APPLYING OF HYBRID EVOLUTIONARY METHOD BASED ON PARTICLE SWARM AND ARTIFICIAL IMMUNE SYSTEM SIMULATION IN OPTIMIZATION PROBLEMS

Authors

  • Illia Ziborov
  • Timur Zheldak

DOI:

https://doi.org/10.34185/1991-7848.itmm.2024.01.088

Keywords:

optimization, hybrid method, evolutionary algorithm, testing, reliability, information technology

Abstract

A hybrid evolutionary method for solving conditional and unconditional optimization problems in a continuous space based on a swarm of particles and simulation of the HIPSO artificial immune system is considered. Using the method, 30 test problems were solved in a 25-dimensional real space. The results are compared with other known evolutionary methods. It is shown that the method reliably solves 90% of test problems, while in 67% of cases it finds the global optimum faster than competing methods. It is experimentally proven that the proposed method finds the best solution with an error of up to 2.6% on a wide range of real problems with a probability greater than 0.813.

References

Ziborov, I., Zheldak, T. (2023). The evolutionary method based on particle swarm optimization and arti潸cial immune systems modelling. Information Technology: Computer Science, Software Engineering and Cyber Security, 4, 3–12

Jamil M., Yang X. S. A (2013). literature survey of benchmark functions for global optimization problems, International Journal of Mathematical Modelling and Numerical Optimisation, Vol. 4, No. 2, pp. 150–194. DOI: 10.1504/IJMMNO.2013.055204

Subbotin S.O., Oliinyk A.O., Oliinyk O.O. (2009) Neiteratyvni, evoliutsiini ta multyahentni metody syntezu nechitkolohichnykh i neiromerezhnykh modelei.

Zaporizhzhia: ZNTU. - 375 p.

Das A. and Chakrabarti B. K. (Eds.), (2005) Quantum Annealing and Related Optimization Methods, Lecture Note in Physics, Vol. 679, Springer, Heidelberg

Bratton, Daniel; Kennedy, James (2007). Defining a Standard for Particle Swarm Optimization. Proceedings of the 2007 IEEE Swarm Intelligence Symposium (SIS 2007).

pp. 120–127. doi:10.1109/SIS.2007.368035

Knuth D. (2015) The Art of Computer Programming. Vol. 4, Fascicle 6: Satisfiability.

ISBN 978-0-134-39760-3.

Ziborov, I., Zheldak, T. (2022). Development of self-learning intelligent decision-making support system to control steel production technological processes. System technogies. V.3(140). P. 35-64. DOI 10.34185/1562-9945-3-140-2022-04

Downloads

Published

2024-04-24

Issue

Section

Статті