Abstract

Internet of Things (IoT) is an important technique in the modern wireless telecommunications field. It is based on a collection of sensor nodes connected through wireless sensor networks (WSNs). The lifetime of this network is affected by the battery power of the connected sensor nodes. Network clustering techniques are used to improve energy consumption and extend the lifetime of the WSN. These techniques divide the sensor nodes into clusters and every cluster has a unique cluster head (CH) node. Recently, clustering-based metaheuristic techniques are used to solve this problem and find the optimal CH nodes under certain considerations such as less energy consumption and high reliability. This paper proposes a new clustering scheme for heterogeneous WSN using Coyote Optimization based on a Fuzzy Logic (COFL) algorithm. It uses the coyote optimization algorithm (COA) in conjunction with fuzzy logic (FL) system to reinforce and balance the clustering process for increasing the wireless network lifetime and reducing energy consumption. FL based clustering is adapted to determine a tentative set of CHs. The output of the FL is added as a solution within the initial solutions of the COA. Furthermore, a new fitness function has been adapted to minimize the total intra-cluster distance between each CH node and its cluster members and minimize the inter-cluster distance between the CHs nodes and the base station. An extensive simulation with three different scenarios is performed. The performance of the proposed COFL algorithm is compared with the well-known algorithms; namely low-energy adaptive clustering hierarchy protocol (LEACH) and stable election protocol (SEP) as traditional protocols and also coyote optimization algorithm (COA), grey wolf optimization (GWO), and particle swarm optimization (PSO). The COFL algorithm outperforms other algorithms in terms of alive node analysis, energy consumption, throughput, and central tendency measurements for alive nodes and normalized energy.

Highlights

  • Internet of Things (IoT) is a communication networking that gained instant importance in modern wireless communications

  • WORK This paper proposed a new hybrid algorithm for clustering heterogeneous wireless sensor networks (WSNs) based on the fuzzy logic (FL) system and the coyote optimization algorithm (COA) algorithm known as Coyote Optimization based on a Fuzzy Logic (COFL)

  • The FL system selects an initial set of tentative cluster head (CH) based on the three inputs variables

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Summary

INTRODUCTION

Internet of Things (IoT) is a communication networking that gained instant importance in modern wireless communications. A. Mohamed et al.: Coyote Optimization Based on a Fuzzy Logic Algorithm for Energy-Efficiency in Wireless Sensor Networks. The CH node selection process is an essential task in the hierarchical clustering technique for enhancing the energy consumption, lifetime, throughput, and stability of the network [12], [13]. More researchers try to extend the lifetime of the network and reduce the energy consumption by developing the metaheuristic based-clustering algorithms due to the strong limitations of the clustering problem in WSN [14], [15]. A coyote optimization based on fuzzy logic (COFL) clustering algorithm is proposed to find the optimal cluster head nodes and cluster the network in a balanced and efficient way, which leads to improve the energy consumption and increase the network lifetime.

RELATED WORKS
ENERGY MODEL
THE PROPOSED ALGORITHM
PROBLEM ANALYSYE AND FORMULATION OF COFL
THE COFL PHASES
24: The Output
SIMULATION RESULTS AND DISCUSSION
CONCLUSION AND FUTURE WORK
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