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Efficiency analysis of binary metaheuristic optimization algorithms for uncapacitated facility location problems

Applied Soft Computing · Nisan 2025

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YÖKSİS Kayıtları
Efficiency analysis of binary metaheuristic optimization algorithms for uncapacitated facility location problems
Applied Soft Computing · 2025 SCI-Expanded
Doç. Dr. TAHİR SAĞ →
YÖKSİS ISSN Eşleşmesi

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Efficiency analysis of binary metaheuristic optimization algorithms for uncapacitated facility location problems
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Makale Bilgileri

ISSN15684946
Yayın TarihiNisan 2025
Cilt / Sayfa174
Özet This paper introduces binary adaptations of four metaheuristic optimization algorithms: the Binary Coati Optimization Algorithm (BCOA), Binary Mexican Axolotl Optimization Algorithm (BMAO), Binary Dynamic Hunting Leadership Optimization (BDHL), and Binary Aquila Optimizer (BAO). These algorithms were evaluated for their effectiveness in solving Uncapacitated Facility Location (UFL) problems, which aim to minimize total costs associated with customer-facility allocations and facility opening expenses by determining the optimal number of open facilities. Using 15 UFL problem instances from the OR-Lib dataset, the study assessed algorithm performance across 17 transfer functions (TFs), including S-shaped, V-shaped, and other variants, to address the binary nature of these problems. Performance metrics such as the best, worst, average, standard deviation, and GAP values were analyzed for each binary algorithm. Additionally, statistical analyses were conducted to further assess algorithmic performance. The Kolmogorov-Smirnov (KS) normality test was applied to determine the distribution characteristics of the results, followed by either ANOVA or Kruskal-Wallis tests, depending on the normality of the distributions. These statistical tests revealed significant differences in algorithm performance across different problem instances. Rank values were calculated based on GAP values and CPU times to facilitate comparisons across algorithm versions for the 15 UFL problems. Results underscored the critical role of TF selection in optimizing algorithm efficiency: BCOA performed best with TF11, BMAO with TF16 and TF17, BAO with TF10, and BDHL with TF15. Finally, a performance comparison on GAP values was conducted with two state-of-the-art PSO variants adapted for binary optimization. The proposed algorithms demonstrated either superior or competitive performance in solving UFL problems, validating their efficacy in complex optimization tasks and highlighting the influence of TFs on their performance.

Yazarlar (2)

1
Tahir Saǧ
2
Ayşegül İhsan
ORCID: 0000-0002-2829-9660

Anahtar Kelimeler

Aquila optimizer Binary optimization Coati optimization Dynamic hunting leadership optimization Mexican axolotl optimization

Kurumlar

Selçuk Üniversitesi
Selçuklu Turkey
Scimago Dergi (ISSN Eşleşmesi)
Applied Soft Computing
Q1
SJR Skoru1,511
H-Index208
YayıncıElsevier B.V.
ÜlkeNetherlands
Software (Q1)
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5
Atıf
2
Yazar
5
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