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题名

Inferring electrochemical performance and parameters of Li-ion batteries based on deep operator networks

作者
通讯作者Zhang,Dongxiao
发表日期
2023-08-15
DOI
发表期刊
ISSN
2352-152X
EISSN
2352-152X
卷号65
摘要
Li-ion battery is a complex physicochemical system that generally takes observable current and terminal voltage as input and output, while leaving some unobservable quantities, e.g., Li-ion concentration, for serving as internal variables (states) of the system. On-line estimation for the unobservable states plays a key role in battery management system since they reflect battery safety and degradation conditions. Several kinds of models that map from current to voltage have been established for state estimation, such as accurate but inefficient physics-based models, and efficient but sometimes inaccurate equivalent circuit and black-box models. To realize accuracy and efficiency simultaneously in battery modeling, we propose to build a data-driven surrogate for a battery system while incorporating the underlying physics as constraints. In this work, we innovatively treat the functional mapping from current curve to terminal voltage as a composite of operators, which is approximated by the powerful deep operator network (DeepONet). Its learning capability is firstly verified through a predictive test for Li-ion concentration at two electrodes. In this experiment, the physics-informed DeepONet is found to be more robust than the purely data-driven DeepONet, especially in temporal extrapolation scenarios. A composite surrogate is then constructed for mapping current curve and solid diffusivity to terminal voltage with three operator networks, in which two parallel physics-informed DeepONets are firstly used to predict Li-ion concentration at two electrodes, and then based on their surface values, a DeepONet is built to give terminal voltage predictions. Since the surrogate is differentiable anywhere, it is endowed with the ability to learn from data directly, which was validated by using terminal voltage measurements to estimate input parameters. The proposed surrogate built upon operator networks possesses great potential to be applied in on-board scenarios, since it integrates efficiency and accuracy by incorporating underlying physics, and also leaves an interface for model refinement through a totally differentiable model structure.
关键词
相关链接[Scopus记录]
收录类别
SCI ; EI
语种
英语
学校署名
通讯
资助项目
Shenzhen Key Laboratory of Natural Gas Hydrates[ZDSYS20200421111201738] ; China Postdoctoral Science Foundation[2020M682830]
WOS研究方向
Energy & Fuels
WOS类目
Energy & Fuels
WOS记录号
WOS:000983047700001
出版者
EI入藏号
20231613893130
EI主题词
Battery management systems ; Concentration (process) ; Deep learning ; Efficiency ; Electrodes ; Equivalent circuits ; Ions ; Mapping ; State estimation
EI分类号
Surveying:405.3 ; Ergonomics and Human Factors Engineering:461.4 ; Secondary Batteries:702.1.2 ; Control Systems:731.1 ; Production Engineering:913.1
Scopus记录号
2-s2.0-85152412256
来源库
Scopus
引用统计
被引频次[WOS]:6
成果类型期刊论文
条目标识符http://sustech.caswiz.com/handle/2SGJ60CL/528176
专题工学院_环境科学与工程学院
作者单位
1.Department of Mathematics and Theories,Peng Cheng Laboratory,Shenzhen,Guangdong,518000,China
2.School of Environmental Science and Engineering,Southern University of Science and Technology,Shenzhen,Guangdong,518055,China
3.Eastern Institute for Advanced Study,Eastern Institute of Technology,Ningbo,Zhejiang,315200,China
通讯作者单位环境科学与工程学院
推荐引用方式
GB/T 7714
Zheng,Qiang,Yin,Xiaoguang,Zhang,Dongxiao. Inferring electrochemical performance and parameters of Li-ion batteries based on deep operator networks[J]. Journal of Energy Storage,2023,65.
APA
Zheng,Qiang,Yin,Xiaoguang,&Zhang,Dongxiao.(2023).Inferring electrochemical performance and parameters of Li-ion batteries based on deep operator networks.Journal of Energy Storage,65.
MLA
Zheng,Qiang,et al."Inferring electrochemical performance and parameters of Li-ion batteries based on deep operator networks".Journal of Energy Storage 65(2023).
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