Flow over an espresso cup: inferring 3-D velocity and pressure fields from tomographic background oriented Schlieren via physics-informed neural networks
Shengze Cai(ZheJiang Institute For Food and Drug Control), George Em Karniadakis(Brown University), Frederik Fuest(LaVision (Germany)), Zhicheng Wang(Brown University), Callum Gray, Young Jin Jeon(LaVision (Germany))
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