Prediction of welding responses using AI approach: adaptive neuro-fuzzy inference system and genetic programming

被引:0
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作者
Suman Chatterjee
Siba Sankar Mahapatra
Luciano Lamberti
Catalin I. Pruncu
机构
[1] National Institute of Technology Rourkela,Department of Mechanical Engineering
[2] Politecnico Di Bari,Dipartimento Di MeccanicaMatematica E Management
[3] University of Strathclyde,Design, Manufacturing & Engineering Management
关键词
Laser welding; Nd; YAG laser; ANFIS; MGGP; Titanium alloy; Stainless steel;
D O I
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中图分类号
学科分类号
摘要
Laser welding of thin sheets has widespread application in various fields such as battery manufacturing, automobiles, aviation, electronics circuits and medical sciences. Hence, it is very essential to develop a predictive model using artificial intelligence in order to achieve high-quality weldments in an economical manner. In the present study, two advanced artificial intelligence techniques, namely adaptive neuro-fuzzy inference system (ANFIS) and multi-gene genetic programming (MGGP), were implemented to predict the welding responses such as heat-affected zone, surface roughness and welding strength during joining of thin sheets using Nd:YAG laser. The study attempts to develop an appropriate predictive model for the welding process. In the proposed methodology, 70% of the experimental data constitutes the training set whereas remaining 30% data is used as testing set. The results of this study indicated that the root-mean-square error (RMSE) of tested data set ranges between 7 and 16% for MGGP model, while RMSE for testing data set lies 18–35% for ANFIS model. The study indicates that the MGGP predicts the welding responses in a superior manner in laser welding process and can be applied for accurate prediction of performance measures.
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