TY - JOUR
T1 - Illustration of experimental, machine learning, and characterization methods for study of performance of Li-ion batteries
AU - Garg, Akhil
AU - Singh, Surinder
AU - Li, Wei
AU - Gao, Liang
AU - Cui, Xujian
AU - Wang, Chin Tsan
AU - Peng, Xiongbin
AU - Rajasekar, Natarajan
N1 - Publisher Copyright:
© 2020 John Wiley & Sons Ltd
PY - 2020/10/10
Y1 - 2020/10/10
N2 - The development of fault diagnosis of Li-ion batteries used in electric vehicles is vital. In this perspective, the present work conducted a comprehensive study for the evaluation of coupled and interactive influence of charging ratio, number of cycles, and voltage on the discharge capacity of Li-ion batteries to predict the life of battery. The charging-discharging experimental tests on Li-ion batteries have been performed. The data such as charging ratio, number of cycles, voltage, and discharge capacity of Li-ion batteries are measured. Machine learning approach of neural networks is then applied on the obtained data to compute the effects, normal distribution, parametric analysis, and sensitivity analysis of the input parameters on the capacity of battery. It can be noticed that discharge capacity increased with an increase in full voltage. Further, it has been observed from the sensitivity analysis that the full voltage is most relevant parameters to the capacity of the battery. Additionally, scanning electron microscopy/energy dispersive spectroscopy (SEM/EDS) of the electrodes before and after experiments have been performed, to investigate the elemental dissolution due to the charging/discharging cycles. The findings and analysis from the proposed study shall facilitate experts in making decisions on the remaining life and charging capacity of the battery.
AB - The development of fault diagnosis of Li-ion batteries used in electric vehicles is vital. In this perspective, the present work conducted a comprehensive study for the evaluation of coupled and interactive influence of charging ratio, number of cycles, and voltage on the discharge capacity of Li-ion batteries to predict the life of battery. The charging-discharging experimental tests on Li-ion batteries have been performed. The data such as charging ratio, number of cycles, voltage, and discharge capacity of Li-ion batteries are measured. Machine learning approach of neural networks is then applied on the obtained data to compute the effects, normal distribution, parametric analysis, and sensitivity analysis of the input parameters on the capacity of battery. It can be noticed that discharge capacity increased with an increase in full voltage. Further, it has been observed from the sensitivity analysis that the full voltage is most relevant parameters to the capacity of the battery. Additionally, scanning electron microscopy/energy dispersive spectroscopy (SEM/EDS) of the electrodes before and after experiments have been performed, to investigate the elemental dissolution due to the charging/discharging cycles. The findings and analysis from the proposed study shall facilitate experts in making decisions on the remaining life and charging capacity of the battery.
KW - energy conversion and storage
KW - energy dispersive spectroscopy
KW - hybrid energy systems
KW - Li-ion batteries
KW - remaining life of batteries
UR - http://www.scopus.com/inward/record.url?scp=85078886287&partnerID=8YFLogxK
U2 - 10.1002/er.5159
DO - 10.1002/er.5159
M3 - Article
AN - SCOPUS:85078886287
SN - 0363-907X
VL - 44
SP - 9513
EP - 9526
JO - International Journal of Energy Research
JF - International Journal of Energy Research
IS - 12
ER -