Toward Group Applications: A Critical Review of the Classification Strategies of Lithium-Ion Batteries
Abstract
:1. Introduction
2. Direct Measurement
2.1. Sorting Based on the Static Parameters of Power Batteries
2.2. Sorting Based on the Dynamic Parameters of Power Batteries
2.3. Sorting by Multiple Parameters
3. Sorting Method of Power Batteries Based on Model
3.1. Equivalent Circuit Model
3.2. Clustering Algorithm
- Initialize the clustering center or membership matrix U; set the number of clusters C and fuzzy index m; randomly initialize V (0); set the precision of convergence ε; let the number of iterations k = 0;
- Calculate the membership matrix U (k + 1);
- Calculate the clustering center V (k + 1), let k = k + 1.
3.3. Neural Network Algorithm
3.4. Statistical Methods
4. Sorting Method Based on Material Chemistry
5. Comparison and Prospect
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Method | Advantage | Disadvantages | Direction of Development |
---|---|---|---|
Sorting by static parameters | The simplest and most direct method; wide range of application; fast sorting speed. | Measure; cannot reflect battery operating characteristics. | Improve measurement methods and accuracy. |
Sorting by dynamic parameters | It can partially reflect the characteristics of the battery during operation; compared with static parameter sorting, the accuracy is higher. | It is easy to cause damage to the battery; it can only reflect the parameters of the set working conditions, and it is difficult to determine the actual working parameters. | Dynamic parameters should be as close as possible to the actual situation; reduce the impact of the test on the battery. |
Sorting by multiple parameters | The sorting accuracy is high; the consideration conditions are more comprehensive. | There are many sorting processes and long-time consumption; it is difficult to achieve large-scale sorting. | Reduce unnecessary processes and improve sorting efficiency. |
Equivalent circuit model | It can reflect the polarization phenomenon of the battery; the model is simple to establish, and a good model can ensure the sorting accuracy. | It is difficult to fully reflect the battery polarization phenomenon in actual operation. | It is difficult to fully reflect the battery polarization phenomenon in actual operation. |
Neural network algorithm | No prior knowledge and category information is required; high reliability; wide range of application. | It is easy to fall into the local optimum; the algorithm is not fully applicable and needs to be improved; the complexity is higher. | Improve the algorithm and reduce complexity. |
Clustering algorithm | Can learn independently; the speed is relatively fast. | High initial parameter requirements; requires a lot of data training. | Improve the model and reduce the number of training to meet the requirements. |
Statistical algorithm | The requirements on the model are not high; the speed is fast; it is easy to integrate with other methods. | Strict assumptions are required; abnormal parameters are difficult to handle. | |
Electrochemical parameter analysis | Sorting, according to the battery mechanism and strong persuasion; good applicability; can be applied to large batch sorting. | Electrochemical parameters are difficult to measure; laws are difficult to find. | Try to find a simpler method for measuring electrochemical parameters; look for other electrochemical parameters. |
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Li, R.; Zhang, H.; Li, W.; Zhao, X.; Zhou, Y. Toward Group Applications: A Critical Review of the Classification Strategies of Lithium-Ion Batteries. World Electr. Veh. J. 2020, 11, 58. https://doi.org/10.3390/wevj11030058
Li R, Zhang H, Li W, Zhao X, Zhou Y. Toward Group Applications: A Critical Review of the Classification Strategies of Lithium-Ion Batteries. World Electric Vehicle Journal. 2020; 11(3):58. https://doi.org/10.3390/wevj11030058
Chicago/Turabian StyleLi, Ran, Haonian Zhang, Wenrui Li, Xu Zhao, and Yongqin Zhou. 2020. "Toward Group Applications: A Critical Review of the Classification Strategies of Lithium-Ion Batteries" World Electric Vehicle Journal 11, no. 3: 58. https://doi.org/10.3390/wevj11030058
APA StyleLi, R., Zhang, H., Li, W., Zhao, X., & Zhou, Y. (2020). Toward Group Applications: A Critical Review of the Classification Strategies of Lithium-Ion Batteries. World Electric Vehicle Journal, 11(3), 58. https://doi.org/10.3390/wevj11030058