Litcius/Paper detail

Machine learning prediction of thermodynamic and mechanical properties of multicomponent Fe-Cr-based alloys

B. O. Mukhamedov, K. V. Karavaev, Igor A. Abrikosov

2021Physical Review Materials27 citationsDOIOpen Access PDF

Abstract

We apply machine learning algorithms to optimize thermodynamic and elastic properties of multicomponent Fe-Cr alloys with additions of Ni, Mo, Al, W, V, and Nb. The target properties are mixing enthalpy, Young's elastic modulus, and the ratio between shear and bulk moduli, which is often used as a phenomenological criterion for a material's ductility. We thoroughly analyze the descriptors that provide the robust performance of the machine learning models. Next, the iterative active learning method is used for the optimization of the chemical composition to simultaneously improve both thermodynamic stability and the elastic properties of Fe-Cr-based alloys. As a result, we predict compositions of thermodynamically stable alloys with improved mechanical properties, demonstrating the high potential of data-driven computational design in the field of materials for nuclear energy applications.

Topics & Concepts

Materials scienceDuctility (Earth science)Elastic modulusThermodynamicsEnthalpyMaterial propertiesShear modulusChemical stabilityPhenomenological modelMixing (physics)MetallurgyComposite materialCondensed matter physicsPhysicsCreepQuantum mechanicsHydrogen embrittlement and corrosion behaviors in metalsMachine Learning in Materials ScienceNuclear Materials and Properties