Explainable machine learning for hydrogen diffusion in metals and random binary alloys

被引:5
|
作者
Lu, Grace M. [1 ]
Witman, Matthew [2 ]
Agarwal, Sapan [2 ]
Stavila, Vitalie [2 ]
Trinkle, Dallas R. [1 ]
机构
[1] Univ Illinois, Dept Mat Sci & Engn, Urbana, IL 61801 USA
[2] Sandia Natl Labs, Livermore, CA 94551 USA
基金
美国国家科学基金会;
关键词
AB-INITIO; INTERSTITIAL DIFFUSION; TEMPERATURE DIFFUSION; ACTIVATION-ENERGIES; DEUTERIUM; PERMEATION; PERMEABILITY; SOLUBILITY; 1ST-PRINCIPLES; COEFFICIENTS;
D O I
10.1103/PhysRevMaterials.7.105402
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Hydrogen diffusion in metals and alloys plays an important role in the discovery of new materials for fuel cell and energy storage technology. While analytic models use hand-selected features that have clear physical ties to hydrogen diffusion, they often lack accuracy when making quantitative predictions. Machine learning models are capable of making accurate predictions, but their inner workings are obscured, rendering it unclear which physical features are truly important. To develop interpretable machine learning models to predict the activation energies of hydrogen diffusion in metals and random binary alloys, we create a database for physical and chemical properties of the species and use it to fit six machine learning models. Our models achieve rootmean-squared errors between 98-119 meV on the testing data and accurately predict that elemental Ru has a large activation energy, while elemental Cr and Fe have small activation energies. By analyzing the feature importances of these fitted models, we identify relevant physical properties for predicting hydrogen diffusivity. While metrics for measuring the individual feature importances for machine learning models exist, correlations between the features lead to disagreement between models and limit the conclusions that can be drawn. Instead grouped feature importance, formed by combining the features via their correlations, agree across the six models and reveal that the two groups containing the packing factor and electronic specific heat are particularly significant for predicting hydrogen diffusion in metals and random binary alloys. This framework allows us to interpret machine learning models and enables rapid screening of new materials with the desired rates of hydrogen diffusion.
引用
收藏
页数:16
相关论文
共 50 条
  • [1] Explainable machine learning to uncover hydrogen diffusion mechanism in clinopyroxene
    Li, Anzhou
    Wu, Sensen
    Chen, Huan
    Du, Zhenhong
    Xia, Qunke
    CHEMICAL GEOLOGY, 2023, 641
  • [2] Diffusion of hydrogen in metals and alloys
    Huang, Jinsong
    Dianchi/Battery Bimonthly, 1994, 24 (02):
  • [3] Hydrogen diffusion in disordered metals and alloys
    Gapontsev, AV
    Kondrat'ev, VV
    PHYSICS-USPEKHI, 2003, 46 (10) : 1077 - 1098
  • [4] Hydrogen diffusion coefficient in binary and ternary alloys
    Voloshinskiy, AN
    Kondrat'yev, VV
    Obukhov, AG
    Timofeyev, NI
    FIZIKA METALLOV I METALLOVEDENIE, 1998, 85 (03): : 125 - 133
  • [5] Diffusion of hydrogen in binary and ternary disordered alloys
    Timofeyev, NI
    Rudenko, VK
    Kondratyev, VV
    Gapontsev, A
    Voloshinskii, AN
    HYDROGEN MATERIALS SCIENCE AND CHEMISTRY OF CARBON NANOMATERIALS, 2004, 172 : 635 - 651
  • [6] Solubility and diffusion of hydrogen in pure metals and alloys
    Wipf, H
    PHYSICA SCRIPTA, 2001, T94 : 43 - 51
  • [7] On the theory of hydrogen diffusion in amorphous metals and alloys
    Kondrat'ev, VV
    Gapontsev, AV
    FIZIKA METALLOV I METALLOVEDENIE, 1999, 87 (05): : 5 - 11
  • [8] ACTIVATION ENERGIES FOR DIFFUSION IN PURE METALS + CONCENTRATED BINARY ALLOYS
    TOTH, LE
    SEARCY, AW
    TRANSACTIONS OF THE METALLURGICAL SOCIETY OF AIME, 1964, 230 (04): : 690 - &
  • [9] ANALYSIS OF DIFFUSION DATA FOR METALS AND BINARY ALLOYS IN SOLID STATE
    CHATTOPA.B
    INDIAN JOURNAL OF TECHNOLOGY, 1971, 9 (04): : 138 - &
  • [10] Explainable Machine Learning
    Garcke, Jochen
    Roscher, Ribana
    MACHINE LEARNING AND KNOWLEDGE EXTRACTION, 2023, 5 (01): : 169 - 170