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Spectrum Sensing Implemented with Improved Fluctuation-Based Dispersion Entropy and Machine Learning

Spectrum sensing is an important function in radio frequency spectrum management and cognitive radio networks. Spectrum sensing is used by one wireless system (e.g., a secondary user) to detect the presence of a wireless service with higher priority (e.g., a primary user) with which it has to coexis...

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Autores principales: Baldini, Gianmarco, Chareau, Jean-Marc, Bonavitacola, Fausto
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8699852/
https://www.ncbi.nlm.nih.gov/pubmed/34945917
http://dx.doi.org/10.3390/e23121611
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author Baldini, Gianmarco
Chareau, Jean-Marc
Bonavitacola, Fausto
author_facet Baldini, Gianmarco
Chareau, Jean-Marc
Bonavitacola, Fausto
author_sort Baldini, Gianmarco
collection PubMed
description Spectrum sensing is an important function in radio frequency spectrum management and cognitive radio networks. Spectrum sensing is used by one wireless system (e.g., a secondary user) to detect the presence of a wireless service with higher priority (e.g., a primary user) with which it has to coexist in the radio frequency spectrum. If the wireless signal is detected, the second user system releases the given frequency to maintain the principle of not interfering. This paper proposes a machine learning implementation of spectrum sensing using the entropy measure as a feature vector. In the training phase, the information about the activity of the wireless service with higher priority is gathered, and the model is formed. In the classification phase, the wireless system compares the current sensing report to the created model to calculate the posterior probability and classify the sensing report into either the presence or absence of wireless service with higher priority. This paper proposes the novel application of the Fluctuation Dispersion Entropy (FDE) measure recently introduced in the research community as a feature vector to build the model and implement the classification. An improved implementation of the FDE (IFDE) is used to enhance the robustness to noise. IFDE is further enhanced with an adaptive method (AIFDE) to automatically select the hyper-parameter introduced in IFDE. Then, this paper combines the machine learning approach with the entropy measure approach, which are both recent developments in spectrum sensing research. The approach is compared to similar approaches in literature and the classical energy detection method using a generated radar signal data set with different conditions of SNR(dB) and fading conditions. The results show that the proposed approach is able to outperform the approaches from literature based on other entropy measures or the Energy Detector (ED) in a consistent way across different levels of SNR and fading conditions.
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spelling pubmed-86998522021-12-24 Spectrum Sensing Implemented with Improved Fluctuation-Based Dispersion Entropy and Machine Learning Baldini, Gianmarco Chareau, Jean-Marc Bonavitacola, Fausto Entropy (Basel) Article Spectrum sensing is an important function in radio frequency spectrum management and cognitive radio networks. Spectrum sensing is used by one wireless system (e.g., a secondary user) to detect the presence of a wireless service with higher priority (e.g., a primary user) with which it has to coexist in the radio frequency spectrum. If the wireless signal is detected, the second user system releases the given frequency to maintain the principle of not interfering. This paper proposes a machine learning implementation of spectrum sensing using the entropy measure as a feature vector. In the training phase, the information about the activity of the wireless service with higher priority is gathered, and the model is formed. In the classification phase, the wireless system compares the current sensing report to the created model to calculate the posterior probability and classify the sensing report into either the presence or absence of wireless service with higher priority. This paper proposes the novel application of the Fluctuation Dispersion Entropy (FDE) measure recently introduced in the research community as a feature vector to build the model and implement the classification. An improved implementation of the FDE (IFDE) is used to enhance the robustness to noise. IFDE is further enhanced with an adaptive method (AIFDE) to automatically select the hyper-parameter introduced in IFDE. Then, this paper combines the machine learning approach with the entropy measure approach, which are both recent developments in spectrum sensing research. The approach is compared to similar approaches in literature and the classical energy detection method using a generated radar signal data set with different conditions of SNR(dB) and fading conditions. The results show that the proposed approach is able to outperform the approaches from literature based on other entropy measures or the Energy Detector (ED) in a consistent way across different levels of SNR and fading conditions. MDPI 2021-11-30 /pmc/articles/PMC8699852/ /pubmed/34945917 http://dx.doi.org/10.3390/e23121611 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Baldini, Gianmarco
Chareau, Jean-Marc
Bonavitacola, Fausto
Spectrum Sensing Implemented with Improved Fluctuation-Based Dispersion Entropy and Machine Learning
title Spectrum Sensing Implemented with Improved Fluctuation-Based Dispersion Entropy and Machine Learning
title_full Spectrum Sensing Implemented with Improved Fluctuation-Based Dispersion Entropy and Machine Learning
title_fullStr Spectrum Sensing Implemented with Improved Fluctuation-Based Dispersion Entropy and Machine Learning
title_full_unstemmed Spectrum Sensing Implemented with Improved Fluctuation-Based Dispersion Entropy and Machine Learning
title_short Spectrum Sensing Implemented with Improved Fluctuation-Based Dispersion Entropy and Machine Learning
title_sort spectrum sensing implemented with improved fluctuation-based dispersion entropy and machine learning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8699852/
https://www.ncbi.nlm.nih.gov/pubmed/34945917
http://dx.doi.org/10.3390/e23121611
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