基于NI USRP-2922 SDR的有监督机器学习模型的频谱感知

Rock Feller Singh Russells P, Merlin Gilbert Raj S
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引用次数: 0

摘要

频谱短缺是这一千年通信工程的主要问题。基于机器学习的频谱感知方法越来越受到学术界的关注。频谱感知技术检测授权频段和未授权频段,支持频谱管理。在这项工作中,我们提出了频谱检测作为两级分类问题,并使用基于监督机器学习模型的支持向量机(SVM)算法来解决。数据样本是在真实校园环境中收集的,范围从视线到非视线,使用Labview支持的NI USRP-2922软件定义无线电平台,频率为815 MHz。相关性和移动平均指标是用于分类的两个特征。通过混淆矩阵、预测估计和检测概率来观察基于特征向量的分类效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Supervised Machine Learning Model based Spectrum Sensing using NI USRP-2922 SDR
Spectrum scarcity is a major problem in this millennial communication engineering. Machine learning based spectrum sensing approaches are getting more attention among research community. The spectrum sensing techniques detects the licensed and unlicensed bands and supports spectrum management. In this work, we have proposed the spectrum detection as two level classification problem and solved using a supervised machine learning model based support vector machine(SVM) algorithm. The data samples are collected in real campus environment ranging from line of sight to non-line of sight using the Labview enabled NI USRP-2922 software defined radio platform for 815 MHz. Correlation and moving average metrics are two features used for classifcation. The effectiveness of the classfication based on the feature vectors are observed through confusion matrix, prediction estimation and detection probability.
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