Computational Intelligence for Congestion Control and Quality of Service Improvement in Wireless Sensor Networks

Journal Title: Transactions on Machine Learning and Artificial Intelligence - Year 2017, Vol 5, Issue 6

Abstract

Congestion and quality of service are widely researched topics in Wireless Sensor Networks in recent years. Many researchers proposed and compared the merits and demerits of various algorithms with the existing algorithms. The major challenge lies in developing an algorithm which optimizes the various performance parameters like packet drop ratio, residual energy and throughput of the network. Focus of the present work is to reduce congestion and improve quality of service by applying various metaheuristic or computational intelligence techniques which can optimize performance parameters. An objective function is formulated on the basis of factors like residual energy, throughput, distance between nodes and the number of retransmissions and its value is optimized by using various nature inspired computational intelligence techniques and their results are compared. Simulation results have shown that water wave algorithm outperforms all the other algorithms on the basis of packet drop ratio and throughput of wireless sensor network.

Authors and Affiliations

Mukhdeep Singh Manshahia, Mayank Dave, S. B. Singh

Keywords

Related Articles

Comparative Study of Governance Information Systems for Scientific Research

The research and innovation effort is a major asset in international economic competition. Research and technological development are key areas to achieve this, contributing to economic growth and job creation. In order...

Isolating Natural Problem Environments in Unconstrained Natural Language Processing: Corruption and Skew

This work examines the full range of commonly available natural language processors' behaviors in a natural, unconstrained, and unguided environment. While permissible for typical research to constrain the language envir...

Creatinine, Urea and Uric Acid in Hospitalized Patients with and Without Hyperglycemia Analysis using Generalized Additive Model

Hyperglycemia is an important risk factor for heart disease and premature mortality. In hospitalized patients, it is related to an increase in morbidity and development of other disease like kidney disease. To evaluate t...

Integration of the ASR Toolkit Kaldi into a Domoticz Home Automation System

This paper presents the design and the implementation of an interface between Kaldi, automatic speech recognition toolkit, and a home automation system. This interface is based on Open Platform communication (OPC) protoc...

Implementation of Yorùbá Language Multimedia Learning System

The use of multimedia learning system has been widely accepted as a useful and effective tool in the field of human language. Many students and researchers have examined multimedia learning�s effectiveness from a number...

Download PDF file
  • EP ID EP267427
  • DOI 10.14738/tmlai.56.3689
  • Views 74
  • Downloads 0

How To Cite

Mukhdeep Singh Manshahia, Mayank Dave, S. B. Singh (2017). Computational Intelligence for Congestion Control and Quality of Service Improvement in Wireless Sensor Networks. Transactions on Machine Learning and Artificial Intelligence, 5(6), 21-35. https://www.europub.co.uk/articles/-A-267427