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- Physics of Fluids | AIP Publishing
Physics of Fluids features intriguing original theoretical, computational, and experimental publications to deepen our understanding of the dynamics of gases, liquids, or complex fluids
- POF - About | Physics of Fluids | AIP Publishing
Physics of Fluids is a preeminent journal devoted to publishing original theoretical, computational, and experimental contributions to the understanding of the dynamics of gases, liquids, and complex or multiphase fluids
- Physics of Fluids (PFL) | AIP Publishing
Published from 1958-1988, The Physics of Fluids published leading research in all areas of fluids and plasma physics research In 1989, the journal was split into Physics of Fluids A: Fluid Dynamics and Physics of Fluids B: Plasma Physics
- Collections | Physics of Fluids | AIP Publishing
Papers from the Institute of Non-Newtonian Fluid Mechanics Meeting, Lake Vyrnwy, 2019 Selected Papers from the 10th National Congress on Fluid Mechanics of China
- POF - Editorial Board | Physics of Fluids | AIP Publishing
Professor Institute of Fluid Mechanics Tsinghua University Beijing, China Associate Editors Ruth Cardinaels Associate Professor Department of Mechanical Engineering TU Eindhoven Eindhoven, the Netherlands Yuwei Dai (戴雨蔚) Lecturer School of Environment and Architecture University of Shanghai for Science and Technology Shanghai, China
- POF - Editorial Policies | Physics of Fluids | AIP Publishing
Physics of Fluids (PoF) publishes manuscripts containing significant new research contributions of the highest intellectual caliber Our review and editorial policy and procedures maintain PoF as the premiere international fluid mechanics journal
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- A review of deep learning for super-resolution in fluid flows
This paper conducts an extensive review and analysis of recent developments in deep learning architectures that aim to enhance the accuracy of fluid flow data interpretation
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