Evaluation of a new spectrum sensing technique for Internet of Things: An AI approach

Partemie-Marian Mutescu, A. Lavric, A. Petrariu, V. Popa
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引用次数: 1

Abstract

In the last decade we observed a great demand for wireless sensor applications as the connectivity of objects related to the Internet of Things concept increased. The growing number of wireless sensors leads to more spectrum demand and eventually to collisions due to overcrowding, causing a decrease in their performance level. Thus, to avoid collisions, detailed knowledge of the radio spectrum is required such as the degree of spectrum occupancy and the radio modulations used. This paper presents an analysis of the impact of different radio signal representations (I/Q coordinates, polar coordinates, and Fast Fourier Transform) on the performance level of machine learning algorithms in spectrum sensing classification. Our results shown that machine learning algorithms achieve a higher classification accuracy when the FFT representation of the radio signal is used, with a classification accuracy of 98.6%. When using the time series, the I/Q representation of the radio signal obtained an accuracy of 68.6% on the test dataset meanwhile the polar coordinates achieved an accuracy of 90%, respectively.
一种新的物联网频谱传感技术评估:一种人工智能方法
在过去的十年中,随着与物联网概念相关的物体的连接增加,我们观察到对无线传感器应用的巨大需求。越来越多的无线传感器导致更多的频谱需求,并最终由于过度拥挤而导致碰撞,导致其性能水平下降。因此,为了避免碰撞,需要详细了解无线电频谱,例如频谱占用程度和所使用的无线电调制。本文分析了不同的无线电信号表示(I/Q坐标、极坐标和快速傅立叶变换)对频谱感知分类中机器学习算法性能水平的影响。我们的研究结果表明,当使用无线电信号的FFT表示时,机器学习算法实现了更高的分类精度,分类精度为98.6%。当使用时间序列时,无线电信号的I/Q表示在测试数据集中获得了68.6%的精度,而极坐标的精度分别达到了90%。
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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