
Improving LEACH based concept by using MGSA approach in Wireless Sensor Network | IJET β Volume 12 Issue 2 | IJET-V5I1P32

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ToggleInternational Journal of Engineering and Techniques (IJET)
Open Access β’ Peer Reviewed β’ High Citation & Impact Factor β’ ISSN: 2395-1303
Volume 5, Issue 1 | Published: February 2019
Author:K. Sravan abhilash, Dr. Hemant Khurana, Dr.D. Subba Rao
DOI: https://doi.org/{{doi}} β’ PDF: Download
Abstract
One of the most tedious tasks is the achievement of energy efficiency in WSNs. The energy consumption limitation is the major problem and itβs required to address based on reliable and effective solutions. Clustering is the best technique for reduction of energy consumption in WSNs. The CHs have been selected after formation of clusters in a network based on clustering methods. But, theyhave some limitations like increased network overhead, and higher execution time for larger scale networks. As improper node selection is resulted in the unnecessary energy usage among sensor nodes, itβs essential to perform the optimal relay node selection for energy saving. Both clustering and optimal relay node selection procedures have been optimized withtheuse ofa combinedalgorithm.The ModifiedGravitationalgorithmfor optimalnodeselection,
i.e. MGA-ONS, which is a new energy-efficient management technique has been introduced for CHs selection according to different parameters, such as probability value, residual energy, and theclosersensornodestotheSINK.Theunnecessaryenergyutilizationislimitedbyconsidering the sensor node distance to SINK. For selection of relaynodes, the proposed MGA is considered significant parameters, such as delay and residual energy in the links, and nodesβ distance from their respective CHs. The improved energy consumption is achieved using the proposed algorithm in comparison with the existing methods, such as LEACH.
Keywords
LEACH, Network lifetime, Cluster head selection, WSN, Relay node selection, Gravitational Algorithm, Energy efficiency.
Conclusion
The modified gravitation search technique proposes using the multi-objective CH selection inthis paper to provide the selection of energy-aware CHs and optimal relay nodes. However, the main advantageofusingMGAis that it chooses theoptimal routewith theuseofmulti-objective parameters, such as energy, node distance to CHs, and delay. The optimized results are achieved with the CH selection based on parameters, such as probability, residual energy, and distance to SINK. The proposed multi-objective MGA-ONS technique is achieved the greater energy energy-efficiency results with lower overhead based on the evaluation of simulation results. Additionally, the improved throughput and data delivery rate have been reached for inter-cluster data aggregation because of the optimal selection of CHs with the distance between nodes and SINK. The higher efficiency results are proved by the MGA based on multi-objectiveparameters. The proposed technique MGA-ONS outperforms all other existing routing methods, such as MACHFL-FT and EN-LEACH based on energy consumption, PDR, throughput, and end-to-end delay.
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Cite this article
APA
K. Sravan abhilash, Dr. Hemant Khurana, Dr.D. Subba Rao (February 2019). Improving LEACH based concept by using MGSA approach in Wireless Sensor Network. International Journal of Engineering and Techniques (IJET), 5(1). https://doi.org/{{doi}}
K. Sravan abhilash, Dr. Hemant Khurana, Dr.D. Subba Rao, βImproving LEACH based concept by using MGSA approach in Wireless Sensor Network,β International Journal of Engineering and Techniques (IJET), vol. 5, no. 1, February 2019, doi: {{doi}}.
