University of Lincoln
Browse

Genetic learning automata for function optimization

Version 2 2024-03-12, 12:06
Version 1 2023-10-18, 07:46
journal contribution
posted on 2024-03-12, 12:06 authored by M. N. Howell, Timothy GordonTimothy Gordon, F. V. Brandao

Stochastic learning automata and genetic algorithms (GAs) have previously been shown to have valuable global optimization properties. Learning automata have, however, been criticized for having a relatively slow rate of convergence. In this paper, these two techniques are combined to provide an increase in the rate of convergence for the learning automata and also to improve the chances of escaping local optima. The technique separates the genotype and phenotype properties of the GA and has the advantage that the degree of convergence can be quickly ascertained. It also provides the GA with a stopping rule. If the technique is applied to real-valued function optimization problems, then bounds on the range of the values within which the global optima is expected can be determined throughout the search process. The technique is demonstrated through a number of bit-based and real-valued function optimization examples.

History

School affiliated with

  • School of Engineering (Research Outputs)

Publication Title

IEEE Transactions on Systems, Man, and Cybernetics, Part B: Cybernetics

Volume

32

Issue

6

Pages/Article Number

804-815

Publisher

IEEE

ISSN

1083-4419

Date Submitted

2013-10-04

Date Accepted

2013-10-04

Date of First Publication

2013-10-04

Date of Final Publication

2013-10-04

ePrints ID

11673