Authors
Mostafa Z Ali, Heba Abdel-Nabi, Rami Alazrai, Bushra AlHijawi, Mazen G AlWadi, Amer F Al-Badarneh, Ponnuthurai N Suganthan, Mohammad I Daoud, Robert G Reynolds
Publication date
2023/9/1
Journal
Applied Soft Computing
Volume
144
Pages
110483
Publisher
Elsevier
Description
In recent years, several population-based evolutionary and swarm algorithms have been developed and used in the literature. This work introduces an improved Cultural Algorithm with a modified selection function and a dynamic α-cognition procedure to handle a variety of challenging numerical optimization problems. The modified selection function is used to support a balanced evolutionary search. A process that starts with a clearer exploration early in the search process and gradually begins to focus on exploitation towards the end of the search process. This work uses the elites of each knowledge source that are at a certain distance from each other. The dynamic α-cognition procedure assists in providing effective learning of individuals through preserving the diversity of the population during the evolution process. In this procedure, each individual is able to learn from the top α% individuals controlled by its …
Scholar articles