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A learning-based scheme to optimise a cognitive handoff

The evolution of communication standards promotes the development and use of several spectrum-sharing strategies. From the noted results, machine-learning techniques have paved a direction for radio protocols to achieve better levels of performance. With their definition, efficient learning practice...

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Main Author: Gombiro, Kurai Luke
Other Authors: Ventura, Neco
Format: Thesis
Language:English
Published: Department of Electrical Engineering 2016
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access_status_str Open Access
author Gombiro, Kurai Luke
author2 Ventura, Neco
author_browse Gombiro, Kurai Luke
Ventura, Neco
author_facet Ventura, Neco
Gombiro, Kurai Luke
author_sort Gombiro, Kurai Luke
collection Thesis
description The evolution of communication standards promotes the development and use of several spectrum-sharing strategies. From the noted results, machine-learning techniques have paved a direction for radio protocols to achieve better levels of performance. With their definition, efficient learning practices and the use of effective spectrum sharing methods necessitate the development of better channel selection schemes. In this work, a radios' learning capability enables the manipulation of a spectrum-sharing concept. This involves the radio obeying certain rules in a spectrum sharing facility, which defines a decentralised form of coexistence (sharing) between the radios occupying that specific radio space. Amongst other benefits, the sharing promotes the node's independence in the radio space, between the cohabitating radios for the essence of efficient spectrum sharing. The learning dimension is realised by the use of a Stochastic Estimator Learning Automata (SELA) algorithm. It allows a radio node to roam independently, while achieving the goal of learning to control spectrum use over time. This is by selecting an effective action that defines the radio's channel choice, leading to the long-term benefit of learning the radio usage patterns. A key condition for spectrum sharing requires that a 'borrowed' channel be handed-over to the owner, in any network for the sake of fair sharing practices. The sharing practices promote the evolution of spectrum use by making use of a device called a Cognitive Radio (CR). The CR, as a device that is set to redefine the sharing landscape, creates a paradigm that will revolutionise the concept of machine learning in the communications world. For the CR to have a good level of functionality, the learning rate and evolution should be dynamic. This is because, the results from its interactions with other users enhances its capability of coexistence and further promotes the progression of the spectrum-sharing concept.
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institution University of Cape Town (South Africa)
language eng
last_indexed 2026-06-10T12:33:37.862Z
license_str Not specified — see source repository
provenance_str_mv Harvested via OAI-PMH from UCTD — University of Cape Town Open Access Repository
publishDate 2016
publishDateRange 2016
publishDateSort 2016
publisher Department of Electrical Engineering
publisherStr Department of Electrical Engineering
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source_str UCTD — University of Cape Town Open Access Repository
spelling oai:open.uct.ac.za:11427/20678 A learning-based scheme to optimise a cognitive handoff Gombiro, Kurai Luke Ventura, Neco Electrical Engineering The evolution of communication standards promotes the development and use of several spectrum-sharing strategies. From the noted results, machine-learning techniques have paved a direction for radio protocols to achieve better levels of performance. With their definition, efficient learning practices and the use of effective spectrum sharing methods necessitate the development of better channel selection schemes. In this work, a radios' learning capability enables the manipulation of a spectrum-sharing concept. This involves the radio obeying certain rules in a spectrum sharing facility, which defines a decentralised form of coexistence (sharing) between the radios occupying that specific radio space. Amongst other benefits, the sharing promotes the node's independence in the radio space, between the cohabitating radios for the essence of efficient spectrum sharing. The learning dimension is realised by the use of a Stochastic Estimator Learning Automata (SELA) algorithm. It allows a radio node to roam independently, while achieving the goal of learning to control spectrum use over time. This is by selecting an effective action that defines the radio's channel choice, leading to the long-term benefit of learning the radio usage patterns. A key condition for spectrum sharing requires that a 'borrowed' channel be handed-over to the owner, in any network for the sake of fair sharing practices. The sharing practices promote the evolution of spectrum use by making use of a device called a Cognitive Radio (CR). The CR, as a device that is set to redefine the sharing landscape, creates a paradigm that will revolutionise the concept of machine learning in the communications world. For the CR to have a good level of functionality, the learning rate and evolution should be dynamic. This is because, the results from its interactions with other users enhances its capability of coexistence and further promotes the progression of the spectrum-sharing concept. 2016-07-25T11:24:31Z 2016-07-25T11:24:31Z 2016 Master Thesis Masters MSc (Eng) http://hdl.handle.net/11427/20678 eng application/pdf Department of Electrical Engineering Faculty of Engineering and the Built Environment University of Cape Town
spellingShingle Electrical Engineering
Gombiro, Kurai Luke
A learning-based scheme to optimise a cognitive handoff
thesis_degree_str Master's
title A learning-based scheme to optimise a cognitive handoff
title_full A learning-based scheme to optimise a cognitive handoff
title_fullStr A learning-based scheme to optimise a cognitive handoff
title_full_unstemmed A learning-based scheme to optimise a cognitive handoff
title_short A learning-based scheme to optimise a cognitive handoff
title_sort learning based scheme to optimise a cognitive handoff
topic Electrical Engineering
url http://hdl.handle.net/11427/20678
work_keys_str_mv AT gombirokurailuke alearningbasedschemetooptimiseacognitivehandoff
AT gombirokurailuke learningbasedschemetooptimiseacognitivehandoff