Trust Aware Nero Fuzzy Based Agglomerative Hierarchical Clustering with Secure Whale Optimization Routing for Enhancing Energy Efficiency in WSN

Sasikumar M S S, N. A. E
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Abstract

Wireless sensor networks (WSNs) comprise a network of dispersed, carefully positioned sensor nodes in their deployment environment to monitor and collect data on natural phenomena. These sensor nodes collaborate to transmit data via multi-hop communication, ultimately reaching a central base station for processing. However, WSNs face significant challenges due to the resource-constrained nature of these devices and the harsh, open environments in which they operate. Addressing energy optimization and ensuring secure communication are primary concerns in the successful operation of WSNs. This paper introduces anovelTrust aware Neuro Fuzzy Clustering head selection (TNFCH) and agglomerative hierarchical clustering approach (AHC) with Secure Whale Optimization (SWO) Algorithm Routing to enhance energy-efficient transmission in WSNs. Our proposed protocol (TNFCH-AHWO) efficiently organizes nodes by utilizing neural network and Fuzzy logic then securely transfers the data into the communication network. We employ a Trust calculation algorithm in our system to ensure Trust and data integrity, facilitating efficient lightweight operations such as key generation, encryption, decryption, and verification. This ensures hop-to-hop authentication among the nodes in WSNs. To assess the performance of our proposed protocol, we conducted simulations using the NS3 simulator. The findings of the simulation show that the suggested protocol greatly enhances various performance metrics, including energy consumption analysis, throughput, network delay, network lifetime, and packet delivery ratio when compared to existing protocols.
基于信任意识的 Nero Fuzzy 聚合分层聚类与安全鲸优化路由,提高 WSN 的能效
无线传感器网络(WSN)由分散的、精心布置在部署环境中的传感器节点组成,用于监测和收集自然现象的数据。这些传感器节点通过多跳通信协作传输数据,最终到达中央基站进行处理。然而,由于这些设备的资源有限,而且工作环境恶劣、开放,WSN 面临着巨大的挑战。解决能源优化和确保通信安全是 WSN 成功运行的首要问题。本文介绍了一种可感知velTrust 的神经模糊聚类头选择(TNFCH)和聚合分层聚类方法(AHC),以及安全鲸优化(SWO)算法路由,以提高 WSN 中的能效传输。我们提出的协议(TNFCH-AHWO)利用神经网络和模糊逻辑有效地组织节点,然后将数据安全地传输到通信网络中。我们在系统中采用了一种信任计算算法,以确保信任和数据完整性,促进高效的轻量级操作,如密钥生成、加密、解密和验证。这确保了 WSN 节点间的跳到跳认证。为了评估我们提出的协议的性能,我们使用 NS3 模拟器进行了模拟。仿真结果表明,与现有协议相比,建议的协议大大提高了各种性能指标,包括能耗分析、吞吐量、网络延迟、网络寿命和数据包传送率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
1.80
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