Generalized Statistical Spectrum Occupancy Modelling and its Learning based Predictive Validation

Anirudh Agarwal, R. Gangopadhyay
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引用次数: 3

Abstract

Modeling of spectrum occupancy is important for better channel utilization, accurate spectrum sensing, and enhanced Quality of Service (QoS) to the primary user (PU) in a cognitive radio (CR) system. Existing models are highly dependent on the spatio-temporal variations of the PU activity as the statistical behavior of the PU changes with respect to the location, spectrum band, and the varying load time. In this work, a generalized Gaussian Mixture model (GMM) has been investigated for characterizing the spectrum occupancy of the PU in three spectrally different CR scenarios, viz. VHF/UHF band, GSM band, and ISM band. The goodness of fit performance of GMM is compared with the widely used spectrum occupancy model based on Beta distribution. Further, the robustness of GMM has been validated through learning based prediction via Recurrent Neural Networks (RNN), thereby proposing a hybrid approach of statistical and predictive modeling of spectrum occupancy for enhanced dynamic spectrum access.
广义统计频谱占用模型及其基于学习的预测验证
在认知无线电(CR)系统中,频谱占用的建模对于更好地利用信道、准确地感知频谱以及提高对主用户(PU)的服务质量(QoS)至关重要。现有的模型高度依赖于PU活性的时空变化,因为PU的统计行为随位置、频谱带和负载时间的变化而变化。本文研究了一种广义高斯混合模型(GMM),用于表征VHF/UHF频段、GSM频段和ISM频段三种频谱不同的CR场景下PU的频谱占用情况。将GMM的拟合优度与广泛使用的基于Beta分布的频谱占用模型进行了比较。此外,通过循环神经网络(RNN)基于学习的预测验证了GMM的鲁棒性,从而提出了一种用于增强动态频谱接入的频谱占用统计和预测混合建模方法。
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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