Back to Search Start Over

Energy Prediction for Mobile Sink Placement by Deep Maxout Network in WSN

Authors :
Chamandeep Kaur
Samar Mansour Hassen
Mawahib Sharafeldin Adam Boush
Harishchander Anandaram
Source :
Journal of Advances in Information Technology.
Publication Year :
2023
Publisher :
Engineering and Technology Publishing, 2023.

Abstract

In a Wireless Sensor Network (WSN), Numerous cost-effective and energy-constrained sensor nodes are typically used. In a typical Wireless Sensor Network, a single Base Station (BS) gathers information from the whole network, which contributes to concerns including latency, network failure, and congestion. The overwhelming proportion of energy consumption, as well as the energy hole limitation, significantly degrades the overall system performance and network lifetime, which is owing to the sensor nodes that are near the BS consuming more energy. To tackle this problem, it’s essential to determine the perfect spot for mobile sink nodes, which minimizes the power consumed and so increases the network's lifespan. In this work, an effective strategy is designed and developed to detect the location of a mobile sink considering factors such as distance, estimated energy, and fairness, using Deep learning-based energy prediction with an adjacency cell score model. In addition, the predicted energy is determined by employing the Deep Maxout Network (DMN). However, a Minimum distance of 137.364, maximal residual energy of 30.903, maximum standardized fairness of 64.426, maximum network duration of 60, and maximum standardized throughput of 60.613 was obtained using the proposed adjacency-based cell score + Deep Maxout Network.

Details

ISSN :
17982340
Database :
OpenAIRE
Journal :
Journal of Advances in Information Technology
Accession number :
edsair.doi...........e69d0b2f7e6ba77b543163a9d48bd554