Probabilistic Spectrum Sensing Based on Feature Detection for 6G Cognitive Radio: A Survey

With the advent of Sixth Generation (6G) telecommunication systems already envisioned, increased effort is made to further develop current communication technologies, so they can be incorporated together with the novel ones, to deliver uninterrupted and satisfactory service for any application in ev...

Full description

Bibliographic Details
Main Authors: Antoni Ivanov, Krasimir Tonchev, Vladimir Poulkov, Agata Manolova
Format: Article
Language:English
Published: IEEE 2021-01-01
Series:IEEE Access
Subjects:
6G
Online Access:https://ieeexplore.ieee.org/document/9517095/
id doaj-092fd28c389f48c9a2e219b4864be831
record_format Article
spelling doaj-092fd28c389f48c9a2e219b4864be8312021-08-27T23:01:08ZengIEEEIEEE Access2169-35362021-01-01911699411702610.1109/ACCESS.2021.31062359517095Probabilistic Spectrum Sensing Based on Feature Detection for 6G Cognitive Radio: A SurveyAntoni Ivanov0https://orcid.org/0000-0001-5529-098XKrasimir Tonchev1Vladimir Poulkov2Agata Manolova3Faculty of Telecommunications, Technical University of Sofia, Sofia, BulgariaFaculty of Telecommunications, Technical University of Sofia, Sofia, BulgariaFaculty of Telecommunications, Technical University of Sofia, Sofia, BulgariaFaculty of Telecommunications, Technical University of Sofia, Sofia, BulgariaWith the advent of Sixth Generation (6G) telecommunication systems already envisioned, increased effort is made to further develop current communication technologies, so they can be incorporated together with the novel ones, to deliver uninterrupted and satisfactory service for any application in every location on the ground, underwater, in the air, or in space. One such technology is Cognitive Radio (CR) which has received much attention due to its potential for increase of utilization, especially in the bands below 6 GHz. The main enabler for CR is spectrum sensing because it provides the opportunity for dynamic assessment of the radio environment to identify unused channels. This functionality has been the object of many research works for that very reason. In spite of this, the provision of accurate and fast spectrum characterization in time, frequency and space has proven to be a non-trivial task. This paper presents a detailed review of probabilistic spectrum sensing methods classified by the feature they extract from the received signal samples, to provide accurate detection of the primary user (PU) signal. The main design characteristics (such as probability of detection, robustness to noise and fading, signal/noise model assumptions, and computational complexity), strengths and weaknesses for each type are also summarized. Based on current concepts for 6G networks and applications, a framework for human-centric cognition-based wireless access is presented, which specifies the role of spectrum sensing-based CR in future networks.https://ieeexplore.ieee.org/document/9517095/6Gcognitive radiofeature detectionhuman-centric wireless accessInternet of Thingsprobabilistic spectrum sensing
collection DOAJ
language English
format Article
sources DOAJ
author Antoni Ivanov
Krasimir Tonchev
Vladimir Poulkov
Agata Manolova
spellingShingle Antoni Ivanov
Krasimir Tonchev
Vladimir Poulkov
Agata Manolova
Probabilistic Spectrum Sensing Based on Feature Detection for 6G Cognitive Radio: A Survey
IEEE Access
6G
cognitive radio
feature detection
human-centric wireless access
Internet of Things
probabilistic spectrum sensing
author_facet Antoni Ivanov
Krasimir Tonchev
Vladimir Poulkov
Agata Manolova
author_sort Antoni Ivanov
title Probabilistic Spectrum Sensing Based on Feature Detection for 6G Cognitive Radio: A Survey
title_short Probabilistic Spectrum Sensing Based on Feature Detection for 6G Cognitive Radio: A Survey
title_full Probabilistic Spectrum Sensing Based on Feature Detection for 6G Cognitive Radio: A Survey
title_fullStr Probabilistic Spectrum Sensing Based on Feature Detection for 6G Cognitive Radio: A Survey
title_full_unstemmed Probabilistic Spectrum Sensing Based on Feature Detection for 6G Cognitive Radio: A Survey
title_sort probabilistic spectrum sensing based on feature detection for 6g cognitive radio: a survey
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2021-01-01
description With the advent of Sixth Generation (6G) telecommunication systems already envisioned, increased effort is made to further develop current communication technologies, so they can be incorporated together with the novel ones, to deliver uninterrupted and satisfactory service for any application in every location on the ground, underwater, in the air, or in space. One such technology is Cognitive Radio (CR) which has received much attention due to its potential for increase of utilization, especially in the bands below 6 GHz. The main enabler for CR is spectrum sensing because it provides the opportunity for dynamic assessment of the radio environment to identify unused channels. This functionality has been the object of many research works for that very reason. In spite of this, the provision of accurate and fast spectrum characterization in time, frequency and space has proven to be a non-trivial task. This paper presents a detailed review of probabilistic spectrum sensing methods classified by the feature they extract from the received signal samples, to provide accurate detection of the primary user (PU) signal. The main design characteristics (such as probability of detection, robustness to noise and fading, signal/noise model assumptions, and computational complexity), strengths and weaknesses for each type are also summarized. Based on current concepts for 6G networks and applications, a framework for human-centric cognition-based wireless access is presented, which specifies the role of spectrum sensing-based CR in future networks.
topic 6G
cognitive radio
feature detection
human-centric wireless access
Internet of Things
probabilistic spectrum sensing
url https://ieeexplore.ieee.org/document/9517095/
work_keys_str_mv AT antoniivanov probabilisticspectrumsensingbasedonfeaturedetectionfor6gcognitiveradioasurvey
AT krasimirtonchev probabilisticspectrumsensingbasedonfeaturedetectionfor6gcognitiveradioasurvey
AT vladimirpoulkov probabilisticspectrumsensingbasedonfeaturedetectionfor6gcognitiveradioasurvey
AT agatamanolova probabilisticspectrumsensingbasedonfeaturedetectionfor6gcognitiveradioasurvey
_version_ 1721187918005927936