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Differentiable Fluids with Solid Coupling for Learning and Control
2021
AAAI Conference on Artificial Intelligence
We introduce an efficient differentiable fluid simulator that can be integrated with deep neural networks as a part of layers for learning dynamics and solving control problems. It offers the capability to handle one-way coupling of fluids with rigid objects using a variational principle that naturally enforces necessary boundary conditions at the fluid-solid interface with sub-grid details. This simulator utilizes the adjoint method to efficiently compute the gradient for multiple time steps
dblp:conf/aaai/TakahashiLQL21
fatcat:4sx3hjgul5g2jkucebkx4yuyfu