State-of-Health Prediction Using Transfer Learning and a Multi-Feature Fusion Model
Abstract
:1. Introduction
- A multi-feature fusion model is proposed for SOH prediction, which can simultaneously obtain multiple features related to battery aging, and achieve more accurate prediction;
- A convolutional neural network (CNN) is used to extract battery cycle features, and battery cycle features no longer rely on manual extraction. The automatic feature extraction process enables a method for training the model through large-scale battery data, reducing the risk of poor applicability of manually extracted features;
- LSTM is used to extract battery aging features, and the historical cycle features of the battery are introduced. When the battery cycle data are disturbed by noise, the robustness of the model is improved due to the constraints of historical cycle features;
- Transfer learning is used to improve the prediction accuracy of the target task battery and reduce the training cost of the target task by transferring the features of the source task battery.
2. Related Works
3. Data
3.1. Definition of SOH
3.2. Source of Data
3.3. Data Pre-Processing
3.4. Structure of the Dataset
4. Methodologies
4.1. Convolutional Neural Network
4.2. Long Short-Term Memory
4.3. Transfer learning
5. Experiment
5.1. Configuration of Experiment
5.2. Baseline
5.3. Results of Experiment
5.4. Results of Transfer Learning
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Layer | Conv.1 | Pool.1 | Conv.2 | Pool.2 | FC.1 |
---|---|---|---|---|---|
Size of kernel | (5, 5) | (2, 2) | (5, 5) | (2, 1) | - |
Number of kernels | 6 | - | 16 | - | - |
Stride | (1, 1) | (2, 1) | (1, 1) | (2, 1) | - |
Padding | 0 | 0 | 0 | 0 | - |
Number of neurons | 5760 | 2592 | 3520 | 1760 | 16 |
Battery | Cell 2 | Cell 3 | ||||
---|---|---|---|---|---|---|
Method | CNN-LSTM | LSTM | CNN | CNN-LSTM | LSTM | CNN |
RMSPE | 0.28% | 0.53% | 0.93% | 0.24% | 0.35% | 1.62% |
MAPE | 0.21% | 0.42% | 0.88% | 0.22% | 0.28% | 1.55% |
SDE | 0.010 | 0.019 | 0.013 | 0.004 | 0.014 | 0.020 |
Battery | CNN-LSTM | LSTM | CNN | |||
---|---|---|---|---|---|---|
Transfer learning | NO | YES | NO | YES | NO | YES |
RMSPE | 0.28% | 0.24% | 0.53% | 0.45% | 0.93% | 0.43% |
MAPE | 0.21% | 0.18% | 0.42% | 0.32% | 0.88% | 0.27% |
SDE | 0.011 | 0.010 | 0.020 | 0.019 | 0.013 | 0.018 |
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Fu, P.; Chu, L.; Hou, Z.; Guo, Z.; Lin, Y.; Hu, J. State-of-Health Prediction Using Transfer Learning and a Multi-Feature Fusion Model. Sensors 2022, 22, 8530. https://doi.org/10.3390/s22218530
Fu P, Chu L, Hou Z, Guo Z, Lin Y, Hu J. State-of-Health Prediction Using Transfer Learning and a Multi-Feature Fusion Model. Sensors. 2022; 22(21):8530. https://doi.org/10.3390/s22218530
Chicago/Turabian StyleFu, Pengyu, Liang Chu, Zhuoran Hou, Zhiqi Guo, Yang Lin, and Jincheng Hu. 2022. "State-of-Health Prediction Using Transfer Learning and a Multi-Feature Fusion Model" Sensors 22, no. 21: 8530. https://doi.org/10.3390/s22218530
APA StyleFu, P., Chu, L., Hou, Z., Guo, Z., Lin, Y., & Hu, J. (2022). State-of-Health Prediction Using Transfer Learning and a Multi-Feature Fusion Model. Sensors, 22(21), 8530. https://doi.org/10.3390/s22218530