Parameters inference and model reduction for the Single-Particle Model of Li ion cells
Michael Khasin, Chetan S. Kulkarni, Kai Goebel

TL;DR
This paper analyzes the parameter inference and model reduction for the Single-Particle Model of Li-ion batteries, revealing a hierarchy of simplified models based on parameter sensitivities, which aids in efficient battery health assessment.
Contribution
It introduces a novel application of sloppy model theory to the SPM, deriving a reduced model with only three key parameters for battery health characterization.
Findings
Parameter distribution is highly delocalized, with large variances in certain directions.
Only a few stiff parameters significantly influence the model's predictions.
A hierarchy of reduced models with three effective parameters is derived.
Abstract
The Single-Particle Model (SPM) of Li ion cell \cite{Santhanagopalan06, Guo2011} is a computationally efficient and fairly accurate model for simulating Li ion cell cycling behavior at weak to moderate currents. The model depends on a large number of parameters describing the geometry and material properties of a cell components. In order to use the SPM for simulation of a 18650 LP battery cycling behavior, we fitted the values of the model parameters to a cycling data. We found that the distribution of parametric values for which the SPM fits the data accurately is strongly delocalized in the (nondimensionalized) parametric space, with variances in certain directions larger by many orders of magnitude than in other directions. This property of the SPM is known to be shared by a multitude of the so-called "sloppy models" \cite{Brown2003, Waterfall2006}, characterized by a few stiff…
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Taxonomy
TopicsAdvanced Battery Technologies Research · Fault Detection and Control Systems · Advancements in Battery Materials
