认知无线电网络决策中过去样本的最优值

Tecnura Pub Date : 2020-07-01 DOI:10.14483/22487638.15278
C. Hernández, Jefferson Jara Estupiñan, Diego Armando Giral Ramírez
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引用次数: 3

摘要

上下文:PU频谱使用的建模和预测是减少SU和PU之间干扰和提高整体频谱决策性能的重要方面。该过程需要过去的光谱信息,这可能允许算法对PU的行为进行建模。目的:为认知无线电网络中的决策算法确定过去样本的最优值和决策准则的重新计算时间。方法:使用FFAHP算法进行了几个模拟实验。在GSM频带中,使用了两种不同的方法(实时和更好的工作),即高流量和低流量。对所获得的数据进行统计分析,在时间标准保持不变的情况下改变时间范围参数,反之亦然。结果:在高流量条件下,取1800个以前的样本来计算参数的初始值,并每10分钟更新一次就足够了(1800)。然而,在低流量条件下,需要5400个先前样本来计算参数的初始值并每10分钟更新一次(1800)。结论:为了获得良好的切换速率性能,不需要大量的先前样本来确定决策参数的初始值,也不需要更新这些参数来获得与GSM频率频带相对应的业务。资助:目前的工作是由弗朗西斯科·何塞·德·卡尔达斯地区大学研究与科学发展中心资助的一个研究项目的结果。
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Optimal value of past samples for decision making in cognitive radio networks
Context: The modeling and prediction of spectrum usage by PUs is an important aspect in reducing interference between SUs and Pus, and for improving overall spectral decision-performance. This process requires past spectral information that might allow the algorithm to model the behavior of the PU. Objective: To determine the optimal value of past samples and recalculation time of decision criteria for the decision-making algorithms in cognitive radio networks. Methodology: Several simulation experiments were carried out using the FFAHP algorithm. Two different approaches were used (real time, and better effort), with high and low traffic, in the GSM frequency band. A statistical analysis of the data obtained is performed, varying the time range parameters while the time criteria remained constant, and vice versa. Results: In high traffic conditions, it is enough to take 1800 previous samples to calculate the initial value of the parameters and update them every 10 minutes (1800). Whereas, in low traffic conditions, 5400 previous samples are needed in order to calculate the initial value of parameters and update them every 10 minutes (1800). Conclusions: A high number of previous samples is not necessary to determine the initial value of the decision parameters in order to obtain a good performance of the handoff rate, nor is it necessary to update those parameters to obtain traffic corresponding to the band of GSM frequency. Funding: The present work is a result of a research project financed by the Center of Research and Scientific Development of the District University Francisco José de Caldas.
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发文量
29
审稿时长
40 weeks
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