Digital Twin‐Assisted Degradation Diagnosis and Quantification of NMC Battery Aging Effects During Fast Charging

Author:

Guo Wendi1ORCID,Sun Zhongchao12,Guo Jia13,Li Yaqi14,Vilsen Søren Byg5,Stroe Daniel Ioan1ORCID

Affiliation:

1. Department of Energy Aalborg University Pontoppidanstræde 101 Aalborg 9220 Denmark

2. Power Electronics, Machines and Control group University of Nottingham 15 Triumph Rd, Lenton Nottingham NG7 2GT UK

3. Department of Mechanical Engineering Imperial College London London SW7 1AY UK

4. Department of Materials and Production Aalborg University Aalborg 9220 Denmark

5. Department of Mathematical Sciences Aalborg University Skjernvej 4, Bygning: A Aalborg 9220 Denmark

Abstract

AbstractA comprehensive understanding of aging mechanisms and degradation diagnosis under fast charging in battery electric vehicles is needed. However, there is a lack of tools to capture both macroscopic and microscopic parameters, still focusing on experiment results analysis. To get a comprehensive degradation insight for improved service life, this study explores aging mechanisms in LiNi0.5Co0.2Mn0.3O2 graphite batteries under different fast charging conditions (0.6C to 2C) for up to 1000 equivalent full cycles (EFCs). An improved digital twin is used to quantify aging effects and identify aging modes, combining electrochemical techniques with post‐mortem analysis for assessing chemical and structural degradation. After 1000 EFCs, the dominant aging modes are loss of active material (LAM) in the negative electrode and loss of lithium inventory (LLI), surpassing LAM in the positive electrode. Compared to constant current charging, multistep fast charging effectively mitigates Li plating effects and graphite cracking, resulting in a 13% reduction in LAM. Additionally, optimizing the depth of discharge leads to at least 4% reductions in LLI and 16% in LAMpos. This study proves the electrochemical digital twin's potential for quantifying aging effects and serves as a basis for future physics‐informed machine learning to predict aging behavior and modes.

Funder

Otto Mønsteds Fond

Publisher

Wiley

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