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Published in: Journal of Visualization 4/2021

25-02-2021 | Regular Paper

Application of fully convolutional neural networks for feature extraction in fluid flow

Authors: Babak Kashir, Marco Ragone, Ajaykrishna Ramasubramanian, Vitaliy Yurkiv, Farzad Mashayek

Published in: Journal of Visualization | Issue 4/2021

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Abstract

Accurate extraction of features in fluid flows is of importance due to the presence in many natural and technological systems. Recently, methods based on machine learning have emerged as an alternative to traditional Eulerian-based methods to extract features in fluid flows. One broad category in ML is the convolution operation-based methods. The precision of feature extraction in convolution operation-based methods increases by constraining the measurement box, such as dividing the input data into small patches and using them as input boxes in convolutional neural networks. In this work, we propose a method that transforms each cell of the computational domain into a detection pixel (measurement box) to perform the task of feature extraction at the smallest possible computational level. To demonstrate the performance, we extract the vortical structures in a benchmark two-dimensional lid-driven cavity flow employing a symmetric, fully convolutional network. The number of convolution and deconvolution blocks in the network’s structure is studied to obtain the highest accuracy and yet to avoid the degradation problem. Different parameters, such as the Reynolds number and velocity boundary values, are considered in the complete and clipped cavity cases to create the training and test datasets. The semantic segmentation metrics, including Jaccard and Dice, yield values close to 1 for the test set on complete and clipped cavity cases with varying the Reynolds number or the velocity boundary values.

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Literature
go back to reference Bhatnagar S, Afshar Y, Pan S, Duraisamy K, Kaushik S (2019) Prediction of aerodynamic flow fields using convolutional neural networks. Comput Mech 64:525–545MathSciNetCrossRef Bhatnagar S, Afshar Y, Pan S, Duraisamy K, Kaushik S (2019) Prediction of aerodynamic flow fields using convolutional neural networks. Comput Mech 64:525–545MathSciNetCrossRef
go back to reference Bishop CM (2006) Pattern recognition and machine learning. Springer, BerlinMATH Bishop CM (2006) Pattern recognition and machine learning. Springer, BerlinMATH
go back to reference Buxton ORH, Breda M, Chen X (2017) Invariants of the velocity gradient tensor in a spatially developing inhomogeneous turbulent flow. J Fluid Mech 817:1–20MathSciNetCrossRef Buxton ORH, Breda M, Chen X (2017) Invariants of the velocity gradient tensor in a spatially developing inhomogeneous turbulent flow. J Fluid Mech 817:1–20MathSciNetCrossRef
go back to reference Chong MS, Perry AE, Cantwell BJ (1990) A general classification of three-dimensional flow fields. Phys Fluids A 2:765–777MathSciNetCrossRef Chong MS, Perry AE, Cantwell BJ (1990) A general classification of three-dimensional flow fields. Phys Fluids A 2:765–777MathSciNetCrossRef
go back to reference Colvert B, Alsalman M, Kanso E (2018) Classifying vortex wakes using neural networks. Bioinspir. Biomim 13:025003(1)–025003(12)CrossRef Colvert B, Alsalman M, Kanso E (2018) Classifying vortex wakes using neural networks. Bioinspir. Biomim 13:025003(1)–025003(12)CrossRef
go back to reference Csurka G, Larlus D, Perronnin F, Meylan F (2013) What is a good evaluation measure for semantic segmentation. Comput. BMVC 2013:27 Csurka G, Larlus D, Perronnin F, Meylan F (2013) What is a good evaluation measure for semantic segmentation. Comput. BMVC 2013:27
go back to reference Deng L, Wang Y, Liu Y, Wang F, Li S, Liu J (2019) A CNN-based vortex identification method. J. Visualization 22:65–78CrossRef Deng L, Wang Y, Liu Y, Wang F, Li S, Liu J (2019) A CNN-based vortex identification method. J. Visualization 22:65–78CrossRef
go back to reference Glorot X, Bordes A, Bengio Y (2011) Deep sparse rectifier neural networks. In: Proceedings of the 14th international conference on artificial intelligence and statistics (AISTATS) 2011, Fort Lauderdale, FL, USA Glorot X, Bordes A, Bengio Y (2011) Deep sparse rectifier neural networks. In: Proceedings of the 14th international conference on artificial intelligence and statistics (AISTATS) 2011, Fort Lauderdale, FL, USA
go back to reference Hahnloser R, Sarpeshkar R, Mahowald MA, Douglas RJ, Seung HS (2000) Digital selection and analogue amplification coexist in a cortex-inspired silicon circuit. Nature 405:947–951CrossRef Hahnloser R, Sarpeshkar R, Mahowald MA, Douglas RJ, Seung HS (2000) Digital selection and analogue amplification coexist in a cortex-inspired silicon circuit. Nature 405:947–951CrossRef
go back to reference Harlow FH, Welsh JE (1965) Numerical calculation of time-dependent viscous incompressible flow of fluid with free surface. Phys Fluids 8:2182–2189MathSciNetCrossRef Harlow FH, Welsh JE (1965) Numerical calculation of time-dependent viscous incompressible flow of fluid with free surface. Phys Fluids 8:2182–2189MathSciNetCrossRef
go back to reference Holmes P, Lumley J, Berkooz G (1996) Turbulence, coherent structures, dynamical systems and symmetry. Cambridge University Press, CambridgeCrossRef Holmes P, Lumley J, Berkooz G (1996) Turbulence, coherent structures, dynamical systems and symmetry. Cambridge University Press, CambridgeCrossRef
go back to reference Hunt JCR (1987) Vorticity and vortex dynamics in complex turbulent flows. Trans Can Soc Mech Eng 11:21–35CrossRef Hunt JCR (1987) Vorticity and vortex dynamics in complex turbulent flows. Trans Can Soc Mech Eng 11:21–35CrossRef
go back to reference Hunt JCR, Wray AA, Moin P (1988) Eddies, stream and convergence zones in turbulent flows. Center for Turbulence Research Report No. CTRS88, 193 Hunt JCR, Wray AA, Moin P (1988) Eddies, stream and convergence zones in turbulent flows. Center for Turbulence Research Report No. CTRS88, 193
go back to reference Kashir B, Tabejamaat S, BaigMohammadi M (2012) An experimental study of the stability of natural gas and propane turbulent non-premixed flame under diluting condition. Therm Sci 16:1055–1065CrossRef Kashir B, Tabejamaat S, BaigMohammadi M (2012) An experimental study of the stability of natural gas and propane turbulent non-premixed flame under diluting condition. Therm Sci 16:1055–1065CrossRef
go back to reference Kashir B, Tabejamaat S, Jalalatian N (2015a) The impact of hydrogen enrichment and bluff-body lip thickness on characteristics of blended propane/hydrogen bluff-body stabilized turbulent diffusion flames. Energ Convers Manag 103:1–13CrossRef Kashir B, Tabejamaat S, Jalalatian N (2015a) The impact of hydrogen enrichment and bluff-body lip thickness on characteristics of blended propane/hydrogen bluff-body stabilized turbulent diffusion flames. Energ Convers Manag 103:1–13CrossRef
go back to reference Kashir B, Tabejamaat S, Jalalatian N (2015b) A numerical study on combustion characteristics of blended methane-hydrogen bluff-body stabilized swirl diffusion flames. Int J Hydrog Energ 40:6243–6258CrossRef Kashir B, Tabejamaat S, Jalalatian N (2015b) A numerical study on combustion characteristics of blended methane-hydrogen bluff-body stabilized swirl diffusion flames. Int J Hydrog Energ 40:6243–6258CrossRef
go back to reference Kashir B, Ragone M, Yurkiv V, Mashayek F (2019) Data-driven prediction of vortical structures in turbulent flows employing deep learning techniques. 72nd annual meeting of the American physical society, division of fluid dynamics, Seattle, Washington, 2019 Kashir B, Ragone M, Yurkiv V, Mashayek F (2019) Data-driven prediction of vortical structures in turbulent flows employing deep learning techniques. 72nd annual meeting of the American physical society, division of fluid dynamics, Seattle, Washington, 2019
go back to reference Krizhevsky A, Sutskever I, Hinton GE (2017) ImageNet classification with deep convolutional neural networks. Commun ACM 60:84–90CrossRef Krizhevsky A, Sutskever I, Hinton GE (2017) ImageNet classification with deep convolutional neural networks. Commun ACM 60:84–90CrossRef
go back to reference Li D, Komperda J, Ghiasi Z, Peyvan A, Mashayek F (2019) Compressibility effects on the transition to turbulence in a spatially developing plane free shear layer. Theor Comput Fluid Dyn 33:577–602MathSciNetCrossRef Li D, Komperda J, Ghiasi Z, Peyvan A, Mashayek F (2019) Compressibility effects on the transition to turbulence in a spatially developing plane free shear layer. Theor Comput Fluid Dyn 33:577–602MathSciNetCrossRef
go back to reference Liu Y, Lu Y, Wang Y, Sun D, Deng L, Wan Y, Wang F (2019a) Key time steps selection for CFD data based on deep metric learning. Comput Fluids 195:104318MathSciNetCrossRef Liu Y, Lu Y, Wang Y, Sun D, Deng L, Wan Y, Wang F (2019a) Key time steps selection for CFD data based on deep metric learning. Comput Fluids 195:104318MathSciNetCrossRef
go back to reference Liu Y, Lu Y, Wang Y, Sun D, Deng L, Wang F, Lei Y (2019b) A CNN-based shock detection method in flow visualization. Comput Fluids 184:1–9MathSciNetCrossRef Liu Y, Lu Y, Wang Y, Sun D, Deng L, Wang F, Lei Y (2019b) A CNN-based shock detection method in flow visualization. Comput Fluids 184:1–9MathSciNetCrossRef
go back to reference Liu X, Deng Z, Yang Y (2019c) Recent progress in semantic image segmentation. Artif Intell Rev 52:1089–1106CrossRef Liu X, Deng Z, Yang Y (2019c) Recent progress in semantic image segmentation. Artif Intell Rev 52:1089–1106CrossRef
go back to reference Long J, Shelhamer E, Darrell T (2015) Fully convolutional networks for semantic segmentation. In: Proceedings of the IEEE conference on computer vision and pattern recognition, pp 3431–3440 Long J, Shelhamer E, Darrell T (2015) Fully convolutional networks for semantic segmentation. In: Proceedings of the IEEE conference on computer vision and pattern recognition, pp 3431–3440
go back to reference Monfort M, Luciani T, Komperda J, Ziebart B, Mashayek F, Marai GE (2017) A deep learning approach to identifying shock locations in turbulent combustion tensor fields. In: Modeling, analysis, and visualization of anisotropy. Springer, Berlin Monfort M, Luciani T, Komperda J, Ziebart B, Mashayek F, Marai GE (2017) A deep learning approach to identifying shock locations in turbulent combustion tensor fields. In: Modeling, analysis, and visualization of anisotropy. Springer, Berlin
go back to reference Oishi A, Yagawa G (2020) A surface to surface contact search method enhanced by deep learning. Comput Mech 65:1125–1147MathSciNetCrossRef Oishi A, Yagawa G (2020) A surface to surface contact search method enhanced by deep learning. Comput Mech 65:1125–1147MathSciNetCrossRef
go back to reference Ronneberger O, Fischer P, Brox T (2015) U-net: convolutional networks for biomedical image segmentation. In: Navab N, Hornegger J, Wells W, Frangi A (eds) Medical image computing and computer-assisted intervention—MICCAI 2015. Lecture Notes in Computer Science, vol 9351. Springer, Cham Ronneberger O, Fischer P, Brox T (2015) U-net: convolutional networks for biomedical image segmentation. In: Navab N, Hornegger J, Wells W, Frangi A (eds) Medical image computing and computer-assisted intervention—MICCAI 2015. Lecture Notes in Computer Science, vol 9351. Springer, Cham
go back to reference Strofer CM, Wu J, Xiao H, Paterson E (2019) Data-driven physics-based feature extraction from fluid flow fields. Commun. Comput. Phys. 25:625–650MathSciNetCrossRef Strofer CM, Wu J, Xiao H, Paterson E (2019) Data-driven physics-based feature extraction from fluid flow fields. Commun. Comput. Phys. 25:625–650MathSciNetCrossRef
go back to reference Wu H, Liu X, An W, Chen S, Lyu H (2020) A deep learning approach for efficiently and accurately evaluating the flow field of supercritical airfoils. Comput Fluids 198:104393(1)–104393(17)MathSciNetCrossRef Wu H, Liu X, An W, Chen S, Lyu H (2020) A deep learning approach for efficiently and accurately evaluating the flow field of supercritical airfoils. Comput Fluids 198:104393(1)–104393(17)MathSciNetCrossRef
go back to reference Zhang L, Deng Q, Machiraju R, Rangarajan A, Thompson D, Walters DK, Shen H-W (2014) Boosting techniques for physics-based vortex detection. Comput. Graph. Forum 33:282–293CrossRef Zhang L, Deng Q, Machiraju R, Rangarajan A, Thompson D, Walters DK, Shen H-W (2014) Boosting techniques for physics-based vortex detection. Comput. Graph. Forum 33:282–293CrossRef
Metadata
Title
Application of fully convolutional neural networks for feature extraction in fluid flow
Authors
Babak Kashir
Marco Ragone
Ajaykrishna Ramasubramanian
Vitaliy Yurkiv
Farzad Mashayek
Publication date
25-02-2021
Publisher
Springer Berlin Heidelberg
Published in
Journal of Visualization / Issue 4/2021
Print ISSN: 1343-8875
Electronic ISSN: 1875-8975
DOI
https://doi.org/10.1007/s12650-020-00732-0

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