81 research outputs found
Spatially Adaptive Stochastic Multigrid Methods for Fluid-Structure Systems with Thermal Fluctuations
In microscopic mechanical systems interactions between elastic structures are
often mediated by the hydrodynamics of a solvent fluid. At microscopic scales
the elastic structures are also subject to thermal fluctuations. Stochastic
numerical methods are developed based on multigrid which allow for the
efficient computation of both the hydrodynamic interactions in the presence of
walls and the thermal fluctuations. The presented stochastic multigrid approach
provides efficient real-space numerical methods for generating the required
stochastic driving fields with long-range correlations consistent with
statistical mechanics. The presented approach also allows for the use of
spatially adaptive meshes in resolving the hydrodynamic interactions. Numerical
results are presented which show the methods perform in practice with a
computational complexity of O(N log(N))
Systematic Stochastic Reduction of Inertial Fluid-Structure Interactions subject to Thermal Fluctuations
We present analysis for the reduction of an inertial description of
fluid-structure interactions subject to thermal fluctuations. We show how the
viscous coupling between the immersed structures and the fluid can be
simplified in the regime where this coupling becomes increasingly strong. Many
descriptions in fluid mechanics and in the formulation of computational methods
account for fluid-structure interactions through viscous drag terms to transfer
momentum from the fluid to immersed structures. In the inertial regime, this
coupling often introduces a prohibitively small time-scale into the temporal
dynamics of the fluid-structure system. This is further exacerbated in the
presence of thermal fluctuations. We discuss here a systematic reduction
technique for the full inertial equations to obtain a simplified description
where this coupling term is eliminated. This approach also accounts for the
effective stochastic equations for the fluid-structure dynamics. The analysis
is based on use of the Infinitesmal Generator of the SPDEs and a singular
perturbation analysis of the Backward Kolomogorov PDEs. We also discuss the
physical motivations and interpretation of the obtained reduced description of
the fluid-structure system. Working paper currently under revision. Please
report any comments or issues to [email protected]: 19 pages, 1 figure. arXiv admin note: substantial text overlap with
arXiv:1009.564
Spectral Numerical Exterior Calculus Methods for Differential Equations on Radial Manifolds
We develop exterior calculus approaches for partial differential equations on
radial manifolds. We introduce numerical methods that approximate with spectral
accuracy the exterior derivative , Hodge star , and their
compositions. To achieve discretizations with high precision and symmetry, we
develop hyperinterpolation methods based on spherical harmonics and Lebedev
quadrature. We perform convergence studies of our numerical exterior derivative
operator and Hodge star operator
showing each converge spectrally to and . We show how the
numerical operators can be naturally composed to formulate general numerical
approximations for solving differential equations on manifolds. We present
results for the Laplace-Beltrami equations demonstrating our approach.Comment: 22 pages, 13 figure
Hydrodynamic Flows on Curved Surfaces: Spectral Numerical Methods for Radial Manifold Shapes
We formulate hydrodynamic equations and spectrally accurate numerical methods
for investigating the role of geometry in flows within two-dimensional fluid
interfaces. To achieve numerical approximations having high precision and level
of symmetry for radial manifold shapes, we develop spectral Galerkin methods
based on hyperinterpolation with Lebedev quadratures for -projection to
spherical harmonics. We demonstrate our methods by investigating hydrodynamic
responses as the surface geometry is varied. Relative to the case of a sphere,
we find significant changes can occur in the observed hydrodynamic flow
responses as exhibited by quantitative and topological transitions in the
structure of the flow. We present numerical results based on the
Rayleigh-Dissipation principle to gain further insights into these flow
responses. We investigate the roles played by the geometry especially
concerning the positive and negative Gaussian curvature of the interface. We
provide general approaches for taking geometric effects into account for
investigations of hydrodynamic phenomena within curved fluid interfaces.Comment: 14 figure
Hydrodynamic Coupling of Particle Inclusions Embedded in Curved Lipid Bilayer Membranes
We develop theory and computational methods to investigate particle
inclusions embedded within curved lipid bilayer membranes. We consider the case
of spherical lipid vesicles where inclusion particles are coupled through (i)
intramembrane hydrodynamics, (ii) traction stresses with the external and
trapped solvent fluid, and (iii) intermonolayer slip between the two leaflets
of the bilayer. We investigate relative to flat membranes how the membrane
curvature and topology augment hydrodynamic responses. We show how both the
translational and rotational mobility of protein inclusions are effected by the
membrane curvature, ratio of intramembrane viscosity to solvent viscosity, and
inter-monolayer slip. For general investigations of many-particle dynamics, we
also discuss how our approaches can be used to treat the collective diffusion
and hydrodynamic coupling within spherical bilayers.Comment: 32 pages, double-column format, 15 figure
MLMOD: Machine Learning Methods for Data-Driven Modeling in LAMMPS
MLMOD is a software package for incorporating machine learning approaches and
models into simulations of microscale mechanics and molecular dynamics in
LAMMPS. Recent machine learning approaches provide promising data-driven
approaches for learning representations for system behaviors from experimental
data and high fidelity simulations. The package faciliates learning and using
data-driven models for (i) dynamics of the system at larger spatial-temporal
scales (ii) interactions between system components, (iii) features yielding
coarser degrees of freedom, and (iv) features for new quantities of interest
characterizing system behaviors. MLMOD provides hooks in LAMMPS for (i)
modeling dynamics and time-step integration, (ii) modeling interactions, and
(iii) computing quantities of interest characterizing system states. The
package allows for use of machine learning methods with general model classes
including Neural Networks, Gaussian Process Regression, Kernel Models, and
other approaches. Here we discuss our prototype C++/Python package, aims, and
example usage. The package is integrated currently with the mesocale and
molecular dynamics simulation package LAMMPS and PyTorch. For related papers,
examples, updates, and additional information see
https://github.com/atzberg/mlmod and http://atzberger.org/
Dynamic Implicit-Solvent Coarse-Grained Models of Lipid Bilayer Membranes : Fluctuating Hydrodynamics Thermostat
Many coarse-grained models have been developed for equilibrium studies of
lipid bilayer membranes. To achieve in simulations access to length-scales and
time-scales difficult to attain in fully atomistic molecular dynamics, these
coarse-grained models provide a reduced description of the molecular degrees of
freedom and often remove entirely representation of the solvent degrees of
freedom. In such implicit-solvent models the solvent contributions are treated
through effective interaction terms within an effective potential for the free
energy. For investigations of kinetics, Langevin dynamics is often used.
However, for many dynamical processes within bilayers this approach is
insufficient since it neglects important correlations and dynamical
contributions that are missing as a result of the momentum transfer that would
have occurred through the solvent. To address this issue, we introduce a new
thermostat based on fluctuating hydrodynamics for dynamic simulations of
implicit-solvent coarse-grained models. Our approach couples the coarse-grained
degrees of freedom to a stochastic continuum field that accounts for both the
solvent hydrodynamics and thermal fluctuations. We show our approach captures
important correlations in the dynamics of lipid bilayers that are missing in
simulations performed using conventional Langevin dynamics. For both planar
bilayer sheets and bilayer vesicles, we investigate the diffusivity of lipids,
spatial correlations, and lipid flow within the bilayer. The presented
fluctuating hydrodynamics approaches provide a promising way to extend
implicit-solvent coarse-grained lipid models for use in studies of dynamical
processes within bilayers
Spatially Adaptive Stochastic Methods for Fluid-Structure Interactions Subject to Thermal Fluctuations in Domains with Complex Geometries
We develop stochastic mixed finite element methods for spatially adaptive
simulations of fluid-structure interactions when subject to thermal
fluctuations. To account for thermal fluctuations, we introduce a discrete
fluctuation-dissipation balance condition to develop compatible stochastic
driving fields for our discretization. We perform analysis that shows our
condition is sufficient to ensure results consistent with statistical
mechanics. We show the Gibbs-Boltzmann distribution is invariant under the
stochastic dynamics of the semi-discretization. To generate efficiently the
required stochastic driving fields, we develop a Gibbs sampler based on
iterative methods and multigrid to generate fields with computational
complexity. Our stochastic methods provide an alternative to uniform
discretizations on periodic domains that rely on Fast Fourier Transforms. To
demonstrate in practice our stochastic computational methods, we investigate
within channel geometries having internal obstacles and no-slip walls how the
mobility/diffusivity of particles depends on location. Our methods extend the
applicability of fluctuating hydrodynamic approaches by allowing for spatially
adaptive resolution of the mechanics and for domains that have complex
geometries relevant in many applications
Electrostatics of Colloidal Particles Confined in Nanochannels: Role of Double-Layer Interactions and Ion-Ion Correlations
We perform computational investigations of electrolyte-mediated interactions
of charged colloidal particles confined within nanochannels. We investigate the
role of discrete ion effects, valence, and electrolyte strength on colloid-wall
interactions. We find for some of the multivalent charge regimes that the
like-charged colloids and walls can have attractive interactions. We study in
detail these interactions and the free energy profile for the colloid-wall
separation. We find there are energy barriers and energy minima giving
preferred colloid locations in the channel near the center and at a distance
near to but separated from the channel walls. We characterize contributions
from surface overcharging, condensed layers, and overlap of ion double-layers.
We perform our investigations using Coarse-Grained Brownian Dynamics
simulations (BD), classical Density Functional Theory (cDFT), and mean-field
Poisson-Boltzmann Theory (PB). We discuss the implications of our results for
phenomena in nanoscale devices.Comment: 23 figure
- …