Long Short-Term Memory based Spectrum Sensing Scheme for Cognitive Radio

Nikhil Balwani, Dhaval K. Patel, Brijesh Soni, M. López-Benítez
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引用次数: 7

Abstract

The application of machine learning models to spectrum sensing in cognitive radio is not uncommon in literature, but most of these models fail to consider temporal dependencies in the signal. In this paper, the temporal correlation among the spectrum data is exploited using a Long Short-Term Memory (LSTM) network. More specifically, the previous sensing event is fed along with the present sensing event to the LSTM model. The proposed sensing scheme is validated based on empirical data of various radio technologies. The proposed LSTM model is compared with other machine learning algorithms in terms of classification accuracy. Furthermore, the proposed scheme is also compared with other spectrum sensing techniques. Results indicate that the proposed scheme improves the detection performance and classification accuracy at low signal-to-noise ratio regimes. Moreover, it is observed that the achieved improvement is obtained at the expense of longer training time and nominal increase in execution time.
基于长短期记忆的认知无线电频谱感知方案
机器学习模型在认知无线电频谱感知中的应用在文献中并不少见,但大多数这些模型都没有考虑信号中的时间依赖性。本文利用长短期记忆(LSTM)网络利用频谱数据间的时间相关性。更具体地说,将之前的感知事件与当前的感知事件一起馈送到LSTM模型。基于各种无线电技术的经验数据验证了所提出的传感方案。将LSTM模型与其他机器学习算法在分类精度方面进行了比较。此外,还将该方案与其他频谱传感技术进行了比较。结果表明,该方法在低信噪比条件下提高了检测性能和分类精度。此外,可以观察到,取得的改进是以更长的训练时间和执行时间的名义增加为代价的。
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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