High-throughput design of bimetallic materials via the multimodal machine learning and accessibility index

Abstract

There is a great challenge for efficient exploration of bimetallic systems containing miscible or even immiscible elements (e.g., Au/Ni, Au/Rh) due to the difficulty in screening candidates with favorable formation energy (Eform) from the vast combination space of different metal pairs and ligands or coordination environments. The importance of the coordination environment is highlighted through the multilevel attention mechanism within the graph convolutional neural network (GCNN) and the Shapley additive explanation (SHAP) analysis for 8-feature scheme in Eform prediction. To further reduce the prediction error of formation energy in test set, the multimodal machine learning (MML) is applied to 11,186 bimetallic nanocluster data by integrating the molecule graph of the metal core and the physical property features such as mixing enthalpy (Hmix) of the bimetallic pair and SMLES strings and solubility (logP) of ligand. The present MML model could predict nanoclusters with up to more than one thousand atoms rapidly. To evaluate the experimental accessibility of bimetallic porous materials, alloys, and 2D materials in a general way, an accessibility index, φ, is defined as the combination of the electronegativity (χenv) and the reduced atomic distance index (D) without the need of density functional theory (DFT) calculations. Larger values of φ indicate that the bimetallic materials are more accessible, owing to the energetically favorable interatomic charge tranfer and optimal reduced distance around 0.3 (~3.5 Å metal-metal distance) for nanoclusters and 0.1 (~2.5 Å) for zeolites, respectively. Among the 100 external test samples, three nanoclusters (Au36Ag38((CF3)2PhC≡C)30Cl10, Au38Ag33((CF3)2PhC≡C)30Cl8, and Au9AgRh(PPh3)8Cl) and three 2D materials (Au/Ni@NC, Ni/Pt@NC, and Cu/Gd@NC) were synthesized in this work, in good agreement with that their accessibility indices (φ) are in the favorable range (φ > -0.30) and low formation energies below -1 eV/atom. The proposed MML scheme and accessibility index hold promise in facilitating the high-throughput discovery and bimetallic material design.

Supplementary files

Article information

Article type
Edge Article
Submitted
15 Jun 2025
Accepted
10 Sep 2025
First published
11 Sep 2025
This article is Open Access

All publication charges for this article have been paid for by the Royal Society of Chemistry
Creative Commons BY-NC license

Chem. Sci., 2025, Accepted Manuscript

High-throughput design of bimetallic materials via the multimodal machine learning and accessibility index

Y. Gu, Y. Gu, M. Yang, S. Tang, J. Chen, X. Liang, D. Zheng, Z. Li, F. Song, Y. Gao, Y. Zhu, Y. Shi and J. Ma, Chem. Sci., 2025, Accepted Manuscript , DOI: 10.1039/D5SC04386G

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