We investigate the impact of different numbers of positive and negative examples on machine learning for sapphire crystals defects prediction. We obtain the models of crystal growth parameters influence on the sapphire crystal growth. For example, these models allow predicting the defects that occur due to local overcooling of crucible walls in the thermal node leading to the accelerated crystal growth. We also develop the prediction models for obtained crystal weight, blocks, cracks, bubbles formation, and total defect characteristics. The models were trained on all data sets and later tested for generalization on testing sets, which did not overlap the training set. During training and testing, we find the recall, precision of prediction ...
To assist technology advancements, it is important to continue the search for new materials. The sta...
The big data revolution is only just beginning in the materials science and engineering field, offer...
In recent years, graph neural network (GNN) based approaches have emerged as a powerful technique to...
When sapphire crystal is prepared with Kyropoulos method, the necking-down growth process is a key s...
Detection of defective crystal structures can help in refute such defective structures to decrease i...
Machine learning has been successfully employed in computer vision, speech processing, and natural l...
In the past few decades, the first principles modeling algorithms, especially density functional the...
Machine learning has the potential to enhance damage detection and prediction in materials science. ...
Abstract Two-dimensional materials offer a promising platform for the next generation of (opto-) ele...
Computational prediction of crystal materials properties can help to do large-scale in-silicon scree...
In this review, we summarize the results concerning the application of artificial neural networks (A...
Efficient and precise prediction of plasticity by data-driven models relies on appropriate data prep...
This work focuses on integrating crystal plasticity based deformation models and machine learning te...
Computational methods that automatically extract knowledge from data are critical for enabling data-...
Serial crystallography experiments at X-ray free-electron laser facilities produce massive amounts o...
To assist technology advancements, it is important to continue the search for new materials. The sta...
The big data revolution is only just beginning in the materials science and engineering field, offer...
In recent years, graph neural network (GNN) based approaches have emerged as a powerful technique to...
When sapphire crystal is prepared with Kyropoulos method, the necking-down growth process is a key s...
Detection of defective crystal structures can help in refute such defective structures to decrease i...
Machine learning has been successfully employed in computer vision, speech processing, and natural l...
In the past few decades, the first principles modeling algorithms, especially density functional the...
Machine learning has the potential to enhance damage detection and prediction in materials science. ...
Abstract Two-dimensional materials offer a promising platform for the next generation of (opto-) ele...
Computational prediction of crystal materials properties can help to do large-scale in-silicon scree...
In this review, we summarize the results concerning the application of artificial neural networks (A...
Efficient and precise prediction of plasticity by data-driven models relies on appropriate data prep...
This work focuses on integrating crystal plasticity based deformation models and machine learning te...
Computational methods that automatically extract knowledge from data are critical for enabling data-...
Serial crystallography experiments at X-ray free-electron laser facilities produce massive amounts o...
To assist technology advancements, it is important to continue the search for new materials. The sta...
The big data revolution is only just beginning in the materials science and engineering field, offer...
In recent years, graph neural network (GNN) based approaches have emerged as a powerful technique to...