Hybrid Crow Search and Particle Swarm Algorithmic optimization based CH Selection method to extend Wireless Sensor Network operation

V. P, Venkatesh K
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Abstract

In ad hoc wireless sensor networks, the mobile nodes are deployed to gather data from source and transferring them to base station for reactive decision making. This process of data forwarding attributed by the sensor nodes incurs huge loss of energy which has the possibility of minimizing the network lifetime. In this context, cluster-based topology is determined to be optimal for reducing energy loss of nodes in WSNs. The selection of CH using hybrid metaheuristic algorithms is identified to be significant to mitigate the quick exhaustion of energy in entire network. This paper explores the concept of hybrid Crow Search and Particle Swarm Optimization Algorithm-based CH Selection (HCSPSO-CHS) mechanism is proposed with the merits of Flower Pollination Algorithm (FPA) and integrated Crow Search Algorithm (CSA) for efficient CH selection. It further adopted an improved PSO for achieving sink node mobility to improve delivery of packets to sink nodes. This HCSPSO-CHS approach assessed the influential factors like residual energy, inter and intra-cluster distances, network proximity and network grade during efficient CH selection. It facilitated better search process and converged towards the best global solution, such that frequent CH selection is avoided to maximum level. The outcomes of the suggested simulation HCSPSO-CHS confirm better performance depending on the maximum number of active nodes by 23.18%, prevent death of sensor nodes by 23.41% with augmented network lifetime of 33.58% independent of the number of nodes and rounds of data transmission.
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基于乌鸦搜索和粒子群算法优化的混合 CH 选择方法,用于扩展无线传感器网络的运行范围
在特设无线传感器网络中,移动节点的部署是为了从源头收集数据并将其传输到基站,以便做出反应性决策。传感器节点转发数据的过程会造成巨大的能量损耗,从而有可能最大限度地缩短网络的使用寿命。在这种情况下,基于集群的拓扑结构被认为是减少 WSN 中节点能量损耗的最佳方案。使用混合元启发式算法选择 CH 对于减少整个网络的能量快速耗尽具有重要意义。本文探讨了基于乌鸦搜索和粒子群优化算法的混合 CH 选择(HCSPSO-CHS)机制的概念,提出了花粉授粉算法(FPA)和集成乌鸦搜索算法(CSA)的优点,以实现高效的 CH 选择。它还采用了改进的 PSO 算法,以实现汇节点的移动性,从而提高向汇节点传送数据包的能力。这种 HCSPSO-CHS 方法在高效 CH 选择过程中评估了残余能量、簇间和簇内距离、网络邻近度和网络等级等影响因素。它促进了更好的搜索过程,并向全局最佳解决方案靠拢,从而最大限度地避免了频繁的 CH 选择。建议的 HCSPSO-CHS 仿真结果表明,根据最大活跃节点数,性能提高了 23.18%,防止传感器节点死亡的比例提高了 23.41%,网络寿命延长了 33.58%,与节点数和数据传输轮数无关。
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