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Published in: Structural and Multidisciplinary Optimization 10/2022

01-10-2022 | Research Paper

A physics and data co-driven surrogate modeling approach for temperature field prediction on irregular geometric domain

Authors: Kairui Bao, Wen Yao, Xiaoya Zhang, Wei Peng, Yu Li

Published in: Structural and Multidisciplinary Optimization | Issue 10/2022

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Abstract

In the whole aircraft structural optimization loop, thermal analysis plays a very important role. But it faces a severe computational burden when directly applying traditional numerical analysis tools, especially when each optimization involves repetitive parameter modification and thermal analysis. Recently, with the fast development of deep learning, several Convolutional Neural Network (CNN) surrogate models have been introduced to overcome this obstacle. However, for temperature field prediction on irregular geometric domains (TFP-IGD), CNN can hardly be competent since most of them stem from processing for regular images. To alleviate this difficulty, we propose a novel physics and data co-driven surrogate modeling method. First, after adapting the Bezier curve in geometric parameterization, a body-fitted coordinate mapping is introduced to generate coordinate transforms between the irregular physical plane and regular computational plane. Second, a physics-driven CNN surrogate with partial differential equation (PDE) residuals as a loss function is utilized for fast meshing (meshing surrogate); then, we present a data-driven surrogate model based on the multi-level reduced-order method, aiming to learn solutions of temperature field in the above regular computational plane (thermal surrogate). Finally, combining the grid position information provided by the meshing surrogate with the scalar temperature field information provided by the thermal surrogate (combined model), we reach an end-to-end surrogate model from geometric parameters to temperature field prediction on an irregular geometric domain. Numerical results demonstrate that our method can significantly improve accuracy prediction on a smaller dataset while reducing the training time when compared with other CNN methods.

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Literature
go back to reference Belbute-Peres FDA, Economon T, Kolter Z (2020) Combining differentiable pde solvers and graph neural networks for fluid flow prediction. In: International conference on machine learning, PMLR, pp 2402–2411 Belbute-Peres FDA, Economon T, Kolter Z (2020) Combining differentiable pde solvers and graph neural networks for fluid flow prediction. In: International conference on machine learning, PMLR, pp 2402–2411
go back to reference Bodie M, Russell G, McCarthy K, Lucas E, Zumberge J, Wolff M (2010) Thermal analysis of an integrated aircraft model. In: 48th AIAA aerospace sciences meeting including the new horizons forum and aerospace exposition, p 288 Bodie M, Russell G, McCarthy K, Lucas E, Zumberge J, Wolff M (2010) Thermal analysis of an integrated aircraft model. In: 48th AIAA aerospace sciences meeting including the new horizons forum and aerospace exposition, p 288
go back to reference Cai S, Wang Z, Wang S, Perdikaris P, Karniadakis GE (2021) Physics-informed neural networks for heat transfer problems. J Heat Transf 143(6):060801CrossRef Cai S, Wang Z, Wang S, Perdikaris P, Karniadakis GE (2021) Physics-informed neural networks for heat transfer problems. J Heat Transf 143(6):060801CrossRef
go back to reference Capuano G, Rimoli JJ (2019) Smart finite elements: a novel machine learning application. Comput Methods Appl Mech Eng 345:363–381MathSciNetCrossRefMATH Capuano G, Rimoli JJ (2019) Smart finite elements: a novel machine learning application. Comput Methods Appl Mech Eng 345:363–381MathSciNetCrossRefMATH
go back to reference Chen C, Taha TM (2014) A communication reduction approach to iteratively solve large sparse linear systems on a gpgpu cluster. Clust Comput 17(2):327–337CrossRef Chen C, Taha TM (2014) A communication reduction approach to iteratively solve large sparse linear systems on a gpgpu cluster. Clust Comput 17(2):327–337CrossRef
go back to reference Chen X, Chen X, Zhou W, Zhang J, Yao W (2020) The heat source layout optimization using deep learning surrogate modeling. Struct Multidisc Optim 62(6):3127–3148CrossRef Chen X, Chen X, Zhou W, Zhang J, Yao W (2020) The heat source layout optimization using deep learning surrogate modeling. Struct Multidisc Optim 62(6):3127–3148CrossRef
go back to reference Chen X, Zhao X, Gong Z, Zhang J, Zhou W, Chen X, Yao W (2021) A deep neural network surrogate modeling benchmark for temperature field prediction of heat source layout. Sci China Phys Mech Astron 64(11):1–30CrossRef Chen X, Zhao X, Gong Z, Zhang J, Zhou W, Chen X, Yao W (2021) A deep neural network surrogate modeling benchmark for temperature field prediction of heat source layout. Sci China Phys Mech Astron 64(11):1–30CrossRef
go back to reference Dasari SK, Cheddad A, Andersson P (2019) Random forest surrogate models to support design space exploration in aerospace use-case. In: IFIP international conference on artificial intelligence applications and innovations, Springer, pp 532–544 Dasari SK, Cheddad A, Andersson P (2019) Random forest surrogate models to support design space exploration in aerospace use-case. In: IFIP international conference on artificial intelligence applications and innovations, Springer, pp 532–544
go back to reference Edalatifar M, Tavakoli MB, Ghalambaz M, Setoudeh F (2021) Using deep learning to learn physics of conduction heat transfer. J Therm Anal Calorim 146(3):1435–1452CrossRef Edalatifar M, Tavakoli MB, Ghalambaz M, Setoudeh F (2021) Using deep learning to learn physics of conduction heat transfer. J Therm Anal Calorim 146(3):1435–1452CrossRef
go back to reference Gao H, Sun L, Wang JX (2021) Phygeonet: physics-informed geometry-adaptive convolutional neural networks for solving parameterized steady-state pdes on irregular domain. J Comput Phys 428:110079MathSciNetCrossRefMATH Gao H, Sun L, Wang JX (2021) Phygeonet: physics-informed geometry-adaptive convolutional neural networks for solving parameterized steady-state pdes on irregular domain. J Comput Phys 428:110079MathSciNetCrossRefMATH
go back to reference Gao H, Zahr MJ, Wang JX (2022) Physics-informed graph neural galerkin networks: a unified framework for solving pde-governed forward and inverse problems. Comput Methods Appl Mech Eng 390:114502MathSciNetCrossRefMATH Gao H, Zahr MJ, Wang JX (2022) Physics-informed graph neural galerkin networks: a unified framework for solving pde-governed forward and inverse problems. Comput Methods Appl Mech Eng 390:114502MathSciNetCrossRefMATH
go back to reference Hannat R, Weiss J, Garnier F, Morency F (2014) Application of the dual kriging method for the design of hot-air-based aircraft wing anti-icing system. Eng Appl Comput Fluid Mech 8(4):530–548 Hannat R, Weiss J, Garnier F, Morency F (2014) Application of the dual kriging method for the design of hot-air-based aircraft wing anti-icing system. Eng Appl Comput Fluid Mech 8(4):530–548
go back to reference Kalpakli Vester A, Örlü R, Alfredsson PH (2015) Pod analysis of the turbulent flow downstream a mild and sharp bend. Exp Fluids 56(3):1–15CrossRef Kalpakli Vester A, Örlü R, Alfredsson PH (2015) Pod analysis of the turbulent flow downstream a mild and sharp bend. Exp Fluids 56(3):1–15CrossRef
go back to reference Li Y, Sundararajan N, Saratchandran P (2001) Neuro-controller design for nonlinear fighter aircraft maneuver using fully tuned rbf networks. Automatica 37(8):1293–1301MathSciNetCrossRefMATH Li Y, Sundararajan N, Saratchandran P (2001) Neuro-controller design for nonlinear fighter aircraft maneuver using fully tuned rbf networks. Automatica 37(8):1293–1301MathSciNetCrossRefMATH
go back to reference Li Z, Kovachki N, Azizzadenesheli K, Liu B, Bhattacharya K, Stuart A, Anandkumar A (2020) Fourier neural operator for parametric partial differential equations. arXiv preprint arXiv:2010.08895 Li Z, Kovachki N, Azizzadenesheli K, Liu B, Bhattacharya K, Stuart A, Anandkumar A (2020) Fourier neural operator for parametric partial differential equations. arXiv preprint arXiv:​2010.​08895
go back to reference Lin TY, Dollár P, Girshick R, He K, Hariharan B, Belongie S (2017) Feature pyramid networks for object detection. In: Proceedings of the IEEE conference on computer vision and pattern recognition, pp 2117–2125 Lin TY, Dollár P, Girshick R, He K, Hariharan B, Belongie S (2017) Feature pyramid networks for object detection. In: Proceedings of the IEEE conference on computer vision and pattern recognition, pp 2117–2125
go back to reference Lye KO, Mishra S, Molinaro R (2021) A multi-level procedure for enhancing accuracy of machine learning algorithms. Eur J Appl Math 32(3):436–469MathSciNetCrossRefMATH Lye KO, Mishra S, Molinaro R (2021) A multi-level procedure for enhancing accuracy of machine learning algorithms. Eur J Appl Math 32(3):436–469MathSciNetCrossRefMATH
go back to reference Ma H, Hu X, Zhang Y, Thuerey N, Haidn OJ (2020) A combined data-driven and physics-driven method for steady heat conduction prediction using deep convolutional neural networks. arXiv preprint arXiv:2005.08119 Ma H, Hu X, Zhang Y, Thuerey N, Haidn OJ (2020) A combined data-driven and physics-driven method for steady heat conduction prediction using deep convolutional neural networks. arXiv preprint arXiv:​2005.​08119
go back to reference Majumdar S, Iaccarino G, Durbin P (2001) RANS solvers with adaptive structured boundary non-conforming grids. Annual Research Briefs, NASA Ames Research Center 353–366 Majumdar S, Iaccarino G, Durbin P (2001) RANS solvers with adaptive structured boundary non-conforming grids. Annual Research Briefs, NASA Ames Research Center 353–366
go back to reference Moraes A, Lage P, Cunha G, da Silva L (2013) Analysis of the non-orthogonality correction of finite volume discretization on unstructured meshes. In: Proceedings of the 22nd international congress of mechanical engineering, Ribeirão Preto, Brazil, pp 3–7 Moraes A, Lage P, Cunha G, da Silva L (2013) Analysis of the non-orthogonality correction of finite volume discretization on unstructured meshes. In: Proceedings of the 22nd international congress of mechanical engineering, Ribeirão Preto, Brazil, pp 3–7
go back to reference Munk DJ, Verstraete D, Vio GA (2017) Effect of fluid-thermal-structural interactions on the topology optimization of a hypersonic transport aircraft wing. J Fluids Struct 75:45–76CrossRef Munk DJ, Verstraete D, Vio GA (2017) Effect of fluid-thermal-structural interactions on the topology optimization of a hypersonic transport aircraft wing. J Fluids Struct 75:45–76CrossRef
go back to reference Ogoke F, Meidani K, Hashemi A, Farimani AB (2021) Graph convolutional networks applied to unstructured flow field data. Mach Learn: Sci Technol 2(4):045020 Ogoke F, Meidani K, Hashemi A, Farimani AB (2021) Graph convolutional networks applied to unstructured flow field data. Mach Learn: Sci Technol 2(4):045020
go back to reference Raissi M, Perdikaris P, Karniadakis GE (2019) Physics-informed neural networks: a deep learning framework for solving forward and inverse problems involving nonlinear partial differential equations. J Comput Phys 378:686–707MathSciNetCrossRefMATH Raissi M, Perdikaris P, Karniadakis GE (2019) Physics-informed neural networks: a deep learning framework for solving forward and inverse problems involving nonlinear partial differential equations. J Comput Phys 378:686–707MathSciNetCrossRefMATH
go back to reference Ronneberger O, Fischer P, Brox T (2015) U-net: Convolutional networks for biomedical image segmentation. In: International conference on medical image computing and computer-assisted intervention, Springer, pp 234–241 Ronneberger O, Fischer P, Brox T (2015) U-net: Convolutional networks for biomedical image segmentation. In: International conference on medical image computing and computer-assisted intervention, Springer, pp 234–241
go back to reference Sanchez F, Liscouet-Hanke S (2020) Thermal risk prediction methodology for conceptual design of aircraft equipment bays. Aerosp Sci Technol 104:105946CrossRef Sanchez F, Liscouet-Hanke S (2020) Thermal risk prediction methodology for conceptual design of aircraft equipment bays. Aerosp Sci Technol 104:105946CrossRef
go back to reference Sharma R, Farimani AB, Gomes J, Eastman P, Pande V (2018) Weakly-supervised deep learning of heat transport via physics informed loss. arXiv preprint arXiv:1807.11374 Sharma R, Farimani AB, Gomes J, Eastman P, Pande V (2018) Weakly-supervised deep learning of heat transport via physics informed loss. arXiv preprint arXiv:​1807.​11374
go back to reference Thompson JF, Thames FC, Mastin CW (1974) Automatic numerical generation of body-fitted curvilinear coordinate system for field containing any number of arbitrary two-dimensional bodies. J Comput Phys 15(3):299–319CrossRefMATH Thompson JF, Thames FC, Mastin CW (1974) Automatic numerical generation of body-fitted curvilinear coordinate system for field containing any number of arbitrary two-dimensional bodies. J Comput Phys 15(3):299–319CrossRefMATH
go back to reference Thompson JF, Warsi ZU, Mastin CW (1982) Boundary-fitted coordinate systems for numerical solution of partial differential equations-a review. J Comput Phys 47(1):1–108MathSciNetCrossRefMATH Thompson JF, Warsi ZU, Mastin CW (1982) Boundary-fitted coordinate systems for numerical solution of partial differential equations-a review. J Comput Phys 47(1):1–108MathSciNetCrossRefMATH
go back to reference Towne A, Schmidt OT, Colonius T (2018) Spectral proper orthogonal decomposition and its relationship to dynamic mode decomposition and resolvent analysis. J Fluid Mech 847:821–867MathSciNetCrossRefMATH Towne A, Schmidt OT, Colonius T (2018) Spectral proper orthogonal decomposition and its relationship to dynamic mode decomposition and resolvent analysis. J Fluid Mech 847:821–867MathSciNetCrossRefMATH
go back to reference Wang H, Planas R, Chandramowlishwaran A, Bostanabad R (2022) Mosaic flows: a transferable deep learning framework for solving pdes on unseen domains. Comput Methods Appl Mech Eng 389:114424MathSciNetCrossRefMATH Wang H, Planas R, Chandramowlishwaran A, Bostanabad R (2022) Mosaic flows: a transferable deep learning framework for solving pdes on unseen domains. Comput Methods Appl Mech Eng 389:114424MathSciNetCrossRefMATH
go back to reference Yao H, Gao Y, Liu Y (2020) Fea-net: a physics-guided data-driven model for efficient mechanical response prediction. Comput Methods Appl Mech Eng 363:112892MathSciNetCrossRefMATH Yao H, Gao Y, Liu Y (2020) Fea-net: a physics-guided data-driven model for efficient mechanical response prediction. Comput Methods Appl Mech Eng 363:112892MathSciNetCrossRefMATH
go back to reference Zakeri B, Monsefi AK, Darafarin B (2019) Deep learning prediction of heat propagation on 2-d domain via numerical solution. In: The 7th international conference on contemporary issues in data science, Springer, pp 161–174 Zakeri B, Monsefi AK, Darafarin B (2019) Deep learning prediction of heat propagation on 2-d domain via numerical solution. In: The 7th international conference on contemporary issues in data science, Springer, pp 161–174
go back to reference Zhao X, Gong Z, Zhang J, Yao W, Chen X (2021a) A surrogate model with data augmentation and deep transfer learning for temperature field prediction of heat source layout. Struct Multidisc Optim 64(4):2287–2306CrossRef Zhao X, Gong Z, Zhang J, Yao W, Chen X (2021a) A surrogate model with data augmentation and deep transfer learning for temperature field prediction of heat source layout. Struct Multidisc Optim 64(4):2287–2306CrossRef
go back to reference Zhao X, Gong Z, Zhang Y, Yao W, Chen X (2021b) Physics-informed convolutional neural networks for temperature field prediction of heat source layout without labeled data. arXiv preprint arXiv:2109.12482 Zhao X, Gong Z, Zhang Y, Yao W, Chen X (2021b) Physics-informed convolutional neural networks for temperature field prediction of heat source layout without labeled data. arXiv preprint arXiv:​2109.​12482
Metadata
Title
A physics and data co-driven surrogate modeling approach for temperature field prediction on irregular geometric domain
Authors
Kairui Bao
Wen Yao
Xiaoya Zhang
Wei Peng
Yu Li
Publication date
01-10-2022
Publisher
Springer Berlin Heidelberg
Published in
Structural and Multidisciplinary Optimization / Issue 10/2022
Print ISSN: 1615-147X
Electronic ISSN: 1615-1488
DOI
https://doi.org/10.1007/s00158-022-03383-x

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