Publication: Centroid opposition-based backtracking search algorithm for global optimization and engineering problems
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Authors
Authors
Debnath, Sanjib
Debbarma, Swapan
Nama, Sukanta
Saha, Apu Kumar
Dhar, Runu
Yıldız, Ali Rıza
Gandomi, Amir H.
Advisor
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Elsevier Sci Ltd
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Abstract
Evolutionary algorithms (EAs) have a lot of potential to handle nonlinear and non-convex objective functions. Particularly, the backtracking search algorithm (BSA) is a popular nature-based evolutionary optimization method that has attracted many researchers due to its simple structure and efficiency in problem-solving across diverse fields. However, like other optimization algorithms, BSA is also prone to reduced diversity, local optima, and inadequate intensification capabilities. To overcome the flaws and increase the performance of BSA, this research proposes a centroid opposition-based backtracking search algorithm (CoBSA) for global optimization and engineering design problems. In CoBSA, specific individuals simultaneously acquire current and historical population knowledge to preserve population variety and improve exploration capability. On the other hand, other individuals execute the position from the current population's centroid opposition to progress convergence speed and exploitation potential. In addition, an elite process based on logistic chaotic local search was developed to improve the superiority of the current individuals. The suggested CoBSA was validated on a set of benchmark functions and then employed in a set of application examples. According to extensive numerical results and assessments, CoBSA outperformed the other state-of-the-art methods in terms of accurateness, reliability, and execution capability.
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Keywords
Differential evolution, Design, Swarm, Selection, Centroid opposition-based learning (codl), Backtracking search algorithm, Multiple learning, Chaos elite strategy, Engineering design problem, Technology, Computer science, Engineering