Spectrum Sensing Using Software Defined Radio for Cognitive Radio Networks: A Survey

Archive ouverte : Article de revue

Manco-Vasquez, Julio | Dayoub, Iyad | Nafkha, Amor | Alibakhshikenari, Mohammad | Thameur, Hayfa Ben

Edité par HAL CCSD ; IEEE

International audience. Cognitive radio (CR) network has emerged as a potential solution to the under-utilization problem of the allocated radio spectrum, where spectrum sensing (SS) plays a key role to enable the coexistence between primary and secondary users. It has attracted research interests, and several works have been reported in the literature. Nevertheless, the assumptions and simplifications introduced during the modeling of the communication system often yield misleading conclusions each time relevant aspects of their implementation on a testbed are omitted. Hence, prototypes are built to study their behaviour under real-world conditions, therefore software defined radio (SDR) has emerged as an ideal vehicle to allow researchers to experiment with prototypes of these CR approaches. In this survey, we provide an overview of the latest works in CR networks related to the spectrum awareness approaches and taking into account their implementation on testbeds. These approaches are classified from a practical point of view, where a detailed review of the existing works for each category is provided. A review of the existing SDR platforms is also exposed highlighting the main components and features of current architectures employed for experimental evaluation of CR approaches. Next, the challenges to implement current spectrum awareness approaches on SDR platforms are detailed. Finally, at the light of these reviews, research challenges and open issues are identified for future research directions.

Consulter en ligne

Suggestions

Du même auteur

SDR Implementation of a Real-Time Testbed for Spectrum Sensing Under MIMO Time-Selective Channels for Cognitive Radio Applications | Thameur, Hayfa Ben

SDR Implementation of a Real-Time Testbed for Spectrum Sensing Under MIMO T...

Archive ouverte: Article de revue

Thameur, Hayfa Ben | 2021-08

International audience

Real-Time In-Lab Test of Eigenvalue-Based Spectrum Sensing Using USRP RIO SDR Boards | Thameur, Hayfa Ben

Real-Time In-Lab Test of Eigenvalue-Based Spectrum Sensing Using USRP RIO S...

Archive ouverte: Article de revue

Thameur, Hayfa Ben | 2021-03

International audience. The diversity of prevailing and emerging cognitive radio (CR) applications makes CR an attractive domain to the researchers as well as the industry. The spectrum sensing (SS) is considered as...

On Experimental Evaluation of Eigenvalue-based Spectrum Sensing using a Real-time SDR Testbed | Thameur, Hayfa Ben

On Experimental Evaluation of Eigenvalue-based Spectrum Sensing using a Rea...

Archive ouverte: Communication dans un congrès

Thameur, Hayfa Ben | 2021-06-28

virtual communication. International audience. Spectrum sensing (SS) is one of the most challenging and prominent operation in the emerging cognitive radio (CR) technology. It is viewed as one of the most intelligen...

Du même sujet

On Experimental Evaluation of Eigenvalue-based Spectrum Sensing using a Real-time SDR Testbed | Thameur, Hayfa Ben

On Experimental Evaluation of Eigenvalue-based Spectrum Sensing using a Rea...

Archive ouverte: Communication dans un congrès

Thameur, Hayfa Ben | 2021-06-28

virtual communication. International audience. Spectrum sensing (SS) is one of the most challenging and prominent operation in the emerging cognitive radio (CR) technology. It is viewed as one of the most intelligen...

USRP RIO-based Testbed for Real-time Blind Digital Modulation Recognition in MIMO Systems | Thameur, Hayfa Ben

USRP RIO-based Testbed for Real-time Blind Digital Modulation Recognition i...

Archive ouverte: Article de revue

Thameur, Hayfa Ben | 2022-10

International audience. Modulation recognition is one of the key elements in the cognitive radio (CR) technology. Chiefly, automatic modulation recognition (AMR) is a challenging task in such systems. It refers to b...

Unsupervised deep learning to solve power allocation problems in cognitive relay networks | Benatia, Yacine

Unsupervised deep learning to solve power allocation problems in cognitive ...

Archive ouverte: Communication dans un congrès

Benatia, Yacine | 2022-05-16

International audience. In this paper, an unsupervised deep learning approach is proposed to solve the constrained and non-convex Shannon rate maximization problem in a relay-aided cognitive radio network. This netw...

Robustness to imperfect CSI of power allocation policies in cognitive relay networks | Benatia, Yacine

Robustness to imperfect CSI of power allocation policies in cognitive relay...

Archive ouverte: Communication dans un congrès

Benatia, Yacine | 2022-07-04

International audience. In this paper, the aim is to study the robustness against imperfect channel state information (CSI) of the power allocation policies maximizing the constrained and non-convex Shannon rate pro...

Chargement des enrichissements...