Rulet Tekerleği Yöntemi Kullanılarak Simbiyotik Organizmalar Arama Algoritmasının Geliştirilmesi

Simbiyotik Organizmalar Arama (Symbiotic Organisms Search-SOS)    Algoritması, doğadaki canlıların simbiyotik ilişkilerini taklit ederek geliştirilmiş güçlü bir meta-sezgisel optimizasyon algoritmasıdır. Bu çalışmada SOS algoritmasına rulet tekerleği yöntemi kullanılarak geliştirilmesi amaçlamıştır. Geliştirilen R-SOS algoritması ile çözümün olması beklenen optimum noktaya daha da yaklaşması sağlanmıştır. Geliştirilen algoritma 30 benchmark üzerinde test edilmiş ve sonuçların klasik SOS algoritmasına göre daha güçlü olduğu görülmüştür.

Improving Symbiotic Organisms Search Algorithm Using Roulette Wheel Method

Symbiotic Organisms Search (SOS) Algorithm is a powerful meta-heuristic optimization algorithm developed by simulating the symbiotic relationships of living creatures in nature. In this study, it was aimed to develop SOS algorithm by using roulette wheel method. With the R-SOS algorithm developed, the solution is approached to the expected optimum point. The developed algorithm was tested on 30 benchmarks and the results were found to be stronger than the classical SOS algorithm.

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