10.52547/mjee.15.1.39

Soft Computing-Based Congestion Control Schemes in Wireless Sensor Networks: Research Issues and Challenges

  1. Department of Electrical Engineering, Islamshahr Branch, Islamic Azad University, Islamshahr, Iran.

Published in Issue 2024-02-12

How to Cite

Shams Shamsabad Farahani, S. (2024). Soft Computing-Based Congestion Control Schemes in Wireless Sensor Networks: Research Issues and Challenges. Majlesi Journal of Electrical Engineering, 15(1). https://doi.org/10.52547/mjee.15.1.39

HTML views: 13

Abstract

Wireless Sensor Networks (WSNs) are a special class of wireless ad-hoc networks where their performance is affected by different factors. Congestion is of paramount importance in WSNs. It badly affects channel quality, loss rate, link utilization, throughput, network life time, traffic flow, the number of retransmissions, energy, and delay. In this paper, congestion control schemes are classified as classic or soft computing-based schemes. The soft computing-based congestion control schemes are classified as fuzzy logic-based, game theory-based, swarm intelligence-based, learning automata-based, and neural network-based congestion control schemes. Thereafter, a comprehensive review of different soft computing-based congestion control schemes in wireless sensor networks is presented. Furthermore, these schemes are compared using different performance metrics. Finally, specific directives are used to design and develop novel soft computing-based congestion control schemes in wireless sensor networks.

Keywords

  • Congestion control,
  • fuzzy logic,
  • Game Theory,
  • Soft Computing,
  • Wireless Sensor Networks (WSNs),
  • Learning Automata,
  • Neural network