Design of Turing Systems with Physics-Informed Neural Networks

被引:1
|
作者
Kho, Jordon [1 ]
Koh, Winston [2 ]
Wong, Jian Cheng [3 ]
Chiu, Pao-Hsiung [3 ]
Ooi, Chin Chun [4 ]
机构
[1] Nanyang Technol Univ, Sch Engn & Comp Sci, Singapore, Singapore
[2] ASTAR, Bioinformat Inst, Inst Bioengn & Bioimaging, Singapore, Singapore
[3] Inst High Performance Comp, Dept Fluid Dynam, Singapore, Singapore
[4] Ctr Frontier AI Res, Inst High Performance Comp, Dept Fluid Dynam, Singapore, Singapore
关键词
Data-driven discovery; non-linear partial differential equations; parameter inference; physics-informed neural networks; reaction-diffusion; SPATIAL-PATTERN FORMATION; DIFFUSION; FRAMEWORK; MODEL;
D O I
10.1109/SSCI51031.2022.10022026
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Reaction-diffusion (Turing) systems are fundamental to the formation of spatial patterns in nature and engineering. These systems are governed by a set of non-linear partial differential equations containing parameters that determine the rate of constituent diffusion and reaction. Critically, these parameters, such as diffusion coefficient, heavily influence the mode and type of the final pattern, and quantitative characterization and knowledge of these parameters can aid in bio-mimetic design or understanding of real-world systems. However, the use of numerical methods to infer these parameters can be difficult and computationally expensive. Typically, adjoint solvers may be used, but they are frequently unstable for very non-linear systems. Alternatively, massive amounts of iterative forward simulations are used to find the best match, but this is extremely effortful. Recently, physics-informed neural networks have been proposed as a means for data-driven discovery of partial differential equations, and have seen success in various applications. Thus, we investigate the use of physics-informed neural networks as a tool to infer key parameters in reactiondiffusion systems in the steady-state for scientific discovery or design. Our proof-of-concept results show that the method is able to infer parameters for different pattern modes and types with errors of less than 10%. In addition, the stochastic nature of this method can be exploited to provide multiple parameter alternatives to the desired pattern, highlighting the versatility of this method for bio-mimetic design. This work thus demonstrates the utility of physics-informed neural networks for inverse parameter inference of reaction-diffusion systems to enhance scientific discovery and design.
引用
收藏
页码:1180 / 1186
页数:7
相关论文
共 50 条
  • [31] Physics-Informed Neural Networks for Cardiac Activation Mapping
    Costabal, Francisco Sahli
    Yang, Yibo
    Perdikaris, Paris
    Hurtado, Daniel E.
    Kuhl, Ellen
    [J]. FRONTIERS IN PHYSICS, 2020, 8
  • [32] Self-adaptive physics-informed neural networks
    McClenny, Levi D.
    Braga-Neto, Ulisses M.
    [J]. JOURNAL OF COMPUTATIONAL PHYSICS, 2023, 474
  • [33] Δ-PINNs: Physics-informed neural networks on complex geometries
    Costabal, Francisco Sahli
    Pezzuto, Simone
    Perdikaris, Paris
    [J]. ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2024, 127
  • [34] Stiff-PDEs and Physics-Informed Neural Networks
    Sharma, Prakhar
    Evans, Llion
    Tindall, Michelle
    Nithiarasu, Perumal
    [J]. ARCHIVES OF COMPUTATIONAL METHODS IN ENGINEERING, 2023, 30 (05) : 2929 - 2958
  • [35] Physics-Informed Neural Networks with Group Contribution Methods
    Babaei, Mohammad Reza
    Stone, Ryan
    Knotts, Thomas Allen
    Hedengren, John
    [J]. JOURNAL OF CHEMICAL THEORY AND COMPUTATION, 2023, 19 (13) : 4163 - 4171
  • [36] Multifidelity modeling for Physics-Informed Neural Networks (PINNs)
    Penwarden, Michael
    Zhe, Shandian
    Narayan, Akil
    Kirby, Robert M.
    [J]. JOURNAL OF COMPUTATIONAL PHYSICS, 2022, 451
  • [37] Adversarial uncertainty quantification in physics-informed neural networks
    Yang, Yibo
    Perdikaris, Paris
    [J]. JOURNAL OF COMPUTATIONAL PHYSICS, 2019, 394 : 136 - 152
  • [38] Error Analysis of Physics-Informed Neural Networks (PINNs) in Typical Dynamical Systems
    Ying, Sia Jye
    Kheng, Goh Yong
    Hui, Liew How
    Fah, Chang Yun
    [J]. JURNAL FIZIK MALAYSIA, 2023, 44 (01): : 10044 - 10051
  • [39] Special Session: Physics-Informed Neural Networks for Securing Water Distribution Systems
    Falas, Solon
    Konstantinou, Charalambos
    Michael, Maria K.
    [J]. 2020 IEEE 38TH INTERNATIONAL CONFERENCE ON COMPUTER DESIGN (ICCD 2020), 2020, : 37 - 40
  • [40] Physics-informed neural networks for spherical indentation problems
    Marimuthu, Karuppasamy Pandian
    Lee, Hyungyil
    [J]. MATERIALS & DESIGN, 2023, 236