Beatrice Cristalli
Prediction of carbon Diffusivity in Austenite with a Neural Network model.
Rel. Marco Actis Grande, Christophe Duwig, Joakim Odqvist, Viktor Ásterberg. Politecnico di Torino, Corso di laurea magistrale in Ingegneria Dei Materiali Per L'Industria 4.0, 2025
Abstract
This study develops a Neural Network (NN) model to predict carbon diffusivity (DC) in austenite under gas carburization conditions. The carburization process enhances surface hardness and wear resistance after quenching, by locally increasing the carbon content. By knowing DC, the efficiency of the carburization process can be enhanced. A fully empirical and a combined empirical-synthetic database are used for training the NN model. Synthetic data are generated using physics-based thermodynamic and mobility software, preventing data scarcity. Extensive pre-processing, including dimensionality reduction study, principal component analysis, and correlation analysis, controlling training input quality. The NN model uses supervised learning, estimating prediction and confidence intervals for DC.
Results indicate that the proposed NN is able to handle experimental and synthetic data, opportunely predicting the target
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