Data-Driven Approach to Learning Optimal Forms of Constitutive Relations in Models Describing Lithium Plating in Battery Cells
Avesta Ahmadi, Kevin J. Sanders, Gillian R. Goward, Bartosz Protas

TL;DR
This paper develops a data-driven model for Lithium plating in batteries, deriving optimal constitutive relations from experimental data to accurately predict Lithium evolution and degradation.
Contribution
It introduces a novel inverse modeling approach to determine constitutive relations from experimental data, improving Lithium plating predictions in battery models.
Findings
Model accurately predicts Lithium concentrations during relaxation regimes.
Optimal constitutive relations enhance prediction accuracy across various charging rates.
The approach enables better understanding and control of battery degradation mechanisms.
Abstract
In this study we construct a data-driven model describing Lithium plating in a battery cell, which is a key process contributing to degradation of such cells. Starting from the fundamental Doyle-Fuller-Newman (DFN) model, we use asymptotic reduction and spatial averaging techniques to derive a simplified representation to track the temporal evolution of two key concentrations in the system, namely, the total intercalated Lithium on the negative electrode particles and total plated Lithium. This model depends on an a priori unknown constitutive relations of the cell as a function of thestate variables. An optimal form of this constitutive relation is then deduced from experimental measurements of the time dependent concentrations of different Lithium phases acquired through Nuclear Magnetic Resonance spectroscopy. This is done by solving an inverse problem in which this constitutive…
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Taxonomy
TopicsMineral Processing and Grinding · Fault Detection and Control Systems
