S. Cohen, T.O. Sedgwick, et al.
MRS Proceedings 1983
Development of efficient and high-performing electrolytes is crucial for advancing energy storage technologies, particularly in batteries. Predicting the performance of battery electrolytes rely on complex interactions between the individual constituents. Consequently, a strategy that adeptly captures these relationships and forms a robust representation of the formulation is essential for integrating with machine learning models to predict properties accurately. In this paper, we introduce a novel approach leveraging a transformer-based molecular representation model to effectively and efficiently capture the representation of electrolyte formulations. The performance of the proposed approach is evaluated on two battery property prediction tasks and the results show superior performance compared to the state-of-the-art methods.
S. Cohen, T.O. Sedgwick, et al.
MRS Proceedings 1983
Rudy Wojtecki
ACS Fall 2021
K.N. Tu
Materials Science and Engineering: A
C.-K. Hu
MRS Spring Meeting 1998