Prediction of weld quality using intelligent decision making tools

Author:

Dhas Edwin Raja,Kumanan Somasundaram,Jesuthanam C.P.

Abstract

Decision-making process in manufacturing environment is increasingly difficult due to the rapid changes in design anddemand of quality products. To make decision making process online, effective and efficient artificial intelligent tools likeneural networks are being attempted. This paper proposes the development of neural network models for prediction ofweld quality in Submerged Arc Welding (SAW). Experiments are designed according to Taguchi’s principles andmathematical equations are developed using multiple regression model. Proposed neural network models are developedusing experimental data, supported with the data generated by regression model. The performances of the developedmodels are compared in terms of computational speed and prediction accuracy. It is found that Neural Network trainedwith Particle Swarm Optimization (NNPSO) performs better than Neural Network trained with Back Propagation (BPNN)algorithm, Radial Basis Functional Neural Network (RBFNN) and Neural Network trained with Genetic Algorithm(NNGA). The developed scheme for weld quality prediction is flexible, competent, and accurate than existing models andit scopes better online monitoring system. Finally the developed models are validated. The proposed and developedtechnique finds a good scope and a better future in the relevant field where human can avoid unwanted risks duringoperations with the deployment of robots.

Publisher

Sciedu Press

Cited by 5 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Artificial neural network-based pore size prediction of alginate gel scaffold for targeted drug delivery;Neural Computing and Applications;2022-10-28

2. References;Advancements in Intelligent Gas Metal Arc Welding Systems;2021

3. Improved Welding Quality Prediction for Metal Inert Gas Welding using Artificial Intelligence;International Journal of Scientific Research in Science, Engineering and Technology;2020-11-18

4. Weld Quality Prediction of PAW by Using PSO Trained RBFNN;Lecture Notes in Mechanical Engineering;2020

5. Artificial Neural Network Controlled GMAW System: Penetration and Quality Assurance in a Multi-Pass Butt Weld Application;The International Journal of Advanced Manufacturing Technology;2019-11-12

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