Extracting and Interpreting Electrochemical Impedance Spectra (EIS) from Physics-Based Models of Lithium-Ion Batteries: Article No. 050512

Huayang Zhu, Tyler Evans, Peter Weddle, Andrew Colclasure, Bor-Rong Chen, Tanvir Tanim, Tyrone Vincent, Robert Kee

Research output: Contribution to journalArticlepeer-review

Abstract

This paper implements a highly efficient algorithm to extract electrochemical impedance spectra (EIS) from physics-based battery models (e.g., a P2D model). The mathematical approach is different from how EIS is practiced experimentally. Experimentally, the voltage (current) is harmonically perturbed over a wide range of frequencies and the amplitude and phase shift of the corresponding current (voltage) is measured. The experimental approach can be implemented in simulation software, but is computationally expensive. The approach here is to determine locally linear state-space models from the full physical model. The four Jacobian matrices that are the basis of the state-space models can be derived by numerical differentiation of the physical model. The EIS is then extracted from the state-space model using computationally efficient matrix-manipulation techniques. The algorithm can evaluate the full EIS at an instant in time during a transient, independent of whether the battery is in a stationary state. The approach is also able to separate the full-cell impedance to evaluate partial EIS, such as for a battery anode alone. Although such partial EIS is difficult to measure experimentally, the partial EIS provides valuable insights in interpreting the full-cell EIS.
Original languageAmerican English
Number of pages15
JournalJournal of the Electrochemical Society
Volume171
Issue number5
DOIs
StatePublished - 2024

NREL Publication Number

  • NREL/JA-5700-88565

Keywords

  • electrochemical impedance spectra
  • Li-ion battery
  • physics-based model
  • state-space model

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