A Hybrid Grey Wolf and Crow Search Optimization Algorithm-Based Optimal Cluster Head Selection Scheme for Wireless Sensor Networks

被引:0
作者
P. Subramanian
J. Martin Sahayaraj
S. Senthilkumar
D. Stalin Alex
机构
[1] Sri Indu College of Engineering and Technology,Department of Computer Science & Engineering
[2] Sri Indu College of Engineering and Technology,Department of Electronics and Communication Engineering
[3] Presidency University,Department of CSE, School of Engineering
[4] Guru Nanak Institute of Technology,Department of Information Technology
来源
Wireless Personal Communications | 2020年 / 113卷
关键词
Optimal cluster head selection; Lifetime expectancy; Grey wolf optimization; Crow search optimization; Energy stabilization; Firefly cyclic grey wolf optimisation;
D O I
暂无
中图分类号
学科分类号
摘要
Clustering is considered as one of the most primitive technique that aids in prolonging the lifetime expectancy of wireless sensor networks (WSNs). But, the process of cluster head selection concerning energy stabilization for the purposed of prolonging the network life expectancy still remains a major issue in WSNs. In this paper, a hybrid grey wolf and crow search optimization algorithm-based optimal cluster head selection (HGWCSOA-OCHS) scheme was proposed for enhancing the lifetime expectancy of the network by concentrating on the minimization of delay, minimization of distance between nodes and energy stabilization. The grey wolf optimization algorithm is hybridized with the crow search optimization algorithm for resolving the issue of premature convergence that prevents it from exploring the search space in an effective manner. This hybridization of GWO and CSO algorithm in the process of cluster head selection maintains the tradeoff between the exploitation and exploration degree in the search space. The simulation experiments are conducted and the results of the proposed HGWCSOA-OCHS scheme is compared with the benchmarked cluster head selection schemes with firefly optimization (FFO), artificial bee colony optimization (ABCO), grey wolf optimization (GWO), firefly cyclic grey wolf optimisation (FCGWO). The proposed HGWCSOA-OCHS scheme confirmed minimized energy consumption, improved network lifetime expectancy by balancing the percentage of alive and dead sensor nodes in the network.
引用
收藏
页码:905 / 925
页数:20
相关论文
共 47 条
  • [1] Prince T(2017)Bat-inspired cluster head selection and on-demand cluster head gateway routing for prolonged network lifetime in MANET International Journal of Wireless and Mobile Computing 12 419-32
  • [2] Kannan ST(2017)Achieving energy efficient wireless sensor network by choosing effective cluster head Cluster Computing 1 23-320
  • [3] Shalini VB(2017)Cluster head selection for energy efficient and delay-less routing in wireless sensor network Wireless Networks 25 303-682
  • [4] Vasudevan V(2014)Energy-efficient cluster head selection for life time enhancement of wireless sensor networks Information Technology Journal 13 676-13
  • [5] Sarkar A(2014)Performance evaluation of energy efficient clustering protocol for cluster head selection in wireless sensor network International Journal of Peer to Peer Networks 5 1-13
  • [6] Senthil Murugan T(2013)BSDCH: New chain routing protocol with best selection double cluster head in wireless sensor networks Wireless Sensor Network 05 9-20
  • [7] Senthil M(2014)Cluster head selection using modified ACO Advances in Intelligent Systems and Computing 1 11-27
  • [8] Rajamani V(2017)Cat swarm algorithm in wireless sensor networks for optimized cluster head selection: A real time approach Cluster Computing 1 12-67
  • [9] Kanagachid G(2017)A hybrid cluster head selection model for Internet of Things Cluster Computing 1 56-240
  • [10] Kaur H(2018)Improved Cuckoo Search-based Clustering Protocol for Wireless Sensor Networks Procedia Computer Science 125 234-7494