Machine Learning for Material Characterization with an Application for Predicting Mechanical Properties
Anke Stoll, Peter Benner

TL;DR
This paper reviews machine learning applications in metallic material characterization, demonstrating how ML can predict properties like tensile strength efficiently, reducing reliance on costly traditional testing methods.
Contribution
It introduces a machine learning approach for predicting material properties from small punch test data, enabling faster and cheaper material characterization.
Findings
Strong correlation between small punch test data and tensile test data.
ML models can accurately predict ultimate tensile strength.
Potential to replace costly tests with faster, ML-driven methods.
Abstract
Currently, the growth of material data from experiments and simulations is expanding beyond processable amounts. This makes the development of new data-driven methods for the discovery of patterns among multiple lengthscales and time-scales and structure-property relationships essential. These data-driven approaches show enormous promise within materials science. The following review covers machine learning applications for metallic material characterization. Many parameters associated with the processing and the structure of materials affect the properties and the performance of manufactured components. Thus, this study is an attempt to investigate the usefulness of machine learning methods for material property prediction. Material characteristics such as strength, toughness, hardness, brittleness or ductility are relevant to categorize a material or component according to their…
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