Abstract

Traditional strategies for designing new materials with targeted property including methods such as trial and error, and experiences of domain experts, are time and cost consuming. In the present study, we propose a machine learning design system involving three features of machine learning modeling, compositional design and property prediction, which can accelerate the discovery of new materials. We demonstrate better efficiency of on a rapid compositional design of high-performance copper alloys with a targeted ultimate tensile strength of 600–950 MPa and an electrical conductivity of 50.0% international annealed copper standard. There exists a good consistency between the predicted and measured values for three alloys from literatures and two newly made alloys with designed compositions. Our results provide a new recipe to realize the property-oriented compositional design for high-performance complex alloys via machine learning.

Highlights

  • Traditional strategies for designing new materials with targeted property including methods such as trial and error, and experiences of domain experts, are time and cost consuming

  • We propose a machine learning design system (MLDS) to realize property-oriented compositional design for high-performance complex alloys

  • Two kinds of BP neural network (NN) models are built to learn the relationship between the materials properties including mechanical strength and electrical conductivity and the compositions of copper alloys based on a database with hundreds of samples

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Summary

Introduction

Traditional strategies for designing new materials with targeted property including methods such as trial and error, and experiences of domain experts, are time and cost consuming. In order to validate the accuracy of alloy composition designed by the P2C model, we set the targeted UTS as 500, 550, 600, 650, and 700 MPa, respectively, together with the targeted EC of 50.0%

Results
Conclusion
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