Constrained optimization: Artificial Bee Colony algorithm

Artificial Bee Colony algorithm supported by Deb's rules to handle constraints.

http://www.umk.pl/~szczepi

You are now following this Submission

This is implementation of Artificial Bee Colony algorithm that can solve constrained optimization problems. To handle constraints the Deb's rules have been used to compare the actual and new solutions. The implementation of objective function that have to be optimized, has to return two values: main objective function () and violation function (). The algorithm maximized with subject to .
The exmaple implementation solve the following optimization problem:
subject to:
where: M - number of dimensions (equal to 5 in this particular case)
For more information about the Artificial Bee Colony algorithm supported by Deb's rules refer to:
[1] Szczepanski, Rafal, et al. "Comparison of Constraint-handling Techniques Used in Artificial Bee Colony Algorithm for Auto-Tuning of State Feedback Speed Controller for PMSM." ICINCO (1). 2018.

Cite As

Szczepanski, Rafal, et al. “Comparison of Constraint-Handling Techniques Used in Artificial Bee Colony Algorithm for Auto-Tuning of State Feedback Speed Controller for PMSM.” Proceedings of the 15th International Conference on Informatics in Control, Automation and Robotics, SCITEPRESS - Science and Technology Publications, 2018, doi:10.5220/0006904002690276.

View more styles

Tags

Add Tags

Add the first tag.

General Information

MATLAB Release Compatibility

  • Compatible with any release

Platform Compatibility

  • Windows
  • macOS
  • Linux
Version Published Release Notes Action
1.0.0