Degradation Diagnosis and Control Strategy for a Diesel Hybrid Powertrain Considering State of Health
Abstract
:1. Introduction
2. P2 HEV Modelling with NN Engine Model Simplification
2.1. Vehicle Model
2.2. Traction Motor Model
2.3. Battery Model
2.4. Diesel Engine Model
2.4.1. Model Building
2.4.2. Model Verification
2.5. Rule-Based Hybrid System Operation Mode
3. HEV Degradation Prognostic Method
3.1. GRA
- Set up a matrix of m × n data series to construct the evaluation index system, where n represents the number of samples and m represents the number of features;
- Use the sequence from normal operation as the reference sequence and comparison standard;
- Different feature signals often have different dimensions. Use normalization to scale the data to a uniform range, enabling easier comparison and processing across different features.
- Calculate gray correlation coefficients one by one using Equation (5):
- 5.
- Calculate the correlation degree one by one using Equation (6):
3.2. Feature Signals Selection
3.3. Weight Determination Based on PCA
- Form a matrix from the raw data using Equation (7):
- 2.
- Normalize the original data matrix to obtained a new data matrix A using Equation (8):
- 3.
- Then, the correlation coefficient matrix C of the original data is calculated, which is the covariance matrix of the normalized data, as shown in Equation (9):
- 4.
- Compute the eigenvalues λj using Equation (10):
- 5.
- The cumulative contribution rate M is calculated by Equation (11) and the number of principal components k will be determined by it, such that the cumulative contribution M reaches the predetermined value
- 6.
- Sort the eigenvalues in descending order, and select the eigenvector corresponding to the largest eigenvalue as the weight.
3.4. Count-Based Degradation Confirmation
4. PHM Strategy Study
4.1. MPC
4.1.1. Principle
- Reference trajectory: The desired output value of the controlled object, that is, the target value;
- Predictive model: Changes in the system in a relatively short time domain can be predicted, making the control system prospective. The dynamic characteristics of the controlled object can be retained to reduce sharp changes in the output of the controlled object in the control process, reduce overshoot, and ensure the subsequent effect of the target.
- Rolling optimization: Within a limited prediction horizon, the optimal control sequence is obtained that minimizes the objective function while satisfying constraints. Only the first step is applied, then the horizon shifts forward by one step, repeating the process for rolling optimization.
- Feedback correction: To reduce the impact of prediction errors and other disturbances, corrections are made by comparing the actual values with the predicted values, improving the system’s robustness.
4.1.2. Problem Construction
4.2. Prediction Model Based on LSTM
4.3. Simulation of PHM
Simulation Process
- The control layer first receives feature signals from the model. It continuously calculates the system’s health index to assess the system state. Degradation is identified using a counting-based method, where a degradation label is generated: 0 indicates no degradation, and 1 indicates a degradation;
- When the system health index starts to decline, the LSTM-MPC-based power redistribution strategy kicks in. It receives feature signals and pre-calculates the accelerator pedal position correction coefficient. Upon degradation confirmation, this correction coefficient is used to adjust the accelerator pedal position, allowing the system to operate with the degradation;
- If no degradation is detected, the system continues to operate using the rule-based control strategy.
5. Result and Discussion
5.1. Degradation Case Setup
5.2. Weight Calculation (Off-Line)
5.3. Performance Under Different Degradation Cases
5.3.1. Battery Degradation
5.3.2. Engine Degradation
5.3.3. Combined Case
6. Conclusions
- A physical P2 HEV model with a rule-based controller was built. The diesel engine sub-model was simplified by using NN to meet the requirement of real-time performance for degradation prognostics.
- Considering real-world HEV sensor data, the GRA-PCA-based algorithm for degradation prognostics was used. The method showed good anti-noise ability and fast responsibility with 2s triggered by the health index.
- PHM case studies were performed and LSTM-MPC-based degradation tolerance strategies were validated. The optimization targets were the best vehicle speed tracing with less degradation in energy consumption.
- The result shows that the energy consumption remained nearly unchanged for the engine degradation case. For the battery degradation case, the tracing error was reduced by 11.7% with 4.3% more energy consumption. For combined degradation, the strategy achieved a 12.3% tracing error reduction with 3.7% more energy consumption. The suggested PHM method guaranteed vehicle power performance under degradation situations.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
List of Abbreviations and Symbols
Abbreviations | Meaning | Symbols | Meaning |
HEV | Hybrid electric vehicles | Exhaust temperature | |
DD | Degradation diagnosis | Accelerator pedal position | |
PHM | Prognostics and Health Management | Intake temperature | |
NN | Neural network | Intake pressure | |
GRA | Gray relation analysis | Main Voltage | |
PCA | Principal component analysis | Main Current | |
LSTM | Long short-term memory | Battery temperature | |
MPC | Model predictive control | Vehicle speed | |
SOC | State of charge |
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Parameter | Value |
---|---|
Curb weight (kg) | 18,000 |
Drag coefficient (-) | 0.55 |
Rolling resistance coefficient (-) | 0.0095 |
Windward area (m2) | 6.6 |
Tire radius (m) | 0.473 |
Final drive ratio | 7.5 |
Maximum engine speed (r/min) | 2500 |
Motor rated power (kW) | 60 |
Motor peak power (kW) | 168 |
Motor maximum torque (N·m) | 2000 |
Battery rated voltage (V) | 400 |
Battery rated capacity (Ah) | 60 |
Diesel engine maximum power (kW) | 147 |
Diesel engine maximum torque (N·m) | 692 |
Mode | Battery | ICE | Switching Condition |
---|---|---|---|
Electric-only | discharge | Off | |
Diesel-only | Off | On | |
Hybrid | discharge | On | |
In-motion charging | charge | On | |
Regenerative braking | charge | Off |
Component | Feature Signal | Unit | |
---|---|---|---|
Diesel engine | Exhaust temperature | °C | |
Accelerator pedal position | % | ||
Intake temperature | °C | ||
Intake pressure | kPa | ||
Battery | Main voltage | V | |
Main current | A | ||
Battery temperature | °C | ||
Vehicle | Vehicle speed | Km/h |
Normal | Battery Degradation | ||
---|---|---|---|
Rule-Based | LSTM-MPC | ||
Battery energy consumption (kW·h) | 0.59 | 0.59 | 0.28 |
Fuel consumption (g) | 138.80 | 142.30 | 191.30 |
Overall energy consumption (L/100 km) | 27.51 | 29.55 | 30.81 |
Normal | Battery Degradation | ||
---|---|---|---|
Rule-Based | LSTM-MPC | ||
Battery energy consumption (kW·h) | 0.59 | 0.68 | 1.00 |
Fuel consumption (g) | 138.80 | 144.40 | 103.97 |
Overall energy consumption (L/100 km) | 27.51 | 29.56 | 28.27 |
Normal | Battery Degradation | ||
---|---|---|---|
Rule-Based | LSTM-MPC | ||
Battery energy consumption (kW·h) | 0.59 | 0.65 | 0.52 |
Fuel consumption (g) | 138.80 | 150.13 | 172.88 |
Overall energy consumption (L/100 km) | 27.51 | 31.73 | 32.90 |
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Tang, J.; Liu, B.; Fan, W.; Zhong, D.; Liu, L. Degradation Diagnosis and Control Strategy for a Diesel Hybrid Powertrain Considering State of Health. Energies 2024, 17, 5413. https://doi.org/10.3390/en17215413
Tang J, Liu B, Fan W, Zhong D, Liu L. Degradation Diagnosis and Control Strategy for a Diesel Hybrid Powertrain Considering State of Health. Energies. 2024; 17(21):5413. https://doi.org/10.3390/en17215413
Chicago/Turabian StyleTang, Jingxian, Bolan Liu, Wenhao Fan, Dawei Zhong, and Liang Liu. 2024. "Degradation Diagnosis and Control Strategy for a Diesel Hybrid Powertrain Considering State of Health" Energies 17, no. 21: 5413. https://doi.org/10.3390/en17215413
APA StyleTang, J., Liu, B., Fan, W., Zhong, D., & Liu, L. (2024). Degradation Diagnosis and Control Strategy for a Diesel Hybrid Powertrain Considering State of Health. Energies, 17(21), 5413. https://doi.org/10.3390/en17215413