Multiparameter Optimization Framework of Cyberphysical Systems: A Case Study on Energy Saving of the Automotive Engine
Abstract
:1. Introduction
2. Related Works
3. Methodology
3.1. Framework
3.2. Optimization Algorithm
- (1)
- Traditional genetic algorithm requires a strict fitness function to limit the population range. The precise data label is required to classify the data. CGA has no limitation of strict population range definition.
- (2)
- Traditional genetic algorithm is an optimization method that only focuses on the final results but lacks the analysis and statistics of data changes in the iterative process. CGA facilitates the independent optimization analysis of the population and explores the iterative rule.
- (3)
- The fitness function of traditional genetic algorithm often has a significant impact on the optimization results. For example, in the process of energy-saving optimization of EGR, LIVC, ignition advance angle, and other parameters, a multiparameter design will not only affect the fuel consumption but also affect the torque. If the torque is limited to a wide range in the fitness function, it will result in a comparison of BSFC of different loads, which will affect the judgment of the optimal value. However, if the torque is limited to a narrow range in the fitness function, the optimization of the different torques requires repeated genetic algorithm calculations, which increases the amount of calculation. CGA can realize the energy-saving optimization of different loads and improve optimization efficiency in the process of continuous iterative optimization. The optimization objective of CGA is to automatically obtain the lowest BSFC under different loads by optimizing engine control parameters such as LIVC angle, EGR, ignition advance angle, and air–fuel ratio, and avoid engine knocking. If the traditional genetic algorithm is used, the fitness function should consider the torque changes, and the BSFC for different torques has to be optimized for its own genetic algorithm. The CGA optimization costs less time.
3.3. Optimization Objectives
3.4. Digital Model and Physical Test Verification
4. Results
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Engine Parameters | Value |
---|---|
Displayed volume | 1.8 L |
Stroke | 84.1 mm |
Bore | 82.5 mm |
Connecting Rod | 146 mm |
Compression ratio | 9.6 |
Power Max. (kW/rpm) | 118/5000 |
Torque Max. (N·m/rpm) | 250/2000 |
Number of valves | 4 (2 intake, 2 exhaust) |
Injection | GDI |
Fuel | Gasoline #96 of Chinese Standard |
Speed/rpm | 1000 | 1500 | 2000 | 2500 | 3000 | 3500 | 4000 | 4500 | 5000 | 5500 | 6000 |
---|---|---|---|---|---|---|---|---|---|---|---|
A/F | 15.2 | 14.5 | 14.3 | 14.0 | 13.4 | 13.0 | 12.4 | 11.9 | 11.9 | 11.9 | 12.1 |
Atmospheric pressure/MPa | 0.1 | 0.1 | 0.1 | 0.1 | 0.1 | 0.1 | 0.1 | 0.1 | 0.1 | 0.1 | 0.1 |
Temperature/°C | 20 | 20 | 20 | 20 | 20 | 20 | 20 | 20 | 20 | 20 | 20 |
Ignition angle/°CA | −7.5 | −13.3 | −4 | −1 | 6.2 | 9.2 | 10.8 | 13.0 | 15.5 | 18.6 | 23.7 |
Intake mass/g/s | 19.0 | 41.9 | 65.0 | 65.7 | 79.3 | 91.6 | 103.3 | 120. | 126.7 | 131.8 | 130.9 |
IVO/°CA | −22 | −22 | −15.7 | −12.5 | −12 | −9 | −0.3 | 4.5 | 8.3 | 9.5 | 9.7 |
Throttle percentage/% | 100 | 100 | 100 | 100 | 100 | 100 | 100 | 100 | 100 | 100 | 100 |
Operating Point | Statistical Number | The Clustering Center/N·m | EGR Rate |
---|---|---|---|
1 | 91 | 55 | 14.6% |
2 | 253 | 97.1 | 13.6% |
3 | 190 | 120.9 | 15% |
4 | 158 | 150 | 14.5% |
5 | 166 | 177.6 | 15% |
6 | 69 | 206.6 | 5% |
7 | 33 | 247.5 | 7% |
8 | 45 | 305.7 | 2.6% |
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Sun, Y.; Zhu, Z.; Du, A.; Chen, X. Multiparameter Optimization Framework of Cyberphysical Systems: A Case Study on Energy Saving of the Automotive Engine. Actuators 2021, 10, 330. https://doi.org/10.3390/act10120330
Sun Y, Zhu Z, Du A, Chen X. Multiparameter Optimization Framework of Cyberphysical Systems: A Case Study on Energy Saving of the Automotive Engine. Actuators. 2021; 10(12):330. https://doi.org/10.3390/act10120330
Chicago/Turabian StyleSun, Youding, Zhongpan Zhu, Aimin Du, and Xinwen Chen. 2021. "Multiparameter Optimization Framework of Cyberphysical Systems: A Case Study on Energy Saving of the Automotive Engine" Actuators 10, no. 12: 330. https://doi.org/10.3390/act10120330
APA StyleSun, Y., Zhu, Z., Du, A., & Chen, X. (2021). Multiparameter Optimization Framework of Cyberphysical Systems: A Case Study on Energy Saving of the Automotive Engine. Actuators, 10(12), 330. https://doi.org/10.3390/act10120330