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Transient Optimization of an Electrified Gas Turbine Engine Using Machine Learning
- Publication Year :
- 2024
- Publisher :
- United States: NASA Center for Aerospace Information (CASI), 2024.
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Abstract
- Gas turbine engines are designed with sufficient margin to prevent stall under normal operating conditions throughout their life. This compromise ensures that during rapid accelerations, compressor operation remains stable, but at the cost of efficiency and thrust responsiveness. The design margin encompasses multiple sources of uncertainty and systematic deviances from the operating line, the largest of which is the transient allowance. This set-aside accounts for the temporary incoordination of the engine spools during an acceleration while still enabling it to meet the certification requirement to accelerate from low to high power within a specified time, and without experiencing overtemperature, surge, stall, or other detrimental factors. Electrification of the powertrain provides the opportunity to address this reserve and truly optimize the design. The addition of electric machines inherent in hybrid propulsion concepts offers a means to interact with the engine shafts such that the necessary margin can be reduced, which can positively impact the engine design. By adjusting the amount of power extracted from or injected to the engine spools by the electric machines during transient operation, excursions from the operating line can be minimized. Past work using a dynamic engine model has shown that optimization of the fuel flow schedule during acceleration can reduce the required margin while still meeting the time requirement, and results are further improved when combined with power injection and extraction. The current work uses machine learning through a genetic algorithm to address the problem holistically by concurrently optimizing the electric machine power command and fuel flow acceleration schedule using an updated, higher fidelity version of the original engine model.
- Subjects :
- Aeronautics (General)
Cybernetics, Artificial Intelligence and Robotics
Subjects
Details
- Language :
- English
- Database :
- NASA Technical Reports
- Notes :
- 109492.02.03.06.05.01
- Publication Type :
- Report
- Accession number :
- edsnas.20240000148
- Document Type :
- Report