SPLGSep 13, 2019

Spectrum Sensing Based on Deep Learning Classification for Cognitive Radios

arXiv:1909.06020v1148 citations
Originality Incremental advance
AI Analysis

This is an incremental improvement for cognitive radio systems, enhancing spectrum sensing accuracy in real-world conditions.

The paper tackles spectrum sensing for cognitive radios by framing it as a classification problem using deep learning, achieving better performance than traditional methods like maximum-minimum eigenvalue ratio and frequency domain entropy, with results showing adaptation to new signals and improved detection under colored noise.

Spectrum sensing is a key technology for cognitive radios. We present spectrum sensing as a classification problem and propose a sensing method based on deep learning classification. We normalize the received signal power to overcome the effects of noise power uncertainty. We train the model with as many types of signals as possible as well as noise data to enable the trained network model to adapt to untrained new signals. We also use transfer learning strategies to improve the performance for real-world signals. Extensive experiments are conducted to evaluate the performance of this method. The simulation results show that the proposed method performs better than two traditional spectrum sensing methods, i.e., maximum-minimum eigenvalue ratio-based method and frequency domain entropy-based method. In addition, the experimental results of the new untrained signal types show that our method can adapt to the detection of these new signals. Furthermore, the real-world signal detection experiment results show that the detection performance can be further improved by transfer learning. Finally, experiments under colored noise show that our proposed method has superior detection performance under colored noise, while the traditional methods have a significant performance degradation, which further validate the superiority of our method.

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