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Convolutional-network models to predict wall-bounded turbulence from wall quantities
KTH, School of Engineering Sciences (SCI), Centres, Linné Flow Center, FLOW.
Univ Carlos III Madrid, Aerosp Engn Res Grp, Leganes 28911, Spain..
Univ Carlos III Madrid, Aerosp Engn Res Grp, Leganes 28911, Spain..
Univ Carlos III Madrid, Aerosp Engn Res Grp, Leganes 28911, Spain..
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2021 (English)In: Journal of Fluid Mechanics, ISSN 0022-1120, E-ISSN 1469-7645, Vol. 928, article id A27Article in journal (Refereed) Published
Abstract [en]

Two models based on convolutional neural networks are trained to predict the two-dimensional instantaneous velocity-fluctuation fields at different wall-normal locations in a turbulent open-channel flow, using the wall-shear-stress components and the wall pressure as inputs. The first model is a fully convolutional neural network (FCN) which directly predicts the fluctuations, while the second one reconstructs the flow fields using a linear combination of orthonormal basis functions, obtained through proper orthogonal decomposition (POD), and is hence named FCN-POD. Both models are trained using data from direct numerical simulations at friction Reynolds numbers Re-tau = 180 and 550. Being able to predict the nonlinear interactions in the flow, both models show better predictions than the extended proper orthogonal decomposition (EPOD), which establishes a linear relation between the input and output fields. The performance of the models is compared based on predictions of the instantaneous fluctuation fields, turbulence statistics and power-spectral densities. FCN exhibits the best predictions closer to the wall, whereas FCN-POD provides better predictions at larger wall-normal distances. We also assessed the feasibility of transfer learning for the FCN model, using the model parameters learned from the Re-tau = 180 dataset to initialize those of the model that is trained on the Re-tau = 550 dataset. After training the initialized model at the new Ret, our results indicate the possibility of matching the reference-model performance up to y(+) = 50, with 50% and 25% of the original training data. We expect that these non-intrusive sensing models will play an important role in applications related to closed-loop control of wall-bounded turbulence.

Place, publisher, year, edition, pages
Cambridge University Press (CUP) , 2021. Vol. 928, article id A27
Keywords [en]
turbulence simulation
National Category
Fluid Mechanics
Identifiers
URN: urn:nbn:se:kth:diva-305768DOI: 10.1017/jfm.2021.812ISI: 000721246500001Scopus ID: 2-s2.0-85117282863OAI: oai:DiVA.org:kth-305768DiVA, id: diva2:1617438
Note

QC 20211206

Available from: 2021-12-06 Created: 2021-12-06 Last updated: 2025-02-09Bibliographically approved
In thesis
1. Time, space and control: deep-learning applications to turbulent flows
Open this publication in new window or tab >>Time, space and control: deep-learning applications to turbulent flows
2023 (English)Doctoral thesis, comprehensive summary (Other academic)
Alternative title[sv]
Tid, rum och kontroll: djupinlärningsapplikationer för turbulenta flöden
Abstract [en]

In the present thesis, the application of deep learning and deep reinforcement learning to turbulent-flow simulations is investigated. Deep-learning models are trained to perform temporal and spatial predictions, while deep reinforcement learning is applied to a flow-control problem, namely the reduction of drag in an open channel flow. Long short-term memory (LSTM, Hochreiter & Schmidhuber 1997) networks and Koopman non-linear forcing (KNF) models are optimized to perform temporal predictions in two reduced-order-models of turbulence, namely the nine-equations model proposed by Moehlis et al. (2004) and a truncated proper orthogonal decomposition (POD) of a minimal channel flow (Jiménez & Moin 1991). In the first application, both models are able to produce accurate short-term predictions. Furthermore, the predicted system trajectories are statistically correct. KNF models outperform LSTM networks in short-term predictions, with a much lower training computational cost. In the second task, only LSTMs can be trained successfully, predicting trajectories that are statistically accurate. Spatial predictions are performed in two turbulent flows: an open channel flow and a boundary-layer flow. Fully-convolutional networks (FCNs) are used to predict two-dimensional velocity-fluctuation fields at a given wall-normal location using wall measurements (and vice versa). Thanks to the non-linear nature of these models, they provide a better reconstruction performance than optimal linear methods like extended POD (Borée 2003). Finally, we show the potential of deep reinforcement learning in discovering new control strategies for turbulent flows. By framing the fluid-dynamics problem as a multi-agent reinforcement-learning environment and by training the agents using a location-invariant deep deterministic policy-gradient (DDPG) algorithm, we are able to learn a control strategy that achieves a remarkable 30% drag reduction, improving over existing strategies by about 10 percentage points.

Abstract [sv]

I den förinställda avhandlingen undersöks tillämpningen av djupinlärning och djupförstärkningsinlärning på turbulenta flödessimuleringar. Modeller för djupinlärning tränas för att utföra tids- och rumsförutsägelser, medan djupförstärkningsinlärning tillämpas på ett flödeskontrollproblem, nämligen minskningen av motståndet i ett öppet kanalflöde. Long short-term memory (LSTM, Hochreiter & Schmidhuber 1997) nätverk och Koopman non-linear forcing (KNF) modeller optimeras för att utföratidsförutsägelser i två turbulensmodeller med reducerad ordning, nämligen nio-ekvationsmodellen som föreslagits av Moehlis et al. (2004) och en trunkerad proper orthogonal decomposition (POD) av ett minimalt kanalflöde (Jiménez & Moin 1991). I den första applikationen kan båda modellerna producera korrekta korttidsförutsägelser, dessutom är de förutsagda trajektorierna statistiskt korrekta. KNF-modeller överträffar LSTM-nätverk i kortsiktiga förutsägelser, med en mycket lägre utbildningsberäkningskostnad. I den andra uppgiften kan endast LSTM nätverken tränas framgångsrikt, med trajektorier som är statistiskt korrekta. Spatiala förutsägelser utförs i två turbulenta flöden, en öppen kanal flöde och en gränsskikt. Fully-convolutional networks (FCN) används för att förutsäga tvådimensionella hastighetsfluktuationsfält vid givet avstånd från väggen med hjälp av väggmätningar (och vice versa). Tack vare deras icke-linjär karaktär ger dessa modeller bättre rekonstruktionsprestanda än optimala linjära metoder som extended POD (Borée 2003). Slutligen visar vi potentialen med djup förstärkningsinlärning för att upptäcka nya kontrollstrategier i turbulenta flöden. Genom att inrama strömningsmekaniska problemet som en förstärknings-inlärningsmiljö med flera agenter och genom att träna agenterna med hjälp av en positionsinvariant deep deterministic policy gradient (DDPG) algoritm, kan vi lära oss en kontrollstrategi som uppnår en anmärkningsvärd 30% minskning av luftmotståndet, vilket jämfört med existerande strategier är en förbättring med cirka 10 procentenheter.

Place, publisher, year, edition, pages
Stockholm: KTH Royal Institute of Technology, 2023. p. 342
Series
TRITA-SCI-FOU ; 2023:27
Keywords
turbulence, deep learning, deep reinforcement learning, flow control, turbulens, djupinlärning, djupförstärkningsinlärning, flödeskontroll
National Category
Fluid Mechanics
Research subject
Engineering Mechanics
Identifiers
urn:nbn:se:kth:diva-326961 (URN)978-91-8040-601-7 (ISBN)
Public defence
2023-06-12, F3, Lindstedtsvägen 26 & 28, Stockholm, 10:00 (English)
Opponent
Supervisors
Funder
EU, European Research Council, 2021-CoG-101043998, DEEPCONTROLSwedish e‐Science Research CenterKnut and Alice Wallenberg Foundation
Note

QC 230516

Available from: 2023-05-16 Created: 2023-05-15 Last updated: 2025-02-09Bibliographically approved

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Guastoni, LucaSchlatter, PhilippAzizpour, HosseinVinuesa, Ricardo

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