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Machine Learning‐Guided Modulation of Li<sup>+</sup> Solvation Structures towards Optimal Electrolyte Systems for High‐Performance Li−O<sub>2</sub> Battery

Dapeng Liu, Zerui Fu, Shu Wang, Xiangrui Gong, Tingting You, Haohan Yu, Ying Jiang, Yu Zhang

2025Angewandte Chemie International Edition8 citationsDOIOpen Access PDF

Abstract

Abstract As the “blood” of Li−O 2 batteries (LOBs), electrolytes with various solvation structures of Li + can greatly influence the composition of solid electrolyte interphase (SEI) on anode and the growth kinetics of Li 2 O 2 on cathode, and further the battery performance. However, achieving delicate modulation of the multi‐composition electrolytes remains significantly challenging to simultaneously give consideration to both the anode and cathode reactions. In this work, we employed Bayesian optimization to develop advanced electrolytes for LOBs, enabling the formation of a stable inorganic‐rich SEI, and modulation of Li 2 O 2 morphologies. Thus obtained LOBs using the optimized dual‐solvent electrolyte could deliver a discharge capacity of 14,063 mAh g −1 at a current density of 500 mA g −1 , which is far higher than those using the single‐solvent electrolytes. This study not only highlights the critical role of the solvation structure for improving the battery performance, but also provides new insights and important theoretical guidance for delicate modulation of electrolyte compositions.

Topics & Concepts

SolvationElectrolyteBattery (electricity)Modulation (music)Computer scienceMaterials scienceChemistryPhysicsIonPhysical chemistryElectrodeThermodynamicsOrganic chemistryAcousticsPower (physics)Advanced Battery Technologies ResearchAdvanced Battery Materials and TechnologiesAdvancements in Battery Materials
Machine Learning‐Guided Modulation of Li<sup>+</sup> Solvation Structures towards Optimal Electrolyte Systems for High‐Performance Li−O<sub>2</sub> Battery | Litcius