Collaborative Spectrum Sensing Algorithm Based on Exponential Entropy in Cognitive Radio Networks

Traditional detectors for spectrum sensing in cognitive radio networks always become disabled when noise uncertainty is severe. Shannon entropy-based detection methods have aroused widespread attention in recent years due to the characteristics of effective anti-noise uncertainty. However, in existi...

Full description

Bibliographic Details
Main Authors: Fang Ye, Xun Zhang, Yibing Li
Format: Article
Language:English
Published: MDPI AG 2016-10-01
Series:Symmetry
Subjects:
Online Access:http://www.mdpi.com/2073-8994/8/11/112
id doaj-ae789077924a4bb692022e6766f7644b
record_format Article
spelling doaj-ae789077924a4bb692022e6766f7644b2020-11-24T22:28:54ZengMDPI AGSymmetry2073-89942016-10-0181111210.3390/sym8110112sym8110112Collaborative Spectrum Sensing Algorithm Based on Exponential Entropy in Cognitive Radio NetworksFang Ye0Xun Zhang1Yibing Li2College of Information and Communication Engineering, Harbin Engineering University, Harbin 150001, ChinaCollege of Information and Communication Engineering, Harbin Engineering University, Harbin 150001, ChinaCollege of Information and Communication Engineering, Harbin Engineering University, Harbin 150001, ChinaTraditional detectors for spectrum sensing in cognitive radio networks always become disabled when noise uncertainty is severe. Shannon entropy-based detection methods have aroused widespread attention in recent years due to the characteristics of effective anti-noise uncertainty. However, in existing entropy-based sensing schemes, the uniform quantization method cannot guarantee the maximum entropy distribution when primary users do not exist, and cannot effectively distinguish between two hypotheses, which severely limits the promotion of detection performance. Moreover, the Shannon entropy-based sensing schemes are prone to misconvergence occurring when estimating entropy values, thus causing failure detection, which leads to system detection inefficiency and resource waste. These are the two major serious defects in Shannon entropy-based detectors, which restrict the performance improvement. In this paper, a novel non-uniform quantized exponential entropy-based (NQEE) detector is proposed for local sensing to deal with the problems of maximum entropy distribution and detection failure. To further improve the reliability of the detection, a collaborative spectrum sensing algorithm based on an NQEE detector with multiple fusion rules is presented. Simulation results verify that the detection performance of the improved local entropy-based detector is superior to the existing Shannon entropy-based detectors and is proved to be robust to noise power uncertainty. In addition, the novel collaborative detection algorithm outperforms the traditional collaborative spectrum detection method to a great degree.http://www.mdpi.com/2073-8994/8/11/112cognitive radio networkscollaborative spectrum sensingexponential entropymulti-fusion rule
collection DOAJ
language English
format Article
sources DOAJ
author Fang Ye
Xun Zhang
Yibing Li
spellingShingle Fang Ye
Xun Zhang
Yibing Li
Collaborative Spectrum Sensing Algorithm Based on Exponential Entropy in Cognitive Radio Networks
Symmetry
cognitive radio networks
collaborative spectrum sensing
exponential entropy
multi-fusion rule
author_facet Fang Ye
Xun Zhang
Yibing Li
author_sort Fang Ye
title Collaborative Spectrum Sensing Algorithm Based on Exponential Entropy in Cognitive Radio Networks
title_short Collaborative Spectrum Sensing Algorithm Based on Exponential Entropy in Cognitive Radio Networks
title_full Collaborative Spectrum Sensing Algorithm Based on Exponential Entropy in Cognitive Radio Networks
title_fullStr Collaborative Spectrum Sensing Algorithm Based on Exponential Entropy in Cognitive Radio Networks
title_full_unstemmed Collaborative Spectrum Sensing Algorithm Based on Exponential Entropy in Cognitive Radio Networks
title_sort collaborative spectrum sensing algorithm based on exponential entropy in cognitive radio networks
publisher MDPI AG
series Symmetry
issn 2073-8994
publishDate 2016-10-01
description Traditional detectors for spectrum sensing in cognitive radio networks always become disabled when noise uncertainty is severe. Shannon entropy-based detection methods have aroused widespread attention in recent years due to the characteristics of effective anti-noise uncertainty. However, in existing entropy-based sensing schemes, the uniform quantization method cannot guarantee the maximum entropy distribution when primary users do not exist, and cannot effectively distinguish between two hypotheses, which severely limits the promotion of detection performance. Moreover, the Shannon entropy-based sensing schemes are prone to misconvergence occurring when estimating entropy values, thus causing failure detection, which leads to system detection inefficiency and resource waste. These are the two major serious defects in Shannon entropy-based detectors, which restrict the performance improvement. In this paper, a novel non-uniform quantized exponential entropy-based (NQEE) detector is proposed for local sensing to deal with the problems of maximum entropy distribution and detection failure. To further improve the reliability of the detection, a collaborative spectrum sensing algorithm based on an NQEE detector with multiple fusion rules is presented. Simulation results verify that the detection performance of the improved local entropy-based detector is superior to the existing Shannon entropy-based detectors and is proved to be robust to noise power uncertainty. In addition, the novel collaborative detection algorithm outperforms the traditional collaborative spectrum detection method to a great degree.
topic cognitive radio networks
collaborative spectrum sensing
exponential entropy
multi-fusion rule
url http://www.mdpi.com/2073-8994/8/11/112
work_keys_str_mv AT fangye collaborativespectrumsensingalgorithmbasedonexponentialentropyincognitiveradionetworks
AT xunzhang collaborativespectrumsensingalgorithmbasedonexponentialentropyincognitiveradionetworks
AT yibingli collaborativespectrumsensingalgorithmbasedonexponentialentropyincognitiveradionetworks
_version_ 1725745797519114240