A deep learning approach to predict thermophysical properties of metastable liquid Ti-Ni-Cr-Al alloy

Author:

Xiao R. L.1ORCID,Wang Q.1ORCID,Qin J. Y.2ORCID,Zhao J. F.1ORCID,Ruan Y.1ORCID,Wang H. P.1ORCID,Li H.2,Wei B.1ORCID

Affiliation:

1. MOE Key Laboratory of Materials Physics and Chemistry under Extraordinary Conditions, School of Physical Science and Technology, Northwestern Polytechnical University 1 , Xi’an 710072, China

2. Key Laboratory for Liquid-Solid Structural Evolution and Processing of Materials, Ministry of Education, Shandong University 2 , Jinan 250061, China

Abstract

The physical properties of liquid alloy are crucial for many science fields. However, acquiring these properties remains challenging. By means of the deep neural network (DNN), here we presented a deep learning interatomic potential for the Ti–Ni–Cr–Al liquid system. Meanwhile, the thermophysical properties of the Ti–Ni–Cr–Al liquid alloy were experimentally measured by electrostatic levitation and electromagnetic levitation technologies. The DNN potential predicted this liquid system accurately in terms of both atomic structures and thermophysical properties, and the results were in agreement with the ab initio molecular dynamics calculation and the experimental values. A further study on local structure carried out by Voronoi polyhedron analysis showed that the cluster exhibited a tendency to transform into high-coordinated cluster with a decrease in the temperature, indicating the enhancement of local structure stability. This eventually contributed to the linear increase in the density and surface tension, and the exponential variation in the viscosity and the diffusion coefficient with the rise of undercooling.

Funder

National Natural Science Foundation of China

National Key Research and Development Program of China

Science Fund for Distinguished Young Scholars of Shaanxi Province

Science Fund for Scientific and Technological Innovation Team of Shaanxi Province

Publisher

AIP Publishing

Subject

General Physics and Astronomy

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