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Improving Electrolyte Performance for Target Cathode Loading Using Interpretable Data-Driven Approach

Authors :
Sharma, Vidushi
Tek, Andy
Nguyen, Khanh
Giammona, Max
Zohair, Murtaza
Sundberg, Linda
La, Young-Hye
Publication Year :
2024

Abstract

Higher loading of active electrode materials is desired in batteries, especially those based on conversion reactions, for enhanced energy density and cost efficiency. However, increasing active material loading in electrodes can cause significant performance depreciation due to internal resistance, shuttling, and parasitic side reactions, which can be alleviated to a certain extent by a compatible design of electrolytes. In this work, a data-driven approach is leveraged to find a high-performing electrolyte formulation for a novel interhalogen battery custom to the target cathode loading. An electrolyte design consisting of 4 solvents and 4 salts is experimentally devised for a novel interhalogen battery based on a multi-electron redox reaction. The experimental dataset with variable electrolyte compositions and active cathode loading, is used to train a graph-based deep learning model mapping changing variables in the battery's material design to its specific capacity. The trained model is used to further optimize the electrolyte formulation compositions for enhancing the battery capacity at a target cathode loading by a two-fold approach: large-scale screening and interpreting electrolyte design principles for different cathode loadings. The data-driven approach is demonstrated to bring about an additional 20% increment in the specific capacity of the battery over capacities obtained from the experimental optimization.<br />Comment: 34 Pages, 5 Figures, 2 Tables

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2409.01989
Document Type :
Working Paper