Unsupervised machine learning discovers classes in aluminium alloys

R Soc Open Sci. 2023 Feb 1;10(2):220360. doi: 10.1098/rsos.220360. eCollection 2023 Feb.

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.

Keywords: alloy design; aluminium; aluminium alloys; machine learning; mechanical properties; unsupervised learning.