TY - JOUR
T1 - Aging model development based on multidisciplinary parameters for lithium-ion batteries
AU - Garg, Akhil
AU - Shaosen, Su
AU - Gao, Liang
AU - Peng, Xiongbin
AU - Baredar, Prashant
N1 - Publisher Copyright:
© 2019 John Wiley & Sons Ltd
PY - 2020/3/25
Y1 - 2020/3/25
N2 - In this paper, a method composed of state of health (SOH) testing experiments and artificial intelligence simulation is proposed to carry out the study on the change of battery characteristic during its operation and generate mathematical models for the prediction of aging behaviour of battery. An experiment comprising of multidisciplinary parameters-based SOH detection is conducted to study the battery aging characteristics from several aspects (ie, electrochemistry, electric, thermal behaviour and mechanics). In total, 200 sets of data (corresponding 200 charging/discharging cycles) are collected from the experiment. The data obtained from the first 150 cycles are employed in generation of the models. The result of sensitivity analysis based on the obtained genetic programming models shows that it is better to apply voltage value at the end of charging step, charging time and cycle number to predict the operational performance of the battery. The average predicted accuracy of model (without stress) is 94.52%, whereas the average predicted accuracy of model (with stress effect) is 99.42%. The proposed models could be useful for defining the optimised charging strategy, fault diagnosis and spent batteries disposal strategies.
AB - In this paper, a method composed of state of health (SOH) testing experiments and artificial intelligence simulation is proposed to carry out the study on the change of battery characteristic during its operation and generate mathematical models for the prediction of aging behaviour of battery. An experiment comprising of multidisciplinary parameters-based SOH detection is conducted to study the battery aging characteristics from several aspects (ie, electrochemistry, electric, thermal behaviour and mechanics). In total, 200 sets of data (corresponding 200 charging/discharging cycles) are collected from the experiment. The data obtained from the first 150 cycles are employed in generation of the models. The result of sensitivity analysis based on the obtained genetic programming models shows that it is better to apply voltage value at the end of charging step, charging time and cycle number to predict the operational performance of the battery. The average predicted accuracy of model (without stress) is 94.52%, whereas the average predicted accuracy of model (with stress effect) is 99.42%. The proposed models could be useful for defining the optimised charging strategy, fault diagnosis and spent batteries disposal strategies.
KW - battery aging model
KW - battery management system
KW - diffusion coefficient
KW - energy conversion
KW - genetic programming
UR - http://www.scopus.com/inward/record.url?scp=85078032587&partnerID=8YFLogxK
U2 - 10.1002/er.5096
DO - 10.1002/er.5096
M3 - Article
AN - SCOPUS:85078032587
SN - 0363-907X
VL - 44
SP - 2801
EP - 2818
JO - International Journal of Energy Research
JF - International Journal of Energy Research
IS - 4
ER -