Data collected using the galvanostatic intermittent titration technique (GITT) and application of the Sand equation is a ubiquitous method for inferring the solid-state diffusivity in lithium-ion battery active materials. However, the experiment is notoriously time-consuming and the Sand equation relies on assumptions whose applicability can be questionable. We propose a novel methodology, termed Inference from a Consistent Model (ICM), which enables inference of solid-state diffusivity using the same physical model employed for prediction, and is applicable to more general and quick-to-measure data. We infer the diffusivity (as a function of inserted lithium concentration) by minimising the residual sum of squares between data and solutions to a spherically-symmetric nonlinear diffusion model in a single representative active material particle. Using data harvested from the NMC cathode of a commercial LG M50 cell we demonstrate that the ICM is robust, and yields more accurate diffusivity estimates, while relying on data that are five times faster to collect than that required by the classical approach. Moreover, there is good reason to believe that further speed ups could be achieved when other types of data are available. This work contributes towards developing faster and more reliable techniques in parameter inference for lithium-ion batteries, and the code required to deploy ICM is provided to facilitate its adoption in future research. • A new method infers solid-state diffusivity from battery voltage data. • Works with constant-current data, requiring no relaxation periods. • Outperforms classical titration-based methods in speed and accuracy. • Code is openly available for use in lithium-ion battery characterisation. • Contributes to faster, more reliable inference methods for lithium-ion batteries.
Building similarity graph...
Analyzing shared references across papers
Loading...
A. Emir Gümrükçüoğlu
James Burridge
University of Portsmouth
Kieran O’Regan
The Stables
Journal of Energy Storage
University of Birmingham
University of Portsmouth
The Faraday Institution
Building similarity graph...
Analyzing shared references across papers
Loading...
Gümrükçüoğlu et al. (Fri,) studied this question.
synapsesocial.com/papers/69a767a1badf0bb9e87e1ba2 — DOI: https://doi.org/10.1016/j.est.2026.120831