Ruiz-Díaz et al., 2024 - Google Patents
Two-phase oil and water flow pattern identification in vertical pipes applying long short-term memory networksRuiz-Díaz et al., 2024
View HTML- Document ID
- 13027169862161960381
- Author
- Ruiz-Díaz C
- Quispe-Suarez B
- González-Estrada O
- Publication year
- Publication venue
- Emergent Materials
External Links
Snippet
Accurate biphasic flow pattern recognition is essential in the design of coatings for the oil and gas sector because it enables engineers to create materials that are tailored to specific flow conditions. This results in enhanced corrosion protection, erosion resistance, flow …
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