Journal Article10.1016/j.jpowsour.2023.233677
Cell-to-cell variation beyond parameter analysis — Identification and correlation of processes in Lithium-Ion Batteries using a combined distribution of relaxation times analysis
Tom Rüther,Maximilian Schamel,Christian Plank,Felix Schomburg,Fridolin Röder,Michael A. Danzer +5 more
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TL;DR: This study investigates cell-to-cell variations in lithium-ion batteries using a combined distribution of relaxation times analysis, revealing process variations and correlations between cell winding, electrochemical interface processes, and solid-state diffusion.
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Abstract: Cell-to-cell variations inside a battery pack can result in inhomogeneities, leading to an accelerated, uneven aging. Until today these variations are solely quantified by parameter-based studies, which only offer a limited interpretability. To tackle this inconclusiveness, cell-to-cell variations and their effects on the electrode processes of lithium-ion batteries are investigated in this work. For this purpose 92 cells are characterized by impedance, pulse, and pseudo open-circuit voltage measurements, and the data obtained is compiled as publicly available data set. The data is examined by a holistic distribution of relaxation times analysis, comprising complementary distribution of relaxation times approaches. This enables a reliable identification of process variations between cells. First, the confidence intervals of both the raw data and the distribution of relaxation times are examined. Subsequently, the individual processes, their characteristic time constants, and their polarization are determined. The analysis reveals that a normal distribution only applies in one of the examined cases and can even be excluded in four cases. Finally, a correlation analysis is conducted, allowing the categorization of the identified processes into cell winding, electrochemical interface processes, and solid-state diffusion. The potential physicochemical reasons behind are discussed and the work thus contributes to a deeper understanding of cell-to-cell variations.
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Citations
A review on the distribution of relaxation times analysis: A powerful tool for process identification of electrochemical systems
Christian Plank,Tom Rüther,Leonard Jahn,Maximilian Schamel,Jan Philipp Schmidt,Francesco Ciucci,Michael A. Danzer +6 more
TL;DR: This review provides a comprehensive overview of Distribution of Relaxation Times (DRT) analysis, a tool for identifying electrochemical processes, including its mathematical basis, data acquisition, and post-processing techniques for enhancing process identification and material characterization.
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Analysis of Battery-like and Pseudocapacitive Ion Intercalation Kinetics via Distribution of Relaxation Times
Yoga Trianzar Malik,Michael Braig,Patrice Simon,Roswitha Zeis,Simon Fleischmann +4 more
TL;DR: This study employs distribution of relaxation times (DRT) analysis to investigate the kinetics of lithium intercalation in TiS2, distinguishing between solid-state diffusion, interfacial transport, and ion desolvation limitations in battery-like and pseudocapacitive regimes.
Age-related development of cell-to-cell variation under various operating conditions in commercial NMC/graphite lithium-ion cells
David Oeser,Thiemo Hein,Andreas Ziegler,Michael Seefried,Sebastian Gielinger,Daniel Montesinos‐Miracle,Günther Bohn,Ansgar Ackva +7 more
Bayesian impedance deconvolution using timescale distribution for lithium-ion battery state estimation
Seongyoon Kim,Jung‐Il Choi +1 more
Battery pack states, properties, and characterization techniques beyond cell level
Tom Rüther,Wesley Hileman,M. Scott Trimboli,Gregory L. Plett,Matthieu Dubarry,Nikhil Kumar,James Marco,Franz Roehrer,Andreas Jossen,Jan Schöberl,Markus Lienkamp,Oliver Bohlen,Michael A. Danzer +12 more
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