Muthukkumar R, Garg Lalit, Maharajan K, Jayalakshmi M, Jhanjhi Nz, Parthiban S, Saritha G
Department of Information Technology, National Engineering College, Kovilpatti, Thoothukudi, Tamil Nadu, India.
Department of Computer information Systems, Faculty of Information and Communication Technology, University of Malta, Msida, Malta, Malta.
PeerJ Comput Sci. 2022 Aug 15;8:e1029. doi: 10.7717/peerj-cs.1029. eCollection 2022.
The energy-constrained heterogeneous nodes are the most challenging wireless sensor networks (WSNs) for developing energy-aware clustering schemes. Although various clustering approaches are proven to minimise energy consumption and delay and extend the network lifetime by selecting optimum cluster heads (CHs), it is still a crucial challenge.
This article proposes a genetic algorithm-based energy-aware multi-hop clustering (GA-EMC) scheme for heterogeneous WSNs (HWSNs). In HWSNs, all the nodes have varying initial energy and typically have an energy consumption restriction. A genetic algorithm determines the optimal CHs and their positions in the network. The fitness of chromosomes is calculated in terms of distance, optimal CHs, and the node's residual energy. Multi-hop communication improves energy efficiency in HWSNs. The areas near the sink are deployed with more supernodes far away from the sink to solve the hot spot problem in WSNs near the sink node.
Simulation results proclaim that the GA-EMC scheme achieves a more extended network lifetime network stability and minimises delay than existing approaches in heterogeneous nature.
能量受限的异构节点是开发能量感知聚类方案时最具挑战性的无线传感器网络(WSN)。尽管各种聚类方法已被证明通过选择最优簇头(CH)来最小化能量消耗和延迟并延长网络寿命,但这仍然是一个关键挑战。
本文提出了一种基于遗传算法的异构无线传感器网络(HWSN)能量感知多跳聚类(GA-EMC)方案。在HWSN中,所有节点具有不同的初始能量,并且通常具有能量消耗限制。遗传算法确定网络中的最优簇头及其位置。根据距离、最优簇头和节点的剩余能量来计算染色体的适应度。多跳通信提高了HWSN中的能量效率。在靠近汇聚节点的区域部署更多远离汇聚节点的超节点,以解决靠近汇聚节点的WSN中的热点问题。
仿真结果表明,与异构环境下的现有方法相比,GA-EMC方案实现了更长的网络寿命、网络稳定性,并最小化了延迟。