Differentiable Fluids with Solid Coupling for Learning and Control

Tetsuya Takahashi, Junbang Liang, Yi-Ling Qiao, Ming C. Lin
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
more » ... fluid simulation with user defined objective functions. We demonstrate the effectiveness of our method for solving inverse and control problems on fluids with one-way coupled solids. Our method outperforms the previous gradient computations, state-of-the-art derivative-free optimization, and model-free reinforcement learning techniques by at least one order of magnitude.
dblp:conf/aaai/TakahashiLQL21 fatcat:4sx3hjgul5g2jkucebkx4yuyfu