Hierarchical Energy Harvesting Aware Adaptive Fuzzy Routing with Data Compression for Energy Harvesting WSN

Authors

  • K. Sivakumar Associate Professor & Head, PG Department of Computer Science, Kathir College of Arts and Science, Neelambur, Coimbatore
  • A. Ashikali Assistant Professor, PG Department of Computer Science, Kathir College of Arts and Science, Neelambur, Coimbatore

DOI:

https://doi.org/10.15379/ijmst.v10i5.3552

Keywords:

Energy harvesting, Adaptive Routing, Data Quality, WSN, Applications.

Abstract

In present scenario of the world moving towards the smart systems. Smart systems and applications are developed using sensor nodes for data collection, data aggregation and decision making process. Wireless sensor nodes are configured in the physical environment for communications between the devices and the user. The number of limitations affecting the performance of wireless sensor based application. The various factors affecting the performance of the WSN based applications, one the major factor is energy efficiency of the sensors. Sensor nodes are battery powered devices and the sensors are dropping their energy during the transmissions. So we need a solution to overcome the energy efficiency issue of WSN based applications. In this paper, we proposed a methodology called Hierarchical energy harvesting adaptive fuzzy routing algorithm with uniform data quality compression to manage the energy efficiency of the sensor nodes. It uses a new energy management framework and allocating the energy budget to sensors and reduces the consumption of each node. The existing energy harvesting approaches only concentrate on find the best path and forward the data to base station. The performance evaluation shows the effective use of proposed method in WSN based applications.

Downloads

Download data is not yet available.

Downloads

Published

2023-10-06

How to Cite

[1]
K. . Sivakumar and A. . Ashikali, “Hierarchical Energy Harvesting Aware Adaptive Fuzzy Routing with Data Compression for Energy Harvesting WSN”, ijmst, vol. 10, no. 5, pp. 834-843, Oct. 2023.