音机(CRS)的主要挑战之一是高能耗的问题。由于未来的网络基础设施将主持需要立即满足的实时服务,因此高能耗的问题将阻碍CRS的全面实现。这意味着要以节能的方式提供所需的服务质量(QoS),资源管理策略需要允许QoS供应和节能之间有效的权衡。为了解决这个问题,本文侧重于单个基站(BS)管理,其中通过使用双链匹配解决动态资源分配(RA)问题来获得资源消耗效率。深度学习(DL)预测控制方案用于预测使用堆叠的自动编码器(SAE)更好地节能的交通负荷。在此考虑是一个基站(BS)处理器,其处理器共享(PS)和第一送达(FCFS)共享学科,并在关于到达和服务进程的相当普遍假设下共享学科。工作负荷抵达是由Markovian到达过程定义的,而服务是一般的。就所需的延误考虑了客户可能的不耐烦。以这种方式,BS处理器被视为混合交换系统,其在平均放缓(MS)FCF和MS PS之间选择更好的分组调度方案。本文提出的仿真结果表明,随着业务负荷的增加,所提出的预测控制方案实现更好的节能,并且使用MS PS的工作负载处理与MS FCF相比实现了大致优越的节能。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号