Elongation Prediction of Die-Cast Aluminum Alloy Based on 3D Convolutional Neural Network Model
DOI:
10.4271/05-18-04-0032
Publication Date:
2025-04-11T02:16:22Z
AUTHORS (8)
ABSTRACT
<div>This study aims to predict the impact of porosities on the variability of
elongation in the casting Al-10Si-0.3Mg alloy using machine learning methods.
Based on the dataset provided by finite element method (FEM) modeling, two
machine learning algorithms including artificial neural network (ANN) and 3D
convolutional neural network (3D CNN) were trained and compared to determine the
optimal model. The results showed that the mean squared error (MSE) and
determination coefficient (R<sup>2</sup>) of 3D CNN on the validation set were
0.01258/0.80, while those of ANN model were 0.28951/0.46. After obtaining the
optimal prediction model, 3D CNN model was used to predict the elongation of
experimental specimens. The elongation values obtained by experiments and FEM
simulation were compared with that of 3D CNN model. The results showed that for
samples with elongation smaller than 9.5%, both the prediction accuracy and
efficiency of 3D CNN model surpassed those of FEM simulation.</div>
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