Self-organizing home networking based on cognitive radio technologies

Z. Wangt, J. Ansari, V. Atanasovski, D. Denkovski, T. Farnham, L. Gavrilovska, A. Gefflaut, R. Manfrin, E. Meshkova, J. Nasreddine, K. Rerkrai, M. Sooriyabandara, A. Zanella
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引用次数: 10

Abstract

The increasing complexity of the future wireless networks leads to the requirement for self-organization. This is true especially in home networking where users are typically not networking professionals and cannot be expected to perform complex optimization and management tasks. In this context, cognitive radio concept combining cross-layer optimization and learning mechanisms is a promising solution. We demonstrate a cognitive home networking prototype, which addresses practical problems users face with the present-day wireless networks at home. The prototype shows how nodes using IEEE 802.11 radios and WARP boards operate under the Cognitive Resource Manager (CRM). The nodes achieve the desired performance by handling network dynamics and controlling parameters taking independent or cooperative decisions and operating in different layers of the protocol stack. This is done using multiple control loops which are supported by the CRM architecture. We demonstrate the use of machine learning for online estimation of network activity patterns to enable more efficient Dynamic Spectrum Access (DSA) using Hidden Semi-Markov Models (HSMM). The demonstration showcases dynamic spectrum allocation and policy-based behavioral changes in a home environment, where several multimedia streams and data communication flows are competing against each other and against external, also primary, interferers.
基于认知无线电技术的自组织家庭网络
未来无线网络的日益复杂导致了对自组织的需求。在家庭网络中尤其如此,因为用户通常不是网络专业人员,不能期望他们执行复杂的优化和管理任务。在这种情况下,结合跨层优化和学习机制的认知无线电概念是一个很有前途的解决方案。我们展示了一个认知家庭网络原型,它解决了用户在当前家庭无线网络中面临的实际问题。原型展示了使用IEEE 802.11无线电和WARP板的节点如何在认知资源管理器(CRM)下运行。节点通过处理网络动态和控制参数,采取独立或合作的决策,并在协议栈的不同层中运行,从而达到预期的性能。这是使用CRM体系结构支持的多个控制循环来完成的。我们演示了使用机器学习在线估计网络活动模式,以使用隐藏半马尔可夫模型(HSMM)实现更有效的动态频谱访问(DSA)。该演示展示了家庭环境中的动态频谱分配和基于策略的行为变化,其中多个多媒体流和数据通信流相互竞争,并与外部(也是主要的)干扰竞争。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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