An Intelligent Data Fusion Technique for Improving the Data Transmission Rate in Wireless Sensor Networks

R. Lavanya, N. Shanmugapriya
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引用次数: 2

Abstract

Wireless Sensor Networks (WSNs) are made up of multiple source-restricted wireless sensor nodes that gather, process, and transmit information. Existing research work proposed energy competence with trust as well as Quality of Service (QoS) multipath routing protocol for improving network lifetime and other QoS parameters, selection criteria for multipath. However, this protocol has some limitations, such as scalability, data redundancy, bandwidth utilization, and network traffic. The most important challenge lies in managing the voluminous data produced by the network’s sensors. As a result of this study, Intelligent Data Fusion Techniques (IDFTs) were presented, which can greatly minimize redundant data, decrease the quantity of transmitting data, broaden the network life cycle, enhance bandwidth utilization, and therefore, resolve the energy and bandwidth usage bottleneck. This paper proposes Improved Whale Optimization Algorithms (IWOAs) for intelligent data fusion where the amount of data collected from sensor sources is reduced and the information offered is enhanced by duplicate data, which also increases data dependability. IWOAs are used to combine the actual information from the cluster’s sensor nodes at the sink node, resulting in increased information and the ability to make local judgments about the particular events. The sink node transmits local decisions to base station on a regular basis that combines the local decisions and provides the ultimate judgment, easing the pressure on the base station to evaluate all of the data. As per the results obtained, the proposed intelligent data fusion method significantly increases the network’s robustness and accuracy.
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一种提高无线传感器网络数据传输速率的智能数据融合技术
无线传感器网络(wsn)由多个受源限制的无线传感器节点组成,用于收集、处理和传输信息。现有的研究工作提出了具有信任的能量能力和服务质量(QoS)的多路径路由协议,以提高网络生存期和其他QoS参数,多路径选择标准。但是,该协议存在一些限制,如可伸缩性、数据冗余、带宽利用率和网络流量等。最重要的挑战在于如何管理网络传感器产生的海量数据。在此基础上,提出了智能数据融合技术(Intelligent Data Fusion Techniques, IDFTs),该技术可以极大地减少冗余数据,减少数据传输量,延长网络生命周期,提高带宽利用率,从而解决能源和带宽的使用瓶颈。本文提出了改进的鲸鱼优化算法(IWOAs)用于智能数据融合,该算法减少了从传感器源收集的数据量,并通过重复数据增强了提供的信息,从而提高了数据的可靠性。iwoa用于在汇聚节点上组合来自集群传感器节点的实际信息,从而增加信息并能够对特定事件做出本地判断。汇聚节点定期向基站发送本地决策,并结合本地决策提供最终判断,减轻了基站评估所有数据的压力。结果表明,所提出的智能数据融合方法显著提高了网络的鲁棒性和准确性。
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