Physics‐Informed Neural Corrector for Deformation‐based Fluid Control

Author:

Tang Jingwei1,Kim Byungsoo1,Azevedo Vinicius C.2,Solenthaler Barbara1

Affiliation:

1. ETH Zürich Switzerland

2. DisneyResearch|Studios Switzerland

Abstract

AbstractControlling fluid simulations is notoriously difficult due to its high computational cost and the fact that user control inputs can cause unphysical motion. We present an interactive method for deformation‐based fluid control. Our method aims at balancing the direct deformations of fluid fields and the preservation of physical characteristics. We train convolutional neural networks with physics‐inspired loss functions together with a differentiable fluid simulator, and provide an efficient workflow for flow manipulations at test time. We demonstrate diverse test cases to analyze our carefully designed objectives and show that they lead to physical and eventually visually appealing modifications on edited fluid data.

Publisher

Wiley

Subject

Computer Graphics and Computer-Aided Design

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