深度学习增强的LoRa扩频因子检测频谱感知

Partemie-Marian Mutescu, A. Lavric, A. Petrariu, V. Popa
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引用次数: 2

摘要

在过去十年中,随着物联网概念中物体连接性的增加,对无线传感器应用的需求显着增加。随着无线传感器数量的不断增长,对频谱资源的需求也相应增加,最终会导致过度拥挤、分组冲突和干扰,最终导致无线传感器网络性能水平的降低。在无线传感器网络中,获得对无线电频谱的详细了解对于防止碰撞至关重要。这就需要了解频谱占用水平和所采用的具体无线电调制方案,从而能够实施有效的减少碰撞战略。提出了一种基于卷积神经网络(CNN)对频谱图进行分类的LoRa扩频因子检测方案。我们的研究结果表明,所开发的算法在高信噪比和低信噪比条件下检测无线电调制方面表现出很高的性能,检测精度超过98%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Enhanced Spectrum Sensing for LoRa Spreading Factor Detection
Over the last decade, there has been a significant increase in the demand for wireless sensor applications, in line with the increased connectivity of objects in the Internet of Things concept. As the number of wireless sensors continues to grow, there is a corresponding increase in the demand for spectrum resources which will eventually lead to overcrowding, packet collisions and interference ultimately resulting in a reduction of the wireless sensor network performance level. Obtaining a detailed understanding of the radio spectrum is critical in preventing collisions in wireless sensor networks. This requires knowledge of the level of spectrum occupancy and the specific radio modulation schemes employed, enabling the implementation of effective collision mitigation strategies. This paper proposes a LoRa spreading factor detection scheme based on Convolutional Neural Network (CNN) classification of spectrograms. Our results show that the developed algorithm shows a high degree of performance in detecting radio modulations, both in high SNR and low SNR conditions, resulting in a detection accuracy of over 98%.
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