Hybrid Mexican axolotl and bitterling fish optimization algorithm-based spectrum sensing multi‑hop clustering routing protocol for cognitive sensor networks

Abstract In clustered cognitive radio sensor networks (CRSNs), availability of free channels, spectrum sensing and energy utilization during clustering and cluster head (CH) selection is essential for fairness of time and event-driven data traffic. The existing multi-hop routing protocols in CRSNs g...

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Main Authors: C. Balasubramanian, G. Sathya, R. Praveen
Format: Article
Language:English
Published: Nature Portfolio 2024-12-01
Series:Scientific Reports
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Online Access:https://doi.org/10.1038/s41598-024-82311-z
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author C. Balasubramanian
G. Sathya
R. Praveen
author_facet C. Balasubramanian
G. Sathya
R. Praveen
author_sort C. Balasubramanian
collection DOAJ
description Abstract In clustered cognitive radio sensor networks (CRSNs), availability of free channels, spectrum sensing and energy utilization during clustering and cluster head (CH) selection is essential for fairness of time and event-driven data traffic. The existing multi-hop routing protocols in CRSNs generally adopt a perfect spectrum sensing which is not same in the practical spectrum sensing of nodes in real networks. High imbalance in residual energy between the selected CHs negatively impacts the delivery of data packets. Hence, hybrid mexican axolotl and bitterling fish optimization algorithm-based spectrum sensing multi-hop clustering routing protocol (HMABFOA) is proposed as an imperfect spectrum sensing approach for achieving better utilization of downlink energy harvesting and sustain maximized degree of energy between the nodes in the network. This HMABFOA scheme reduces the negative impact of imperfect spectrum sensing for extended network lifetime which sustains the capabilities of the network surveillance. It helped in constructing a distributed cluster with multi-hop routing selection between clusters depending on a energy level function that explores and exploits the factors associated with CHs selection. The merits of Mexican axolotl optimization algorithm (MAOA) is used for better CH selection and cluster formation with energy stability is sustained in the network. Further bitterling fish optimization (BFOA) algorithm is used for optimized multi-hop route between the clusters with minimal energy consumption and maximized spectrum sensing that proves better channels availability. The simulation results guaranteed maximized network lifetime of 24.38%, spectrum utilization rate of 24.58%, and minimized energy utilization of 25.62%, better than the baseline approaches.
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spelling doaj-art-a3613d5fc45d4ae7ad9b7e83a8d76a112024-12-29T12:16:02ZengNature PortfolioScientific Reports2045-23222024-12-0114112210.1038/s41598-024-82311-zHybrid Mexican axolotl and bitterling fish optimization algorithm-based spectrum sensing multi‑hop clustering routing protocol for cognitive sensor networksC. Balasubramanian0G. Sathya1R. Praveen2Department of Computer Science and Engineering, P.S.R. Engineering CollegeDepartment of Electronics and Communication Engineering, P.S.R.R College of EngineeringResearch and Development, ICU Medical India LLPAbstract In clustered cognitive radio sensor networks (CRSNs), availability of free channels, spectrum sensing and energy utilization during clustering and cluster head (CH) selection is essential for fairness of time and event-driven data traffic. The existing multi-hop routing protocols in CRSNs generally adopt a perfect spectrum sensing which is not same in the practical spectrum sensing of nodes in real networks. High imbalance in residual energy between the selected CHs negatively impacts the delivery of data packets. Hence, hybrid mexican axolotl and bitterling fish optimization algorithm-based spectrum sensing multi-hop clustering routing protocol (HMABFOA) is proposed as an imperfect spectrum sensing approach for achieving better utilization of downlink energy harvesting and sustain maximized degree of energy between the nodes in the network. This HMABFOA scheme reduces the negative impact of imperfect spectrum sensing for extended network lifetime which sustains the capabilities of the network surveillance. It helped in constructing a distributed cluster with multi-hop routing selection between clusters depending on a energy level function that explores and exploits the factors associated with CHs selection. The merits of Mexican axolotl optimization algorithm (MAOA) is used for better CH selection and cluster formation with energy stability is sustained in the network. Further bitterling fish optimization (BFOA) algorithm is used for optimized multi-hop route between the clusters with minimal energy consumption and maximized spectrum sensing that proves better channels availability. The simulation results guaranteed maximized network lifetime of 24.38%, spectrum utilization rate of 24.58%, and minimized energy utilization of 25.62%, better than the baseline approaches.https://doi.org/10.1038/s41598-024-82311-zCognitive radio wireless sensor networks-(CRWSNs)Mexican axolotl optimization algorithm (MAOA)Cluster head (CH) selectionBitterling fish optimization (BFOA)Optimal route determinationImperfect spectrum sensing
spellingShingle C. Balasubramanian
G. Sathya
R. Praveen
Hybrid Mexican axolotl and bitterling fish optimization algorithm-based spectrum sensing multi‑hop clustering routing protocol for cognitive sensor networks
Scientific Reports
Cognitive radio wireless sensor networks-(CRWSNs)
Mexican axolotl optimization algorithm (MAOA)
Cluster head (CH) selection
Bitterling fish optimization (BFOA)
Optimal route determination
Imperfect spectrum sensing
title Hybrid Mexican axolotl and bitterling fish optimization algorithm-based spectrum sensing multi‑hop clustering routing protocol for cognitive sensor networks
title_full Hybrid Mexican axolotl and bitterling fish optimization algorithm-based spectrum sensing multi‑hop clustering routing protocol for cognitive sensor networks
title_fullStr Hybrid Mexican axolotl and bitterling fish optimization algorithm-based spectrum sensing multi‑hop clustering routing protocol for cognitive sensor networks
title_full_unstemmed Hybrid Mexican axolotl and bitterling fish optimization algorithm-based spectrum sensing multi‑hop clustering routing protocol for cognitive sensor networks
title_short Hybrid Mexican axolotl and bitterling fish optimization algorithm-based spectrum sensing multi‑hop clustering routing protocol for cognitive sensor networks
title_sort hybrid mexican axolotl and bitterling fish optimization algorithm based spectrum sensing multi hop clustering routing protocol for cognitive sensor networks
topic Cognitive radio wireless sensor networks-(CRWSNs)
Mexican axolotl optimization algorithm (MAOA)
Cluster head (CH) selection
Bitterling fish optimization (BFOA)
Optimal route determination
Imperfect spectrum sensing
url https://doi.org/10.1038/s41598-024-82311-z
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