Wide-band spectrum sensing with convolution neural network using spectral correlation function
Document Type
Article
Publication Title
International Journal of Electrical and Computer Engineering
Abstract
Recognition of signals is a spectrum sensing challenge requiring simultaneous detection, temporal and spectral localization, and classification. In this approach, we present the convolution neural network (CNN) architecture, a powerful portrayal of the cyclo-stationarity trademark, for remote range detection and sign acknowledgment. Spectral correlation function is used along with CNN. In two scenarios, method-1 and method-2, the suggested approach is used to categorize wireless signals without any previous knowledge. Signals are detected and classified simultaneously in method-1. In method-2, the sensing and classification procedures take place sequentially. In contrast to conventional spectrum sensing techniques, the proposed CNN technique need not bother with a factual judgment process or past information on the signs’ separating qualities. The method beats both conventional sensing methods and signal-classifying deep learning networks when used to analyze real-world, over-the-air data in cellular bands. Despite the implementation’s emphasis on cellular signals, any signal having cyclo-stationary properties may be detected and classified using the provided approach. The proposed model has achieved more than 90% of testing accuracy at 15 dB.
First Page
409
Last Page
417
DOI
10.11591/ijece.v14i1.pp409-417
Publication Date
2-1-2024
Recommended Citation
Rajanna, Anupama; Kulkarni, Srimannarayana; and Prasad, Sarappadi Narasimha, "Wide-band spectrum sensing with convolution neural network using spectral correlation function" (2024). Open Access archive. 6905.
https://impressions.manipal.edu/open-access-archive/6905