A Hybrid Generative Reduced-Order Model for the Minimal Flow Unit
Abstract
A data-driven reduced-order modelling framework is proposed for wall-bounded turbulent flows to forecast the intermittent near-wall dynamics over extended time horizons from sparse sensor measurements. The approach combines a β-VAE-GAN, which compresses high-dimensional flow fields into a low-dimensional latent space, with a sensor-conditioned Transformer that forecasts the evolution of the latent variables. The temporal module employs Easy Attention, a static time-mixing operator that replaces the learnable query-key mechanism of standard self-attention at reduced computational cost, combined with an adapted AdaLN-Zero modulation mechanism for sensor-based conditioning. Evaluated on the Minimal Flow Unit (Reτ= 200) at y+ = 14, the compression stage recovers 87\% of the turbulent kinetic energy within a four-dimensional latent space, exceeding the standard β-VAE baseline by more than 10\%. The latent dimensions autonomously encode the characteristic timescales of the flow, with specific coordinates capturing the low-frequency signature of the near-wall regeneration cycle (T+ ≈ 1724), establishing the physical interpretability of the learnt representation. The sensor-conditioned Transformer maintains accurate forecasts over 17,288\,t+ from an initialisation window of only 128\,t+, whilst end-to-end inference reconstructs 82\% of the turbulent kinetic energy. The principal limitation is the attenuation of rare, extreme-amplitude events, a consequence of the encoder prioritising the most statistically recurrent flow states within the low-dimensional bottleneck. Nevertheless, the framework accurately reproduces the alternating active and quiescent phases of the regeneration cycle, demonstrating its suitability as a surrogate model for the intermittent dynamics of wall-bounded turbulence.
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