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Identifying main factors of capacity fading in lithium ion cells using orthogonal design of experiments

Author

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  • Su, Laisuo
  • Zhang, Jianbo
  • Wang, Caijuan
  • Zhang, Yakun
  • Li, Zhe
  • Song, Yang
  • Jin, Ting
  • Ma, Zhao

Abstract

The aging rate under cycling conditions for lithium-ion cells is affected by many factors. Seven principal factors are systematically examined using orthogonal design of experiments, and statistical analysis was used to identify the order of principal factors in terms of strength in causing capacity fade. These seven principal factors are: the charge and discharge currents (i1,i2) during the constant current regime, the charge and discharge cut-off voltages (V1,V2) and the corresponding durations (t1,t2) during the constant voltage regime, and the ambient temperature (T). An orthogonal array with 18 test units was selected for the experiments. The test results show that (1) during the initial 10% capacity fading period, the capacity faded linearly with Wh-throughput for all the test conditions; (2) after the initial period, certain cycling conditions exacerbated aging rates, while the others remain the same. The statistical results show that: (1) except for t1, the other six principal factors significantly affect the aging rate; (2) the strength of the principal factors was ranked as: i1>V1>T>t2>V2>i2>t1. Finally, a multi-factor statistical aging model is developed to predict the aging rate, and the accuracy of the model is validated.

Suggested Citation

  • Su, Laisuo & Zhang, Jianbo & Wang, Caijuan & Zhang, Yakun & Li, Zhe & Song, Yang & Jin, Ting & Ma, Zhao, 2016. "Identifying main factors of capacity fading in lithium ion cells using orthogonal design of experiments," Applied Energy, Elsevier, vol. 163(C), pages 201-210.
  • Handle: RePEc:eee:appene:v:163:y:2016:i:c:p:201-210
    DOI: 10.1016/j.apenergy.2015.11.014
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