基于强化学习的多服务认知网络频谱共享

A. Alsarhan, A. Agarwal
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引用次数: 12

摘要

本文研究了多业务认知无线网络中的频谱共享问题。将该问题表述为收益最大化问题,并提出了一个能够充分解决无线电环境中一类资源共享问题的框架。主用户(pu)根据邻居空闲通道的可用性动态交换通道。不同类别的从用户组成一个网状网络,向主用户租用频谱。对于这种认知无线网状网络,PU面临的主要挑战是满足以下相互冲突的目标:最大化其总收入,保持其服务质量(QoS)(由于将其频谱出租给su而降低)和减少辅助用户延迟时间。在这项工作中,机器学习范式被提出作为提取频谱共享的最优控制策略的一种手段。为了获得不同的需求,目标函数定义为使主要用户获得的总收益最大化。应用价值迭代算法,寻找报酬与成本(收益)之差最大的最优控制策略。对所提出的频谱共享方法的性能评估表明,该方案能够在pu收入和su延迟之间找到有效的权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spectrum sharing in multi-service cognitive network using reinforcement learning
In this paper the issue of spectrum sharing in multi-service cognitive wireless network is addressed. The problem is formulated as a revenue maximization problem and a framework is presented that is capable of adequately solving a class of problem where resources are shared in radio environment. Primary users (PUs) exchange channels dynamically and based on the availability of idle channels at neighbors. Secondary users (SUs) of different classes form a mesh network and rent a spectrum from primary users. For such cognitive wireless mesh networks, the main challenge facing a PU is to satisfy the following conflicting objectives: maximizing its total revenue, maintaining its quality of service (QoS) (that degrades due to renting its spectrum to SUs) and reducing secondary user delay times. In this work machine learning paradigm is presented as a means for extracting the optimal control policy for spectrum sharing. To obtain different requirements, the objective function is defined to maximize the total revenue gained by primary users. Value iteration algorithm is applied to find an optimal control policy that maximizes the difference between reward and cost (revenue). Performance evaluation of the proposed spectrum sharing approach shows that the scheme is able to find an efficient trade-off between PUs revenue and SUs delay.
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