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[Untitled]
- Source :
- Journal of Thermophysics and Heat Transfer.
-
Abstract
- Methane is considered being a good choice as a propellant for future reusable launch systems. However, the heat transfer prediction for supercritical methane flowing in cooling channels of a regeneratively cooled combustion chamber is challenging. Because accurate heat transfer predictions are essential to design reliable and efficient cooling systems, heat transfer modeling is a fundamental issue to address. Advanced computational fluid dynamics (CFD) calculations achieve sufficient accuracy, but the associated computational cost prevents an efficient integration in optimization loops. Surrogate models based on artificial neural networks (ANNs) offer a great speed advantage. It is shown that an ANN, trained on data extracted from samples of CFD simulations, is able to predict the maximum wall temperature along straight rocket engine cooling channels using methane with convincing precision. The combination of the ANN model with simple relations for pressure drop and enthalpy rise results in a complete reduced order model, which can be used for numerically efficient design space exploration and optimization.
- Subjects :
- Regenerative cooling
Computer science
Enthalpy
Aerospace Engineering
02 engineering and technology
Computational fluid dynamics
01 natural sciences
Methane
010305 fluids & plasmas
chemistry.chemical_compound
0203 mechanical engineering
0103 physical sciences
Aerospace engineering
Fluid Flow and Transfer Processes
Pressure drop
Propellant
business.industry
Mechanical Engineering
Condensed Matter Physics
Supercritical fluid
020303 mechanical engineering & transports
chemistry
Space and Planetary Science
Heat transfer
Rocket engine
Combustion chamber
business
Subjects
Details
- ISSN :
- 15336808
- Database :
- OpenAIRE
- Journal :
- Journal of Thermophysics and Heat Transfer
- Accession number :
- edsair.doi...........77f27199bf0e3b8b6582618dbf9a0215