Time and Frequency Domain Health Indicators for Capacity Prediction of Lithium-ion Battery

Author(s):  
Ma'd El-Dalahmeh ◽  
Prudhive Thummarapally ◽  
Maher Al-Greer ◽  
Mo'Ath El-Dalahmeh
Author(s):  
Tao Chen ◽  
Ciwei Gao ◽  
Hongxun Hui ◽  
Qiushi Cui ◽  
Huan Long

Lithium-ion battery-based energy storage systems have been widely utilized in many applications such as transportation electrification and smart grids. As a key health status indicator, battery performance would highly rely on its capacity, which is easily influenced by various electrode formulation parameters within a battery. Due to the strongly coupled electrical, chemical, thermal dynamics, predicting battery capacity, and analysing the local effects of interested parameters within battery is significantly important but challenging. This article proposes an effective data-driven method to achieve effective battery capacity prediction, as well as local effects analysis. The solution is derived by using generalized additive models (GAM) with different interaction terms. Comparison study illustrate that the proposed GAM-based solution is capable of not only performing satisfactory battery capacity predictions but also quantifying the local effects of five important battery electrode formulation parameters as well as their interaction terms. Due to data-driven nature and explainability, the proposed method could benefit battery capacity prediction in an efficient manner and facilitate battery control for many other energy storage system applications.


Energies ◽  
2020 ◽  
Vol 13 (4) ◽  
pp. 830 ◽  
Author(s):  
Zhengyu Liu ◽  
Jingjie Zhao ◽  
Hao Wang ◽  
Chao Yang

An accurate lithium-ion battery state of health (SOH) estimate is a key factor in guaranteeing the reliability of electronic equipment. This paper proposes a new method that is based on an indirect enhanced health indicator (HI) and uses support vector regression (SVR) to estimate SOH values. First, three original features that can describe the dynamic changes of the battery charging and discharging processes are extracted. Considering the coupling relationship between pairs of the original health indicators, we use the differential evolution (DE) algorithm to optimize their corresponding feature parameters and combine them to form an enhanced health indicator. Second, this paper modifies the kernel function of the SVR model to describe the trend of SOH as the number of cycles increases, with simultaneous hyperparameters optimization via DE algorithm. Third, the proposed model and other published methods are compared in terms of accuracy on the same NASA datasets. We also evaluated the generalization performance of the model in dynamic discharging experiments. The simulation results demonstrate that the proposed method can provide more accurate SOH estimation values.


Energies ◽  
2013 ◽  
Vol 6 (6) ◽  
pp. 3082-3096 ◽  
Author(s):  
Yi Chen ◽  
Qiang Miao ◽  
Bin Zheng ◽  
Shaomin Wu ◽  
Michael Pecht

2021 ◽  
Vol 36 ◽  
pp. 102371
Author(s):  
C. Fan ◽  
K. O’Regan ◽  
L. Li ◽  
E. Kendrick ◽  
W.D. Widanage

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