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Predicting Time-Dependent Flow Over Complex Geometries Using Operator Networks

Published: December 4, 2025 | arXiv ID: 2512.04434v1

By: Ali Rabeh , Suresh Murugaiyan , Adarsh Krishnamurthy and more

Potential Business Impact:

Predicts how liquids move around objects super fast.

Business Areas:
Content Delivery Network Content and Publishing

Fast, geometry-generalizing surrogates for unsteady flow remain challenging. We present a time-dependent, geometry-aware Deep Operator Network that predicts velocity fields for moderate-Re flows around parametric and non-parametric shapes. The model encodes geometry via a signed distance field (SDF) trunk and flow history via a CNN branch, trained on 841 high-fidelity simulations. On held-out shapes, it attains $\sim 5\%$ relative L2 single-step error and up to 1000X speedups over CFD. We provide physics-centric rollout diagnostics, including phase error at probes and divergence norms, to quantify long-horizon fidelity. These reveal accurate near-term transients but error accumulation in fine-scale wakes, most pronounced for sharp-cornered geometries. We analyze failure modes and outline practical mitigations. Code, splits, and scripts are openly released at: https://github.com/baskargroup/TimeDependent-DeepONet to support reproducibility and benchmarking.

Page Count
24 pages

Category
Physics:
Fluid Dynamics