TY - JOUR
T1 - Neural Network-Based Li-Ion Battery Aging Model at Accelerated C-Rate
AU - Tokhi, Mohammad osman
AU - Osman, Mohammad
PY - 2023/1/29
Y1 - 2023/1/29
N2 - Lithium-ion (Li-ion) batteries are widely used in electric vehicles (EVs) because of their
high energy density, low self-discharge, and superior performance. Despite this, Li-ion batteries’
performance and reliability become critical as they lose their capacity with increasing charge and
discharging cycles. Moreover, Li-ion batteries are subject to aging in EVs due to load variations in
discharge. Monitoring the battery cycle life at various discharge rates would enable the battery
management system (BMS) to implement control parameters to resolve the aging issue. In this
paper, a battery lifetime degradation model is proposed at an accelerated current rate (C-rate).
Furthermore, an ideal lifetime discharge rate within the standard C-rate and beyond the C-rate is
proposed. The consequence of discharging at an accelerated C-rate on the cycle life of the batteries
is thoroughly investigated. Moreover, the battery degradation model is investigated with a deep
learning algorithm-based feed-forward neural network (FNN), and a recurrent neural network
(RNN) with long short-term memory (LSTM) layer. A comparative assessment of performance of
the developed models is carried out and it is shown that the LSTM-RNN battery aging model has
superior performance at accelerated C-rate compared to the traditional FNN network.
AB - Lithium-ion (Li-ion) batteries are widely used in electric vehicles (EVs) because of their
high energy density, low self-discharge, and superior performance. Despite this, Li-ion batteries’
performance and reliability become critical as they lose their capacity with increasing charge and
discharging cycles. Moreover, Li-ion batteries are subject to aging in EVs due to load variations in
discharge. Monitoring the battery cycle life at various discharge rates would enable the battery
management system (BMS) to implement control parameters to resolve the aging issue. In this
paper, a battery lifetime degradation model is proposed at an accelerated current rate (C-rate).
Furthermore, an ideal lifetime discharge rate within the standard C-rate and beyond the C-rate is
proposed. The consequence of discharging at an accelerated C-rate on the cycle life of the batteries
is thoroughly investigated. Moreover, the battery degradation model is investigated with a deep
learning algorithm-based feed-forward neural network (FNN), and a recurrent neural network
(RNN) with long short-term memory (LSTM) layer. A comparative assessment of performance of
the developed models is carried out and it is shown that the LSTM-RNN battery aging model has
superior performance at accelerated C-rate compared to the traditional FNN network.
U2 - 10.3390/batteries9020093
DO - 10.3390/batteries9020093
M3 - Article
SN - 2313-0105
VL - 9
JO - Batteries
JF - Batteries
IS - 2
M1 - 93
ER -