Reconstruction of turbulent data with deep generative models for semantic inpainting from TURB-Rot database
M. Buzzicotti, F. Bonaccorso, P. Clark Di Leoni, L. Biferale

TL;DR
This paper explores the use of deep generative models, specifically Deep-GANs and Context Encoders, for reconstructing missing data in turbulent flow configurations, comparing their effectiveness with traditional nudging methods.
Contribution
It introduces novel deep learning approaches for turbulence data reconstruction and provides a comprehensive evaluation against established data assimilation techniques.
Findings
Deep-GANs effectively reconstruct complex turbulent structures.
Context Encoders offer a viable alternative for inpainting turbulence data.
The proposed methods outperform traditional nudging in certain scenarios.
Abstract
We study the applicability of tools developed by the computer vision community for features learning and semantic image inpainting to perform data reconstruction of fluid turbulence configurations. The aim is twofold. First, we explore on a quantitative basis, the capability of Convolutional Neural Networks embedded in a Deep Generative Adversarial Model (Deep-GAN) to generate missing data in turbulence, a paradigmatic high dimensional chaotic system. In particular, we investigate their use in reconstructing two-dimensional damaged snapshots extracted from a large database of numerical configurations of 3d turbulence in the presence of rotation, a case with multi-scale random features where both large-scale organised structures and small-scale highly intermittent and non-Gaussian fluctuations are present. Second, following a reverse engineering approach, we aim to rank the input flow…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis
