Scientific Machine Learning Paves Way for Rapid Rocket Engine Design - Liwaiwai
"It's not rocket science" may be a tired cliché, but that doesn't mean designing rockets is any less complicated. Time, cost and safety prohibit testing the stability of a test rocket using a physical build "trial and error" approach. But even computational simulations are extremely time consuming. A single analysis of an entire SpaceX Merlin rocket engine, for example, could take weeks, even months, for a supercomputer to provide satisfactory predictions. One group of researchers at The University of Texas at Austin is developing new "scientific machine learning" methods to address this challenge.
May-30-2020, 16:38:22 GMT
- Country:
- North America > United States > Texas > Travis County > Austin (0.27)
- Industry:
- Aerospace & Defense (0.36)
- Technology: