Affiliation:
1. Faculty of Mechanical Engineering, Niš
Abstract
This paper presents an investigation into the effect of the laser cutting
parameters on the heat affected zone in CO2 laser cutting of AISI 304
stainless steel. The mathematical model for the heat affected zone was
expressed as a function of the laser cutting parameters such as the laser
power, cutting speed, assist gas pressure and focus position using the
artificial neural network. To obtain experimental database for the
artificial neural network training, laser cutting experiment was planned as
per Taguchi?s L27 orthogonal array with three levels for each of the cutting
parameter. Using the 27 experimental data sets, the artificial neural
network was trained with gradient descent with momentum algorithm and the
average absolute percentage error was 2.33%. The testing accuracy was then
verified with 6 extra experimental data sets and the average predicting
error was 6.46%. Statistically assessed as adequate, the artificial neural
network model was then used to investigate the effect of the laser cutting
parameters on the heat affected zone. To analyze the main and interaction
effect of the laser cutting parameters on the heat affected zone, 2-D and
3-D plots were generated. The analysis revealed that the cutting speed had
maximum influence on the heat affected zone followed by the laser power,
focus position and assist gas pressure. Finally, using the Monte Carlo
method the optimal laser cutting parameter values that minimize the heat
affected zone were identified.
Publisher
National Library of Serbia
Subject
Renewable Energy, Sustainability and the Environment
Cited by
22 articles.
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