Litcius/Paper detail

Energy-Efficient and Load-Balanced Clustering Routing Protocol for Wireless Sensor Networks Using a Chaotic Genetic Algorithm

Chuhang Wang, Xiaoli Liu, Huangshui Hu, Youjia Han, Meiqin Yao

2020IEEE Access66 citationsDOIOpen Access PDF

Abstract

In wireless sensor networks, organizing nodes into clusters, finding routing paths and maintaining the clusters are three critical factors that significantly impact the network lifetime. In this paper, using a chaotic genetic algorithm, a clustering routing protocol combined with these three features called CRCGA is proposed to improve the network energy efficiency and load balancing. In CRCGA, the chaotic genetic algorithm is used to select the best cluster heads (CHs) and to find the optimal routing paths by coding them into a single chromosome simultaneously. Chaotic genetic operators based on a novel fitness function considering minimum energy consumption and load balancing along with new determination conditions make the algorithm converge quickly. Besides, an adaptive round time considering energy and load balancing is presented to maintain the clusters so as to further reduce energy consumption. Simulation results indicate that CRCGA is better than LEACH, GECR, OMPFM and GADA-LEACH in terms of convergence speed, energy efficiency, load balancing, network throughput and lifetime.

Topics & Concepts

Computer scienceCluster analysisWireless Routing ProtocolComputer networkWireless sensor networkDynamic Source RoutingRouting protocolZone Routing ProtocolChaoticGenetic algorithmDistributed computingRouting (electronic design automation)Artificial intelligenceMachine learningEnergy Efficient Wireless Sensor NetworksIoT-based Smart Home SystemsMobile Ad Hoc Networks