TY - JOUR
T1 - Deep learning to predict battery voltage behavior after uncertain cycling-induced degradation
AU - Lu, Jiahuan
AU - Xiong, Rui
AU - Tian, Jinpeng
AU - Wang, Chenxu
AU - Sun, Fengchun
N1 - Publisher Copyright:
© 2023 Elsevier B.V.
PY - 2023/10/15
Y1 - 2023/10/15
N2 - Predicting battery degradation is not only beneficial for the early detection of risks but also essential for advancing research on energy chemistries. Battery degradation is highly dependent on cyclic conditions, and leads to degradation in its capacity, internal resistance, polarization, etc. Despite decades-long efforts, existing predictions are only valid for one or a few degradation components after a fixed cycling-induced degradation, providing very limited insights. Here, we extend the prediction to the exhaustive voltage responses to various current profiles after uncertain cycling-induced degradation. This is achieved by developing a novel deep-learning framework that integrates future cyclic conditions and a battery model. A long short-term memory network is designed to summarize any given variable-length future cyclic condition flexibly for prediction. The battery model ensures that predictions generalize to various current profiles. As a case study, a large dataset covering 29,760 degradation cycles from 43 lithium-ion batteries is generated under uncertain cyclic conditions for validation. The results show that, by only using data from the initial cycle, the proposed framework can achieve accurate prediction with a median root mean square error below 12.7 mV over the entire state of charge range. This work opens up a promising avenue for conventional battery models to bridge future voltage behaviors of batteries, which is extremely helpful in understanding the degradation of electrochemical energy storage devices.
AB - Predicting battery degradation is not only beneficial for the early detection of risks but also essential for advancing research on energy chemistries. Battery degradation is highly dependent on cyclic conditions, and leads to degradation in its capacity, internal resistance, polarization, etc. Despite decades-long efforts, existing predictions are only valid for one or a few degradation components after a fixed cycling-induced degradation, providing very limited insights. Here, we extend the prediction to the exhaustive voltage responses to various current profiles after uncertain cycling-induced degradation. This is achieved by developing a novel deep-learning framework that integrates future cyclic conditions and a battery model. A long short-term memory network is designed to summarize any given variable-length future cyclic condition flexibly for prediction. The battery model ensures that predictions generalize to various current profiles. As a case study, a large dataset covering 29,760 degradation cycles from 43 lithium-ion batteries is generated under uncertain cyclic conditions for validation. The results show that, by only using data from the initial cycle, the proposed framework can achieve accurate prediction with a median root mean square error below 12.7 mV over the entire state of charge range. This work opens up a promising avenue for conventional battery models to bridge future voltage behaviors of batteries, which is extremely helpful in understanding the degradation of electrochemical energy storage devices.
UR - http://www.scopus.com/inward/record.url?scp=85167603701&partnerID=8YFLogxK
U2 - 10.1016/j.jpowsour.2023.233473
DO - 10.1016/j.jpowsour.2023.233473
M3 - Article
AN - SCOPUS:85167603701
SN - 0378-7753
VL - 581
JO - Journal of Power Sources
JF - Journal of Power Sources
M1 - 233473
ER -