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Issue title: Special section: Recent trends, Challenges and Applications in Cognitive Computing for Intelligent Systems
Guest editors: Vijayakumar Varadarajan, Piet Kommers, Vincenzo Piuri and V. Subramaniyaswamy
Article type: Research Article
Authors: Arun, Ranganathana; * | Balamurugan, Rangaswamyb
Affiliations: [a] Department of CSE, Builders Engineering College, Kangayam, TamilNadu, India | [b] Department of EEE, K.S. Rangasamy College of Technology, Tiruchengode, Namakal, TamilNadu, India
Correspondence: [*] Corresponding author. Arun Ranganathan, Department of CSE, Builders Engineering College, Kangayam, TamilNadu, India. E-mail: arun.chml@gmail.com.
Abstract: In Wireless Sensor Networks (WSN) the energy of Sensor nodes is not certainly sufficient. In order to optimize the endurance of WSN, it is essential to minimize the utilization of energy. Head of group or Cluster Head (CH) is an eminent method to develop the endurance of WSN that aggregates the WSN with higher energy. CH for intra-cluster and inter-cluster communication becomes dependent. For complete, in WSN, the Energy level of CH extends its life of cluster. While evolving cluster algorithms, the complicated job is to identify the energy utilization amount of heterogeneous WSNs. Based on Chaotic Firefly Algorithm CH (CFACH) selection, the formulated work is named “Novel Distributed Entropy Energy-Efficient Clustering Algorithm”, in short, DEEEC for HWSNs. The formulated DEEEC Algorithm, which is a CH, has two main stages. In the first stage, the identification of temporary CHs along with its entropy value is found using the correlative measure of residual and original energy. Along with this, in the clustering algorithm, the rotating epoch and its entropy value must be predicted automatically by its sensor nodes. In the second stage, if any member in the cluster having larger residual energy, shall modify the temporary CHs in the direction of the deciding set. The target of the nodes with large energy has the probability to be CHs which is determined by the above two stages meant for CH selection. The MATLAB is required to simulate the DEEEC Algorithm. The simulated results of the formulated DEEEC Algorithm produce good results with respect to the energy and increased lifetime when it is correlated with the current traditional clustering protocols being used in the Heterogeneous WSNs.
Keywords: Wireless Sensor Network (WSN), cluster head (CH), Distributed Entropy Energy-Efficient Clustering (DEEEC), distributed, heterogeneous, Chaotic Firefly Algorithm (CFA), clustering, and energy consumption
DOI: 10.3233/JIFS-189135
Journal: Journal of Intelligent & Fuzzy Systems, vol. 39, no. 6, pp. 8139-8147, 2020
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