FDB-ChOA: An improved FDB-Chimp Optimization Algorithm

FDB-Chimp Optimization Algorithm (FDBChOA) was developed and validated on Global Optimization Problems and Power System Stabilizer
133 Downloads
Aktualisiert 22. Jan 2023

Lizenz anzeigen

This article has two important contributions to the literature. These are, respectively, the development of the fitness distance balance-based chimp optimization algorithm (FDBChOA) as a powerful meta-heuristic search method that can be used in solving global optimization problems and the optimization of power system stabilizer parameters which is a popular real-world engineering problem. The chimp optimization algorithm (ChOA) is a recently developed population-based heuristic search method that mimics the social behavior of chimps. When the performance of ChOA on benchmark problems is analyzed, it is seen that there is a need for studies on algorithm design and improvement of the algorithm's ability to imitate nature in ChOA, as in many other newly developed meta-heuristic search methods. For this purpose, when the socialization processes of chimps are examined, it is assumed that designing the hunting process of attacker and chaser chimps based on the fitness-distance balance can improve the performance of the ChOA algorithm. In the studies carried out to test this hypothesis, the FDB-based hunting process for attacker and chaser chimps in which different strategies are applied and many FDBChOA variations were designed. The designed algorithms have been tested in the CEC 2020 benchmark suite and in optimizing the parameters of the power system stabilizer in a single-machine infinite bus power system. When the experimental study results were analyzed using statistical test tools, it was seen that FDBChOA variations could find better solutions than ChOA for global optimization problems and optimization of power system stabilizer parameters. It is evaluated that the FDBChOA developed in this paper can also find optimum solutions for many real-world engineering problems and global optimization problems.

Zitieren als

Bakir, H., Kahraman, H. T., Temel, S., Duman, S., Guvenc, U., & Sonmez, Y. (2023). Development of an FDB-Based Chimp Optimization Algorithm for Global Optimization and Determination of the Power System Stabilizer Parameters. In Smart Applications with Advanced Machine Learning and Human-Centred Problem Design (pp. 337-365). Cham: Springer International Publishing.

Kompatibilität der MATLAB-Version
Erstellt mit R2022b
Kompatibel mit allen Versionen
Plattform-Kompatibilität
Windows macOS Linux
Tags Tags hinzufügen

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!
Version Veröffentlicht Versionshinweise
1.0.1

title updated

1.0.0