Semaphore Based Data Aggregation and Similarity Findings for Underwater Wireless Sensor Networks

IF 0.6 Q4 COMPUTER SCIENCE, THEORY & METHODS
Ruby Durairaj, J. Jeyachidra
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引用次数: 4

Abstract

A critical factor of underwater sensor networks (UWSN) is to maintain energy consumption at minimum, as immediate battery replacement is difficult. This is achieved by reducing duplication of data with similarity functions. The construction of optimal clustering is to avoid data loss. In this article, similarity function-based data aggregation with a Semaphore process is applied to UWSN to retain the energy level at an advantage. Sensor nodes (SNs) are clustered in a Date Palm Tree approach. The Minkowski Distance model is used in Data Aggregation Nodes (DANs) to check similar measures of readings collected from cluster members. The Semaphore concept is executed in all DANs and cluster heads (CHs) to enhance network life and regulate excessive exploitation of energy levels of the SN, DANs, and CHs. The message queue (MQ) can be used to allow the packets transferred from the DANs to the cluster heads (CHs). The proposed algorithm SBDA with similarity measures would result in better link quality, reduction in redundancy, data delay, and would control the consumption of energy.
基于信号量的水下无线传感器网络数据聚合与相似度研究
水下传感器网络(UWSN)的一个关键因素是保持最小的能量消耗,因为立即更换电池是困难的。这是通过减少具有相似函数的重复数据来实现的。最优聚类的构造是为了避免数据丢失。本文将基于相似函数的数据聚合与信号量处理应用于UWSN,以保持能量水平的优势。传感器节点(SNs)以枣椰树的方式聚类。闵可夫斯基距离模型用于数据聚合节点(dan)来检查从集群成员收集的读数的相似度量。信号量概念在所有的dan和簇头(CHs)中执行,以提高网络寿命,并调节SN、dan和CHs的能量水平的过度利用。消息队列(MQ)可用于允许将数据包从dan传输到集群头(CHs)。采用相似度度量的SBDA算法可以提高链路质量,减少冗余和数据延迟,并控制能耗。
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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来源期刊
CiteScore
1.70
自引率
10.00%
发文量
24
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