Rapid Estimation of Static Capacity Based on Machine Learning: A Time-Efficient Approach
Abstract
:1. Introduction
1.1. A Review of SOH Estimation Method for Li-Ion Batteries
1.2. Structure of the Paper
2. Experimental Setup and Methodology
2.1. Experimental Configuration
2.2. Data Analysis
2.2.1. Transient Voltage Response Analysis
2.2.2. Incremental Capacity Analysis
2.2.3. Differential Voltage Analysis
3. Deep Learning-Based Estimation Methodology
4. Analysis Results
5. Conclusions and Future Study
- (1)
- Exploration of the applicability of various cell compositions and shapes: Although this paper has focused on 21,700 cylindrical Li-ion batteries, it is necessary to extend the applicability of the proposed method to various shapes of battery cells, such as pouch, prismatic, etc., and cells with various cell performances. Furthermore, it would be interesting to evaluate the impact of different battery rheologies and chemical compositions on the model to expand its applicability at industrial sites.
- (2)
- Analysis of estimation precision under various temperature conditions considering the use environment of electric vehicles: In this study, experiments and data acquisition were conducted in a room-temperature environment, which is the setting for the actual retired battery treatment process. However, since the distribution and operating environment of electric vehicles represent different environments around the world and aged batteries may have different electrical and electrochemical characteristics under different temperature conditions, it is necessary to conduct experiments and verification considering aged batteries under different temperature conditions to expand and improve the proposed method.
- (3)
- Practical applications of the proposed method and strategy formulation: The objective of this study is to contribute to the optimization of the battery recycling process and the promotion of sustainable resource utilization. In future research, it is necessary to further investigate the applicability of the research results by formulating strategies for the commercial application of these models to promote practicality throughout the battery reuse industry.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Parameter | Value | Unit |
---|---|---|
Nominal capacity | 4000 | mAh |
Charging cut-off voltage | 4.2 ± 0.05 | V |
Nominal voltage | 3.6 | V |
Discharging cut-off voltage | 2.5 | V |
Cell weight | 70.0 | g |
Category | Specification | Unit |
---|---|---|
Rated voltage | 0~5 | V |
Rated current | 20/each channel (40 CH) | A |
Data processing | 10 | ms |
Accuracy | Full Scale ± 0.05 | % |
Voltage, Current | Full Scale ± 0.1 | |
Power | Full Scale ± 0.2 |
Experiment Step | 1 C 6 min | 1 C 3 min | 1 C 1 min | Unit | |
---|---|---|---|---|---|
Measurement Step | * TR + DCIR | 15 | 25 | 64 | Hour |
Static Capacity | 25 | 25 | 25 | Hour | |
Aging Step | 100 | 100 | 100 | Hour | |
Total (100 cycle) | 140 | 150 | 189 | Hour | |
Total (1000 cycle) | 1400 | 1500 | 1890 | Hour |
Parameter | Value Setting |
---|---|
Optimizer | Adam |
Learning Rate | 0.01 |
Mini Batch Size | 30 |
Epochs | 1500 |
Dropout Rate | 0.1 |
Value | 6 min Data | 3 min Data | 1 min Data | Unit | |
---|---|---|---|---|---|
MAE | Max | 0.03109 | 0.025189 | 0.024069 | - |
Min | 0.010126 | 0.010138 | 0.010316 | - | |
Average | 0.018463 | 0.015386 | 0.0153181 | - | |
MSE | Max | 0.001667 | 0.0001 | 0.000637 | - |
Min | 0.000151 | 0.000178 | 0.000153 | - | |
Average | 0.000644 | 0.000403 | 0.000283 | - | |
RMSE | Max | 4.0816 | 3.1677 | 2.5255 | % |
Min | 1.2289 | 1.3343 | 1.2385 | % | |
Average | 2.4909 | 1.9805 | 1.6609 | % |
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Son, Y.; Choi, W. Rapid Estimation of Static Capacity Based on Machine Learning: A Time-Efficient Approach. Batteries 2024, 10, 191. https://doi.org/10.3390/batteries10060191
Son Y, Choi W. Rapid Estimation of Static Capacity Based on Machine Learning: A Time-Efficient Approach. Batteries. 2024; 10(6):191. https://doi.org/10.3390/batteries10060191
Chicago/Turabian StyleSon, Younggill, and Woongchul Choi. 2024. "Rapid Estimation of Static Capacity Based on Machine Learning: A Time-Efficient Approach" Batteries 10, no. 6: 191. https://doi.org/10.3390/batteries10060191
APA StyleSon, Y., & Choi, W. (2024). Rapid Estimation of Static Capacity Based on Machine Learning: A Time-Efficient Approach. Batteries, 10(6), 191. https://doi.org/10.3390/batteries10060191