Affiliation:
1. Department of Environmental Science Zhejiang University Hangzhou Zhejiang 310058 China
2. Zhejiang Provincial Key Laboratory of Organic Pollution Process and Control Hangzhou Zhejiang 310058 China
3. Department of Chemical & Environmental Engineering School of Engineering and Applied Science Yale University New Haven CT 06511 USA
4. Department of Pharmacology and Toxicology Ernest Mario School of Pharmacy Environmental and Occupational Health Sciences Institute (EOHSI) Rutgers University Piscataway NJ 08854 USA
5. State Environmental Protection Key Laboratory of Environ Pollut Health Risk Assessment South China Institute of Environmental Sciences Ministry of Ecology and Environment Guangzhou 510655 China
Abstract
AbstractNa superionic conductor (NASICON) materials hold promise as solid‐state electrolytes due to their wide electrochemical stability and chemical durability. However, their limited ionic conductivity hinders their integration into sodium‐ion batteries. The conventional approach to electrolyte design struggles with comprehending the intricate interactions of factors impacting conductivity, encompassing synthesis parameters, structural characteristics, and electronic descriptors. Herein, we explored the potential of machine learning in predicting ionic conductivity in NASICON. We compile a database of 211 datasets, covering 160 NASICON materials, and employ facile descriptors, including synthesis parameters, test conditions, molecular and structural attributes, and electronic properties. Random forest (RF) and neural network (NN) models were developed and optimized, with NN performing notably better, particularly with limited data (R2=0.820). Our analysis spotlighted the pivotal role of Na stoichiometric count in ionic conductivity. Furthermore, the NN algorithm highlighted the comparable significance of synthesis parameters to structural factors in determining conductivity. In contrast, the impact of electronegativity on doped elements appears less significant, underscoring the importance of dopant size and quantity. This work underscores the potential of machine learning in advancing NASICON electrolyte design for sodium‐ion batteries, offering insights into conductivity drivers and a more efficient path to optimizing materials.
Subject
General Energy,General Materials Science,General Chemical Engineering,Environmental Chemistry
Cited by
1 articles.
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