Energy-Efficient Data Aggregation and Cluster-Based Routing in Wireless Sensor Networks Using Tasmanian Fully Recurrent Deep Learning Network with Pelican Variable Marine Predators Algorithm

Shreedhar Yadawad, S. Joshi
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引用次数: 1

Abstract

One of the major significant problems in the existing techniques in Wireless Sensor Networks (WSNs) is Energy Efficiency (EE) because sensor nodes are battery-powered devices. The energy-efficient data transmission and routing to the sink are critical challenges because WSNs have inherent resource limitations. On the other hand, the clustering process is a crucial strategy that can rapidly increase network lifetime. As a result, WSNs require an energy-efficient routing strategy with optimum route election. These issues are overcome by using Tasmanian Fully Recurrent Deep Learning Network with Pelican Variable Marine Predators Algorithm for Data Aggregation and Cluster-Based Routing in WSN (TFR-DLN-PMPOA-WSN) which is proposed to expand the network lifetime. Initially, Tasmanian Fully Recurrent Deep Learning Network (TFR-DLN) is proposed to elect the Optimal Cluster Head (OCH). After OCH selection, the three parameters, trust, connectivity, and QoS, are optimized for secure routing with the help of the Pelican Variable Marine Predators Optimization Algorithm (PMPOA). Finally, the proposed method finds the minimum distance among the nodes and selects the best routing to increase energy efficiency. The proposed approach will be activated in MATLAB. The efficacy of the TFR-DLN- PMPOA-WSN approach is assessed in terms of several performances. It achieves higher throughput, higher packet delivery ratio, higher detection rate, lower delay, lower energy utilization, and higher network lifespan than the existing methods.
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基于Pelican变量海洋捕食者算法的Tasmanian全循环深度学习网络无线传感器网络节能数据聚合和基于聚类的路由
由于传感器节点是由电池供电的设备,在现有的无线传感器网络(WSNs)技术中,能源效率(EE)是一个重要的问题。由于无线传感器网络固有的资源限制,高效节能的数据传输和路由到接收器是一个关键的挑战。另一方面,集群过程是可以快速增加网络生命周期的关键策略。因此,无线传感器网络需要一种具有最优路由选择的节能路由策略。利用基于Pelican变量海洋捕食者算法的Tasmanian全循环深度学习网络(TFR-DLN-PMPOA-WSN)进行WSN的数据聚合和基于簇的路由,以延长网络的生存期,从而克服了这些问题。首先,提出Tasmanian全循环深度学习网络(TFR-DLN)来选择最优簇头(OCH)。选择OCH后,通过ppoa (Pelican Variable Marine掠食者优化算法)对信任、连通性和QoS三个参数进行优化,实现安全路由。最后,找到节点间的最小距离并选择最佳路由,以提高能效。所提出的方法将在MATLAB中激活。从几个方面评估了TFR-DLN- PMPOA-WSN方法的有效性。与现有方法相比,该方法具有更高的吞吐量、更高的数据包发送率、更高的检测率、更低的延迟、更低的能量利用率和更长的网络寿命。
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An Efficient and Multi-Tier Node Deployment Strategy Using Variable Tangent Search in an IOT-Fog Environment An Enhanced Probabilistic-Shaped SCMA NOMA for Wireless Networks Energy-Efficient Data Aggregation and Cluster-Based Routing in Wireless Sensor Networks Using Tasmanian Fully Recurrent Deep Learning Network with Pelican Variable Marine Predators Algorithm A Note on Connectivity of Regular Graphs Hyper Star Fault Tolerance of Hierarchical Star Networks
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