An Adjoint Method for Differentiable Fluid Simulation on Flow Maps

1Georgia Institute of Technology
2Dartmouth College
3Tsinghua University
4University of Maryland
SIGGRAPH Asia 2025
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Demonstration of our differentiable fluid simulation on flow maps using our adjoint solver. Top: A sequence of 2D fluid shape optimizations demonstrating smooth morphing between target silhouettes. Middle: 3D fluid control with multiple keyframes to guide a 3D letter morphing from "G" to "R" to "A" to "P" to "H". Bottom: A vortex dynamics inference task that predicts future flow evolution from a sequence of observed past images.

Abstract

This paper presents a novel adjoint solver for differentiable fluid simulation based on bidirectional flow maps. Our key observation is that the forward fluid solver and its corresponding backward, adjoint solver share the same flow map as the forward simulation. In the forward pass, this map transports fluid impulse variables from the initial frame to the current frame to simulate vortical dynamics. In the backward pass, the same map propagates adjoint variables from the current frame back to the initial frame to compute gradients. This shared long-range map allows the accuracy of gradient computation to benefit directly from improvements in flow map construction. Building on this insight, we introduce a novel adjoint solver that solves the adjoint equations directly on the flow map, enabling long-range and accurate differentiation of incompressible flows without differentiating intermediate numerical steps or storing intermediate variables, as required in conventional adjoint methods. To further improve efficiency, we propose a long-short time-sparse flow map representation for evolving adjoint variables. Our approach has low memory usage, requiring only 6.53GB of data at a resolution of 192^3 while preserving high accuracy in tracking vorticity, enabling new differentiable simulation tasks that require precise identification, prediction, and control of vortex dynamics.

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BibTeX

@inproceedings{li2025adjoint,
    year = {2025},
    title = {An Adjoint Method for Differentiable Fluid Simulation on Flow Maps},
    booktitle = {ACM SIGGRAPH Asia 2025 (Conference Track)},
    author = {Li, Zhiqi and He, Jinjin and Börcsök, Barnabás and Zhang, Taiyuan and Chen, Duowen and Du, Tao and Lin, Ming C. and Turk, Greg and Zhu, Bo}
  }