State-of-Health Estimation of Li-ion Batteries in Electric Vehicle Using IndRNN under Variable Load Condition
Abstract
:1. Introduction
- A new approach is adopted to identify and extract a set of input features associated with the battery degradation process;
- A data-driven based SOH estimation using an independently recurrent neural network (IndRNN) is developed with the help of vital battery parameters collected from LIBs;
- The effectiveness of the proposed IndRNN based SOH estimation approach is verified by comparing it with similar RNN architectures, and the IndRNN resulted in having a much lower mean square error (RMSE) rate of 1.33%.
2. Related Work
Data-Driven Approach for State-of-Health (SOH) Estimation
3. NASA’s Randomized Battery Usage Dataset
3.1. Random Walk (RW) Profile Generation
3.2. Reference Charge and Discharge Profile
4. Framework for SOH Estimation
4.1. Input Feature Extraction
4.2. Independently Recurrent Neural Network (IndRNN) Based SOH Estimation
4.3. Performance Evaluation Criteria
4.4. Experimental Settings
5. SOH Estimation Results and Discussion
5.1. Effect of Time Step Size on IndRNN for SOH Estimation
5.2. Effect of Time-Step Size on IndRNN for SOH Estimation of up to 80% of SOH
5.3. SOH Estimation Results Comparison between IndRNN, Gated Recurrent Unit (GRU) and Long Short-Term Memory (LSTM)
5.4. SOH Estimation Results Comparison Between IndRNN, GRU and LSTM up to 80% of SOH
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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SOH Method | Algorithm/Approach Used | Advantages | Disadvantages | Improvement Required | SOH Error % | References |
---|---|---|---|---|---|---|
EIS | Theory of evidence (ToE) |
|
|
| 3.73% | [16] |
OCV | Parameter varying approach (PVA) |
|
|
| 0.5% to 3% | [18] |
CC | Linear function and operations |
|
|
| 1.08% (after 28th cycle when correction is applied) | [20] |
ECM | Incremental capacity analysis based model |
|
|
| Proprietary dataset: 0.12% NASA dataset: –0.57% to 0.19 | [21] |
EchM | Reduced order single particle model (SPM), Brute force nearest neighbour search (NNS) |
|
|
| - | [24] |
KF | Forgetting factor recursive least square |
|
|
| 1.52% | [25] |
PF | Monte Carlo sampling methods |
|
|
| - | [28] |
LS | Ordinary least squares and total least squares |
|
|
| <5% | [29] |
FL | Center-of-gravitytechnique |
|
|
| <2% | [31] |
SVM | Grid search method, Radial basis function |
|
|
| <2% | [34] |
ANN | Multilayer perceptron (MLP) |
|
|
| <1.5% | [37] |
RNN | Non-linear autoregressive with exogenous inputs (NARX),global feedback theorem (GFT) |
|
|
| 0.1 to 0.45% (For LiFePO4) | [38] |
LSTM-RNN | Snapshot-based approach, Noise-robust approach |
|
|
| <2.46% | [39] |
Battery Key Characteristics | Specifications |
---|---|
Manufacturer | LG Chem |
Battery chemistry | 18,650 Lithium cobalt oxide vs. graphite |
Nominal capacity | 2100 mAh |
Lower cut-off voltage | 3.2 V |
Upper threshold voltage | 4.2 V |
Hyperparameters | Initialized Values |
---|---|
Time step | 10 |
Number of neuron in IndRNN hidden layer | 100 |
Number of IndRNN hidden layer | 1 |
Optimizer | Adam |
Learning rate | 0.0001 |
Batch size | 10 |
Epoch | 100 |
Activation function | ReLU |
Time Step Size | RMSE (%) | MAE (%) | MAX (%) |
---|---|---|---|
5 | 3.0149 | 2.4624 | 6.8403 |
10 | 2.6146 | 2.2649 | 4.94 |
15 | 1.8742 | 1.5639 | 3.5786 |
20 | 1.7362 | 1.3796 | 3.7795 |
Time Step Size | RMSE (%) | MAE (%) | MAX (%) |
---|---|---|---|
5 | 2.6639 | 2.2545 | 5.1516 |
10 | 2.2775 | 1.8581 | 4.3752 |
15 | 1.3369 | 1.1403 | 2.5943 |
20 | 2.0607 | 1.7632 | 3.4287 |
RNN Type | RMSE (%) | MAE (%) | MAX (%) |
---|---|---|---|
IndRNN | 1.8742 | 1.5639 | 3.5786 |
GRU | 2.6678 | 2.2979 | 4.8978 |
LSTM | 3.1376 | 2.6754 | 5.8633 |
RNN Type | RMSE (%) | MAE (%) | MAX (%) |
---|---|---|---|
IndRNN | 1.3369 | 1.1403 | 2.5943 |
GRU | 2.5376 | 2.3890 | 3.8415 |
LSTM | 3.1579 | 2.7251 | 4.6522 |
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Venugopal, P.; T., V. State-of-Health Estimation of Li-ion Batteries in Electric Vehicle Using IndRNN under Variable Load Condition. Energies 2019, 12, 4338. https://doi.org/10.3390/en12224338
Venugopal P, T. V. State-of-Health Estimation of Li-ion Batteries in Electric Vehicle Using IndRNN under Variable Load Condition. Energies. 2019; 12(22):4338. https://doi.org/10.3390/en12224338
Chicago/Turabian StyleVenugopal, Prakash, and Vigneswaran T. 2019. "State-of-Health Estimation of Li-ion Batteries in Electric Vehicle Using IndRNN under Variable Load Condition" Energies 12, no. 22: 4338. https://doi.org/10.3390/en12224338
APA StyleVenugopal, P., & T., V. (2019). State-of-Health Estimation of Li-ion Batteries in Electric Vehicle Using IndRNN under Variable Load Condition. Energies, 12(22), 4338. https://doi.org/10.3390/en12224338