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Unsupervised machine learning discovers classes in aluminium alloys

Ninad Bhat, Amanda S. Barnard, Nick Birbilis

2023Royal Society Open Science29 citationsDOIOpen Access PDF

Abstract

Aluminium (Al) alloys are critical to many applications. Although Al alloys have been commercially widespread for over a century, their development has predominantly taken a trial-and-error approach. Furthermore, many discrete studies regarding Al alloys, often application specific, have precluded a broader consolidation of Al alloy classification. Iterative label spreading (ILS), an unsupervised machine learning approach, was used to identify the different classes of Al alloys, drawing from a specifically curated dataset of 1154 Al alloys (including alloy composition and processing conditions). Using ILS, eight classes of Al alloys were identified based on a comprehensive feature set under two descriptors. Further, a decision tree classifier was used to validate the separation of classes.

Topics & Concepts

AluminiumDecision treeArtificial intelligenceComputer scienceMachine learningAlloyUnsupervised learningAluminium alloyRandom forestClassifier (UML)Pattern recognition (psychology)Materials scienceMetallurgyAluminum Alloy Microstructure PropertiesMachine Learning in Materials ScienceNon-Destructive Testing Techniques
Unsupervised machine learning discovers classes in aluminium alloys | Litcius