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Robust signal processing algorithms for RF complexity reduction in cognitive radio systems -

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dc.contributor.author Safatly, Lise Emile,
dc.date 2014
dc.date.accessioned 2015-02-03T10:23:56Z
dc.date.available 2015-02-03T10:23:56Z
dc.date.issued 2014
dc.date.submitted 2014
dc.identifier.other b18262302
dc.identifier.uri http://hdl.handle.net/10938/10043
dc.description Dissertation. Ph.D. American University of Beirut. Department of Electrical and Computer Engineering, 2014. ED:49
dc.description Chair of Committee : Dr. Karim Kabalan, Professor, Electrical and Computer Engineering ; Advisor : Dr. Ali El-Hajj, Professor, Electrical and Computer Engineering ; Members of Committee: Dr. Ibrahim Abou Faycal, Associate Professor, Electrical and Computer Engineering ; Dr. Youssef Nasser, Senior Lecturer, Electrical and Computer Engineering ; Dr. Mohammed Al Husseini, Senior Researcher, Beirut Research and Innovation Center, Lebanon ; Dr. Jean François Diouris, Professor, Polytech Nantes, Nantes, France ; Dr. Yves Louët, Professor, SUPELEC, Rennes, France.
dc.description Includes bibliographical references (leaves 118-128)
dc.description.abstract The need for an efficient spectrum usage policy is becoming more pressing due to the rapid growth of wireless communications applications and the under-utilization of most licensed bands. Cognitive Radio arises to be a novel solution to this spectrum wastage problem by allowing the dynamic allocation of unused bands. In these scenarios, a secondary or unlicensed user detects, exploits and utilizes an unoccupied spectrum band, called a white space, reserved for primary users. Thus, two major functions of a cognitive radio transceiver are scanning the spectrum for a potential white space and transmitting a suitable adaptive signal. In real-world dynamic scenarios, this highly adaptive radio technology presents unique signal processing challenges and requires specific algorithms for spectrum sensing and spectrum sculpting. In an Ultra-Wide Band (UWB) scenario, secondary users are required to scan bands that are of hundreds of megahertz in width. This puts strict hardware requirements on the RF front-end, relating to the linearity, dynamic range and sensitivity of the circuitry. On the other hand, RF impairments could dramatically degrade the performance of the secondary user. These imperfections result from the large spectrum to be sensed and from the low-cost implementations of the analog RF front-ends. In such scenarios, advanced signal processing algorithms are required not only to sense the incumbent spectrum but also to improve the radio sensitivity by mitigating the RF impairments effects to relax the hardware requirements. In this dissertation, we investigate and propose signal processing algorithms to build a highly adaptive, fully functional cognitive radio transceiver working in the UWB range. At first, we start by studying basic spectrum sensing algorithms, we then move to assess the performance of these algorithms against RF impairments. A blind algorithm is selected, improved and implemented in real-world scenarios. A mitigation stage is devised and added to the sensing scheme in order to obtain a r
dc.format.extent xii, 128 leaves : illustrations ; 30 cm
dc.language.iso eng
dc.relation.ispartof Theses, Dissertations, and Projects
dc.subject.classification ED:000049 AUBNO
dc.subject.lcsh Cognitive radio networks.
dc.subject.lcsh Signal processing -- Digital techniques.
dc.subject.lcsh Radio frequency.
dc.subject.lcsh Computer algorithms.
dc.subject.lcsh Software radio.
dc.title Robust signal processing algorithms for RF complexity reduction in cognitive radio systems -
dc.type Dissertation
dc.contributor.department American University of Beirut. Faculty of Engineering and Architecture. Department of Electrical and Computer Engineering, degree granting institution.


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