Article | REF: IN252 V1

Computational alloy design by artificial intelligence and thermodynamics

Author: Franck TANCRET

Publication date: December 10, 2022

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Overview

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ABSTRACT

Modern alloys can potentially incorporate many elements, so that the designer faces two major problems, on the one hand the complexity of the relations between composition, processes and properties, and on the other hand the immensity of the space of possible compositions. This article shows how certain computational tools (predictive thermodynamics as well as techniques inherited from artificial intelligence such as data mining or combinatorial optimisation) make it possible to tackle these problems and to design new alloys by calculation, associated to time, cost and performance savings compared to trial-and-error methods.

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AUTHOR

  • Franck TANCRET: University Professor - Nantes University, Nantes Materials Institute Jean Rouxel (IMN), Nantes, France

 INTRODUCTION

This article describes a generic method for computational alloy design, which offers gains in time, cost and performance over trial-and-error development methods. The method is based, on the one hand, on artificial intelligence methods such as combinatorial multi-objective optimization (genetic algorithms, etc.) and data mining (artificial neural networks, Gaussian processes, etc.) and, on the other, on predictive thermodynamics using the so-called "Calphad" method (for "CALculation of PHAse Diagrams" in English). These are the main tools used today to embrace the complexity of compositional spaces in modern metallic materials, whether to establish links between composition, processes and properties, or to search for compositions that will lead to optimal combinations of characteristics.

The method potentially concerns the entire metallurgical industry (steels, nickel alloys, aluminum, titanium, etc.), and all fields requiring the use of high-performance metal alloys: transport (automotive, aeronautics, space, rail, naval, etc.), energy (nuclear, gas, oil, etc.), chemical engineering (reactors, etc.), biomedical (prostheses, implants, staples, etc.), etc. The overall context for the development of new alloys is first set out from a threefold historical, combinatorial and complexity perspective. After presenting some of the technical features of the tools used, the method is illustrated using examples of complex alloy design, such as nickel-based superalloys or multi-concentrated "high-entropy" alloys. We then show how the method can be exploited to design materials with environmental considerations in mind (eco-design). Finally, we outline a number of prospects linked to current developments in the method.

Key points

Sector: Materials

Degree of technology dissemination: Maturity

Technologies involved: Predictive thermodynamics/Calphad method [M 4 105] ; artificial intelligence [H 3 720] , including machine learning

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KEYWORDS

Genetic algorithms   |   Calphad   |   machine learning   |   neural networks


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Computational alloy design using artificial intelligence and thermodynamics