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Supervised cognitive system: A new vision for cognitive engine design in wireless networks

机译:监督认知系统:无线网络中认知引擎设计的新视野

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Cognitive radio attracts researchers' attention recently in radio resource management due to its ability to exploit environment awareness in configuring radio system parameters. Cognitive engine (CE) is the structure known for deciding system parameters' adaptation using optimization and machine learning techniques. However, these techniques have strengths and weaknesses depending on the experienced network scenario that make one more appropriate than others. In this paper, we propose a novel design for the cognitive system called supervised cognitive system (SCS), which aims to perform radio parameters adaptation with the most appropriate CE learning technique for the encountered network scenario. To realize SCS, it is required to evaluate the performance of different CEs in different network scenarios and according to certain performance objectives. In addition, the ability to select the most appropriate CE learning technique for adaptation in the current network scenario is also a priority in our design. Therefore, SCS investigates the relationship between learning and performance improvement and it employs online learning to classify scenarios and select the most appropriate CE learning technique. The testbed implementation and evaluation results in terms of goodput, packet error rate, and spectral efficiency show that the proposed SCS achieves more than 50% in performance gain compared to the best standalone CE.
机译:由于认知无线电能够利用环境意识来配置无线电系统参数,因此最近在无线电资源管理方面吸引了研究人员的注意力。认知引擎(CE)是使用优化和机器学习技术确定系统参数适应性的结构。但是,这些技术的优缺点取决于经验丰富的网络场景,使一种方法比其他方法更合适。在本文中,我们为认知系统提出了一种新颖的设计,称为监督认知系统(SCS),旨在针对遇到的网络场景使用最合适的CE学习技术来执行无线电参数自适应。为了实现SCS,需要根据不同的性能目标,评估不同CE在不同网络场景下的性能。此外,在当前的网络场景中选择最合适的CE学习技术进行适应的能力也是我们设计中的优先事项。因此,SCS研究了学习与绩效改善之间的关系,并通过在线学习对情景进行分类并选择最合适的CE学习技术。在吞吐量,数据包错误率和频谱效率方面的测试平台实施和评估结果表明,与最佳独立CE相比,所提出的SCS可以实现50%以上的性能增益。

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