2023
DOI: 10.1209/0295-5075/acc88c
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Data reconstruction for complex flows using AI: Recent progress, obstacles, and perspectives

Abstract: In recent years the fluid mechanics community has been intensely focused on pursuing solutions to its long-standing open problems by exploiting the new machine learning, (ML), approaches. The exchange between ML and fluid mechanics is bringing important paybacks in both directions. The first is benefiting from new physics-inspired ML methods and a scientific playground to perform quantitative benchmarks, whilst the latter has been open to a large set of new tools inherently well suited to deal with big data, f… Show more

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Cited by 7 publications
(4 citation statements)
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“…A great number of reviews meant that an even greater number of original research articles had been published. If we limited the results of the Scopus search to reviews related to fluids, three major fields of application emerge that attracted research interest in applying ML methods to (a) theoretical and industrial oil and gas [33][34][35][36][37][38][39][40][41][42][43][44][45][46][47][48][49][50][51][52], (b) CFD simulations [53][54][55][56][57][58][59][60][61][62][63][64][65][66][67][68], and (c) health and medical applications [69][70][71][72][73][74][75][76][77][78][79][80]…”
Section: A Brief Overview and Methods Classificationmentioning
confidence: 99%
See 1 more Smart Citation
“…A great number of reviews meant that an even greater number of original research articles had been published. If we limited the results of the Scopus search to reviews related to fluids, three major fields of application emerge that attracted research interest in applying ML methods to (a) theoretical and industrial oil and gas [33][34][35][36][37][38][39][40][41][42][43][44][45][46][47][48][49][50][51][52], (b) CFD simulations [53][54][55][56][57][58][59][60][61][62][63][64][65][66][67][68], and (c) health and medical applications [69][70][71][72][73][74][75][76][77][78][79][80]…”
Section: A Brief Overview and Methods Classificationmentioning
confidence: 99%
“…Nevertheless, generative models are often incorporated because DNS data are hard to obtain. In the review of Buzzicotti [53], three prevalent models are discussed: variational autoencoders (VAE), GANS, and diffusion models. These models are based on CNNs, and their implementation is focused on reproducing the multiscale and multifrequency nature of fluid dynamics, which is more complex than classical image recognition applications.…”
Section: Applications Of ML In Fluid Mechanicsmentioning
confidence: 99%
“…VAEs consist of an encoder, which takes input data and maps it to a probabilistic latent space, and a decoder, which generates output data and reconstructs the input data as accurately as possible [33]. VAEs work on the fundamental premise of acquiring a mapping between a straightforward and constant distribution and the probability distribution of the data [34]. On the other hand, GANs are an alternative class of AI algorithms used in unsupervised learning (UL) and consist of two parts.…”
Section: Generative Models Vaes-gansmentioning
confidence: 99%
“…In the context of turbulent flows, this implies that POD-like methods primarily emphasize large-scale structures [22,23]. In recent years, machine learning has led to an increasing number of successful applications in reconstruction tasks for simple and idealized fluid mechanics problems (see [24] for a brief review). We refer to super-resolution applications (i.e., finding high-resolution flow fields from low-resolution data) [25][26][27], inpainting (i.e., reconstructing flow fields having spatial damages) [23,28], and inferring volumetric flows from surface or two-dimensional (2D)-section measurements [29][30][31].…”
Section: Introductionmentioning
confidence: 99%