Energy efficient clustering in multi-hop wireless sensor networks using differential evolutionary MOPSO

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Abstract

The primary challenge in organizing sensor networks is energy efficacy. This requisite for energy efficacy is because sensor nodes capacities are limited and replacing them is not viable. This restriction further decreases network lifetime. Node lifetime varies depending on the requisites expected of its battery. Hence, primary element in constructing sensor networks is resilience to deal with decreasing lifetime of all sensor nodes. Various network infrastructures as well as their routing protocols for reduction of power utilization as well as to prolong network lifetime are studied. After analysis, it is observed that network constructions that depend on clustering are the most effective methods in terms of power utilization. Clustering divides networks into inter-related clusters such that every cluster has several sensor nodes with a Cluster Head (CH) at its head. Sensor gathered information is transmitted to data processing centers through CH hierarchy in clustered environments. The current study utilizes Multi-Objective Particle Swarm Optimization (MOPSO)-Differential Evolution (DE) (MOPSO-DE) technique for optimizing clustering.

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Rajendra Prasad, D., Naganjaneyulu, P. V., & Satya Prasad, K. (2016). Energy efficient clustering in multi-hop wireless sensor networks using differential evolutionary MOPSO. Brazilian Archives of Biology and Technology, 59(Specialissue2). https://doi.org/10.1590/1678-4324-2016161011

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