Metals Advances ›› 2026, Vol. 43: 31-43.DOI: 10.1016/j.metadv.2025.11.001

• Research Article • Previous Articles     Next Articles

Interpretable machine learning for intrinsic mechanical properties of γ′ phase in cobalt-based superalloys

Zhao-Jing Hana,1, Pei-Kai Gua,1, Qing-Lian Huanga, Ze-Yu Chena, Bo-Yang Rena, Yu-Hui Lia, Can Cuic,*(), Wei-Wei Xua,*(), Xing-Jun Liub   

  1. a Shenzhen Research Institute of Xiamen University, School of Aerospace Engineering, Xiamen University, Xiamen 361005, China
    b Institute of Materials Genome and Big Data, Harbin Institute of Technology, Shenzhen 518055, China
    c School of Aeronautics, Chongqing Jiaotong University, Chongqing 400074, China
  • Received:2025-08-13 Revised:2025-10-27 Accepted:2025-11-22 Online:2026-05-10 Published:2026-02-18
  • Contact: Can Cui, Wei-Wei Xu
  • About author:First author contact:1 The authors contributed equally to this work.

Abstract:

The presence of γ′ phase establishes Co-based alloys as promising candidates for next-generation superalloys, stimulating intense research interest in the development of γ/γ′ Co-based superalloys. Although elucidating the intrinsic elasticity of γ′ phase is crucial for designing novel γ/γ′ superalloys, acquiring a large amount of elastic data of multicomponent γ′ remains a bottleneck. In this study, we proposed an interpretable strategy for predicting the elastic properties of γ′ phase in multicomponent Co-based alloys using density functional theory (DFT) and machine learning (ML) methods. A 1674-sample elastic dataset was first constructed via high-throughput DFT calculations. By utilizing this dataset, a predictive model with strong interpretability was successfully trained in terms of sure independence screening and sparsifying operator (SISSO) techniques. The accuracy of the well-trained 2D model for bulk modulus (B) reached 87% while that for shear modulus (G) and Young’s modulus (E) exceeded 95%, respectively. The SHapley Additive exPlanations (SHAP) analysis revealed mechanisms: part of compositions, mixing enthalpy, valence electron concentration, and electronegativity yield significantly effect on the mechanical properties, in which Co elevation, Cr reduction, valence electron concentration (VEC)>8, and standard deviation of VEC (DVEC) lowering enhance G and E values; smaller DVEC/Atom (Average atomic radius), larger average bulk modulus (Bulk), and Fe>Ni enhance B values. Using the well-trained and low-cost predictive model, we predicted the mechanical properties of γ′ phases across 151796 samples in the unknown compositional space. The statistical analysis revealed that W, Fe, Mo, Nb, Ti, Ta, V, and Ni play dominant strengthening roles. Excluding W and Fe, promising candidate systems include Al-free Co-Mo-Ni-Nb/Ta/V and Al-containing Co-Al-Mo-Cr/Nb/Ta/V alloys. These systems warrant further research to advance the optimization of novel γ/γ′ Co-based superalloys.

Key words: γ/γ′ Co-based superalloys, High-throughput DFT calculations, Interpretable machine learning, Mechanical properties