DSC curve fingerprints directly encode mechanical properties of aluminum alloys
Lukas Pichlmann, Samuel Studer, Aurel R. Arnoldt, Paul Oberhauser, Johannes A. \"Osterreicher

TL;DR
This study shows that DSC curves can directly predict mechanical properties of aluminum alloys using machine learning, enabling rapid assessment and process optimization.
Contribution
The paper introduces a novel approach using machine learning on DSC thermograms to directly predict mechanical properties of aluminum alloys, demonstrating high accuracy and generalization.
Findings
Machine learning models predict yield strength with R^2 of 0.93.
Model generalizes across different alloy chemistries.
Precipitation region (230-270°C) is key for predictions.
Abstract
Differential scanning calorimetry (DSC) is a standard tool for studying precipitation and phase transformations in aluminum alloys, yet its relation to mechanical performance has so far remained mostly indirect. Here, we demonstrate that DSC curves themselves act as fingerprints that directly encode mechanical properties. Four representative 6xxx series alloys (Al-Mg-Si) were subjected to different natural and artificial aging regimens, followed by DSC heat-flow measurements and tensile testing. Machine learning models trained on the thermograms predicted yield strength, ultimate tensile strength, and uniform elongation in five-fold grouped cross-validation, with the best model (Lasso) achieving R^2 values of 0.93, 0.86, and 0.87 and mean absolute errors of 14.3 MPa, 11.1 MPa, and 1.5 percent, respectively. Leave-one-alloy-out evaluation with sparse calibration using anchor samples…
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Taxonomy
TopicsAluminum Alloy Microstructure Properties · Machine Learning in Materials Science · Microstructure and mechanical properties
