Semi Conditional Variational Auto-Encoder for Flow Reconstruction and
Uncertainty Quantification from Limited Observations
- URL: http://arxiv.org/abs/2007.09644v1
- Date: Sun, 19 Jul 2020 10:15:56 GMT
- Title: Semi Conditional Variational Auto-Encoder for Flow Reconstruction and
Uncertainty Quantification from Limited Observations
- Authors: Kristian Gundersen, Anna Oleynik, Nello Blaser, Guttorm Alendal
- Abstract summary: The model is a version of a conditional variational auto-encoder (CVAE)
We show that in our model, conditioning on the measurements from the complete flow data leads to a CVAE where only the decoder depends on the measurements.
The method, reconstructions and associated uncertainty estimates are illustrated on the velocity data from simulations of 2D flow around a cylinder and bottom currents from the Bergen Ocean Model.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We present a new data-driven model to reconstruct nonlinear flow from
spatially sparse observations. The model is a version of a conditional
variational auto-encoder (CVAE), which allows for probabilistic reconstruction
and thus uncertainty quantification of the prediction. We show that in our
model, conditioning on the measurements from the complete flow data leads to a
CVAE where only the decoder depends on the measurements. For this reason we
call the model as Semi-Conditional Variational Autoencoder (SCVAE). The method,
reconstructions and associated uncertainty estimates are illustrated on the
velocity data from simulations of 2D flow around a cylinder and bottom currents
from the Bergen Ocean Model. The reconstruction errors are compared to those of
the Gappy Proper Orthogonal Decomposition (GPOD) method.
Related papers
- Embedded Nonlocal Operator Regression (ENOR): Quantifying model error in learning nonlocal operators [8.585650361148558]
We propose a new framework to learn a nonlocal homogenized surrogate model and its structural model error.
This framework provides discrepancy-adaptive uncertainty quantification for homogenized material response predictions in long-term simulations.
arXiv Detail & Related papers (2024-10-27T04:17:27Z) - A note on the error analysis of data-driven closure models for large eddy simulations of turbulence [2.4548283109365436]
We provide a mathematical formulation for error propagation in flow trajectory prediction using data-driven turbulence closure modeling.
We retrieve an upper bound for the prediction error when utilizing a data-driven closure model.
Our analysis also shows that the error propagates exponentially with rollout time and the upper bound of the system Jacobian.
arXiv Detail & Related papers (2024-05-27T19:20:22Z) - Data-driven Nonlinear Model Reduction using Koopman Theory: Integrated
Control Form and NMPC Case Study [56.283944756315066]
We propose generic model structures combining delay-coordinate encoding of measurements and full-state decoding to integrate reduced Koopman modeling and state estimation.
A case study demonstrates that our approach provides accurate control models and enables real-time capable nonlinear model predictive control of a high-purity cryogenic distillation column.
arXiv Detail & Related papers (2024-01-09T11:54:54Z) - Diffusion models for probabilistic programming [56.47577824219207]
Diffusion Model Variational Inference (DMVI) is a novel method for automated approximate inference in probabilistic programming languages (PPLs)
DMVI is easy to implement, allows hassle-free inference in PPLs without the drawbacks of, e.g., variational inference using normalizing flows, and does not make any constraints on the underlying neural network model.
arXiv Detail & Related papers (2023-11-01T12:17:05Z) - Conditional Korhunen-Lo\'{e}ve regression model with Basis Adaptation
for high-dimensional problems: uncertainty quantification and inverse
modeling [62.997667081978825]
We propose a methodology for improving the accuracy of surrogate models of the observable response of physical systems.
We apply the proposed methodology to constructing surrogate models via the Basis Adaptation (BA) method of the stationary hydraulic head response.
arXiv Detail & Related papers (2023-07-05T18:14:38Z) - Emulating Spatio-Temporal Realizations of Three-Dimensional Isotropic
Turbulence via Deep Sequence Learning Models [24.025975236316842]
We use a data-driven approach to model a three-dimensional turbulent flow using cutting-edge Deep Learning techniques.
The accuracy of the model is assessed using statistical and physics-based metrics.
arXiv Detail & Related papers (2021-12-07T03:33:39Z) - Inverting brain grey matter models with likelihood-free inference: a
tool for trustable cytoarchitecture measurements [62.997667081978825]
characterisation of the brain grey matter cytoarchitecture with quantitative sensitivity to soma density and volume remains an unsolved challenge in dMRI.
We propose a new forward model, specifically a new system of equations, requiring a few relatively sparse b-shells.
We then apply modern tools from Bayesian analysis known as likelihood-free inference (LFI) to invert our proposed model.
arXiv Detail & Related papers (2021-11-15T09:08:27Z) - Discrete Denoising Flows [87.44537620217673]
We introduce a new discrete flow-based model for categorical random variables: Discrete Denoising Flows (DDFs)
In contrast with other discrete flow-based models, our model can be locally trained without introducing gradient bias.
We show that DDFs outperform Discrete Flows on modeling a toy example, binary MNIST and Cityscapes segmentation maps, measured in log-likelihood.
arXiv Detail & Related papers (2021-07-24T14:47:22Z) - Anomaly Detection of Time Series with Smoothness-Inducing Sequential
Variational Auto-Encoder [59.69303945834122]
We present a Smoothness-Inducing Sequential Variational Auto-Encoder (SISVAE) model for robust estimation and anomaly detection of time series.
Our model parameterizes mean and variance for each time-stamp with flexible neural networks.
We show the effectiveness of our model on both synthetic datasets and public real-world benchmarks.
arXiv Detail & Related papers (2021-02-02T06:15:15Z)
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.