基于协同学习的5G认知无线网络qos驱动综合异构业务资源分配

Fatemeh Shah-Mohammadi, Andres Kwasinski
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引用次数: 13

摘要

终端用户质量测量在面向5G时代的无线通信发展中发挥着越来越重要的作用,平均意见评分(mean opinion score, MOS)不仅反映了终端用户的主观质量体验,而且为不同类型的流量提供了一个通用的质量评估指标,因此成为一种被广泛使用的度量。提出了一种基于MOS的分布式底层动态频谱接入(DSA)方案,该方案可以跨不同特性的业务(实时视频和数据业务)进行综合的业务管理和资源分配。该方案通过强化学习,在满足对主用户的总干扰约束的情况下,使主用户与访问相同感兴趣频带的辅助用户共存。使用MOS作为通用度量,可以在承载不同流量的节点之间进行教学,而不会降低性能。因此,本文将主动性范式应用于所提出的方案,以研究不同的交互场景对整体MOS的影响,其中一个新的拐角节点由具有相似和不同流量的经验丰富的节点进行教学。仿真结果表明,该算法可将收敛所需的迭代次数减少约65%,同时对于不同的次级网络负载,总体MOS保持在可接受水平以上(MOS >3)。在流量相似和不相似的节点之间应用中继时,仿真结果表明,所有不同的中继场景在MOS方面具有相同的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
QoE-Driven Integrated Heterogeneous Traffic Resource Allocation Based on Cooperative Learning for 5G Cognitive Radio Networks
Since quality measurement of end user plays an ever increasing role in development of the wireless communications toward the 5G era, mean opinion score (MOS) has become a widely used metric, not only because it reflects the subjective quality experience of end users but it also provides a common quality assessment metric for traffic of different types. This paper presents a distributed underlay dynamic spectrum access (DSA) scheme based on MOS which performs integrated traffic management and resource allocation across traffics of dissimilar characteristics (real-time video and data traffic). The presented scheme maximizes the overall MOS through a reinforcement learning for a system where primary users coexist with secondary users accessing the same frequency band of interest, while satisfying a total interference constraint to the primary users. The use of MOS as a common metric allows teaching between nodes carrying different traffic without reducing performance. As a result, the docitive paradigm is applied to the presented scheme to investigate the impact of different docition scenarios on overall MOS where a new comer node being taught by experienced peers with similar and dissimilar traffics. Simulation results show that the docition will reduce the number of iterations required for convergence by approximately 65% while preserving the overall MOS more than acceptable level (MOS >3) for different secondary network loads. In terms of applying docition between nodes with similar and dissimilar traffic, simulation results show all different docition scenarios have the same performance in terms of MOS.
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