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Prediction of diffusion coefficients in fcc, bcc and hcp phases remained stable or metastable by the machine-learning methods

Zhenbang Wei, Jinxin Yu, Yong Lu, Jiajia Han, Cuiping Wang, Xingjun Liu

2020Materials & Design24 citationsDOIOpen Access PDF

Abstract

Diffusion coefficient play a crucial role in material designing, and physical phenomenon explaining during the material preparation and post-treatment. However, it is unavailable in some metallic systems. In this paper, based on basic physical properties (including atom properties, lattice parameters, melting temperature, elastic stiffness constant and etc.), the diffusion activate energy model were developed by machine-learning methods. First, the melting temperature (Tm) and elastic stiffness constant (Cij) models were built by machine-learning methods to fill the absent values in properties. Second, the diffusion activate energy (Q) model was built, and a hybrid features selection method was used to decrease features from 73 to 11 in the model. The Tm, Cij and Q models showed a good predictive ability and goodness of fit. Finally, features in the models were analyzed and compared with the parameters in various prior models. This work provides further understanding on the mechanism of the melting process, elastic deformation and diffusion process. Moreover, the models could be able to provide an easy and reliable method to obtain the diffusion coefficients in bcc, fcc, and hcp alloys when they are needed but unavailable.

Topics & Concepts

Materials scienceMetastabilityDiffusionStiffnessThermodynamicsDiffusion processWork (physics)Atom (system on chip)Statistical physicsComputer scienceComposite materialPhysicsInnovation diffusionQuantum mechanicsKnowledge managementEmbedded systemHigh Temperature Alloys and CreepAluminum Alloy Microstructure PropertiesIntermetallics and Advanced Alloy Properties