posted on 2020-12-09, 20:35authored byCamilo
A. F. Salvador, Bruno F. Zornio, Caetano R. Miranda
The discovery of low-modulus Ti alloys
for biomedical applications
is challenging due to a vast number of compositions and available
solute contents. In this work, machine learning (ML) methods are employed
for the prediction of the bulk modulus (K) and the
shear modulus (G) of optimized ternary alloys. As
a starting point, the elasticity data of more than 1800 compounds
from the Materials Project fed linear models, random forest regressors,
and artificial neural networks (NN), with the aims of training predictive
models for K and G based on compositional
features. The models were then used to predict the resultant Young
modulus (E) for all possible compositions in the
Ti-Nb-Zr system, with variations in the composition of 2 at. %. Random
forest (RF) predictions of E deviate from the NN
predictions by less than 4 GPa, which is within the expected variance
from the ML training phase. RF regressors seem to generate the most
reliable models, given the selected target variables and descriptors.
Optimal compositions identified by the ML models were later investigated
with the aid of special quasi-random structures (SQSs) and density
functional theory (DFT). According to a combined analysis, alloys
with 22 Zr (at. %) are promising structural materials to the biomedical
field, given their low elastic modulus and elevated beta-phase stability.
In alloys with Nb content higher than 14.8 (at. %), the beta phase
has lower energy than omega, which may be enough to avoid the formation
of omega, a high-modulus phase, during manufacturing.