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Delay-Sensitive Resource Management in Multi-hop Cognitive Radio Networks

机译:多跳认知无线电网络中的延时敏感资源管理

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Dynamic resource management by the various cognitive nodes fundamentally changes the passive way that wireless nodes are currently adapting their transmission strategies to match available wireless resources, by enabling them to consciously influence the wireless system dynamics based on the gathered information about other network nodes. In this paper, we discuss the main challenges of performing such dynamic resource management by emphasizing the distributed information in the dynamic multi-agent system. Specifically, the decisions on how to adapt the aforementioned resource management at sources and relays need to be performed in an informationally-decentralized manner, as the tolerable delay does not allow propagating information back and forth throughout the multi-hop infrastructure to a centralized decision maker. The term "cognitive" refers in our paper to both the capability of the network nodes to achieving large spectral efficiencies through exploitation and mitigation of channel and interference variability by dynamically using different frequency bands as well as their ability to learn the "environment" (channel conditions and source characteristic) and the actions of competing nodes through the designed information exchange. We propose our dynamic resource management algorithms performed at each network nodes integrated with multi-agent learning that explicitly consider the timeliness and the cost of such information exchange. The results show that our dynamic resource management approach improves the PSNR of multiple video streams by more than 3dB as opposed to the state-of-the-art dynamic frequency channel/route selection approaches without learning capability, when the network resources are limited.
机译:各种认知节点的动态资源管理从根本上改变了无线节点当前正在调整其传输策略来匹配可用无线资源的被动方式,使它们能够基于关于其他网络节点的收集信息来意识地影响无线系统动态。在本文中,我们通过强调动态多助理系统中的分布式信息来讨论执行这种动态资源管理的主要挑战。具体地,关于如何在信息和继电器处适应上述资源管理的决定需要以信息分散的方式执行,因为可容忍的延迟不允许在整个多跳基础设施中来回传播到集中决策者。 “认知”术语是指通过使用不同频带动态地利用信道和干扰可变性来实现大谱效率的网络节点的能力,以及他们学习“环境”(频道条件和源特征)通过设计信息交换的竞争节点的动作。我们提出了我们在与多代理学习集成的每个网络节点上执行的动态资源管理算法,明确地考虑了这种信息交换的时间性和成本。结果表明,当网络资源受到限制时,我们的动态资源管理方法通过3DB的多于3DB改善了多个视频流的PSNR,而不是在没有学习能力的情况下的现实动态频率信道/路由选择方法。

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