Araştırma Makalesi

Analysis, Test and Management of the Meta-Heuristic Searching Process: An Experimental Study on SOS

Cilt: 23 Sayı: 2 1 Haziran 2020
PDF İndir
EN TR

Analysis, Test and Management of the Meta-Heuristic Searching Process: An Experimental Study on SOS

Öz

In a search process, getting trapped in a local minimum or jumping the global minimum problems are also one of the biggest problems of meta-heuristic algorithms as in artificial intelligence methods. In this paper, causes of these problems are investigated and novel solution methods are developed. For this purpose, a novel framework has been developed to test and analyze the meta-heuristic algorithms. Additionally, analysis and test studies have been carried out for Symbiotic Organisms Search (SOS) Algorithm. The aim of the study is to measure the mimicking a natural ecosystem success of symbiotic operators. Thus, problems in the search process have been discovered and operators' design mistakes have been revealed as a case study of the developed testing and analyzing method. Moreover, ways of realizing a precise neighborhood search (intensification) and getting rid of the local minimum (increasing diversification) have been explored. Important information that enhances the performance of operators in the search process has been achieved through experimental studies. Additionally, it is expected that the new experimental test methods developed and presented in this paper contributes to meta-heuristic algorithms studies for designing and testing.

Anahtar Kelimeler

Kaynakça

  1. [1] Blum C. and Roli A., “Metaheuristics in combinatorial optimization: Overview and conceptual comparison”, ACM Computing Surveys, 35(3), 268-308, (2003).[2] Yang X.S., Scholarpedia, 6(8):1147, (2011).[3] Holland J.H., “Adaption in Natural and Artificial Systems”, University of Michigan Pres, Ann Arbor, MI, USA, (1975).[4] Goldberg D. E., “Genetic Algorithms in Search, Optimization, and Machine Learning”, Reading, MA: Addison-Wesley, ISBN 0201157675, (1989).[5] Dorigo M., “Optimization, Learning and Natural Algorithms”, PhD thesis, Politecnico di Milano, (1992).[6] Dorigo M., Maniezzo V., and Colorni A., “Ant System: Optimization by a colony of cooperating agents”, IEEE Trans Syst Man Cybernet Part B, 26(1):29–41, (1996).[7] Dorigo M. and Stützle T., “Ant Colony optimization”, MA: MIT Press, Cambridge, (2004).[8] Eberhart R. C. and Kennedy J., “A new optimizer using particle swarm theory”, Proceedings of the sixth international symposium on micro machine and human science, Piscataway, NJ, Nagoya, Japan, 39-43, (1995).[9] Eberhart R. C. and Shi Y., “Particle swarm optimization: developments, applications and resources”, Proc. congress on evolutionary computation, Piscataway, NJ., Seoul, Korea., 81-86, (2001).[10] Rajabioun R., “Cuckoo Optimization Algorithm”, Applied Soft Computing, 11:5508-5518, (2011).[11] Karaboga D., and Basturk B., “A powerful and efficient algorithm for numerical function optimization: artificial bee colony (ABC) algorithm” Journal of Global Optimization, 39:459–471, (2007).[12] Karaboga D., and Ozturk C., “A novel clustering approach: Artificial Bee Colony (ABC) algorithm”, Applied Soft Computing, 11(1): 652-657, (2011).[13] Rashedi E., Nezamabadi-pour H., and Saryazdi S., “GSA: A Gravitational Search Algorithm”, Information Sciences, 179: 2232–2248, (2009).[14] Kahraman H. T., Sagiroglu S., and Colak I., “The development of intuitive knowledge classifier and the modeling of domain dependent data”, Knowledge Based Systems, 37: 283-295, (2013).[15] Rao R.V., Savsani V.J, and Vakharia D.P., “Teaching–learning-based optimization: A novel method for constrained mechanical design optimization problems”, Computer-Aided Design, 43: 303–315, (2011).[16] Cheng M.Y., and Prayogo D., “Symbiotic Organisms Search: A new metaheuristic optimization algorithm”, Computers and Structures, 139: 98–112, (2014).[17] Trana D.H., Cheng M.Y., and Prayogo D., “A novel Multiple Objective Symbiotic Organisms Search (MOSOS) for time–cost–labor utilization tradeoff problem”, Knowledge-Based Systems, 94: 132–145, (2016).[18] Meng A., Li, Z., Yin, H., Chen, S., and Guo, Z., “Accelerating particle swarm optimization using crisscross search”, Information Sciences, 329: 52–72, (2016).[19] Wang Z., Xing H., Li T., Yang Y., Qu R., and Pan, Y., “A Modified Ant Colony Optimization Algorithm for Network Coding Resource Minimization”, IEEE Transactions on Evolutionary Computation, 20(3): 325-342, (2016).[20] Lin Q., Chen J., Zhan Z.H., Chen W.N., Coello C.A.C., Yin Y., Lin C.M., and Zhang J., “A Hybrid Evolutionary Immune Algorithm for Multiobjective Optimization Problems”, IEEE Transactions on Evolutionary Computation, 20(5): 711-729, (2016).[21] Seçkiner S.U., Eroğlu Y., Emrullah M., and Dereli T., “Ant colony optimization for continuous functions by using novel pheromone updating”, Applied Mathematics and Computation, 219(9): 4163-4175, (2013).[22] Civicioglu P., “Backtracking search optimization algorithm for numerical optimization problems”, Applied Mathematics and Computation, 219(15): 8121-8144, (2013).[23] Topal A.O., and Altun O., “A novel meta-heuristic algorithm: Dynamic Virtual Bats Algorithm”, Information Sciences, 354: 222-235, (2016).[24] Baykasoğlu A., and Akpinar Ş., “Weighted Superposition Attraction (WSA): A swarm intelligence algorithm for optimization problems–Part 1: Unconstrained optimization”, Applied Soft Computing, 56: 520-540, (2017).[25] Özkış A., and Babalık A., “A novel metaheuristic for multi-objective optimization problems: The multi-objective vortex search algorithm”, Information Sciences, 402: 124-148, (2017).[26] Babalik A., Ozkis A., Uymaz S.A., and Kiran, M.S., “A multi-objective artificial algae algorithm”, Applied Soft Computing, 68: 377-395, (2018).[27] Aydilek İ.B., “A hybrid firefly and particle swarm optimization algorithm for computationally expensive numerical problems”, Applied Soft Computing, 66: 232-249, (2018).[28] Melki G., Kecman V., Ventura S., and Cano A., “OLLAWV: OnLine Learning Algorithm using Worst-Violators”, Applied Soft Computing, 66: 384-393, (2018).[29] Zhang J., Xiao M., Gao L., and Pan Q., “Queuing search algorithm: A novel metaheuristic algorithm for solving engineering optimization problems”, Applied Mathematical Modelling, 63: 464-490, (2018).[30] Trunfio G.A., Topa P., Was J., “A new algorithm for adapting the configuration of subcomponents in large-scale optimization with cooperative coevolution”, Information Sciences, 372: 773–795, (2016).[31] Karafotias G., Hoogendoorn M., and Eiben A.E., “Parameter Control in Evolutionary Algorithms: Trends and Challenges”, IEEE Transactions on Evolutionary Computation, 19(2): 167-187, (2015).[32] Sun G., Zhang A., Yao Y., and Wang Z., “A novel hybrid algorithm of gravitational search algorithm with genetic algorithm for multi-level thresholding”, Applied Soft Computing, 46: 703–730, (2016).

Ayrıntılar

Birincil Dil

İngilizce

Konular

Mühendislik

Bölüm

Araştırma Makalesi

Yayımlanma Tarihi

1 Haziran 2020

Gönderilme Tarihi

3 Nisan 2019

Kabul Tarihi

22 Mayıs 2019

Yayımlandığı Sayı

Yıl 2020 Cilt: 23 Sayı: 2

Kaynak Göster

APA
Kahraman, H. T., Aras, S., Sönmez, Y., Güvenç, U., & Gedikli, E. (2020). Analysis, Test and Management of the Meta-Heuristic Searching Process: An Experimental Study on SOS. Politeknik Dergisi, 23(2), 445-455. https://doi.org/10.2339/politeknik.548717
AMA
1.Kahraman HT, Aras S, Sönmez Y, Güvenç U, Gedikli E. Analysis, Test and Management of the Meta-Heuristic Searching Process: An Experimental Study on SOS. Politeknik Dergisi. 2020;23(2):445-455. doi:10.2339/politeknik.548717
Chicago
Kahraman, Hamdi Tolga, Sefa Aras, Yusuf Sönmez, Uğur Güvenç, ve Eyüp Gedikli. 2020. “Analysis, Test and Management of the Meta-Heuristic Searching Process: An Experimental Study on SOS”. Politeknik Dergisi 23 (2): 445-55. https://doi.org/10.2339/politeknik.548717.
EndNote
Kahraman HT, Aras S, Sönmez Y, Güvenç U, Gedikli E (01 Haziran 2020) Analysis, Test and Management of the Meta-Heuristic Searching Process: An Experimental Study on SOS. Politeknik Dergisi 23 2 445–455.
IEEE
[1]H. T. Kahraman, S. Aras, Y. Sönmez, U. Güvenç, ve E. Gedikli, “Analysis, Test and Management of the Meta-Heuristic Searching Process: An Experimental Study on SOS”, Politeknik Dergisi, c. 23, sy 2, ss. 445–455, Haz. 2020, doi: 10.2339/politeknik.548717.
ISNAD
Kahraman, Hamdi Tolga - Aras, Sefa - Sönmez, Yusuf - Güvenç, Uğur - Gedikli, Eyüp. “Analysis, Test and Management of the Meta-Heuristic Searching Process: An Experimental Study on SOS”. Politeknik Dergisi 23/2 (01 Haziran 2020): 445-455. https://doi.org/10.2339/politeknik.548717.
JAMA
1.Kahraman HT, Aras S, Sönmez Y, Güvenç U, Gedikli E. Analysis, Test and Management of the Meta-Heuristic Searching Process: An Experimental Study on SOS. Politeknik Dergisi. 2020;23:445–455.
MLA
Kahraman, Hamdi Tolga, vd. “Analysis, Test and Management of the Meta-Heuristic Searching Process: An Experimental Study on SOS”. Politeknik Dergisi, c. 23, sy 2, Haziran 2020, ss. 445-5, doi:10.2339/politeknik.548717.
Vancouver
1.Hamdi Tolga Kahraman, Sefa Aras, Yusuf Sönmez, Uğur Güvenç, Eyüp Gedikli. Analysis, Test and Management of the Meta-Heuristic Searching Process: An Experimental Study on SOS. Politeknik Dergisi. 01 Haziran 2020;23(2):445-5. doi:10.2339/politeknik.548717
 
TARANDIĞIMIZ DİZİNLER (ABSTRACTING / INDEXING)
181341319013191 13189 13187 13188 18016 

download Bu eser Creative Commons Atıf-AynıLisanslaPaylaş 4.0 Uluslararası ile lisanslanmıştır.