Konferans Bildirisi

Bi-Attempted Based Optimization Algorithm For Numerical Optimization Problems

Sayı: 26 31 Temmuz 2021
PDF İndir
TR EN

Bi-Attempted Based Optimization Algorithm For Numerical Optimization Problems

Öz

Numerical optimization is one of the well-known problems in computer science. Day by day, new methods are developed by many researchers. Recently, optimization became an essential task for many disciplines, such as engineering, medicine, management and others. In many cases, optimization problems may require fast and efficient algorithms for real-time implementations. In this paper, a simple, fast and feasible algorithm is presented for the optimization of both uni-modal and multi-modal benchmark functions. A population based Bi-Attempted Based Optimization Algorithm (ABaOA) is a stochastic search method which searches a solution space with two fixed step-size displacement parameters and two mutation operators. The proposed algorithm is derived from Base Optimization Algorithm (BaOA) which uses basic arithmetic operations. The performance of ABaOA is tested on twenty well-known benchmark functions and the results are statistically compared with the seven well-known stochastic optimization algorithms. Three different statistical analyses were done on the results obtained from the ABaOA. Two non-parametric statistical comparisons with the mean values are performed by using Sign and Wilcoxon tests. The non-parametric statistical multiple comparisons of the proposed algorithm is performed by using the Friedman test. The non-parametric Friedman test of differences among repeated measures of these algorithms was conducted and referred a Chi-square value of 67.337, which was significant (p<0.05). Wilcoxon non-parametric pairwise comparison test was applied to analyze the difference of ABaOA statistically among the other algorithms. The test indicates that the introduced algorithm is statistically significant than other algorithms with a level of significance p < 0.05. The experimental results also show that the ABaOA is clearly superior to the compared stochastic optimization algorithms.

Anahtar Kelimeler

Kaynakça

  1. Bednár, D., Lištjak, M., Slimák, A., & Nečas, V. (2019). Comparison of deterministic and stochastic methods for external gamma dose rate calculation in the decommissioning of nuclear power plants. Annals of Nuclear Energy, 134, 67-76.
  2. Campbell, S. D., Sell, D., Jenkins, R. P., Whiting, E. B., Fan, J. A., & Werner, D. H. (2019). Review of numerical optimization techniques for meta-device design. Optical Materials Express, 9(4), 1842-1863.
  3. Cao, Y., Lu, Y., Pan, X., & Sun, N. (2019). An improved global best guided artificial bee colony algorithm for continuous optimization problems. Cluster computing, 22(2), 3011-3019.
  4. Chakri, A., Khelif, R., Benouaret, M., & Yang, X. S. (2017). New directional bat algorithm for continuous optimization problems. Expert Systems with Applications, 69, 159-175.
  5. de Melo, V. V., & Banzhaf, W. (2018). Drone squadron optimization: a novel self-adaptive algorithm for global numerical optimization. Neural Computing and Applications, 30(10), 3117-3144.
  6. Deb, K., & Padhye, N. (2014). Enhancing performance of particle swarm optimization through an algorithmic link with genetic algorithms. Computational Optimization and Applications, 57(3), 761-794.
  7. Dorigo, M., & Blum, C. (2005). Ant colony optimization theory: A survey. Theoretical computer science, 344(2-3), 243-278. Holland, J. H. (1962). Outline for a logical theory of adaptive systems. Journal of the ACM (JACM), 9(3), 297-314.
  8. Karaboga, D., & Akay, B. (2009). A comparative study of artificial bee colony algorithm. Applied mathematics and computation, 214(1), 108-132. Liberti, L., & Kucherenko, S. (2005). Comparison of deterministic and stochastic approaches to global optimization. International Transactions in Operational Research, 12(3), 263-285.

Ayrıntılar

Birincil Dil

İngilizce

Konular

Mühendislik

Bölüm

Konferans Bildirisi

Yazarlar

Mehtap Köse Ulukök *
0000-0003-4335-483X
Kuzey Kıbrıs Türk Cumhuriyeti

Yayımlanma Tarihi

31 Temmuz 2021

Gönderilme Tarihi

16 Haziran 2021

Kabul Tarihi

2 Temmuz 2021

Yayımlandığı Sayı

Yıl 2021 Sayı: 26

Kaynak Göster

APA
Köse Ulukök, M. (2021). Bi-Attempted Based Optimization Algorithm For Numerical Optimization Problems. Avrupa Bilim ve Teknoloji Dergisi, 26, 466-471. https://doi.org/10.31590/ejosat.953349
AMA
1.Köse Ulukök M. Bi-Attempted Based Optimization Algorithm For Numerical Optimization Problems. EJOSAT. 2021;(26):466-471. doi:10.31590/ejosat.953349
Chicago
Köse Ulukök, Mehtap. 2021. “Bi-Attempted Based Optimization Algorithm For Numerical Optimization Problems”. Avrupa Bilim ve Teknoloji Dergisi, sy 26: 466-71. https://doi.org/10.31590/ejosat.953349.
EndNote
Köse Ulukök M (01 Temmuz 2021) Bi-Attempted Based Optimization Algorithm For Numerical Optimization Problems. Avrupa Bilim ve Teknoloji Dergisi 26 466–471.
IEEE
[1]M. Köse Ulukök, “Bi-Attempted Based Optimization Algorithm For Numerical Optimization Problems”, EJOSAT, sy 26, ss. 466–471, Tem. 2021, doi: 10.31590/ejosat.953349.
ISNAD
Köse Ulukök, Mehtap. “Bi-Attempted Based Optimization Algorithm For Numerical Optimization Problems”. Avrupa Bilim ve Teknoloji Dergisi. 26 (01 Temmuz 2021): 466-471. https://doi.org/10.31590/ejosat.953349.
JAMA
1.Köse Ulukök M. Bi-Attempted Based Optimization Algorithm For Numerical Optimization Problems. EJOSAT. 2021;:466–471.
MLA
Köse Ulukök, Mehtap. “Bi-Attempted Based Optimization Algorithm For Numerical Optimization Problems”. Avrupa Bilim ve Teknoloji Dergisi, sy 26, Temmuz 2021, ss. 466-71, doi:10.31590/ejosat.953349.
Vancouver
1.Mehtap Köse Ulukök. Bi-Attempted Based Optimization Algorithm For Numerical Optimization Problems. EJOSAT. 01 Temmuz 2021;(26):466-71. doi:10.31590/ejosat.953349