Research on Optimization Technology of Minimum Specific Fuel Consumption for Triple-Bypass Variable Cycle Engine
Abstract
:1. Introduction
2. Research Process
2.1. Overall Structure of Engine
2.2. Establishment of Composite Models
2.2.1. Establishment of the Kriging Model
2.2.2. Propulsion System Matrix Module
2.3. Composite Model Accuracy Verification
2.4. PSC of Minimum Specific Fuel Consumption
2.5. MPC-Based Transition State Optimization
3. Results
3.1. Composite Model’s Dynamic Accuracy
3.2. Optimization Results Based on PSM
3.3. MPC Controller Control Effect
4. Discussion
5. Conclusions
- In this paper, a new composite model modeling method is proposed, which uses the Kriging model to fit the strong nonlinear characteristics of the engine at the ground, sub-patrol, and over-patrol working points, expanding the PSM at the steady-state point to improve the real-time performance of the model.
- Based on the linear optimization algorithm, the performance optimization problem of the engine is studied, and the optimization effect is studied by taking the over-cruise state as an example, and the results show that the fuel consumption rate in this state is significantly reduced
- In order to improve the response speed of the performance optimization control algorithm, a constraint protection method based on Model Predictive Control was studied. The results show that the temperature and surge margin overshoot problems are effectively suppressed in the minimum fuel consumption mode, which can make the engine work more safely.
- In order to solve the disadvantage of MPC with a large amount of online computation, some scholars have proposed Explicit Model Predictive Control (EMPC) to convert the online computation of MPC into offline computation. However, because the state quantity of the high-through-flow engine includes three speed quantities, the method of employing EMPC leads to more than 100 state partitions of a single steady-state point, which greatly increases the amount of offline computation so that it cannot be directly applied to aero-engine predictive control. Thus, it is a feasible strategy to reduce the model order by using the method of model order reduction first and then using the method of EMPC.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variable Name | Variable Meaning |
---|---|
Fuel flow of burner | |
Fuel flow of multifunctional burner | |
Guide angle of bypass injector 1 | |
Guide angle of bypass injector 2 | |
Guide angle of IPT | |
Guide angle of LPT | |
Throat area of nozzle |
0.5110 | 0.0080 | −0.0190 | 0.0560 | 0.0020 | 0.9040 | −0.0010 | ||
1.0000 | −0.2700 | 0.0430 | −0.0660 | 0.0060 | 0.4970 | 0.0010 | ||
0.9990 | −0.0110 | −0.0050 | 0.0030 | −0.0050 | 0.3220 | 0 | ||
0.3180 | 0.4900 | −0.0050 | 0.0150 | 0 | 0.2140 | 0 | ||
0.5930 | −0.0460 | 0.0030 | −0.0080 | 0 | 0.2140 | 0 | ||
0.2280 | −0.0910 | −0.0150 | 0.0040 | −0.0010 | 0.8720 | −0.0010 | ||
−0.4270 | −0.0310 | 0.0520 | −0.0330 | 0.0090 | −0.8750 | 0.0010 | ||
0.4870 | −1.0010 | −0.1110 | 0.1980 | 0.2940 | −0.2930 | 0.0110 | ||
−0.0740 | 0.0420 | −0.0060 | 0.0090 | −0.0030 | −0.0470 | 0 | ||
−0.1960 | 0.5120 | 0.0120 | −0.0320 | −0.0320 | −0.4530 | 0.0010 |
0.08 | 0.085 | 0.09 | 0.095 | 0.1 | ||
---|---|---|---|---|---|---|
2360 | 1.74% | 1.74% | 1.74% | 1.74% | 1.74% | |
2365 | 1.91% | 1.91% | 1.91% | 1.91% | 1.91% | |
2370 | 2.08% | 2.08% | 2.08% | 2.08% | 2.08% | |
2375 | 2.25% | 2.25% | 2.25% | 2.25% | 2.25% | |
2380 | 2.37% | 2.37% | 2.37% | 2.37% | 2.37% | |
2385 | 2.38% | 2.38% | 2.38% | 2.38% | 2.38% | |
2390 | 2.40% | 2.40% | 2.40% | 2.40% | 2.40% | |
2395 | 2.42% | 2.42% | 2.42% | 2.42% | 2.42% | |
2400 | 2.44% | 2.44% | 2.44% | 2.44% | 2.44% | |
2405 | 2.45% | 2.45% | 2.45% | 2.45% | 2.45% | |
2410 | 2.48% | 2.48% | 2.48% | 2.48% | 2.48% | |
2415 | 2.51% | 2.51% | 2.51% | 2.51% | 2.51% | |
2420 | 2.55% | 2.55% | 2.55% | 2.55% | 2.55% | |
2425 | 2.56% | 2.56% | 2.56% | 2.56% | 2.56% |
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Guo, H.; Zhang, Y.; Yu, B. Research on Optimization Technology of Minimum Specific Fuel Consumption for Triple-Bypass Variable Cycle Engine. Aerospace 2025, 12, 10. https://doi.org/10.3390/aerospace12010010
Guo H, Zhang Y, Yu B. Research on Optimization Technology of Minimum Specific Fuel Consumption for Triple-Bypass Variable Cycle Engine. Aerospace. 2025; 12(1):10. https://doi.org/10.3390/aerospace12010010
Chicago/Turabian StyleGuo, Haonan, Yuhua Zhang, and Bing Yu. 2025. "Research on Optimization Technology of Minimum Specific Fuel Consumption for Triple-Bypass Variable Cycle Engine" Aerospace 12, no. 1: 10. https://doi.org/10.3390/aerospace12010010
APA StyleGuo, H., Zhang, Y., & Yu, B. (2025). Research on Optimization Technology of Minimum Specific Fuel Consumption for Triple-Bypass Variable Cycle Engine. Aerospace, 12(1), 10. https://doi.org/10.3390/aerospace12010010