Litcius/Paper detail

Inverse design of aluminium alloys using multi-targeted regression

Ninad Bhat, Amanda S. Barnard, Nick Birbilis

2024Journal of Materials Science15 citationsDOIOpen Access PDF

Abstract

Abstract The traditional design process for aluminium alloys has primarily relied upon iterative alloy production and testing, which can be time intensive and expensive. Machine learning has recently been demonstrated to have promise in predicting alloy properties based on the inputs of alloy composition and alloy processing conditions. In the search for optimal alloy concentrations that meet desired properties, as the search space expands, the optimisation process can become more time intensive and computationally expensive, depending on the methodology used. We propose a faster workflow for inverse alloy design by using multi-target machine-learning models. We train a random forest regressor to predict the concentration of alloying elements and a random forest classifier to determine the processing condition. We further analysed the inverse model and validated findings against alloys reported in the literature.

Topics & Concepts

AlloyRandom forestWorkflowInverseMaterials scienceSolid mechanicsAluminium alloyAluminium6063 aluminium alloyProcess (computing)Computer scienceAlgorithmMachine learningMetallurgyMathematicsComposite materialDatabaseOperating systemGeometryAluminum Alloy Microstructure PropertiesNon-Destructive Testing TechniquesMachine Learning in Materials Science