S-4-25 Cluster-formula-embedded Machine Learning for Design of Multi-component β-Ti Alloys with Low Young’s Modulus

Cluster-formula-embedded Machine Learning for Design of Multi-component β-Ti Alloys with Low Young’s Modulus

Qing Wang 1*, Zhen Li 2, Fei Yang 1, Chuang Dong 1

1 School of Materials Science and Engineering, Dalian University of Technology, Dalian, 116024, China

2 School of Mechanical Engineering, Dalian University of Technology, Dalian, 116024, China

 

ABSTRACT: The present work formulated a materials design approach, a cluster-formula-embedded machine learning (ML) model, to search for body-centered-cubic (BCC) β-Ti alloys with low Young’s modulus (E) in the Ti-Mo-Nb-Zr-Sn-Ta system. The characteristic parameters, including the Mo equivalence and the cluster formula approach, are implemented into the ML to ensure the accuracy of prediction, in which the former two parameters represent the BCC-β structural stability, and the latter reflects the interactions among elements expressed with a composition formula. Both auxiliary gradient-boosting regression tree and genetic algorithm methods were adopted to deal with the optimization problem in the ML model. This cluster-formula-embedded ML can not only predict alloy property in the forward design, but also design and optimize alloy compositions with desired properties in multi-component systems efficiently and accurately. By setting different objective functions, several new -Ti alloys with either the lowest E (E = 48 GPa) or a specific E (E = 55 and 60 GPa) were predicted by ML and then validated by a series of experiments, including the microstructural characterization and mechanical measurements. It could be found that the experimentally-obtained E of predicted alloys by ML could reach the desired objective E, which indicates that the cluster-formula-embedded ML model can make the prediction and optimization of composition and property more accurate, effective, and controllable.

 

Keywords: β-Ti alloys; machine learning; cluster formular; structural stability; Young’s modulus

Brief Introduction of Speaker
Qing Wang

Prof. Qing Wang is the professor in Dalian University of Technology. She has been working on the exploration of a special composition design approach and the development of advanced engineering alloy materials, including high-performance Ti/Zr alloys, special stainless steels, and high-entrogoy superalloys, etc.. Based on these research work, she has been funded by more than twenty projects, and has published more than one hundred of SCI papers on classical journals (including Acta Mater. etc.), as well as more than twenty authorized patents. She is also the committee member of several domestic famous societies including Materials Science Branch of China Metal Society.