Multi-objective clustering optimization for multi-channel cooperative sensing in CRNs
Multi-objective clustering optimization for multi-channel cooperative sensing in CRNs
Cooperative spectrum sensing (CSS) has been extensively studied in the literature to mitigate the weakness of spectrum sensing against hostile propagation phenomenon. Especially for large networks, clustered CSS is preferred to alleviate the energy efficiency, delay and overhead problems. In this study, reporting and sensing channels are first modeled with the consideration of path loss and fading. Then, CSS is divided into three phases: 1) In sensing phase, optimal sensing time is obtained for each local user subject to local detection and false alarm probability thresholds, 2) In reporting phase, adopting Dijkstra's algorithm, multi-hop paths with the maximum success rate and cluster head (CH) selection which gives the mimimum total error rate within each cluster is computed, and 3) In decision phase, collecting independent but unidentically distributed (i.u.d.) member decisions, the CH decides on channel occupancy based on an optimal voting rule for i.u.d. reports. Next, following the phases above, a multi-objective clustering optimization (MOCO) is formulated to select SUs into cluster seeking energy and throughput efficiency goals subject to global detection and false alarm probability constraints. Finally, the Non-dominated Sorting Genetic Algorithm-II (NSGA-II) is employed to solve MOCO. Results based on our approach are presented and the merits of this approach are demonstrated.
3441-3446
Celik, Abdulkadir
f8e72266-763c-4849-b38e-2ea2f50a69d0
Kamal, Ahmed E.
b7e85bb0-fbc5-4dcd-80d6-011c900201dc
2014
Celik, Abdulkadir
f8e72266-763c-4849-b38e-2ea2f50a69d0
Kamal, Ahmed E.
b7e85bb0-fbc5-4dcd-80d6-011c900201dc
Celik, Abdulkadir and Kamal, Ahmed E.
(2014)
Multi-objective clustering optimization for multi-channel cooperative sensing in CRNs.
2014 IEEE Global Communications Conference, GLOBECOM 2014, , Austin, United States.
08 - 12 Dec 2014.
.
(doi:10.1109/GLOCOM.2014.7037340).
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Conference or Workshop Item
(Paper)
Abstract
Cooperative spectrum sensing (CSS) has been extensively studied in the literature to mitigate the weakness of spectrum sensing against hostile propagation phenomenon. Especially for large networks, clustered CSS is preferred to alleviate the energy efficiency, delay and overhead problems. In this study, reporting and sensing channels are first modeled with the consideration of path loss and fading. Then, CSS is divided into three phases: 1) In sensing phase, optimal sensing time is obtained for each local user subject to local detection and false alarm probability thresholds, 2) In reporting phase, adopting Dijkstra's algorithm, multi-hop paths with the maximum success rate and cluster head (CH) selection which gives the mimimum total error rate within each cluster is computed, and 3) In decision phase, collecting independent but unidentically distributed (i.u.d.) member decisions, the CH decides on channel occupancy based on an optimal voting rule for i.u.d. reports. Next, following the phases above, a multi-objective clustering optimization (MOCO) is formulated to select SUs into cluster seeking energy and throughput efficiency goals subject to global detection and false alarm probability constraints. Finally, the Non-dominated Sorting Genetic Algorithm-II (NSGA-II) is employed to solve MOCO. Results based on our approach are presented and the merits of this approach are demonstrated.
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Published date: 2014
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© 2014 IEEE.
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2014 IEEE Global Communications Conference, GLOBECOM 2014, , Austin, United States, 2014-12-08 - 2014-12-12
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Local EPrints ID: 507023
URI: http://eprints.soton.ac.uk/id/eprint/507023
PURE UUID: 42d0b9a1-dd5d-4c5b-8dbd-bbbb658bfc12
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Date deposited: 25 Nov 2025 17:53
Last modified: 26 Nov 2025 03:12
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Author:
Abdulkadir Celik
Author:
Ahmed E. Kamal
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