Gaussian Fluids: A Grid-Free Fluid Solver based on Gaussian Spatial Representation
Jingrui Xing, Bin Wang, Mengyu Chu, Baoquan Chen

TL;DR
This paper introduces a grid-free fluid solver using Gaussian functions to model continuous flow, offering high fidelity, robustness, and efficiency in simulating complex fluid phenomena without traditional discretization.
Contribution
The novel Gaussian Spatial Representation (GSR) enables a memory-efficient, adaptive, and continuous fluid simulation approach that improves accuracy and robustness over traditional methods.
Findings
Preserves intricate vortex dynamics effectively.
Accurately captures boundary effects like Kármán vortex streets.
Remains robust over long simulation durations.
Abstract
We present a grid-free fluid solver featuring a novel Gaussian representation. Drawing inspiration from the expressive capabilities of 3D Gaussian Splatting in multi-view image reconstruction, we model the continuous flow velocity as a weighted sum of multiple Gaussian functions. This representation is continuously differentiable, which enables us to derive spatial differentials directly and solve the time-dependent PDE via a custom first-order optimization tailored to fluid dynamics. Compared to traditional discretizations, which typically adopt Eulerian, Lagrangian, or hybrid perspectives, our approach is inherently memory-efficient and spatially adaptive, enabling it to preserve fine-scale structures and vortices with high fidelity. While these advantages are also sought by implicit neural representations, GSR offers enhanced robustness, accuracy, and generality across diverse fluid…
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Taxonomy
TopicsRobotic Path Planning Algorithms · Autonomous Vehicle Technology and Safety · Advanced Vision and Imaging
