Azizi et al., 2015 - Google Patents
A novel energy aware node clustering algorithm for wireless sensor networks using a modified artificial fish swarm algorithmAzizi et al., 2015
View PDF- Document ID
- 12953521076141337700
- Author
- Azizi R
- Sedghi H
- Shoja H
- Sepas-Moghaddam A
- Publication year
- Publication venue
- arXiv preprint arXiv:1506.00099
External Links
Snippet
Clustering problems are considered amongst the prominent challenges in statistics and computational science. Clustering of nodes in wireless sensor networks which is used to prolong the life-time of networks is one of the difficult tasks of clustering procedure. In order …
- 238000004422 calculation algorithm 0 title abstract description 63
Classifications
-
- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04W—WIRELESS COMMUNICATIONS NETWORKS
- H04W40/00—Communication routing or communication path finding
- H04W40/24—Connectivity information management, e.g. connectivity discovery or connectivity update
- H04W40/32—Connectivity information management, e.g. connectivity discovery or connectivity update for defining a routing cluster membership
Similar Documents
Publication | Publication Date | Title |
---|---|---|
Cao et al. | Swarm intelligence-based performance optimization for mobile wireless sensor networks: survey, challenges, and future directions | |
Kumar et al. | Meta-heuristic range based node localization algorithm for wireless sensor networks | |
Raj | Machine learning based resourceful clustering with load optimization for wireless sensor networks | |
Raza et al. | Adaptive k-means clustering for Flying Ad-hoc Networks | |
Nedham et al. | A comprehensive review of clustering approaches for energy efficiency in wireless sensor networks | |
Fahad et al. | Implementation of evolutionary algorithms in vehicular ad-hoc network for cluster optimization | |
Azizi et al. | A novel energy aware node clustering algorithm for wireless sensor networks using a modified artificial fish swarm algorithm | |
Sefati et al. | Cluster selection for load balancing in flying ad hoc networks using an optimal low-energy adaptive clustering hierarchy based on optimization approach | |
Shanbehzadeh et al. | An intelligent energy efficient clustering in wireless sensor networks | |
Yadav et al. | A discrete particle swarm optimization based clustering algorithm for wireless sensor networks | |
Ziauddin | Multi-objective African Vultures Optimization for Energy Efficient Wireless Sensor Network | |
Kusla et al. | A technique for cluster head selection in wireless sensor networks using African vultures optimization algorithm | |
Fadhel | Optimization of head cluster selection in WSN by human-based optimization techniques | |
Yuvaraja et al. | Lifetime enhancement of WSN using energy-balanced distributed clustering algorithm with honey bee optimization | |
Bhushan et al. | A hybrid approach to energy efficient clustering for heterogeneous wireless sensor network | |
Asha | A hybrid approach for cost effective routing for WSNs using PSO and GSO algorithms | |
Kaviarasan et al. | Energy Efficient Based Optimized K-Means And Modified Whale Optimization Algorithm For Cluster Head Selection in WSN | |
Teymori et al. | A chaos-enhanced accelerated PSO algorithm in reliable tracking of mobile objects | |
Yadav et al. | Performance analysis of approaches for coverage issues in WSN | |
Revathi et al. | Coverage Optimization using Fuzzy and Artificial Bee Colony Algorithm in Wireless Sensor Networks | |
Dasgupta et al. | An Energy Efficient Genetic Approach for Clustering of Wireless Sensor Network | |
Pandey et al. | Lifetime enhancement of wireless sensor networks by using sine cosine optimization algorithm | |
De et al. | A comparative study on performances of sensor deployment algorithms in WSN | |
Abdulzahra et al. | FONIC: an energy-conscious fuzzy-based optimized nature-inspired clustering technique for IoT networks | |
Komala et al. | Metaheuristic-Optimized Clustering for Improving QoS in IoT-Enabled Wireless Sensor Networks |