Feature Selection and Energy Management in Wireless Sensor Networks using Deep Learning

Main Article Content

Sidhartha Sankar Dora
Prasanta Kumar Swain

Abstract

In wireless sensor networks, when the available energy sources and battery capacity are extremely constrained, energy efficiency is a major issue to be adressed. One of the main goals in the design of wireless sensor networks (WSNs) is to maximize longevity of battery life. Designers can benefit from the use of intelligent power utilization models to accomplish this goal. These models seek to decrease the number of chosen sensors used to record environmental measures in order to minimize power utilization while retaining the acceptable level of measurement accuracy. In order to simulate wireless sensor networks, we looked at real world datasets. Our simulation findings demonstrate that the suggested strategy can be used to accomplish significant goals by using the right number of sensors using deep learning, extend the lifespan of the wireless sensor networks.

Article Details

How to Cite
Dora, S. S. ., & Swain, P. K. . (2023). Feature Selection and Energy Management in Wireless Sensor Networks using Deep Learning. International Journal on Recent and Innovation Trends in Computing and Communication, 11(9s), 628–633. https://doi.org/10.17762/ijritcc.v11i9s.7476
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