Application of Machine Learning for Energy Efficiency in Wireless Sensor Networks

Authors

  • Dr. Jeroen Visser Author
  • Dr. Eva de Jong Author
  • Dr. Thomas Bakker Author
  • Dr. Sophie Smit Author
  • Dr. Lars van Dijk Author
  • Dr. Noor Meijer Author

Keywords:

WSN, Energy Efficiency, Machine Learning, SVM.

Abstract

The energy of each sensor is limited and they are usually un-rechargeable, so to prolong the life time of WSNs energy consumption of each sensor has to be minimized. However, these duties cycling based approaches in WSNs may incurs tradeoff between both energies saving and packet delivery delay. In order to avoid this, self healing based sleep/wake-up scheduling is proposed to save the energy of each sensor node by keeping nodes in sleep mode as long as possible and thereby maximizing their lifetime we propose machine learning concept with the help of SVM classifier method.This artificial potential field with information about the direction and goal of the moving object and guarantees the best-safest path to the goal.

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Published

2025-07-15

How to Cite

Application of Machine Learning for Energy Efficiency in Wireless Sensor Networks. (2025). Iranian Journal of Kideny Diseases | ISSN : 1735 - 8604 | NLM ID: 101316967, 19(4), 165-172. https://ijkd.net/index.php/Iranian-Journal-of-Kideny-Diseas/article/view/53