Papers
Topics
Authors
Recent
Gemini 2.5 Flash
Gemini 2.5 Flash
166 tokens/sec
GPT-4o
7 tokens/sec
Gemini 2.5 Pro Pro
42 tokens/sec
o3 Pro
4 tokens/sec
GPT-4.1 Pro
38 tokens/sec
DeepSeek R1 via Azure Pro
28 tokens/sec
2000 character limit reached

Geometry-aware framework for deep energy method: an application to structural mechanics with hyperelastic materials (2405.03427v1)

Published 6 May 2024 in cs.LG

Abstract: Physics-Informed Neural Networks (PINNs) have gained considerable interest in diverse engineering domains thanks to their capacity to integrate physical laws into deep learning models. Recently, geometry-aware PINN-based approaches that employ the strong form of underlying physical system equations have been developed with the aim of integrating geometric information into PINNs. Despite ongoing research, the assessment of PINNs in problems with various geometries remains an active area of investigation. In this work, we introduce a novel physics-informed framework named the Geometry-Aware Deep Energy Method (GADEM) for solving structural mechanics problems on different geometries. As the weak form of the physical system equation (or the energy-based approach) has demonstrated clear advantages compared to the strong form for solving solid mechanics problems, GADEM employs the weak form and aims to infer the solution on multiple shapes of geometries. Integrating a geometry-aware framework into an energy-based method results in an effective physics-informed deep learning model in terms of accuracy and computational cost. Different ways to represent the geometric information and to encode the geometric latent vectors are investigated in this work. We introduce a loss function of GADEM which is minimized based on the potential energy of all considered geometries. An adaptive learning method is also employed for the sampling of collocation points to enhance the performance of GADEM. We present some applications of GADEM to solve solid mechanics problems, including a loading simulation of a toy tire involving contact mechanics and large deformation hyperelasticity. The numerical results of this work demonstrate the remarkable capability of GADEM to infer the solution on various and new shapes of geometries using only one trained model.

Definition Search Book Streamline Icon: https://streamlinehq.com
References (65)
  1. Enhanced physics-informed neural networks for hyperelasticity. International Journal for Numerical Methods in Engineering, 124(7):1585–1601, 2023.
  2. William F Ames. Numerical methods for partial differential equations. Academic press, 2014.
  3. David Amsallem. Interpolation on manifolds of CFD-based fluid and finite element-based structural reduced-order models for on-line aeroelastic predictions. Stanford University, 2010.
  4. Uncovering near-wall blood flow from sparse data with physics-informed neural networks. Physics of Fluids, 33(7), 2021.
  5. Automatic differentiation in machine learning: a survey. Journal of machine learning research, 18, 2018.
  6. A unified deep artificial neural network approach to partial differential equations in complex geometries. Neurocomputing, 317:28–41, 2018.
  7. Nonparametric boundary geometry in physics informed deep learning. Advances in Neural Information Processing Systems, 36, 2024.
  8. Optimizing hyperparameters and architecture of deep energy method. 2022.
  9. Tgm-nets: A deep learning framework for enhanced forecasting of tumor growth by integrating imaging and modeling. Engineering Applications of Artificial Intelligence, 126:106867, 2023.
  10. Physics-informed neural networks for inverse problems in nano-optics and metamaterials. Optics express, 28(8):11618–11633, 2020.
  11. Rethinking the importance of sampling in physics-informed neural networks. arXiv preprint arXiv:2207.02338, 2022.
  12. A posteriori error analysis and adaptive processes in the finite element method: Part ii—adaptive mesh refinement. International journal for numerical methods in engineering, 19(11):1621–1656, 1983.
  13. Zhiwei Fang. A high-efficient hybrid physics-informed neural networks based on convolutional neural network. IEEE Transactions on Neural Networks and Learning Systems, 33(10):5514–5526, 2021.
  14. Les éléments finis: de la théorie à la pratique. Université Laval, 2011.
  15. The mixed deep energy method for resolving concentration features in finite strain hyperelasticity. Journal of Computational Physics, 451:110839, 2022.
  16. Phygeonet: Physics-informed geometry-adaptive convolutional neural networks for solving parameterized steady-state pdes on irregular domain. Journal of Computational Physics, 428:110079, 2021.
  17. A physics-informed deep learning framework for inversion and surrogate modeling in solid mechanics. Computer Methods in Applied Mechanics and Engineering, 379:113741, 2021.
  18. Extended physics-informed neural networks (xpinns): A generalized space-time domain decomposition based deep learning framework for nonlinear partial differential equations. In AAAI spring symposium: MLPS, volume 10, 2021.
  19. Locally adaptive activation functions with slope recovery for deep and physics-informed neural networks. Proceedings of the Royal Society A, 476(2239):20200334, 2020a.
  20. Adaptive activation functions accelerate convergence in deep and physics-informed neural networks. Journal of Computational Physics, 404:109136, 2020b.
  21. Deep kronecker neural networks: A general framework for neural networks with adaptive activation functions. Neurocomputing, 468:165–180, 2022.
  22. Ian T Jolliffe. Principal component analysis for special types of data. Springer, 2002.
  23. Physics-informed machine learning. Nature Reviews Physics, 3(6):422–440, 2021.
  24. Physics-informed pointnet: A deep learning solver for steady-state incompressible flows and thermal fields on multiple sets of irregular geometries. Journal of Computational Physics, 468:111510, 2022.
  25. Variational physics-informed neural networks for solving partial differential equations. arXiv preprint arXiv:1912.00873, 2019.
  26. Hybrid discretization of the signorini problem with coulomb friction. theoretical aspects and comparison of some numerical solvers. Applied Numerical Mathematics, 56(2):163–192, 2006.
  27. An introduction to variational autoencoders. Foundations and Trends® in Machine Learning, 12(4):307–392, 2019.
  28. Machine learning in cardiovascular flows modeling: Predicting arterial blood pressure from non-invasive 4d flow mri data using physics-informed neural networks. Computer Methods in Applied Mechanics and Engineering, 358:112623, 2020.
  29. Adversarial deep energy method for solving saddle point problems involving dielectric elastomers. Computer Methods in Applied Mechanics and Engineering, 421:116825, 2024.
  30. A physics-guided neural network framework for elastic plates: Comparison of governing equations-based and energy-based approaches. Computer Methods in Applied Mechanics and Engineering, 383:113933, 2021.
  31. Fourier neural operator for parametric partial differential equations. arXiv preprint arXiv:2010.08895, 2020.
  32. Fourier neural operator with learned deformations for pdes on general geometries. Journal of Machine Learning Research, 24(388):1–26, 2023.
  33. Solving differential equation with constrained multilayer feedforward network. arXiv preprint arXiv:1904.06619, 2019.
  34. Automated solution of differential equations by the finite element method: The FEniCS book, volume 84. Springer Science & Business Media, 2012.
  35. Deepxde: A deep learning library for solving differential equations. SIAM Review, 63(1):208–228, 2021a.
  36. Physics-informed neural networks with hard constraints for inverse design. SIAM Journal on Scientific Computing, 43(6):B1105–B1132, 2021b.
  37. Self-adaptive physics-informed neural networks using a soft attention mechanism. arXiv preprint arXiv:2009.04544, 2020.
  38. Finite basis physics-informed neural networks (fbpinns): a scalable domain decomposition approach for solving differential equations. Advances in Computational Mathematics, 49(4):62, 2023.
  39. Physics-informed neural networks for non-newtonian fluid thermo-mechanical problems: An application to rubber calendering process. Engineering Applications of Artificial Intelligence, 114:105176, 2022.
  40. Fixed-budget online adaptive learning for physics-informed neural networks. towards parameterized problem inference. In International Conference on Computational Science, pages 453–468. Springer, 2023.
  41. A deep energy method for finite deformation hyperelasticity. European Journal of Mechanics-A/Solids, 80:103874, 2020.
  42. Parametric deep energy approach for elasticity accounting for strain gradient effects. Computer Methods in Applied Mechanics and Engineering, 386:114096, 2021.
  43. Geometry aware physics informed neural network surrogate for solving navier–stokes equation (gapinn). Advanced Modeling and Simulation in Engineering Sciences, 9(1):8, 2022.
  44. fpinns: Fractional physics-informed neural networks. SIAM Journal on Scientific Computing, 41(4):A2603–A2626, 2019.
  45. A mixed formulation for the finite element solution of contact problems. Computer Methods in Applied Mechanics and Engineering, 94(3):373–389, 1992.
  46. Rang: A residual-based adaptive node generation method for physics-informed neural networks. arXiv preprint arXiv:2205.01051, 2022.
  47. Numerical approximation of partial differential equations, volume 23. Springer Science & Business Media, 2008.
  48. Universal differential equations for scientific machine learning. arXiv preprint arXiv:2001.04385, 2020.
  49. Physics-informed neural networks: A deep learning framework for solving forward and inverse problems involving nonlinear partial differential equations. Journal of Computational Physics, 378:686–707, 2019.
  50. Phycrnet: Physics-informed convolutional-recurrent network for solving spatiotemporal pdes. Computer Methods in Applied Mechanics and Engineering, 389:114399, 2022.
  51. Y Renard and J Pommier. Getfem finite element library. URL: http://home. gna. org/getfem, 2007.
  52. Solving forward and inverse problems of contact mechanics using physics-informed neural networks. arXiv preprint arXiv:2308.12716, 2023.
  53. An energy approach to the solution of partial differential equations in computational mechanics via machine learning: Concepts, implementation and applications. Computer Methods in Applied Mechanics and Engineering, 362:112790, 2020.
  54. Operator learning with neural fields: Tackling pdes on general geometries. Advances in Neural Information Processing Systems, 36, 2024.
  55. A physics-informed neural network for quantifying the microstructural properties of polycrystalline nickel using ultrasound data: A promising approach for solving inverse problems. IEEE Signal Processing Magazine, 39(1):68–77, 2021.
  56. Physics informed neural networks: A case study for gas transport problems. Journal of Computational Physics, 481:112041, 2023.
  57. Laurens Van der Maaten and Geoffrey Hinton. Visualizing data using t-sne. Journal of machine learning research, 9(11), 2008.
  58. Understanding and mitigating gradient pathologies in physics-informed neural networks. arXiv preprint arXiv:2001.04536, 2020a.
  59. When and why pinns fail to train: A neural tangent kernel perspective. arXiv preprint arXiv:2007.14527, 2020b.
  60. Respecting causality is all you need for training physics-informed neural networks. arXiv preprint arXiv:2203.07404, 2022.
  61. A comprehensive study of non-adaptive and residual-based adaptive sampling for physics-informed neural networks. Computer Methods in Applied Mechanics and Engineering, 403:115671, 2023.
  62. B-pinns: Bayesian physics-informed neural networks for forward and inverse pde problems with noisy data. Journal of Computational Physics, 425:109913, 2021.
  63. How does learning rate decay help modern neural networks? arXiv preprint arXiv:1908.01878, 2019.
  64. Bing Yu et al. The deep ritz method: a deep learning-based numerical algorithm for solving variational problems. Communications in Mathematics and Statistics, 6(1):1–12, 2018.
  65. Adaptive deep neural networks methods for high-dimensional partial differential equations. Journal of Computational Physics, 463:111232, 2022.

Summary

We haven't generated a summary for this paper yet.