EDAARP-Efficient and Data-Aggregative Authentic Routing Protocol for Wireless Sensor Networks
Intelligent Computing and Applications(2022)
VIT
Abstract
Wireless sensor networks (WSN) are quickly gaining a lot of research attention, and several communications are required for data sensing in WSN. The sensor nodes collect data from multiple locations and relay it to the central control unit. However, few of the nodes have insufficient resources. Despite the fact that existing routing algorithms support cluster-based routing, these techniques do not consider all of the resource constraints associated with the nodes. The goal is to discuss the design and implementation of a cluster-based network strategy that uses Presumptive Data Gathering (PDG) and Selective Information Standards (SIS) algorithms. “This aims to improve energy efficiency by creating a fully connected dedicated node that connects all sub-clusters” is connected using the best processes of a controlled set associated with it, and in these cases, relay nodes are used. The Efficient Data-Aggregative Authentic Routing Protocol (EDAARP) is proposed in this work, to preserve actual energy usage and even consistent transmission of sensed data.
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Key words
WSN, SIS, PDG, EDAARP, GPS, Data aggregation
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