Spectrum sensing allows cognitive radio systems to detect relevant signals in despite the presence of severe interference. Most of the existing spectrum sensing techniques use a particular signal-noise model with certain assumptions and derive certain detection performance. To deal with this uncertainty, learning based approaches are being adopted and more recently deep learning based tools have become popular. Here, we propose an approach of spectrum sensing which is based on long short term memory (LSTM) which is a critical element of deep learning networks (DLN). Use of LSTM facilitates implicit feature learning from spectrum data. The DLN is trained using several features and the performance of the proposed sensing technique is validated with the help of an empirical testbed setup using Adalm Pluto. The testbed is trained to acquire the primary signal of a real world radio broadcast taking place using FM. Experimental data show that even at low signal to noise ratio, our approach performs well in terms of detection and classification accuracies, as compared to current spectrum sensing methods.
翻译:现有大多数频谱遥感技术使用特定信号-噪音模型并作某些假设,并获得一定的探测性能。为了应对这种不确定性,正在采用基于学习的方法,最近还采用了基于深层学习的工具。在这里,我们提议一种基于长期短期记忆(LSTM)的频谱感测方法,这是深层学习网络的一个关键要素。LSTM的使用有利于从频谱数据中隐含特征的学习。DLN在使用若干特征进行训练时,在利用Adalm Pluto的经验测试台装置的帮助下,对拟议的遥感技术的性能进行了验证。测试台接受培训,以获得使用调频进行的真实世界无线电广播的主要信号。实验数据表明,即使低信号到噪音比率,我们的方法在探测和分类方面表现良好,与目前的频谱感测方法相比,也很好。