ArXiv TLDR

From Video-to-PDE: Data-Driven Discovery of Nonlinear Dye Plume Dynamics

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2605.04535

Cesar Acosta-Minoli, Sayantan Sarkar

cs.LGmath.NAphysics.comp-phstat.APstat.ML

TLDR

This paper introduces a video-to-PDE pipeline to discover nonlinear dye plume dynamics from uncalibrated video, outperforming baselines.

Key contributions

  • A video-to-PDE pipeline converts uncalibrated video into a normalized scalar field for continuum model discovery.
  • Isolates bulk fluid drift from intrinsic spreading using intensity-weighted centroid analysis.
  • Identifies an effective transport law via weak-form sparse regression, refined by a physics-informed network.
  • Discovered nonlinear PDE model outperforms advection-diffusion baselines on held-out frames.

Why it matters

This work offers a novel pipeline to extract complex physical laws directly from raw, uncalibrated video data. It provides a robust framework for discovering interpretable continuum models, crucial for fluid dynamics and material science, by handling noisy visual input and quantifying uncertainty.

Original Abstract

Inferring continuum models directly from video is hampered by two facts: the recorded field is uncalibrated image intensity rather than a physical state, and direct numerical differentiation of noisy frames is unstable. We develop a video-to-PDE pipeline that converts grayscale recordings of an ink plume into a normalised scalar field $u(x,y,t)$, isolates a bulk drift $\mathbf{v}(t)$ from intrinsic spreading via the intensity-weighted centroid, and identifies an effective transport law by weak-form sparse regression. Conditioning, threshold-sweep and random-centre diagnostics show that overcomplete libraries are strongly collinear; the search is therefore restricted to compact gradient-based libraries. Coefficients are refined by an inverse physics-informed network and recalibrated against forward rollouts, with a chronological block bootstrap quantifying uncertainty. The selected reduced model $u_t+\mathbf v(t)\!\cdot\!\nabla u = 9.005\,|\nabla u|^{2}+0.666\,Δu$ outperforms advection--diffusion baselines on held-out frames, retains a positive Laplacian coefficient, and admits a Cole--Hopf reduction to a linear advection--diffusion equation. The framework demonstrates that uncalibrated visual data can yield compact, predictive and structurally interpretable continuum models when discovery, calibration and uncertainty are treated as distinct stages.

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