Real-Time 2D Temperature Field Prediction in Metal Additive
Manufacturing Using Physics-Informed Neural Networks
- URL: http://arxiv.org/abs/2401.02403v1
- Date: Thu, 4 Jan 2024 18:42:28 GMT
- Title: Real-Time 2D Temperature Field Prediction in Metal Additive
Manufacturing Using Physics-Informed Neural Networks
- Authors: Pouyan Sajadi, Mostafa Rahmani Dehaghani, Yifan Tang, G. Gary Wang
- Abstract summary: Accurately predicting the temperature field in metal additive manufacturing processes is critical to preventing overheating, adjusting process parameters, and ensuring process stability.
We introduce a physics-informed neural network framework specifically designed for temperature field prediction in metal AM.
We validate the proposed framework in two scenarios: full-field temperature prediction for a thin wall and 2D temperature field prediction for cylinder and cubic parts, demonstrating errors below 3% and 1%, respectively.
- Score: 1.9116784879310036
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Accurately predicting the temperature field in metal additive manufacturing
(AM) processes is critical to preventing overheating, adjusting process
parameters, and ensuring process stability. While physics-based computational
models offer precision, they are often time-consuming and unsuitable for
real-time predictions and online control in iterative design scenarios.
Conversely, machine learning models rely heavily on high-quality datasets,
which can be costly and challenging to obtain within the metal AM domain. Our
work addresses this by introducing a physics-informed neural network framework
specifically designed for temperature field prediction in metal AM. This
framework incorporates a physics-informed input, physics-informed loss
function, and a Convolutional Long Short-Term Memory (ConvLSTM) architecture.
Utilizing real-time temperature data from the process, our model predicts 2D
temperature fields for future timestamps across diverse geometries, deposition
patterns, and process parameters. We validate the proposed framework in two
scenarios: full-field temperature prediction for a thin wall and 2D temperature
field prediction for cylinder and cubic parts, demonstrating errors below 3%
and 1%, respectively. Our proposed framework exhibits the flexibility to be
applied across diverse scenarios with varying process parameters, geometries,
and deposition patterns.
Related papers
- Generalizing Weather Forecast to Fine-grained Temporal Scales via Physics-AI Hybrid Modeling [55.13352174687475]
This paper proposes a physics-AI hybrid model (i.e., WeatherGFT) which Generalizes weather forecasts to Finer-grained Temporal scales.
Specifically, we employ a carefully designed PDE kernel to simulate physical evolution on a small time scale.
We introduce a lead time-aware training framework to promote the generalization of the model at different lead times.
arXiv Detail & Related papers (2024-05-22T16:21:02Z) - Towards a Digital Twin Framework in Additive Manufacturing: Machine
Learning and Bayesian Optimization for Time Series Process Optimization [10.469801991143546]
Laser-directed-energy deposition (DED) offers advantages in additive manufacturing (AM) for creating intricate geometries and material grading.
A key issue is heat accumulation during DED, which affects the material microstructure and properties.
We present a digital twin (DT) framework for real-time predictive control of DED process parameters to meet specific design objectives.
arXiv Detail & Related papers (2024-02-27T17:53:13Z) - Temperature Balancing, Layer-wise Weight Analysis, and Neural Network
Training [58.20089993899729]
This paper proposes TempBalance, a straightforward yet effective layerwise learning rate method.
We show that TempBalance significantly outperforms ordinary SGD and carefully-tuned spectral norm regularization.
We also show that TempBalance outperforms a number of state-of-the-art metrics and schedulers.
arXiv Detail & Related papers (2023-12-01T05:38:17Z) - Capturing Local Temperature Evolution during Additive Manufacturing
through Fourier Neural Operators [0.0]
This paper presents a data-driven model that captures the local temperature evolution during the additive manufacturing process.
It is tested on numerical simulations based on the Discontinuous Galerkin Finite Element Method for the Direct Energy Deposition process.
The results demonstrate that the model achieves high fidelity as measured by $R2$ and maintains generalizability to geometries that were not included in the training process.
arXiv Detail & Related papers (2023-07-04T16:17:59Z) - Physics-constrained deep learning postprocessing of temperature and
humidity [0.0]
We propose to achieve physical consistency in deep learning-based postprocessing models.
We find that constraining a neural network to enforce thermodynamic state equations yields physically-consistent predictions.
arXiv Detail & Related papers (2022-12-07T09:31:25Z) - MAgNet: Mesh Agnostic Neural PDE Solver [68.8204255655161]
Climate predictions require fine-temporal resolutions to resolve all turbulent scales in the fluid simulations.
Current numerical model solveers PDEs on grids that are too coarse (3km to 200km on each side)
We design a novel architecture that predicts the spatially continuous solution of a PDE given a spatial position query.
arXiv Detail & Related papers (2022-10-11T14:52:20Z) - A physics and data co-driven surrogate modeling approach for temperature
field prediction on irregular geometric domain [12.264200001067797]
We propose a novel physics and data co-driven surrogate modeling method for temperature field prediction.
Numerical results demonstrate that our method can significantly improve accuracy prediction on a smaller dataset.
arXiv Detail & Related papers (2022-03-15T08:43:24Z) - Deep learning for surrogate modelling of 2D mantle convection [1.7499351967216341]
We show that deep learning techniques can produce reliable parameterized surrogates of partial differential equations.
We first use convolutional autoencoders to compress the temperature fields by a factor of 142.
We then use FNN and long-short term memory networks (LSTM) to predict the compressed fields.
arXiv Detail & Related papers (2021-08-23T12:13:04Z) - Physics-Integrated Variational Autoencoders for Robust and Interpretable
Generative Modeling [86.9726984929758]
We focus on the integration of incomplete physics models into deep generative models.
We propose a VAE architecture in which a part of the latent space is grounded by physics.
We demonstrate generative performance improvements over a set of synthetic and real-world datasets.
arXiv Detail & Related papers (2021-02-25T20:28:52Z) - Machine learning for rapid discovery of laminar flow channel wall
modifications that enhance heat transfer [56.34005280792013]
We present a combination of accurate numerical simulations of arbitrary, flat, and non-flat channels and machine learning models predicting drag coefficient and Stanton number.
We show that convolutional neural networks (CNN) can accurately predict the target properties at a fraction of the time of numerical simulations.
arXiv Detail & Related papers (2021-01-19T16:14:02Z) - Learning to Simulate Complex Physics with Graph Networks [68.43901833812448]
We present a machine learning framework and model implementation that can learn to simulate a wide variety of challenging physical domains.
Our framework---which we term "Graph Network-based Simulators" (GNS)--represents the state of a physical system with particles, expressed as nodes in a graph, and computes dynamics via learned message-passing.
Our results show that our model can generalize from single-timestep predictions with thousands of particles during training, to different initial conditions, thousands of timesteps, and at least an order of magnitude more particles at test time.
arXiv Detail & Related papers (2020-02-21T16:44:28Z)
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.