Litcius/Paper detail

Machine Learning Assisted Prediction of Microstructures and Young’s Modulus of Biomedical Multi-Component β-Ti Alloys

Xingjun Liu, Qinghua Peng, Shaobin Pan, Jingtao Du, Shuiyuan Yang, Jiajia Han, Yong Lu, Jinxin Yu, Cuiping Wang

2022Metals17 citationsDOIOpen Access PDF

Abstract

Recently, the development of β-titanium (Ti) alloys with a low Young’s modulus as human implants has been the trend of research in biomedical materials. However, designing β-titanium alloys by conventional experimental methods is too costly and inefficient. Therefore, it is necessary to propose a method that can efficiently and reliably predict the microstructures and the mechanical properties of biomedical titanium alloys. In this study, a machine learning prediction method is proposed to accelerate the design of biomedical multi-component β-Ti alloys with low moduli. Prediction models of microstructures and Young’s moduli were built at first. The performances of the models were improved by introducing new experimental data. With the help of the models, a Ti–13Nb–12Ta–10Zr–4Sn (wt.%) alloy with a single β-phase microstructure and Young’s modulus of 69.91 GPa is successfully developed. This approach could also be used to design other advanced materials.

Topics & Concepts

Titanium alloyMicrostructureMaterials scienceModulusComponent (thermodynamics)Elastic modulusYoung's modulusTitaniumAlloyMetallurgyComputer scienceComposite materialThermodynamicsPhysicsTitanium Alloys Microstructure and PropertiesOrthopaedic implants and arthroplastyHydrogen embrittlement and corrosion behaviors in metals