Machine learning for density prediction and process optimization of 316L stainless steel fabricated by selective laser melting
Article : Articles dans des revues internationales ou nationales avec comité de lecture
Selective laser melting (SLM) is an additive manufacturing technique formetallic materials, currently implemented in different industrial applications. Among the various materials, 316L stainless steel (316L SS) has been widely investigated by this
process. However, achieving optimal manufacturing quality is challenging due to the large number of parameters that affect
the final product. Traditional methods for parameter selection are costly, limited and suboptimal. In this study, several machine
learning (ML) approaches were applied to predict the density of 316L SS and optimize SLM process parameters. To predict
the density, a critical property for determining the quality of fabricated parts, a comparative study of various ML approaches,
including artificial neural network (ANN), support vector machine (SVM) and adaptive boosting (AdaBoost) was established.
Our results revealed that the AdaBoost model achieved the best performance and accuracy in density prediction, with a root
mean squared error (RMSE) of 1.94 and a mean absolute error (MAE) of 0.98. To optimize the SLM process parameters such
as laser power, scan speed, layer thickness and hatch spacing, two primary approaches were employed. The first involves
parameter prediction using ML models including ANN, SVM and decision tree regressor (DTR). The second consists of
parameter combination generation, using a target material density with a conditional variational autoencoder (CVAE) trained
on artificial generated dataset. The second approach showed significant potential for uncovering new parameter spaces and
improving the quality of SLM manufactured parts.