A Learning-Based Vehicle-Cloud Collaboration Approach for Joint Estimation of State-of-Energy and State-of-Health
Abstract
:1. Introduction
1.1. Review of SOE Estimation Methods
1.2. Review of SOH Estimation Methods
1.3. Key Contributions
- A vehicle-cloud collaboration model is developed to estimate battery state online.
- A joint estimation of battery SOE and SOH based on deep learning is proposed.
- SOH is the feedback of SOE estimates for higher accuracy.
- Macro and micro dimensions of time are used to analyze SOH and SOE.
1.4. Paper Organization
2. Vehicle-Cloud Collaboration
- The cloud platform can store a large amount of battery history data.
- When the EVs are driving in the networked road environment, they can obtain the networked information in real-time.
- The communication problem of vehicle–cloud collaboration approach is not considered.
2.1. Power Battery Modeling
2.1.1. ECM
2.1.2. Parameter Identification
2.2. Neural Network for SOE and SOH Estimation
2.2.1. Recurrent Neural Network
2.2.2. Long Short-Term Memory
2.2.3. Bi-Directional Long Short-Term Memory
2.2.4. Convolutional Neural Network
2.2.5. Bayesian Optimization
2.2.6. Joint Estimation for SOE and SOH
3. Datasets and Methodology for Battery Estimation
3.1. Description of Datasets
3.2. Methodology
4. Tests and Results
4.1. SOH Estimation Results and Discussion
4.2. SOE Estimation Results and Discussion
4.3. Comparation
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Type | Nominal Voltage | Nominal Capacity | Upper/Lower Cut-Off Voltage |
---|---|---|---|
18650 | 3.6 V | 2.54 Ah | 4.2 V/2.5 V |
Battery Number | Temperature/°C | Rated Capacity/Ahr | Termination Voltage/V | Cycles |
---|---|---|---|---|
#5 | 24 | 2 | 2.7 | 168 |
#6 | 24 | 2 | 2.5 | 168 |
#7 | 24 | 2 | 2.2 | 168 |
24 | 2 | 2.5 | 132 |
Hyperparameter | Value |
---|---|
Maximum epochs | 10 |
Minimum batch size | 16 |
Dropout value | 0.7 |
Max itration number | 10 |
Iter | Number of Layer | Number of Units | Initial Learn Rate | Regularization |
---|---|---|---|---|
1 | 2 | 174 | 0.02042 | |
2 | 2 | 200 | 0.066371 | |
3 | 3 | 64 | 0.054394 | |
4 | 1 | 68 | 0.44111 | |
5 | 3 | 197 | 0.9156 | |
6 | 1 | 87 | 0.095566 | |
7 | 1 | 54 | 0.0322 | |
8 | 1 | 62 | 0.01005 | |
9 | 4 | 113 | 0.010022 | |
10 | 1 | 61 | 0.25309 |
Type | Filter | Kernel Size | Stride | Value |
---|---|---|---|---|
Convolution | 32 | (10,1) | 1 | - |
Activation (eLu) | - | - | - | - |
Pooling | - | (10,1) | 2 | - |
Convolution | 32 | (10,1) | 1 | - |
Activation (eLu) | - | - | - | - |
Pooling | - | (10,1) | 2 | - |
Learning rate | - | - | - | 0.001 |
Minimum Batch Size | - | - | - | 30 |
Maximum Epochs | - | - | - | 60 |
Learning rate drop factor | - | - | - | 0.8 |
Gradient threshold | - | - | - | 1 |
Method | B0005 | B0006 | B0007 | Battery Test |
---|---|---|---|---|
LSTM | 0.0246 | 0.0118 | 0.03721 | 0.0204 |
CNN-LSTM | 0.0161 | 0.0102 | 0.0164 | 0.0110 |
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Mei, P.; Karimi, H.R.; Chen, F.; Yang, S.; Huang, C.; Qiu, S. A Learning-Based Vehicle-Cloud Collaboration Approach for Joint Estimation of State-of-Energy and State-of-Health. Sensors 2022, 22, 9474. https://doi.org/10.3390/s22239474
Mei P, Karimi HR, Chen F, Yang S, Huang C, Qiu S. A Learning-Based Vehicle-Cloud Collaboration Approach for Joint Estimation of State-of-Energy and State-of-Health. Sensors. 2022; 22(23):9474. https://doi.org/10.3390/s22239474
Chicago/Turabian StyleMei, Peng, Hamid Reza Karimi, Fei Chen, Shichun Yang, Cong Huang, and Song Qiu. 2022. "A Learning-Based Vehicle-Cloud Collaboration Approach for Joint Estimation of State-of-Energy and State-of-Health" Sensors 22, no. 23: 9474. https://doi.org/10.3390/s22239474
APA StyleMei, P., Karimi, H. R., Chen, F., Yang, S., Huang, C., & Qiu, S. (2022). A Learning-Based Vehicle-Cloud Collaboration Approach for Joint Estimation of State-of-Energy and State-of-Health. Sensors, 22(23), 9474. https://doi.org/10.3390/s22239474