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Flexural buckling load prediction of aluminium alloy columns using soft computing techniques
Authors:Abdulkadir Cevik  Nihat Atmaca  Talha Ekmekyapar  Ibrahim H Guzelbey
Affiliation:1. Human Genome Centre, School of Medical Sciences, Health Campus, Universiti Sains Malaysia, 16150 Kubang Kerian, Kelantan, Malaysia;2. Department of Obstetrics and Gynecology, School of Medical Sciences, Health Campus, Universiti Sains Malaysia, 16150 Kubang Kerian, Kelantan, Malaysia;3. Department of Obstetrics and Gynecology, Hospital Sultan Ismail, 81100 Johor Bahru, Johor, Malaysia;4. Department of Pathology, School of Medical Sciences, Health Campus, Universiti Sains Malaysia, 16150 Kubang Kerian, Kelantan, Malaysia;1. Department of Mathematics, Faculty of Sciences, University of Oviedo, Calvo Sotelo s/n, Oviedo 33071, Spain;2. Department of Computer Science, Faculty of Sciences, University of Oviedo, Calvo Sotelo s/n, Oviedo 33071, Spain;3. Department of Mathematics, Matej Bel University, Slovak Republic;4. Department of Statistics and O.R., University Technical School of Industrial Engineers, University of Oviedo, Viesques Campus, Gijón 33203, Spain
Abstract:This paper presents the application of soft computing techniques for strength prediction of heat-treated extruded aluminium alloy columns failing by flexural buckling. Neural networks (NN) and genetic programming (GP) are presented as soft computing techniques used in the study. Gene-expression programming (GEP) which is an extension to GP is used. The training and test sets for soft computing models are obtained from experimental results available in literature. An algorithm is also developed for the optimal NN model selection process. The proposed NN and GEP models are presented in explicit form to be used in practical applications. The accuracy of the proposed soft computing models are compared with existing codes and are found to be more accurate.
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