Prediction-Based Spectrum Sensing Framework for Cognitive Radio

IF 2.4 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Andres Rojas;Gawen Follet;Gordana Jovanovic Dolecek;José M. De La Rosa;Gustavo Liñán-Cembrano
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Abstract

This paper presents a hardware-software deep learning architecture for prediction-based spectrum sensing in Cognitive Radio (CR) applications. A convolutional neural network-based predictor for spectrum occupancy was trained using the band power from I/Q samples acquired by a softwaredefined radio (SDR). Additionally, a second neural engine was trained for radio frequency (RF) frame detection based on spectrograms. We implemented a transfer-learning solution using a You-Only-LookOnce version 8 nano model with a synthetic dataset comprising thousands of wireless signals, including Wi-Fi, Bluetooth, and collision frames. Once trained, the two neural networks were transferred to a Raspberry Pi 5 – an affordable single-board computer – connected to two (one for Rx, one for Tx) ADALM-PLUTO SDR systems for benchmarking using over-the-air signals in the 2.4 GHz band. Together with our methodology and experimental results, the paper also presents an overview of current spectrum prediction proposals and RF frame detectors. Remarkably, to the best of our knowledge, this proposed framework is the first approach towards an Internet of Things-suitable implementation of prediction-based spectrum sensing for CR applications.
基于预测的认知无线电频谱感知框架
针对认知无线电(CR)应用中基于预测的频谱感知,提出了一种硬件-软件深度学习架构。使用软件定义无线电(SDR)获取的I/Q样本的频带功率训练基于卷积神经网络的频谱占用预测器。此外,还训练了第二个神经引擎,用于基于频谱图的射频帧检测。我们使用You-Only-LookOnce版本8纳米模型实现了一个迁移学习解决方案,该模型具有包含数千个无线信号的合成数据集,包括Wi-Fi、蓝牙和碰撞帧。经过训练后,两个神经网络被转移到Raspberry Pi 5上,这是一款价格实惠的单板计算机,连接到两个(一个用于Rx,一个用于Tx) ADALM-PLUTO SDR系统,使用2.4 GHz频段的空中信号进行基准测试。结合我们的方法和实验结果,本文还概述了目前的频谱预测建议和射频帧检测器。值得注意的是,据我们所知,该框架是第一个适合物联网的基于预测的频谱感知CR应用实现方法。
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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