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Erschienen in: Wireless Networks 6/2017

05.04.2016

Diffusing-CRN k-means: an improved k-means clustering algorithm applied in cognitive radio ad hoc networks

verfasst von: Badr Benmammar, Mohammed Housseyn Taleb, Francine Krief

Erschienen in: Wireless Networks | Ausgabe 6/2017

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Abstract

With increasing demand of new wireless applications and increasing number of wireless user’s, problem of spectrum scarcity arises. In this context, cognitive radio supports dynamic spectrum access to address spectrum scarcity problem. Cognitive radio defined the cognitive radio nodes by their ability to intelligently adapt the environment to achieve specific objectives through advanced techniques. The variance of channel availability for cognitive radio nodes degrades connectivity and robustness of this type of network; in this case the use of clustering is an effective approach to meet this challenge. Indeed, the geographical areas are homogeneous in terms of type of radio spectrum, radio resources are better allocated by grouping cognitive radio nodes per cluster. Clustering is interesting to effectively manage the spectrum or routing in cognitive radio ad hoc networks. In this paper, we aim to improve connectivity and cooperativeness of cognitive radio nodes based on the improvement of the k-means algorithm. Our proposed algorithm is applied in cognitive radio ad hoc networks. The obtained results in terms of exchange messages and execution time show the feasibility of our algorithm to form clusters in order to improve connectivity and cooperativeness of cognitive radio nodes in the context of cognitive radio ad hoc networks.

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Metadaten
Titel
Diffusing-CRN k-means: an improved k-means clustering algorithm applied in cognitive radio ad hoc networks
verfasst von
Badr Benmammar
Mohammed Housseyn Taleb
Francine Krief
Publikationsdatum
05.04.2016
Verlag
Springer US
Erschienen in
Wireless Networks / Ausgabe 6/2017
Print ISSN: 1022-0038
Elektronische ISSN: 1572-8196
DOI
https://doi.org/10.1007/s11276-016-1257-4

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