Papers
Topics
Authors
Recent
Gemini 2.5 Flash
Gemini 2.5 Flash
144 tokens/sec
GPT-4o
7 tokens/sec
Gemini 2.5 Pro Pro
45 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

Identifying Constitutive Parameters for Complex Hyperelastic Materials using Physics-Informed Neural Networks (2308.15640v4)

Published 29 Aug 2023 in cond-mat.mtrl-sci and cs.LG

Abstract: Identifying constitutive parameters in engineering and biological materials, particularly those with intricate geometries and mechanical behaviors, remains a longstanding challenge. The recent advent of Physics-Informed Neural Networks (PINNs) offers promising solutions, but current frameworks are often limited to basic constitutive laws and encounter practical constraints when combined with experimental data. In this paper, we introduce a robust PINN-based framework designed to identify material parameters for soft materials, specifically those exhibiting complex constitutive behaviors, under large deformation in plane stress conditions. Distinctively, our model emphasizes training PINNs with multi-modal synthetic experimental datasets consisting of full-field deformation and loading history, ensuring algorithm robustness even with noisy data. Our results reveal that the PINNs framework can accurately identify constitutive parameters of the incompressible Arruda-Boyce model for samples with intricate geometries, maintaining an error below 5%, even with an experimental noise level of 5%. We believe our framework provides a robust modulus identification approach for complex solids, especially for those with geometrical and constitutive complexity.

Definition Search Book Streamline Icon: https://streamlinehq.com
References (58)
  1. Ruga mechanics of soft-orifice closure under external pressure, Proceedings of the Royal Society A 477 (2021) 20210238.
  2. L. Treloar, Stresses and birefringence in rubber subjected to general homogeneous strain, Proceedings of the Physical Society 60 (1948) 135.
  3. Pseudoelasticity of arteries and the choice of its mathematical expression, American Journal of Physiology-Heart and Circulatory Physiology 237 (1979) H620–H631.
  4. A new constitutive framework for arterial wall mechanics and a comparative study of material models, Journal of elasticity and the physical science of solids 61 (2000) 1–48.
  5. M. S. Sacks, Biaxial mechanical evaluation of planar biological materials, Journal of elasticity and the physical science of solids 61 (2000) 199–246.
  6. M. S. Sacks, W. Sun, Multiaxial mechanical behavior of biological materials, Annual review of biomedical engineering 5 (2003) 251–284.
  7. Constitutive modeling of the anterior cruciate ligament bundles and patellar tendon with full-field methods, Journal of the Mechanics and Physics of Solids 156 (2021) 104577.
  8. H. Jin, H. D. Espinosa, Mechanical metamaterials fabricated from self-assembly: A perspective, Journal of Applied Mechanics 91 (2024) 040801.
  9. Flexible mechanical metamaterials, Nature Reviews Materials 2 (2017) 1–11.
  10. Overview of identification methods of mechanical parameters based on full-field measurements, Experimental Mechanics 48 (2008) 381–402.
  11. Bioinspired hierarchical composite design using machine learning: simulation, additive manufacturing, and experiment, Materials Horizons 5 (2018) 939–945.
  12. Dynamic fracture of a bicontinuously nanostructured copolymer: A deep-learning analysis of big-data-generating experiment, Journal of the Mechanics and Physics of Solids 164 (2022) 104898.
  13. B. Ni, H. Gao, A deep learning approach to the inverse problem of modulus identification in elasticity, MRS Bulletin 46 (2021) 19–25.
  14. A review of the application of machine learning and data mining approaches in continuum materials mechanics, Frontiers in Materials 6 (2019) 110.
  15. End-to-end deep learning method to predict complete strain and stress tensors for complex hierarchical composite microstructures, Journal of the Mechanics and Physics of Solids 154 (2021) 104506.
  16. Artificial intelligence and machine learning in design of mechanical materials, Materials Horizons 8 (2021) 1153–1172.
  17. A machine learning approach to fracture mechanics problems, Acta Materialia 190 (2020) 105–112.
  18. Prediction of composite microstructure stress-strain curves using convolutional neural networks, Materials & Design 189 (2020) 108509.
  19. Mechanical characterization and inverse design of stochastic architected metamaterials using neural operators, arXiv preprint arXiv:2311.13812 (2023a).
  20. Recent Advances and Applications of Machine Learning in Experimental Solid Mechanics: A Review, Applied Mechanics Reviews 75 (2023b) 061001. doi:10.1115/1.4062966.
  21. Physics-informed neural networks: A deep learning framework for solving forward and inverse problems involving nonlinear partial differential equations, Journal of Computational physics 378 (2019) 686–707.
  22. Physics-informed machine learning, Nature Reviews Physics 3 (2021) 422–440.
  23. A physics-informed deep learning framework for inversion and surrogate modeling in solid mechanics, Computer Methods in Applied Mechanics and Engineering 379 (2021) 113741.
  24. Physics-informed neural networks for nonhomogeneous material identification in elasticity imaging, arXiv preprint arXiv:2009.04525 (2020).
  25. Analyses of internal structures and defects in materials using physics-informed neural networks, Science advances 8 (2022) eabk0644.
  26. 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 (2021) 113933.
  27. J.-H. Bastek, D. M. Kochmann, Physics-informed neural networks for shell structures, European Journal of Mechanics-A/Solids 97 (2023) 104849.
  28. C.-T. Chen, G. X. Gu, Physics-informed deep-learning for elasticity: Forward, inverse, and mixed problems, Advanced Science (2023) 2300439.
  29. Physics informed neural networks for continuum micromechanics, Computer Methods in Applied Mechanics and Engineering 393 (2022) 114790.
  30. Modeling finite-strain plasticity using physics-informed neural network and assessment of the network performance, Journal of the Mechanics and Physics of Solids 172 (2023) 105177.
  31. Physics-informed neural networks (pinns) for fluid mechanics: A review, Acta Mechanica Sinica 37 (2021) 1727–1738.
  32. Hidden fluid mechanics: Learning velocity and pressure fields from flow visualizations, Science 367 (2020) 1026–1030.
  33. Artificial intelligence velocimetry and microaneurysm-on-a-chip for three-dimensional analysis of blood flow in physiology and disease, Proceedings of the National Academy of Sciences 118 (2021) e2100697118.
  34. Nsfnets (navier-stokes flow nets): Physics-informed neural networks for the incompressible navier-stokes equations, Journal of Computational Physics 426 (2021) 109951.
  35. Elasticity imaging using physics-informed neural networks: Spatial discovery of elastic modulus and poisson’s ratio, Acta Biomaterialia 155 (2023) 400–409.
  36. Non-invasive inference of thrombus material properties with physics-informed neural networks, Computer Methods in Applied Mechanics and Engineering 375 (2021) 113603.
  37. D. Anton, H. Wessels, Physics-informed neural networks for material model calibration from full-field displacement data, arXiv preprint arXiv:2212.07723 (2022).
  38. Calibrating constitutive models with full-field data via physics informed neural networks, Strain 59 (2023) e12431.
  39. Applications of digital-image-correlation techniques to experimental mechanics, Experimental mechanics 25 (1985) 232–244.
  40. Automatic differentiation in machine learning: a survey, Journal of Marchine Learning Research 18 (2018) 1–43.
  41. E. M. Arruda, M. C. Boyce, A three-dimensional constitutive model for the large stretch behavior of rubber elastic materials, Journal of the Mechanics and Physics of Solids 41 (1993) 389–412.
  42. D. Systèmes, Abaqus analysis user’s manual, Simulia Corp. Providence, RI, USA (2021).
  43. Deepxde: A deep learning library for solving differential equations, SIAM review 63 (2021) 208–228.
  44. D. P. Kingma, J. Ba, Adam: A method for stochastic optimization, arXiv preprint arXiv:1412.6980 (2014).
  45. D. C. Liu, J. Nocedal, On the limited memory bfgs method for large scale optimization, Mathematical programming 45 (1989) 503–528.
  46. Ponderomotive force on an optically levitated sphere in an amplitude-modulated laser beam, Nonlinear Dynamics 111 (2023) 4017–4025.
  47. H. Ashrafi, M. Shariyat, A visco‑hyperelastic model for prediction of the brain tissue response and the traumatic brain injuries, Archives of Trauma Research 6 (2017) 41–48.
  48. J. J. O’Hagan, A. Samani, Measurement of the hyperelastic properties of 44 pathological ex vivo breast tissue samples, Physics in Medicine & Biology 54 (2009) 2557.
  49. Learning nonlinear operators via deeponet based on the universal approximation theorem of operators, Nature machine intelligence 3 (2021) 218–229.
  50. Interfacing finite elements with deep neural operators for fast multiscale modeling of mechanics problems, Computer methods in applied mechanics and engineering 402 (2022) 115027.
  51. X. Yan, G. J. Diebold, Generation of high amplitude compressions and rarefactions in a photoacoustically excited droplet, Photoacoustics 23 (2021a) 100289.
  52. X. Yan, G. J. Diebold, Abel inversion of optical beam deflection signals from photoacoustic waves with symmetry in one, two, and three dimensions, Journal of Applied Physics 130 (2021b).
  53. O. H. Yeoh, Some forms of the strain energy function for rubber, Rubber Chemistry and technology 66 (1993) 754–771.
  54. A. N. Gent, A new constitutive relation for rubber, Rubber chemistry and technology 69 (1996) 59–61.
  55. Deep-green inversion to extract traction-separation relations at material interfaces, International Journal of Solids and Structures 250 (2022) 111698.
  56. Determination of stresses in incrementally deposited films from wafer-curvature measurements, Journal of Applied Mechanics 87 (2020) 101006.
  57. E. Chason, P. R. Guduru, Tutorial: Understanding residual stress in polycrystalline thin films through real-time measurements and physical models, Journal of Applied Physics 119 (2016).
  58. Modeling of surface roughness effects on stokes flow in circular pipes, Physics of Fluids 30 (2018).
Citations (4)

Summary

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