基于机器学习的认知无线电粗频带分类

Inna Valieva, B. Shashidhar, M. Björkman, J. Åkerberg, Mikael Ekström, I. Voitenko
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引用次数: 0

摘要

本文重点研究了多监督机器学习算法在分类精度和速度方面的性能评估,以将盲频段划分为白色、灰色和黑色三种占用类别,以便在认知无线电应用中实现。在控制实验中,收集了18万个样本的训练和验证数据集,每个类60,000个样本。使用硬件信号发生器生成数据样本,并将其作为时域复信号记录在接收机前端。灰度空间数据样本包含一个、两个或三个信号,调制成2FSK、BPSK或QPSK,符号速率为10,100或1000ksymbol /s。空白数据样本不包含自己生成的信号。黑空间数据样本包含两个符号率为22.5 MSymbol/s的信号,其中心频率偏移+14 MHz和- 14 MHz占据了整个观测波段。使用收集到的数据集,在Matlab分类学习应用程序中离线执行了20种监督机器学习算法的训练和验证。精细化决策树的分类准确率最高,达到87.8%,观察到的分类速度为630000个对象/s,也高于要求的2000个对象/s。中等决策树和集成增强树的准确率分别为87.5%和87.7%,分类速度分别为950000和230000个对象/s。因此,在未来的工作范围内,选择集成增强树和精细和中等决策树部署在目标无线电应用中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning-Based Coarse Frequency Bands Classification For Cognitive Radio Applications
This paper is focused on multiple supervised machine learning algorithms’ performance evaluation in terms of classification accuracy and speed for the blind frequency bands classification into three occupancy classes: white, gray, and black spaces for potential implementation in cognitive radio application. Training and validation data sets consisting of 180 000 samples, including 60 000 samples per class, have been collected in the controlled experiment. Data samples have been generated using a hardware signal generator and recorded on the receiver’s front end as the time-domain complex signals. Gray space data samples contain one, two, or three signals modulated into 2FSK, BPSK, or QPSK with symbol rates 10, 100, or 1000 kSymbol/s. White space data samples contain no own generated signals. Black space data samples contain two signals with the symbol rate of 22.5 MSymbol/s and offset +14 MHz and −14 MHz from the central frequency occupying the entire observation band. Training and validation of twenty supervised machine learning algorithms have been performed offline in the Matlab Classification Learner application using the collected data set. Fine decision trees have demonstrated the highest classification accuracy of 87.8 %, the observed classification speed of 630000 Objects/s is also higher than the required 2000 Objects/s. Medium decision trees and ensemble boosted trees have demonstrated 87.5 % and 87.7 % accuracy and classification speeds of 950000 and 230000 Objects/s respectively. Therefore, ensemble boosted trees, and fine and medium decision trees have been selected for the deployment on the target radio application in the scope of future work.
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