Structure free: compositionally-informed machine learning for solid-state electrolytes design

Abstract

Next-generation energy storage demands high-performance solid-state electrolytes (SSEs), where machine learning (ML) promises to be a powerful design tool. Typically, ML requires atomic positions to construct essential material descriptors, which limits its utility at the earliest design stages when structural data is absent. Composition-based ML offers an alternative by relying solely on chemical formulas and elemental properties, yet accurately capturing ionic size effects and handling compositional complexity remain open challenges. Here, we introduce a compositionally-informed ML (CI-ML) framework that combines ionic radius mismatch (IonicRad_Mis) as a central composition-only descriptor with a compositionally-stratified modeling strategy. Applied to halide SSEs, the XGBoost model achieves robust accuracy on the global dataset (R2: 0.847 training, 0.707 test) and exceptional performance on compositionally-stratified subsets (R2 of 0.991/0.863 for ternary halides, 0.892/0.836 for quaternary halides). SHAP analysis identifies IonicRad_Mis as the paramount descriptor and reveals its negative correlation with ionic conductivity-a global trend mapped across 1,194 halides from the Materials Project database. Guided by this insight, Br-substituted Li3InCl6 is designed to reduce IonicRad_Mis (e.g. from 0.20318 to 0.17494 Å), which boosts conductivity from 0.88 to 1.30 mS/cm that closely matches the model’s prediction (1.39 mS/cm). This structure-free CI-ML approach provides a generalizable pathway to overcome the structural-dependency bottleneck, paving the way for accelerated early-stage discovery of SSEs as well as other functional materials.

Supplementary files

Article information

Article type
Paper
Accepted
04 Jun 2026
First published
05 Jun 2026

Nanoscale, 2026, Accepted Manuscript

Structure free: compositionally-informed machine learning for solid-state electrolytes design

Q. Zhao, Z. Li, Y. Ren, L. Shi and S. Xu, Nanoscale, 2026, Accepted Manuscript , DOI: 10.1039/D6NR01499B

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