117 research outputs found
Phase field modelling of surfactants in multi-phase flow
A diffuse interface model for surfactants in multi-phase flow with three or
more fluids is derived. A system of Cahn-Hilliard equations is coupled with a
Navier-Stokes system and an advection-diffusion equation for the surfactant
ensuring thermodynamic consistency. By an asymptotic analysis the model can be
related to a moving boundary problem in the sharp interface limit, which is
derived from first principles. Results from numerical simulations support the
theoretical findings. The main novelties are centred around the conditions in
the triple junctions where three fluids meet. Specifically the case of local
chemical equilibrium with respect to the surfactant is considered, which allows
for interfacial surfactant flow through the triple junctions
Phase field modelling of surfactants in multi-phase flow
A diffuse interface model for surfactants in multi-phase flow with three or more fluids is derived. A system of Cahn–Hilliard equations is coupled with a Navier-Stokes system and an advection-diffusion equation for the surfactant ensuring thermodynamic consistency. By an asymptotic analysis the model can be related to a moving boundary problem in the sharp interface limit, which is derived from first principles. Results from numerical simulations support the theoretical findings. The main novelties are centred around the conditions in the triple junctions where three fluids meet. Specifically the case of local chemical equilibrium with respect to the surfactant is considered, which allows for interfacial surfactant flow through the triple junctions
Calibration and Uncertainty Quantification of Convective Parameters in an Idealized GCM
Parameters in climate models are usually calibrated manually, exploiting only
small subsets of the available data. This precludes both optimal calibration
and quantification of uncertainties. Traditional Bayesian calibration methods
that allow uncertainty quantification are too expensive for climate models;
they are also not robust in the presence of internal climate variability. For
example, Markov chain Monte Carlo (MCMC) methods typically require
model runs and are sensitive to internal variability noise, rendering them
infeasible for climate models. Here we demonstrate an approach to model
calibration and uncertainty quantification that requires only model
runs and can accommodate internal climate variability. The approach consists of
three stages: (i) a calibration stage uses variants of ensemble Kalman
inversion to calibrate a model by minimizing mismatches between model and data
statistics; (ii) an emulation stage emulates the parameter-to-data map with
Gaussian processes (GP), using the model runs in the calibration stage for
training; (iii) a sampling stage approximates the Bayesian posterior
distributions by sampling the GP emulator with MCMC. We demonstrate the
feasibility and computational efficiency of this calibrate-emulate-sample (CES)
approach in a perfect-model setting. Using an idealized general circulation
model, we estimate parameters in a simple convection scheme from synthetic data
generated with the model. The CES approach generates probability distributions
of the parameters that are good approximations of the Bayesian posteriors, at a
fraction of the computational cost usually required to obtain them. Sampling
from this approximate posterior allows the generation of climate predictions
with quantified parametric uncertainties
Binary recovery via phase field regularization for first-arrival traveltime tomography
We propose a double obstacle phase field methodology for binary recovery of the slowness function of an Eikonal equation found in first-arrival traveltime tomography. We treat the inverse problem as an optimization problem with quadratic misfit functional added to a phase field relaxation of the perimeter penalization functional. Our approach yields solutions as we account for well posedness of the forward problem by choosing regular priors. We obtain a convergent finite difference and mixed finite element based discretization and a well defined descent scheme by accounting for the non-differentiability of the forward problem. We validate the phase field technique with a Γ—convergence result and numerically by conducting parameter studies for the scheme, and by applying it to a variety of test problems with different geometries, boundary conditions, and source—receiver locations
Reconciling Bayesian and Perimeter Regularization for Binary Inversion
A central theme in classical algorithms for the reconstruction of discontinuous functions from observational data is perimeter regularization via the use of total variation. On the other hand, sparse or noisy data often demand a probabilistic approach to the reconstruction of images, to enable uncertainty quantification; the Bayesian approach to inversion, which itself introduces a form of regularization, is a natural framework in which to carry this out. In this paper the link between Bayesian inversion methods and perimeter regularization is explored. In this paper two links are studied: (i) the maximum a posteriori objective function of a suitably chosen Bayesian phase-field approach is shown to be closely related to a least squares plus perimeter regularization objective; (ii) sample paths of a suitably chosen Bayesian level set formulation are shown to possess a finite perimeter and to have the ability to learn about the true perimeter
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EnsembleKalmanProcesses.jl: derivative-free ensemble-based model calibration
EnsembleKalmanProcesses.jl is a Julia-based toolbox that can be used for a broad class of
black-box gradient-free optimization problems. Specifically, the tools enable the optimization,
or calibration, of parameters within a computer model in order to best match user-defined
outputs of the model with available observed data (Kennedy & O’Hagan, 2001). Some of the
tools can also approximately quantify parametric uncertainty (Huang, Huang, et al., 2022).
Though the package is written in Julia (Bezanson et al., 2017), a read–write TOML-file
interface is provided so that the tools can be applied to computer models implemented in any
language. Furthermore, the calibration tools are non-intrusive, relying only on the ability of
users to compute an output of their model given a parameter value.
As the package name suggests, the tools are inspired by the well-established class of ensemble
Kalman methods. Ensemble Kalman filters are currently one of the only practical ways to
assimilate large volumes of observational data into models for operational weather forecasting
(Evensen, 1994; Houtekamer & Mitchell, 1998, 2001). In the data assimilation setting, a
computational weather model is integrated for a short time over a collection, or ensemble,
of initial conditions, and the ensemble is updated frequently by a variety of atmospheric
observations, allowing the forecasts to keep track of the real system.
The workflow is similar for ensemble Kalman processes. Here, a computer code is run (in
parallel) for an ensemble of different values of the parameters that require calibration, producing
an ensemble of outputs. This ensemble of outputs is then compared to observed data, and
the parameters are updated to a new set of values which reduce the output–data misfit. The
process is iterated until a user-defined criterion of convergence is met. Optimality of the update
is guaranteed for linear models and Gaussian uncertainties, but good performance is observed
outside of these settings, see Schillings & Stuart (2017). Optimal values are selected from
statistics of the final ensemble
Facultative Symbiont Infections Affect Aphid Reproduction
Some bacterial symbionts alter their hosts reproduction through various mechanisms that enhance their transmission in the host population. In addition to its obligatory symbiont Buchnera aphidicola, the pea aphid Acyrthosiphon pisum harbors several facultative symbionts influencing several aspects of host ecology. Aphids reproduce by cyclical parthenogenesis whereby clonal and sexual reproduction alternate within the annual life cycle. Many species, including the pea aphid, also show variation in their reproductive mode at the population level, with some lineages reproducing by cyclical parthenogenesis and others by permanent parthenogenesis. While the role of facultative symbionts has been well studied during the parthenogenetic phase of their aphid hosts, very little is known on their possible influence during the sexual phase. Here we investigated whether facultative symbionts modulate the capacity to produce sexual forms in various genetic backgrounds of the pea aphid with controlled symbiont composition and also in different aphid genotypes from natural populations with previously characterized infection status and reproductive mode. We found that most facultative symbionts exhibited detrimental effects on their hosts fitness under sex-inducing conditions in comparison with the reference lines. We also showed that the loss of sexual phase in permanently parthenogenetic lineages of A. pisum was not explained by facultative symbionts. Finally, we demonstrated that Spiroplasma infection annihilated the production of males in the host progeny by inducing a male-killing phenotype, an unexpected result for organisms such as aphids that reproduce primarily through clonal reproduction
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