Skip to main content
Presentation
An Intelligence Artificial Fish Swarm Optimization Technique
IEEE National Aerospace and Electronics Conference (2019)
  • Okechukwu Ugweje, Sacred Heart University
  • Yachilla Baba
Abstract
With the massive development of information and communications technologies, the need to optimize information processing power and increase accuracy is becoming very important. This paper presents the analysis of an intelligent Artificial Fish Swarm Algorithm (AFSA) that properly select optimization parameters more effectively. It is computational intelligent with ability to solve nonlinear high dimensional problems. It addresses problems of conventional AFSA migration into local minima using control parameters such as visual distance and step sizes. Performance of the algorithm was tested using a subset of applied mathematical optimization test functions such as Ackley, Cosine Mixture, Neumaier, Rosenbrock and Rastrigin functions. Numerical results show that the intelligent algorithm outperformed the standard algorithm in 4 out of the 5 test functions. This can be very useful in computationally intensive processes.
Keywords
  • Artificial intelligence,
  • intelligent algorithm,
  • optimization methods,
  • test functions,
  • adaptive algorithm
Publication Date
July 19, 2019
Location
Dayton, OH
DOI
10.1109/NAECON46414.2019.9057863
Citation Information
Ugweje, O.C. & Baba, Y. (2019, July 15-19). An intelligence artificial fish swarm optimization technique [Conference paper]. 2019 IEEE National Aerospace and Electronics Conference, Dayton, OH. https://ieeexplore.ieee.org/document/9057863