Iterative Sizing Field Prediction for Adaptive Mesh Generation From Expert Demonstrations
- URL: http://arxiv.org/abs/2406.14161v1
- Date: Thu, 20 Jun 2024 10:01:22 GMT
- Title: Iterative Sizing Field Prediction for Adaptive Mesh Generation From Expert Demonstrations
- Authors: Niklas Freymuth, Philipp Dahlinger, Tobias Würth, Philipp Becker, Aleksandar Taranovic, Onno Grönheim, Luise Kärger, Gerhard Neumann,
- Abstract summary: Adaptive Meshing By Expert Reconstruction (AMBER) is an imitation learning problem.
AMBER combines a graph neural network with an online data acquisition scheme to predict the projected sizing field of an expert mesh.
We experimentally validate AMBER on 2D meshes and 3D meshes provided by a human expert, closely matching the provided demonstrations and outperforming a single-step CNN baseline.
- Score: 49.173541207550485
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Many engineering systems require accurate simulations of complex physical systems. Yet, analytical solutions are only available for simple problems, necessitating numerical approximations such as the Finite Element Method (FEM). The cost and accuracy of the FEM scale with the resolution of the underlying computational mesh. To balance computational speed and accuracy meshes with adaptive resolution are used, allocating more resources to critical parts of the geometry. Currently, practitioners often resort to hand-crafted meshes, which require extensive expert knowledge and are thus costly to obtain. Our approach, Adaptive Meshing By Expert Reconstruction (AMBER), views mesh generation as an imitation learning problem. AMBER combines a graph neural network with an online data acquisition scheme to predict the projected sizing field of an expert mesh on a given intermediate mesh, creating a more accurate subsequent mesh. This iterative process ensures efficient and accurate imitation of expert mesh resolutions on arbitrary new geometries during inference. We experimentally validate AMBER on heuristic 2D meshes and 3D meshes provided by a human expert, closely matching the provided demonstrations and outperforming a single-step CNN baseline.
Related papers
- Task-Oriented Real-time Visual Inference for IoVT Systems: A Co-design Framework of Neural Networks and Edge Deployment [61.20689382879937]
Task-oriented edge computing addresses this by shifting data analysis to the edge.
Existing methods struggle to balance high model performance with low resource consumption.
We propose a novel co-design framework to optimize neural network architecture.
arXiv Detail & Related papers (2024-10-29T19:02:54Z) - Probabilistic MIMO U-Net: Efficient and Accurate Uncertainty Estimation
for Pixel-wise Regression [1.4528189330418977]
Uncertainty estimation in machine learning is paramount for enhancing the reliability and interpretability of predictive models.
We present an adaptation of the Multiple-Input Multiple-Output (MIMO) framework for pixel-wise regression tasks.
arXiv Detail & Related papers (2023-08-14T22:08:28Z) - Conformal Predictions Enhanced Expert-guided Meshing with Graph Neural
Networks [8.736819316856748]
This paper presents a machine learning-based scheme that utilize Graph Neural Networks (GNN) and expert guidance to automatically generate CFD meshes for aircraft models.
We introduce a new 3D segmentation algorithm that outperforms two state-of-the-art models, PointNet++ and PointMLP, for surface classification.
We also present a novel approach to project predictions from 3D mesh segmentation models to CAD surfaces using the conformal predictions method.
arXiv Detail & Related papers (2023-08-14T14:39:13Z) - Multi-GPU Approach for Training of Graph ML Models on large CFD Meshes [0.0]
Mesh-based numerical solvers are an important part in many design tool chains.
Machine Learning based surrogate models are fast in predicting approximate solutions but often lack accuracy.
This paper scales a state-of-the-art surrogate model from the domain of graph-based machine learning to industry-relevant mesh sizes.
arXiv Detail & Related papers (2023-07-25T15:49:25Z) - MMGP: a Mesh Morphing Gaussian Process-based machine learning method for
regression of physical problems under non-parameterized geometrical
variability [0.30693357740321775]
We propose a machine learning method that do not rely on graph neural networks.
The proposed methodology can easily deal with large meshes without the need for explicit shape parameterization.
arXiv Detail & Related papers (2023-05-22T09:50:15Z) - Learning Controllable Adaptive Simulation for Multi-resolution Physics [86.8993558124143]
We introduce Learning controllable Adaptive simulation for Multi-resolution Physics (LAMP) as the first full deep learning-based surrogate model.
LAMP consists of a Graph Neural Network (GNN) for learning the forward evolution, and a GNN-based actor-critic for learning the policy of spatial refinement and coarsening.
We demonstrate that our LAMP outperforms state-of-the-art deep learning surrogate models, and can adaptively trade-off computation to improve long-term prediction error.
arXiv Detail & Related papers (2023-05-01T23:20:27Z) - MultiScale MeshGraphNets [65.26373813797409]
We propose two complementary approaches to improve the framework from MeshGraphNets.
First, we demonstrate that it is possible to learn accurate surrogate dynamics of a high-resolution system on a much coarser mesh.
Second, we introduce a hierarchical approach (MultiScale MeshGraphNets) which passes messages on two different resolutions.
arXiv Detail & Related papers (2022-10-02T20:16:20Z) - Adaptive Anomaly Detection for Internet of Things in Hierarchical Edge
Computing: A Contextual-Bandit Approach [81.5261621619557]
We propose an adaptive anomaly detection scheme with hierarchical edge computing (HEC)
We first construct multiple anomaly detection DNN models with increasing complexity, and associate each of them to a corresponding HEC layer.
Then, we design an adaptive model selection scheme that is formulated as a contextual-bandit problem and solved by using a reinforcement learning policy network.
arXiv Detail & Related papers (2021-08-09T08:45:47Z) - Local approximate Gaussian process regression for data-driven
constitutive laws: Development and comparison with neural networks [0.0]
We show how to use local approximate process regression to predict stress outputs at particular strain space locations.
A modified Newton-Raphson approach is proposed to accommodate for the local nature of the laGPR approximation when solving the global structural problem in a FE setting.
arXiv Detail & Related papers (2021-05-07T14:49:28Z) - Large-scale Neural Solvers for Partial Differential Equations [48.7576911714538]
Solving partial differential equations (PDE) is an indispensable part of many branches of science as many processes can be modelled in terms of PDEs.
Recent numerical solvers require manual discretization of the underlying equation as well as sophisticated, tailored code for distributed computing.
We examine the applicability of continuous, mesh-free neural solvers for partial differential equations, physics-informed neural networks (PINNs)
We discuss the accuracy of GatedPINN with respect to analytical solutions -- as well as state-of-the-art numerical solvers, such as spectral solvers.
arXiv Detail & Related papers (2020-09-08T13:26:51Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.