Machine Learning Enabled Computational Screening of Inorganic Solid Electrolytes for Dendrite Suppression with Li Metal Anode
Zeeshan Ahmad, Tian Xie, Chinmay Maheshwari, Jeffrey C. Grossman,, Venkatasubramanian Viswanathan

TL;DR
This study uses machine learning to efficiently predict mechanical properties of inorganic solids, enabling large-scale screening of solid electrolytes to suppress dendrite formation in lithium metal batteries.
Contribution
It introduces a machine learning framework for predicting elastic properties of solid electrolytes, facilitating rapid screening for dendrite suppression in lithium batteries.
Findings
Models accurately predict elastic moduli from structural features.
Identified promising soft, anisotropic electrolytes for dendrite suppression.
Screened over 12,000 candidates for battery applications.
Abstract
Next generation batteries based on lithium (Li) metal anodes have been plagued by the dendritic electrodeposition of Li metal on the anode during cycling, resulting in short circuit and capacity loss. Suppression of dendritic growth through the use of solid electrolytes has emerged as one of the most promising strategies for enabling the use of Li metal anodes. We perform a computational screening of over 12,000 inorganic solids based on their ability to suppress dendrite initiation in contact with Li metal anode. Properties for mechanically isotropic and anisotropic interfaces that can be used in stability criteria for determining the propensity of dendrite initiation are usually obtained from computationally expensive first-principles methods. In order to obtain a large dataset for screening, we use machine learning models to predict the mechanical properties of several new solid…
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Taxonomy
MethodsInterpretability
