Thermal-Mechanical Physics Informed Deep Learning For Fast Prediction of Thermal Stress Evolution in Laser Metal Deposition
- URL: http://arxiv.org/abs/2412.18786v1
- Date: Wed, 25 Dec 2024 05:37:48 GMT
- Title: Thermal-Mechanical Physics Informed Deep Learning For Fast Prediction of Thermal Stress Evolution in Laser Metal Deposition
- Authors: R. Sharma, Y. B. Guo,
- Abstract summary: Understanding thermal stress evolution in metal additive manufacturing (AM) is crucial for producing high-quality components.
Recent advancements in machine learning (ML) have shown great potential for modeling complex multiphysics problems in metal AM.
This study introduces a physics-informed neural network (PINN) framework that incorporates governing physical laws into deep neural networks (NNs) to predict temperature and thermal stress evolution.
- Score: 0.0
- License:
- Abstract: Understanding thermal stress evolution in metal additive manufacturing (AM) is crucial for producing high-quality components. Recent advancements in machine learning (ML) have shown great potential for modeling complex multiphysics problems in metal AM. While physics-based simulations face the challenge of high computational costs, conventional data-driven ML models require large, labeled training datasets to achieve accurate predictions. Unfortunately, generating large datasets for ML model training through time-consuming experiments or high-fidelity simulations is highly expensive in metal AM. To address these challenges, this study introduces a physics-informed neural network (PINN) framework that incorporates governing physical laws into deep neural networks (NNs) to predict temperature and thermal stress evolution during the laser metal deposition (LMD) process. The study also discusses the enhanced accuracy and efficiency of the PINN model when supplemented with small simulation data. Furthermore, it highlights the PINN transferability, enabling fast predictions with a set of new process parameters using a pre-trained PINN model as an online soft sensor, significantly reducing computation time compared to physics-based numerical models while maintaining accuracy.
Related papers
- Deep Neural Operator Enabled Digital Twin Modeling for Additive Manufacturing [9.639126204112937]
A digital twin (DT) behaves as a virtual twin of the real-world physical process.
We present a deep neural operator enabled computational framework of the DT for closed-loop feedback control of the L-PBF process.
The developed DT is envisioned to guide the AM process and facilitate high-quality manufacturing.
arXiv Detail & Related papers (2024-05-13T03:53:46Z) - Physics-Informed Neural Networks with Hard Linear Equality Constraints [9.101849365688905]
This work proposes a novel physics-informed neural network, KKT-hPINN, which rigorously guarantees hard linear equality constraints.
Experiments on Aspen models of a stirred-tank reactor unit, an extractive distillation subsystem, and a chemical plant demonstrate that this model can further enhance the prediction accuracy.
arXiv Detail & Related papers (2024-02-11T17:40:26Z) - Gradual Optimization Learning for Conformational Energy Minimization [69.36925478047682]
Gradual Optimization Learning Framework (GOLF) for energy minimization with neural networks significantly reduces the required additional data.
Our results demonstrate that the neural network trained with GOLF performs on par with the oracle on a benchmark of diverse drug-like molecules.
arXiv Detail & Related papers (2023-11-05T11:48:08Z) - Physics-Informed Machine Learning of Argon Gas-Driven Melt Pool Dynamics [0.0]
Melt pool dynamics in metal additive manufacturing (AM) is critical to process stability, microstructure formation, and final properties of the printed materials.
This paper provides a physics-informed machine learning (PIML) method by integrating neural networks with the governing physical laws to predict the melt pool dynamics.
The data-efficient PINN model is attributed to the soft penalty by incorporating governing partial differential equations (PDEs), initial conditions, and boundary conditions in the PINN model.
arXiv Detail & Related papers (2023-07-23T12:12:44Z) - 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) - An Adversarial Active Sampling-based Data Augmentation Framework for
Manufacturable Chip Design [55.62660894625669]
Lithography modeling is a crucial problem in chip design to ensure a chip design mask is manufacturable.
Recent developments in machine learning have provided alternative solutions in replacing the time-consuming lithography simulations with deep neural networks.
We propose a litho-aware data augmentation framework to resolve the dilemma of limited data and improve the machine learning model performance.
arXiv Detail & Related papers (2022-10-27T20:53:39Z) - Hybrid full-field thermal characterization of additive manufacturing
processes using physics-informed neural networks with data [5.653328302363391]
We develop a hybrid physics-based data-driven thermal modeling approach of AM processes using physics-informed neural networks.
Partially observed temperature data measured from an infrared camera is combined with the physics laws to predict full-field temperature history.
Results show that the hybrid thermal model can effectively identify unknown parameters and capture the full-field temperature accurately.
arXiv Detail & Related papers (2022-06-15T18:27:10Z) - Enhanced physics-constrained deep neural networks for modeling vanadium
redox flow battery [62.997667081978825]
We propose an enhanced version of the physics-constrained deep neural network (PCDNN) approach to provide high-accuracy voltage predictions.
The ePCDNN can accurately capture the voltage response throughout the charge--discharge cycle, including the tail region of the voltage discharge curve.
arXiv Detail & Related papers (2022-03-03T19:56:24Z) - Quantum-tailored machine-learning characterization of a superconducting
qubit [50.591267188664666]
We develop an approach to characterize the dynamics of a quantum device and learn device parameters.
This approach outperforms physics-agnostic recurrent neural networks trained on numerically generated and experimental data.
This demonstration shows how leveraging domain knowledge improves the accuracy and efficiency of this characterization task.
arXiv Detail & Related papers (2021-06-24T15:58:57Z) - Machine learning for metal additive manufacturing: Predicting
temperature and melt pool fluid dynamics using physics-informed neural
networks [0.0]
We propose a physics-informed neural network (PINN) framework that fuses data and first physical principles.
This is the first application of PINN to three dimensional AM processes modeling.
The PINN can accurately predict the temperature and melt pool dynamics during metal AM processes with only a moderate amount of labeled data-sets.
arXiv Detail & Related papers (2020-07-28T20:34:38Z) - Predictive modeling approaches in laser-based material processing [59.04160452043105]
This study aims to automate and forecast the effect of laser processing on material structures.
The focus is centred on the performance of representative statistical and machine learning algorithms.
Results can set the basis for a systematic methodology towards reducing material design, testing and production cost.
arXiv Detail & Related papers (2020-06-13T17:28:52Z)
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.