logo

High-throughput studies and machine learning for design of β titanium alloys with optimum properties

High-throughput studies and machine learning for design of β titanium alloys with optimum properties

CHEN Wei-min
LING Jin-feng
BAI Kewu
ZHENG Kai-hong
YIN Fu-xing
ZHANG Li-jun
DU Yong
300

Based on experimental data, machine learning (ML) models for Young’s modulus, hardness, and hot-working ability of Ti-based alloys were constructed. In the models, the interdiffusion and mechanical property data were high- throughput re-evaluated from composition variations and nanoindentation data of diffusion couples. Then, the Ti-(22±0.5)at.%Nb-(30±0.5)at.%Zr-(4±0.5)at.%Cr (TNZC) alloy with a single body-centered cubic (BCC) phase was screened in an interactive loop. The experimental results exhibited a relatively low Young’s modulus of (58±4) GPa, high nanohardness of (3.4±0.2) GPa, high microhardness of HV (520±5), high compressive yield strength of (1220±18) MPa, large plastic strain greater than 30%, and superior dry- and wet-wear resistance. This work demonstrates that ML combined with high-throughput analytic approaches can offer a powerful tool to accelerate the design of multicomponent Ti alloys with desired properties. Moreover, it is indicated that TNZC alloy is an attractive candidate for biomedical applications.

high-throughputmachine learningTi-based alloysdiffusion couplemechanical propertieswear behavior