Physics-informed deep-learning applications to experimental fluid mechanics (2203.15402v2)
Abstract: High-resolution reconstruction of flow-field data from low-resolution and noisy measurements is of interest due to the prevalence of such problems in experimental fluid mechanics, where the measurement data are in general sparse, incomplete and noisy. Deep-learning approaches have been shown suitable for such super-resolution tasks. However, a high number of high-resolution examples is needed, which may not be available for many cases. Moreover, the obtained predictions may lack in complying with the physical principles, e.g. mass and momentum conservation. Physics-informed deep learning provides frameworks for integrating data and physical laws for learning. In this study, we apply physics-informed neural networks (PINNs) for super-resolution of flow-field data both in time and space from a limited set of noisy measurements without having any high-resolution reference data. Our objective is to obtain a continuous solution of the problem, providing a physically-consistent prediction at any point in the solution domain. We demonstrate the applicability of PINNs for the super-resolution of flow-field data in time and space through three canonical cases: Burgers' equation, two-dimensional vortex shedding behind a circular cylinder and the minimal turbulent channel flow. The robustness of the models is also investigated by adding synthetic Gaussian noise. Furthermore, we show the capabilities of PINNs to improve the resolution and reduce the noise in a real experimental dataset consisting of hot-wire-anemometry measurements. Our results show the adequate capabilities of PINNs in the context of data augmentation for experiments in fluid mechanics.
- [] Abadi M et al. 2016 in ‘In Proc. 12th USENIX Symposium on Operating Systems Design and Implementation (OSDI ’16)’ Vol. 16 pp. 265–283.
- [] Adamczyk A A & Rimai L 1988 Exp. Fluids 6(6), 373–380.
- [] Adrian R J 1984 Appl. Opt. 23(11), 1690–1691.
- [] Akbari G & Montazerin N 2021 Meas. Sci. Technol. 33(1), 015203.
- [] Arzani A, Wang J X & D’Souza R M 2021 Phys. Fluids 33(7), 071905.
- arXiv:1502.05767.
- [] Brunton S L, Noack B R & Koumoutsakos P 2020 Annu. Rev. Fluid Mech. 52, 477–508.
- [] Bui-Thanh T, Damodaran M & Willcox K 2003 in ‘21st AIAA applied aerodynamics conference’ p. 4213.
- [] Bui-Thanh T, Damodaran M & Willcox K 2004 AIAA J. 42(8), 1505–1516.
- [] Duraisamy K, Iaccarino G & Xiao H 2019 Annu. Rev. Fluid Mech. 51, 357–377.
- [] Everson R & Sirovich L 1995 J. Opt. Soc. Am. A 12(8), 1657–1664.
- [] Fukami K, Fukagata K & Taira K 2019 J. Fluid Mech. 870, 106–120.
- [] Gao H, Sun L & Wang J X 2021 Phys. Fluids 33(7), 073603.
- [] Grant I & Pan X 1995 Exp. Fluids 19(3), 159–166.
- [] Ham Y G, Kim J H & Luo J J 2019 Nature 573, 568–572.
- [] Hochreiter S & Schmidhuber J 1997 Neural Comput. 9, 1735–1780.
- [] Hui T W, Tang X & Loy C C 2018 in ‘2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition’ pp. 8981–8989.
- [] Jiménez J & Moin P 1991 Journal of Fluid Mechanics 225, 213–240.
- [] Jiménez J 2018 J. Fluid Mech. 854, R1.
- [] Jiménez J & Moin P 1991 J. Fluid Mech. 225, 213–240.
- [] Kingma D P & Ba J 2017. arXiv:1412.6980.
- [] Kutz J N 2017 J. Fluid Mech. 814, 1–4.
- [] LeCun Y, Bengio Y & Hinton G 2015 Nature 521(7553), 436–444.
- [] Ling J, Kurzawski A & Templeton J 2016 J. Fluid Mech. 807, 155–166.
- [] Liu D C & Nocedal J 1989 Math. Program. 45(1), 503–528.
- [] Mianroodi J R, H. Siboni N & Raabe D 2021 npj Comput. Mater. 7(1), 99.
- [] Morimoto M, Fukami K & Fukagata K 2021 Phys. Fluids 33(8), 087121.
- [] Rabault J, Kolaas J & Jensen A 2017 Meas. Sci. Technol. 28(12), 125301.
- [] Raissi M, Perdikaris P & Karniadakis G 2019 J. Comput. Phys. 378, 686–707.
- [] Raissi M, Yazdani A & Karniadakis G E 2020 Science 367(6481), 1026–1030.
- [] Rechenberg I 1964 in ‘Ann. Conf. WGLR Berlin’ Vol. 35 p. 33.
- [] Rudin C 2019 Nat. Mach. Intell. 1(5), 206–215.
- [] Rumelhart D E & McClelland J L 1987 in ‘Parallel Distributed Processing: Explorations in the Microstructure of Cognition: Foundations’ pp. 318–362.
- [] Segler M H S, Preuss M & Waller M P 2018 Nature 555(7698), 604–610.
- [] Selesnick I 2013 Connexions 4, 1–25.
- [] Sliwinski L & Rigas G 2023 Data-Centric Engineering 4, e4.
- [] Stulov N & Chertkov M 2021. arXiv:2101.11950.
- [] Vinuesa R & Brunton S L 2022 Nat. Comput. Sci. 2, 358–366.
- [] Vinuesa R, Schlatter P & Nagib H M 2014 Exp. Fluids 55, 1751.
- [] Vinuesa R & Sirmacek B 2021 Nat. Mach. Intell. 3(11), 926–926.
- [] Waldmann I P & Griffith C A 2019 Nat. Astron. 3(7), 620–625.
- [] Wang Z, Chen J & Hoi S H 2021 IEEE Trans. Pattern Anal. Mach. Intell. 43(10), 3365–3387.
- [] Willcox K 2006 Computers & fluids 35(2), 208–226.
- [] Yang G & Ramanan D 2019 in ‘Advances in Neural Information Processing Systems’ Vol. 32.