4.5 Article

Casting Microstructure Inspection Using Computer Vision: Dendrite Spacing in Aluminum Alloys

期刊

METALS
卷 11, 期 5, 页码 -

出版社

MDPI
DOI: 10.3390/met11050756

关键词

secondary dendrite arm spacing; convolutional neural network; casting microstructure inspection; deep learning; aluminum alloys

资金

  1. University of Rijeka [18-37]

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This study explores using convolutional neural networks to determine secondary dendrite arm spacing with high prediction accuracy. The CNN model was trained and tested on different alloy samples, showing that it can be used in industry to determine SDAS values accurately.
This paper investigates the determination of secondary dendrite arm spacing (SDAS) using convolutional neural networks (CNNs). The aim was to build a Deep Learning (DL) model for SDAS prediction that has industrially acceptable prediction accuracy. The model was trained on images of polished samples of high-pressure die-cast alloy EN AC 46000 AlSi9Cu3(Fe), the gravity die cast alloy EN AC 51400 AlMg5(Si) and the alloy cast as ingots EN AC 42000 AlSi7Mg. Color images were converted to grayscale to reduce the number of training parameters. It is shown that a relatively simple CNN structure can predict various SDAS values with very high accuracy, with a R2 value of 91.5%. Additionally, the performance of the model is tested with materials not used during training; gravity die-cast EN AC 42200 AlSi7Mg0.6 alloy and EN AC 43400 AlSi10Mg(Fe) and EN AC 47100 Si12Cu1(Fe) high-pressure die-cast alloys. In this task, CNN performed slightly worse, but still within industrially acceptable standards. Consequently, CNN models can be used to determine SDAS values with industrially acceptable predictive accuracy.

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