TY - JOUR
T1 - A machine learning approach for accelerated design of magnesium alloys. Part A
T2 - Alloy data and property space
AU - Ghorbani, M.
AU - Boley, M.
AU - Nakashima, P. N.H.
AU - Birbilis, N.
N1 - Funding Information:
The alloy database was developed at the Australian National University with the assistance of the following individuals: Prateek Arora, Jia Ye, Samyak Jain, Bhumipat (Guy) Chatlekhavanich and Dr. Zhuoran Zeng – who are gratefully acknowledged. We also acknowledge the support of the Monash-IITB Academy Scholarship. This work was funded in part by the Australian Research Council ( DP190103592 ). We would like to thank Jane Moodie for her invaluable guidance and support throughout manuscript preparation.
Publisher Copyright:
© 2023
PY - 2023/10
Y1 - 2023/10
N2 - Typically, magnesium alloys have been designed using a so-called hill-climbing approach, with rather incremental advances over the past century. Iterative and incremental alloy design is slow and expensive, but more importantly it does not harness all the data that exists in the field. In this work, a new approach is proposed that utilises data science and provides a detailed understanding of the data that exists in the field of Mg-alloy design to date. In this approach, first a consolidated alloy database that incorporates 916 datapoints was developed from the literature and experimental work. To analyse the characteristics of the database, alloying and thermomechanical processing effects on mechanical properties were explored via composition-process-property matrices. An unsupervised machine learning (ML) method of clustering was also implemented, using unlabelled data, with the aim of revealing potentially useful information for an alloy representation space of low dimensionality. In addition, the alloy database was correlated to thermodynamically stable secondary phases to further understand the relationships between microstructure and mechanical properties. This work not only introduces an invaluable open-source database, but it also provides, for the first-time data, insights that enable future accelerated digital Mg-alloy design.
AB - Typically, magnesium alloys have been designed using a so-called hill-climbing approach, with rather incremental advances over the past century. Iterative and incremental alloy design is slow and expensive, but more importantly it does not harness all the data that exists in the field. In this work, a new approach is proposed that utilises data science and provides a detailed understanding of the data that exists in the field of Mg-alloy design to date. In this approach, first a consolidated alloy database that incorporates 916 datapoints was developed from the literature and experimental work. To analyse the characteristics of the database, alloying and thermomechanical processing effects on mechanical properties were explored via composition-process-property matrices. An unsupervised machine learning (ML) method of clustering was also implemented, using unlabelled data, with the aim of revealing potentially useful information for an alloy representation space of low dimensionality. In addition, the alloy database was correlated to thermodynamically stable secondary phases to further understand the relationships between microstructure and mechanical properties. This work not only introduces an invaluable open-source database, but it also provides, for the first-time data, insights that enable future accelerated digital Mg-alloy design.
KW - Alloy design
KW - Data analysis
KW - Data visualisation
KW - Magnesium
KW - Mg-alloy database
KW - Unsupervised machine learning
UR - https://www.scopus.com/pages/publications/85175421799
U2 - 10.1016/j.jma.2023.09.035
DO - 10.1016/j.jma.2023.09.035
M3 - Article
AN - SCOPUS:85175421799
SN - 2213-9567
VL - 11
SP - 3620
EP - 3633
JO - Journal of Magnesium and Alloys
JF - Journal of Magnesium and Alloys
IS - 10
ER -