834 research outputs found
Data-Driven CFD Modeling of Turbulent Flows Through Complex Structures
The growth of computational resources in the past decades has expanded the
application of Computational Fluid Dynamics (CFD) from the traditional fields
of aerodynamics and hydrodynamics to a number of new areas. Examples range from
the heat and fluid flows in nuclear reactor vessels and in data centers to the
turbulence flows through wind turbine farms and coastal vegetation plants.
However, in these new applications complex structures are often exist (e.g.,
rod bundles in reactor vessels and turbines in wind farms), which makes fully
resolved, first-principle based CFD modeling prohibitively expensive. This
obstacle seriously impairs the predictive capability of CFD models in these
applications. On the other hand, a limited amount of measurement data is often
available in the systems in the above-mentioned applications. In this work we
propose a data-driven, physics-based approach to perform full field inversion
on the effects of the complex structures on the flow. This is achieved by
assimilating observation data and numerical model prediction in an iterative
Ensemble Kalman method. Based on the inversion results, the velocity and
turbulence of the flow field can be obtained. A major novelty of the present
contribution is the non-parametric, full field inversion approach adopted,
which is in contrast to the inference of coefficient in the ad hoc models often
practiced in previous works. The merits of the proposed approach are
demonstrated on the flow past a porous disk by using both synthetic data and
real experimental measurements. The spatially varying drag forces of the porous
disk on the flow are inferred. The proposed approach has the potential to be
used in the monitoring of complex system in the above mentioned applications
Quantification of Uncertainties in Turbulence Modeling: A Comparison of Physics-Based and Random Matrix Theoretic Approaches
Numerical models based on Reynolds-Averaged Navier-Stokes (RANS) equations
are widely used in engineering turbulence modeling. However, the RANS
predictions have large model-form uncertainties for many complex flows.
Quantification of these large uncertainties originating from the modeled
Reynolds stresses has attracted attention in turbulence modeling community.
Recently, a physics-based Bayesian framework for quantifying model-form
uncertainties has been proposed with successful applications to several flows.
Nonetheless, how to specify proper priors without introducing unwarranted,
artificial information remains challenging to the current form of the
physics-based approach. Another recently proposed method based on random matrix
theory provides the prior distributions with the maximum entropy, which is an
alternative for model-form uncertainty quantification in RANS simulations. In
this work, we utilize the random matrix theoretic approach to assess and
possibly improve the specification of priors used in the physics-based
approach. The numerical results show that, to achieve maximum entropy in the
prior of Reynolds stresses, the perturbations of shape parameters in
Barycentric coordinates are normally distributed. Moreover, the perturbations
of the turbulence kinetic energy should conform to log-normal distributions.
Finally, it sheds light on how large the variance of each physical variable
should be compared with each other to achieve the approximate maximum entropy
prior. The conclusion can be used as a guidance for specifying proper priors in
the physics-based, Bayesian uncertainty quantification framework.Comment: 38 pages, 10 figure
A Physics Informed Machine Learning Approach for Reconstructing Reynolds Stress Modeling Discrepancies Based on DNS Data
Turbulence modeling is a critical component in numerical simulations of
industrial flows based on Reynolds-averaged Navier-Stokes (RANS) equations.
However, after decades of efforts in the turbulence modeling community,
universally applicable RANS models with predictive capabilities are still
lacking. Recently, data-driven methods have been proposed as a promising
alternative to the traditional approaches of turbulence model development. In
this work we propose a data-driven, physics-informed machine learning approach
for predicting discrepancies in RANS modeled Reynolds stresses. The
discrepancies are formulated as functions of the mean flow features. By using a
modern machine learning technique based on random forests, the discrepancy
functions are first trained with benchmark flow data and then used to predict
Reynolds stresses discrepancies in new flows. The method is used to predict the
Reynolds stresses in the flow over periodic hills by using two training flow
scenarios of increasing difficulties: (1) the flow in the same periodic hills
geometry yet at a lower Reynolds number, and (2) the flow in a different hill
geometry with a similar recirculation zone. Excellent predictive performances
were observed in both scenarios, demonstrating the merits of the proposed
method. Improvement of RANS modeled Reynolds stresses enabled by the proposed
method is an important step towards predictive turbulence modeling, where the
ultimate goal is to predict the quantities of interest (e.g., velocity field,
drag, lift) more accurately by solving RANS equations with the Reynolds
stresses obtained therefrom.Comment: 36 pages, 1 figure
Data-augmented modeling of intracranial pressure
Precise management of patients with cerebral diseases often requires
intracranial pressure (ICP) monitoring, which is highly invasive and requires a
specialized ICU setting. The ability to noninvasively estimate ICP is highly
compelling as an alternative to, or screening for, invasive ICP measurement.
Most existing approaches for noninvasive ICP estimation aim to build a
regression function that maps noninvasive measurements to an ICP estimate using
statistical learning techniques. These data-based approaches have met limited
success, likely because the amount of training data needed is onerous for this
complex applications. In this work, we discuss an alternative strategy that
aims to better utilize noninvasive measurement data by leveraging mechanistic
understanding of physiology. Specifically, we developed a Bayesian framework
that combines a multiscale model of intracranial physiology with noninvasive
measurements of cerebral blood flow using transcranial Doppler. Virtual
experiments with synthetic data are conducted to verify and analyze the
proposed framework. A preliminary clinical application study on two patients is
also performed in which we demonstrate the ability of this method to improve
ICP prediction.Comment: 26 pages, 8 figure
Propagation of Input Uncertainty in Presence of Model-Form Uncertainty: A Multi-fidelity Approach for CFD Applications
Proper quantification and propagation of uncertainties in computational
simulations are of critical importance. This issue is especially challenging
for CFD applications. A particular obstacle for uncertainty quantifications in
CFD problems is the large model discrepancies associated with the CFD models
used for uncertainty propagation. Neglecting or improperly representing the
model discrepancies leads to inaccurate and distorted uncertainty distribution
for the Quantities of Interest. High-fidelity models, being accurate yet
expensive, can accommodate only a small ensemble of simulations and thus lead
to large interpolation errors and/or sampling errors; low-fidelity models can
propagate a large ensemble, but can introduce large modeling errors. In this
work, we propose a multi-model strategy to account for the influences of model
discrepancies in uncertainty propagation and to reduce their impact on the
predictions. Specifically, we take advantage of CFD models of multiple
fidelities to estimate the model discrepancies associated with the
lower-fidelity model in the parameter space. A Gaussian process is adopted to
construct the model discrepancy function, and a Bayesian approach is used to
infer the discrepancies and corresponding uncertainties in the regions of the
parameter space where the high-fidelity simulations are not performed. The
proposed multi-model strategy combines information from models with different
fidelities and computational costs, and is of particular relevance for CFD
applications, where a hierarchy of models with a wide range of complexities
exists. Several examples of relevance to CFD applications are performed to
demonstrate the merits of the proposed strategy. Simulation results suggest
that, by combining low- and high-fidelity models, the proposed approach
produces better results than what either model can achieve individually.Comment: 18 pages, 8 figure
Incorporating Prior Knowledge for Quantifying and Reducing Model-Form Uncertainty in RANS Simulations
Simulations based on Reynolds-Averaged Navier--Stokes (RANS) models have been
used to support high-consequence decisions related to turbulent flows. Apart
from the deterministic model predictions, the decision makers are often equally
concerned about the predictions confidence. Among the uncertainties in RANS
simulations, the model-form uncertainty is an important or even a dominant
source. Therefore, quantifying and reducing the model-form uncertainties in
RANS simulations are of critical importance to make risk-informed decisions.
Researchers in statistics communities have made efforts on this issue by
considering numerical models as black boxes. However, this physics-neutral
approach is not a most efficient use of data, and is not practical for most
engineering problems. Recently, we proposed an open-box, Bayesian framework for
quantifying and reducing model-form uncertainties in RANS simulations by
incorporating observation data and physics-prior knowledge. It can incorporate
the information from the vast body of existing empirical knowledge with
mathematical rigor, which enables a more efficient usage of data. In this work,
we examine the merits of incorporating various types of prior knowledge in the
uncertainties quantification and reduction in RANS simulations. The result
demonstrates that informative physics-based prior plays an important role in
improving the quantification of model-form uncertainties, particularly when the
observation data are limited. Moreover, it suggests that the proposed Bayesian
framework is an effective way to incorporate empirical knowledge from various
sources
A Random Matrix Approach for Quantifying Model-Form Uncertainties in Turbulence Modeling
With the ever-increasing use of Reynolds-Averaged Navier--Stokes (RANS)
simulations in mission-critical applications, the quantification of model-form
uncertainty in RANS models has attracted attention in the turbulence modeling
community. Recently, a physics-based, nonparametric approach for quantifying
model-form uncertainty in RANS simulations has been proposed, where Reynolds
stresses are projected to physically meaningful dimensions and perturbations
are introduced only in the physically realizable limits. However, a challenge
associated with this approach is to assess the amount of information introduced
in the prior distribution and to avoid imposing unwarranted constraints. In
this work we propose a random matrix approach for quantifying model-form
uncertainties in RANS simulations with the realizability of the Reynolds stress
guaranteed. Furthermore, the maximum entropy principle is used to identify the
probability distribution that satisfies the constraints from available
information but without introducing artificial constraints. We demonstrate that
the proposed approach is able to ensure the realizability of the Reynolds
stress, albeit in a different manner from the physics-based approach. Monte
Carlo sampling of the obtained probability distribution is achieved by using
polynomial chaos expansion to map independent Gaussian random fields to the
Reynolds stress random field with the marginal distributions and correlation
structures as specified. Numerical simulations on a typical flow with
separation have shown physically reasonable results, which verifies the
proposed approach. Therefore, the proposed method is a promising alternative to
the physics-based approach for model-form uncertainty quantification of RANS
simulations. The method explored in this work is general and can be extended to
other complex physical systems in applied mechanics and engineering.Comment: 42 pages, 10 figure
Inversion of Tsunamis Characteristics from Sediment Deposits Based on Ensemble Kalman Filtering
Sediment deposits are the only leftover records from paleo tsunami events.
Therefore, inverse modeling method based on the information contained in the
deposit is an indispensable way of deciphering the quantitative characteristics
of the tsunamis, e.g., the flow speed and the flow depth. While several models
have been proposed to perform tsunami inversion, i.e., to infer the tsunami
characteristics based on the sediment deposits, the existing methods lack
mathematical rigorousness and are not able to account for uncertainties in the
inferred quantities. In this work, we propose an inversion scheme based on
Ensemble Kalman Filtering (EnKF) to infer tsunami characteristics from sediment
deposits. In contrast to traditional data assimilation methods using EnKF, a
novelty of the current work is that we augment the system state to include both
the physical variables (sediment fluxes) that are observable and the unknown
parameters (flow speed and flow depth) to be inferred. Based on the rigorous
Bayesian inference theory, the inversion scheme provides quantified
uncertainties on the inferred quantities, which clearly distinguishes the
present method with existing schemes for tsunami inversion. Two test cases with
synthetic observation data are used to verify the proposed inversion scheme.
Numerical results show that the tsunami characteristics inferred from the
sediment deposit information have a favorable agreement with the truths, which
demonstrated the merits of the proposed tsunami inversion scheme.Comment: 38 pages, 10 figure
A Bi-fidelity Ensemble Kalman Method for PDE-Constrained Inverse Problems
Mathematical modeling and simulation of complex physical systems based on
partial differential equations (PDEs) have been widely used in engineering and
industrial applications. To enable reliable predictions, it is crucial yet
challenging to calibrate the model by inferring unknown parameters/fields
(e.g., boundary conditions, mechanical properties, and operating parameters)
from sparse and noisy measurements, which is known as a PDE-constrained inverse
problem. In this work, we develop a novel bi-fidelity (BF) ensemble Kalman
inversion method to tackle this challenge, leveraging the accuracy of
high-fidelity models and the efficiency of low-fidelity models. The core
concept is to build a BF model with a limited number of high-fidelity samples
for efficient forward propagations in the iterative ensemble Kalman inversion.
Compared to existing inversion techniques, salient features of the proposed
methods can be summarized as follow: (1) achieving the accuracy of
high-fidelity models but at the cost of low-fidelity models, (2) being robust
and derivative-free, and (3) being code non-intrusive, enabling ease of
deployment for different applications. The proposed method has been assessed by
three inverse problems that are relevant to fluid dynamics, including both
parameter estimation and field inversion. The numerical results demonstrate the
excellent performance of the proposed BF ensemble Kalman inversion approach,
which drastically outperforms the standard Kalman inversion in terms of
efficiency and accuracy.Comment: 33 pages. 9 figure
A Priori Assessment of Prediction Confidence for Data-Driven Turbulence Modeling
Although Reynolds-Averaged Navier-Stokes (RANS) equations are still the
dominant tool for engineering design and analysis applications involving
turbulent flows, standard RANS models are known to be unreliable in many flows
of engineering relevance, including flows with separation, strong pressure
gradients or mean flow curvature. With increasing amounts of 3-dimensional
experimental data and high fidelity simulation data from Large Eddy Simulation
(LES) and Direct Numerical Simulation (DNS), data-driven turbulence modeling
has become a promising approach to increase the predictive capability of RANS
simulations. Recently, a data-driven turbulence modeling approach via machine
learning has been proposed to predict the Reynolds stress anisotropy of a given
flow based on high fidelity data from closely related flows. In this work, the
closeness of different flows is investigated to assess the prediction
confidence a priori. Specifically, the Mahalanobis distance and the kernel
density estimation (KDE) technique are used as metrics to quantify the distance
between flow data sets in feature space. The flow over periodic hills at
Re=10595 is used as the test set and seven flows with different configurations
are individually used as training set. The results show that the prediction
error of the Reynolds stress anisotropy is positively correlated with
Mahalanobis distance and KDE distance, demonstrating that both extrapolation
metrics can be used to estimate the prediction confidence a priori. A
quantitative comparison using correlation coefficients shows that the
Mahalanobis distance is less accurate in estimating the prediction confidence
than KDE distance. The extrapolation metrics introduced in this work and the
corresponding analysis provide an approach to aid in the choice of the data
source and to assess the prediction confidence for data-driven turbulence
modeling.Comment: 31 pages, 13 figure
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