A Real Valued Neural Network Based Autoregressive Energy Detector for Cognitive Radio Application
Author(s) -
Adeiza James Onumanyi,
E. N. Onwuka,
Abiodun Musa Aibinu,
O.C. Ugweje,
M. J. E. Salami
Publication year - 2014
Publication title -
international scholarly research notices
Language(s) - English
Resource type - Journals
ISSN - 2356-7872
DOI - 10.1155/2014/579125
Subject(s) - multitaper , autoregressive model , detector , false alarm , cognitive radio , computer science , energy (signal processing) , spectral density , algorithm , noise power , speech recognition , statistics , power (physics) , mathematics , artificial intelligence , telecommunications , physics , quantum mechanics , wireless
A real valued neural network (RVNN) based energy detector (ED) is proposed and analyzed for cognitive radio (CR) application. This was developed using a known two-layered RVNN model to estimate the model coefficients of an autoregressive (AR) system. By using appropriate modules and a well-designed detector, the power spectral density (PSD) of the AR system transfer function was estimated and subsequent receiver operating characteristic (ROC) curves of the detector generated and analyzed. A high detection performance with low false alarm rate was observed for varying signal to noise ratio (SNR), sample number, and model order conditions. The proposed RVNN based ED was then compared to the simple periodogram (SP), Welch periodogram (WP), multitaper (MT), Yule-Walker (YW), Burg (BG), and covariance (CV) based ED techniques. The proposed detector showed better performance than the SP, WP, and MT while providing better false alarm performance than the YW, BG, and CV. Data provided here support the effectiveness of the proposed RVNN based ED for CR application.
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