# Difference between revisions of "Thomas Zauner"

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{{Person | {{Person | ||

− | |name=Zauner, Thomas | + | |image=placeholder.jpg |

− | | | + | |name=Zauner, Thomas, |

− | | | + | |title=Dipl.Phys. |

− | + | |status=visiting scientist | |

|email=Thomas.Zauner | |email=Thomas.Zauner | ||

|category=hilfer | |category=hilfer | ||

+ | |phone=63932 | ||

+ | |room=1.076 | ||

}} | }} | ||

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due to the space between individual grains, is permeable for fluids. | due to the space between individual grains, is permeable for fluids. | ||

Physical transport phenomena of natural porous media, | Physical transport phenomena of natural porous media, | ||

− | such as flow rates, trapping | + | such as flow rates, trapping behaviour and prediction |

of effective transport coefficients, have always been of great practical | of effective transport coefficients, have always been of great practical | ||

interest for the oil and gas industry and has currently drawn public | interest for the oil and gas industry and has currently drawn public | ||

Line 27: | Line 29: | ||

The scientific problems I address in my work are: | The scientific problems I address in my work are: | ||

− | *''' Developing algorithms that generate realistic and macroscopic computer models for granular porous media'''. These models are made of several hundred millions of individual grains whose positions, orientations and sizes must | + | *''' Developing algorithms that generate realistic and macroscopic computer models for granular porous media'''. These models are made of several hundred millions of individual grains whose positions, orientations and sizes must fulfil certain correlations and constraints. The associated large computational demand requires efficient and highly scalable parallelized algorithms. |

* '''Identifying and evaluating numerical methods that allow accurate and predictive calculations of physical properties of porous media'''. These calculations typically require numerically solving partial differential equations within a chosen discretization scheme and at a specific resolution or order of accuracy. | * '''Identifying and evaluating numerical methods that allow accurate and predictive calculations of physical properties of porous media'''. These calculations typically require numerically solving partial differential equations within a chosen discretization scheme and at a specific resolution or order of accuracy. | ||

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== Realistic computer models for granular porous media == | == Realistic computer models for granular porous media == | ||

− | In the reconstruction procedure a dense packing of spheres is created. The packing must | + | In the reconstruction procedure a dense packing of spheres is created using a '''Monte-Carlo''' or '''Discrete-Element-Simulation'''. The packing must fulfil given constraints such as density, overlap, size distribution and others. The spheres are later substituted by more complex geometrical |

− | objects determined by the shapes of the grains used. One option is to use polyhedrons as grain shapes. | + | objects determined by the shapes of the grains used. One option is to use polyhedrons as grain shapes. The resulting model is a continuum model. |

− | + | The grain centres, sizes and orientations are continuous in space and the grain shapes are analytical defined. An example of such a model for Fontainebleau sandstone is shown in figure 1. The continuum computer model can then be discretized at any desired resolution (figure 2) for further analysis and computer simulations. | |

− | The resulting model | + | [[Image:all.png |thumb|400px|left| Figure 1: Three dimensional rendering [2] of a model for Fontainebleau sandstone. The model contains over 1.2 million quartz grains. Each grain is modelled as a polyhedron. A crosssection is shown in orange. ]] |

− | + | [[Image:muCT_ani.gif |thumb|300px|right|Figure 2: Two dimensional crosssections of the discretized model.The sidelength of the crosssection is L and the resolution a. The porespace is black and the grains are gray. At the highest resolution even narrow channels are resolved by more than 20 lattice nodes. This allows high precision flow simulations.]] | |

− | An example of such a model for | ||

− | [[Image:all.png |thumb|400px|left| | ||

− | [[Image:muCT_ani.gif |thumb|300px|right| | ||

− | |||

− | |||

− | |||

− | |||

== Flow Simulations == | == Flow Simulations == | ||

− | + | The '''permeability''' of a porous medium is an example of a | |

physical transport parameter. It describes the mediums ability to | physical transport parameter. It describes the mediums ability to | ||

transmit fluid flow through it. Using '''Darcy's law''' the permeability | transmit fluid flow through it. Using '''Darcy's law''' the permeability | ||

− | of a porous medium | + | of a porous medium is calculated from the velocity and |

− | corresponding pressure field on the porescale. These fields | + | corresponding pressure field on the porescale [1,3]. These fields |

− | are solutions of hydrodynamic partial differential | + | are solutions of porescale hydrodynamic partial differential |

− | equations | + | equations. Different numerical methods that solve different hydrodynamic |

− | numerical methods that solve different hydrodynamic | + | equations can be used to obtain the velocity and pressure field. |

− | can be used to obtain the velocity and pressure field. | + | Possibilities are '''Navier-Stokes simulations''' and '''Lattice-Boltzmann simulations'''. Our Lattice-Boltzmann implementation, for example, numerically solves the Boltzmann equation and is run until a stationary solution has been reached. From this stationary solution the hydrodynamic fields are calculated. |

− | Possibilities are '''Navier-Stokes simulations''' and | ||

Simulations in stochastic geometries often require very large system sizes to obtain representative solutions. In our investigations, typical sizes of the discretized system are in the range 1024³-4096³ voxel. | Simulations in stochastic geometries often require very large system sizes to obtain representative solutions. In our investigations, typical sizes of the discretized system are in the range 1024³-4096³ voxel. | ||

− | [[Image:poreflow1.jpg|thumb|550px|center| Very small subvolume (128³ voxel) of a sandstone at a resolution 5µm. The porespace-matrix interface is shown as a mesh. The velocity magnitude in lattice units, as calculated by a Lattice-Boltzmann simulation, is shown within the porespace. Areas of slow flow are blue, fast flow is shown in red. | + | [[Image:poreflow1.jpg|thumb|550px|center| Very small subvolume (128³ voxel) of a sandstone at a resolution of 5µm. The porespace-matrix interface is shown as a mesh. The velocity magnitude in lattice units, as calculated by a Lattice-Boltzmann simulation, is shown within the porespace. Areas of slow flow are blue, fast flow is shown in red. Empty porespace indicates areas where the fluid is at rest. Only a small portion of the porespace contributes to the mass transport. [[Media:poremovie.avi]] ]] |

− | |||

== Publications == | == Publications == | ||

[1] A. Narvaez, T. Zauner, F. Raischel, R. Hilfer, J. Harting, “Quantitative analysis of numerical estimates for the permeability of porous media from lattice-Boltzmann simulations”, Journal of Statistical Mechanics, P11026, 2010, [http://www.icp.uni-stuttgart.de/~zauner/publications/LB_JStat08.pdf Preprint] | [1] A. Narvaez, T. Zauner, F. Raischel, R. Hilfer, J. Harting, “Quantitative analysis of numerical estimates for the permeability of porous media from lattice-Boltzmann simulations”, Journal of Statistical Mechanics, P11026, 2010, [http://www.icp.uni-stuttgart.de/~zauner/publications/LB_JStat08.pdf Preprint] | ||

− | |||

[2] S. Grottel, G. Reina, T. Zauner, R. Hilfer, T. Ertl, "Particle-based Rendering for Porous Media", SIGRAD, 2010, [http://www.icp.uni-stuttgart.de/~zauner/publications/sigrad_2010.pdf Preprint] | [2] S. Grottel, G. Reina, T. Zauner, R. Hilfer, T. Ertl, "Particle-based Rendering for Porous Media", SIGRAD, 2010, [http://www.icp.uni-stuttgart.de/~zauner/publications/sigrad_2010.pdf Preprint] | ||

[3] J. Harting, T. Zauner, R. Weeber, and R. Hilfer | [3] J. Harting, T. Zauner, R. Weeber, and R. Hilfer | ||

− | Numerical modeling of fluid flow in porous media and in driven colloidal suspensions | + | "Numerical modeling of fluid flow in porous media and in driven colloidal suspensions" in High Performance Computing in Science and Engineering '08, edited by W. Nagel, D. Kröner, M. Resch, Springer ,2008. [http://www.icp.uni-stuttgart.de/~zauner/publications/HPC08.pdf Preprint] |

− | in High Performance Computing in Science and Engineering '08, edited by W. Nagel, D. Kröner, M. Resch, Springer ,2008. [http://www.icp.uni-stuttgart.de/~zauner/publications/HPC08.pdf Preprint] | + | |

+ | [4] R. Hilfer and T. Zauner | ||

+ | "High precision synthetic computed tomography | ||

+ | of reconstructed porous media" in Physical Review E, vol.84, p. 062301 (2011) |

## Latest revision as of 14:24, 30 October 2015

**Dipl.Phys. Thomas Zauner**

visiting scientist

Office: | 1.076 |
---|---|

Phone: | +49 711 685-63932 |

Fax: | +49 711 685-63658 |

Email: | Thomas.Zauner _at_ icp.uni-stuttgart.de |

Address: | Dipl.Phys. Thomas Zauner Institute for Computational Physics Universität Stuttgart Allmandring 3 70569 Stuttgart Germany |

## Contents

## Research Overview

The general field of my research is the **computational investigations of natural porous media**. A typical example of such a natural porous medium is sandstone.
It consists of very small consolidated grains that form a solid backbone but,
due to the space between individual grains, is permeable for fluids.
Physical transport phenomena of natural porous media,
such as flow rates, trapping behaviour and prediction
of effective transport coefficients, have always been of great practical
interest for the oil and gas industry and has currently drawn public
attention in the context of CO_{2} sequestration.
Many industrial applications use porous materials. Examples are fuel cells, filtration processes, catalyst in chemical reactions or building materials with special physical properties.

The scientific problems I address in my work are:

**Developing algorithms that generate realistic and macroscopic computer models for granular porous media**. These models are made of several hundred millions of individual grains whose positions, orientations and sizes must fulfil certain correlations and constraints. The associated large computational demand requires efficient and highly scalable parallelized algorithms.

**Identifying and evaluating numerical methods that allow accurate and predictive calculations of physical properties of porous media**. These calculations typically require numerically solving partial differential equations within a chosen discretization scheme and at a specific resolution or order of accuracy.

## Realistic computer models for granular porous media

In the reconstruction procedure a dense packing of spheres is created using a **Monte-Carlo** or **Discrete-Element-Simulation**. The packing must fulfil given constraints such as density, overlap, size distribution and others. The spheres are later substituted by more complex geometrical
objects determined by the shapes of the grains used. One option is to use polyhedrons as grain shapes. The resulting model is a continuum model.
The grain centres, sizes and orientations are continuous in space and the grain shapes are analytical defined. An example of such a model for Fontainebleau sandstone is shown in figure 1. The continuum computer model can then be discretized at any desired resolution (figure 2) for further analysis and computer simulations.

## Flow Simulations

The **permeability** of a porous medium is an example of a
physical transport parameter. It describes the mediums ability to
transmit fluid flow through it. Using **Darcy's law** the permeability
of a porous medium is calculated from the velocity and
corresponding pressure field on the porescale [1,3]. These fields
are solutions of porescale hydrodynamic partial differential
equations. Different numerical methods that solve different hydrodynamic
equations can be used to obtain the velocity and pressure field.
Possibilities are **Navier-Stokes simulations** and **Lattice-Boltzmann simulations**. Our Lattice-Boltzmann implementation, for example, numerically solves the Boltzmann equation and is run until a stationary solution has been reached. From this stationary solution the hydrodynamic fields are calculated.
Simulations in stochastic geometries often require very large system sizes to obtain representative solutions. In our investigations, typical sizes of the discretized system are in the range 1024³-4096³ voxel.

## Publications

[1] A. Narvaez, T. Zauner, F. Raischel, R. Hilfer, J. Harting, “Quantitative analysis of numerical estimates for the permeability of porous media from lattice-Boltzmann simulations”, Journal of Statistical Mechanics, P11026, 2010, Preprint

[2] S. Grottel, G. Reina, T. Zauner, R. Hilfer, T. Ertl, "Particle-based Rendering for Porous Media", SIGRAD, 2010, Preprint

[3] J. Harting, T. Zauner, R. Weeber, and R. Hilfer "Numerical modeling of fluid flow in porous media and in driven colloidal suspensions" in High Performance Computing in Science and Engineering '08, edited by W. Nagel, D. Kröner, M. Resch, Springer ,2008. Preprint

[4] R. Hilfer and T. Zauner "High precision synthetic computed tomography of reconstructed porous media" in Physical Review E, vol.84, p. 062301 (2011)