FLU-DYNLGOct 29, 2025

Conditional neural field for spatial dimension reduction of turbulence data: a comparison study

arXiv:2510.25135v12 citationsh-index: 6Phys Fluid
Originality Incremental advance
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This work addresses turbulence data compression and reconstruction for fluid dynamics researchers, offering incremental improvements in method selection and generalization.

The study tackled spatial dimensionality reduction of turbulent flows by comparing conditional neural fields (CNFs) against traditional methods, finding that CNF-FP achieved the lowest training and in-range errors, while CNF-FiLM generalized best for out-of-range scenarios, with domain decomposition improving out-of-range accuracy.

We investigate conditional neural fields (CNFs), mesh-agnostic, coordinate-based decoders conditioned on a low-dimensional latent, for spatial dimensionality reduction of turbulent flows. CNFs are benchmarked against Proper Orthogonal Decomposition and a convolutional autoencoder within a unified encoding-decoding framework and a common evaluation protocol that explicitly separates in-range (interpolative) from out-of-range (strict extrapolative) testing beyond the training horizon, with identical preprocessing, metrics, and fixed splits across all baselines. We examine three conditioning mechanisms: (i) activation-only modulation (often termed FiLM), (ii) low-rank weight and bias modulation (termed FP), and (iii) last-layer inner-product coupling, and introduce a novel domain-decomposed CNF that localizes complexities. Across representative turbulence datasets (WMLES channel inflow, DNS channel inflow, and wall pressure fluctuations over turbulent boundary layers), CNF-FP achieves the lowest training and in-range testing errors, while CNF-FiLM generalizes best for out-of-range scenarios once moderate latent capacity is available. Domain decomposition significantly improves out-of-range accuracy, especially for the more demanding datasets. The study provides a rigorous, physics-aware basis for selecting conditioning, capacity, and domain decomposition when using CNFs for turbulence compression and reconstruction.

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