An Improved Adaptive Spiral Dynamic Algorithm for Global Optimization

محتوى المقالة الرئيسي

Tazhan Jamal
Shwan Abdulla

الملخص

This paper proposes a new strategy to enhance the performance and accuracy of the Spiral dynamic algorithm (SDA) for use in solving real-world problems by hybridizing the SDA with the Bacterial Foraging optimization algorithm (BFA). The dynamic step size of SDA makes it a useful exploitation approach. However, it has limited exploration throughout the diversification phase, which results in getting trapped at local optima. The optimal initialization position for the SDA algorithm has been determined with the help of the chemotactic strategy of the BFA optimization algorithm, which has been utilized to improve the exploration approach of the SDA. The proposed Hybrid Adaptive Spiral Dynamic Bacterial Foraging (HASDBF) algorithm is designed so that the chemotaxis phase of bacteria represents the exploration part of the search operation. In contrast, the SDA represents the exploitation part.


Additionally, to improve search operation efficiency, the spiral model's radius and angular displacement are adaptively set according to a linear correlation concerning the fitness value. An additional phase, the elimination and dispersal phase, is obtained from BFA and added to the end of the SDA. This phase aims to improve the algorithm's final solution's accuracy by enhancing the algorithm's search strategy and performance. Simulation tests are run on unimodal and multimodal standard benchmark functions to verify the proposed algorithm. The proposed algorithm significantly outperforms SDA and Adaptive SDA (ASDA) algorithms regarding fitness value and accuracy.


 

تفاصيل المقالة

القسم

Articles

السير الشخصية للمؤلفين

Tazhan Jamal، University of Sulaimani

 

 

Shwan Abdulla، University of Sulaimaniya,

 

 

 

 

كيفية الاقتباس

"An Improved Adaptive Spiral Dynamic Algorithm for Global Optimization" (2023) مجلة الهندسة, 29(11), ص 203–218. doi:10.31026/j.eng.2023.11.12.

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