Abstract
Predicting and monitoring battery life early and across chemistries is a significant challenge due to the plethora of degradation paths, form factors, and electrochemical testing protocols. Existing models typically translate poorly across different electrode, electrolyte, and additive materials, mostly require a fixed number of cycles, and are limited to a single discharge protocol. Here, an attention based recurrent algorithm for neural analysis (ARCANA) architecture is developed and trained on a unique, ultra-large, proprietary dataset from BASF and a large Li-ion dataset gathered from literature across the globe. ARCANA generalizes well across this diverse set of chemistries, electrolyte formulations, battery designs, and cycling protocols and thus allows for universal extraction of data-driven knowledge of the degradation mechanisms. The model’s adaptability is further demonstrated through fine-tuning on Na-ion batteries. ARCANA advances the frontier of large-scale time series models in analytical chemistry beyond textual data and holds the potential to significantly accelerate discovery-oriented battery research endeavors.
Supplementary materials
Title
Attention towards chemistry agnostic and explainable battery lifetime prediction
Description
The supplementary information provides a detailed description of the data, used in this study, along with their cycling protocols collected at various locations. Additionally, this document provides information about the training procedure, the tuned model parameters and lists all the contributing results.
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