Using an Interactive Lattice Boltzmann Solver in Fluid Mechanics Instruction
Abstract
:1. Introduction
2. Motivation
2.1. Laboratory Experiments for Fluid Mechanics Instruction
2.2. (Interactive) Simulations for Fluid Mechanics Instruction
3. LBM for Interactive Monitoring and Steering
3.1. State of the Art
3.2. LBM Bulk Scheme
3.3. Online Visualization: The Key to Success for Teaching Purposes
3.4. Hardware Concepts: Bringing the Computing Power to the Lecture Room
4. Inquiry-Based Learning Scenarios with the LBM Solver ELBE
4.1. Getting a Taste of Fluid Mechanics and CFD
4.1.1. Students Consume Scientific Results
4.1.2. Students Consume Scientific Methods
4.1.3. Students Consume Scientific Process
4.2. Working with the Literature
4.2.1. Students Apply Scientific Results
4.2.2. Students Research Scientific Results
4.3. Learning about (Aspects of) Simulation
4.3.1. Students Apply Scientific Methods
4.3.2. Students Apply Scientific Processes
4.4. Research
4.4.1. Students Research Scientific Methods
4.4.2. Students Research Scientific Processes
5. Feedback and Evaluation
5.1. Statistics
5.2. Personal Feedback
Huisman is working for the European research project PRICE. He joined the team in 2016 and already attended a couple of international conferences and published his work with ELBE in peer-reviewed conference proceedings [40,41].After attending the lecture ”Application of Numerical Methods in Marine Engineering” (ASM) and the project that was part of the course, I had a clear overview of the research code ELBE and its application spectrum. The possibility of quick implementation of new code snippets and the fast computation and post-processing times enables the user to get a fast response to his own code developments. This makes it possible to quickly generate working simulations, even for beginners without distinct programming skills. When I started my master thesis (simulation of fluid-ship-ice interaction) I already had a good sense of the functionalities and possibilities of ELBE. Now I am working as part of the ELBE developer team in a research project following my master degree. This project is based on the topic of my master thesis and therefore good example for student work leading to new research activities.Michael Huisman, Ph.D. student, TUHH
Überrück joined the FDS in 2016. Even though he is not part of the ELBE team anymore, he’s occasionally using ELBE for gaining additional fluid mechanical insight for his current research project, or for demonstration purposes. Moreover, he published his work for the above-mentioned research project in three different journal publications [30,42,43]. On top, he presented the results in front of a large audience at an international conference.My first contact with the lattice Boltzmann Method was in a lecture during my master program. During the practical part of the course, I was impressed by the performance and simplicity of the code, also in the case of flow problems with a free surface, which are very important for me as a naval architect. I decided to write my project thesis and also later on my master thesis in this research field. Moreover, I was involved in a research project as student research assistant. The project was concerned with the analysis of the sloshing behavior in LNG tanks and was funded by a big aircraft manufacturer. I ran all the simulations on campus and later on presented the results at the customer’s site, including a live demo of ELBEvis. All in all, the research on this method and the cooperation with the company motivated me to become a research assistant at the FDS.Micha Überrück, Ph.D. student, TUHH
Mierke is working as a Ph.D. student for the ProEis project. He also contributed to a couple of papers already [25,26,30,35]. Moreover, he won the “Best GPU-related talk” award at the 13th International Conference for Mesoscopic Methods in Engineering and Science (ICMMES 2016, 18–22 July, Hamburg, Germany) and was awarded a recent NVIDIA GPU.I had the chance to participate in the lecture ASM in summer 2013. From the very beginning, I was fascinated by the innovative style of teaching. Advantages and disadvantages, as well as challenges of fluid simulation approaches based on the lattice Boltzmann method (LBM) were demonstrated in a modern and playful way. Furthermore, the development and implementation of the new algorithms on many-core hardware systems like GPUs together with other students resulted in very efficient simulation tools. This has allowed us to visualize the numerical results and even to interact with the fluid simulation during runtime, which was very interesting, fascinating and helpful to understand complex fluid mechanics. Later on, my curiosity for the LBM increased even more. In my project and my master thesis at the FDS, I’ve focused on algorithmic and numerical details of the LBM and developed a valuable new method that I later presented on a notable LBM conference as well as in a publication. Thanks to the inspiring ASM lecture, which has caught my attention and triggered my interest in LBM, I’m now working as a Ph.D. student at the FDS, focusing on numerical and algorithmic details of complex LBM schemes for large engineering applications.Dennis Mierke, Ph.D. student, TUHH
6. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
Appendix A List of ELBE Teaching Activities
Appendix A.1. List of ELBE-related lectures and presentations
- Lecture “Application of Numerical Methods in Marine Engineering (ASM)”
- Application of ELBE for individual student research projects. Lecture given by C. Janßen, 2012 – 2015.
- Lecture “Innovative Numerical Methods for Computational Fluid Mechanics (InnoCFD)”
- Application of ELBE for demos in the lecture room and individual student research projects. Lecture given by T. Rung and C. Janßen, since 2015.
- Lecture “Fluid Mechanics”
- Application of ELBE for interactive demos in the lecture room. Lecture given by T. Rung, since 2015.
- Event “TUHH Science Night”
- Application of ELBE for interactive demos with smart board input for a public audience. Demos given by T. Rung and C. Janßen. November 2015 and November 2017 (scheduled).
Appendix A.2. List of ELBE-Related Project Works in ASM
- “LBM, VOF, FSI and GPU”, Detlefsen, Gäbler, Nagrelli, Schimonek. 2012.
- “Analysis of a stirring unit”, Feder, Kömpe, Tobies, 2013.
- “Sloshing in partly filled tanks”, Gehrke, Huisman, Willing, 2013.
- “Analysis of a waterbike in the numerical towing tank”, Herting, v. Meyerinck, Überrück, 2013.
- “Cavitation Modeling”, Brüdigam and Hartmann, 2014.
- “Flooding of generic ship sections”, Budde, Conradi and Lüke, 2014.
- “Sloshing Simulations for various testcase setups”, Rudaa and Olivucci, 2015.
- “The Potsdam Propeller Test Case (PPTC)”, Angerbauer, 2015.
- “LBM for aeroacoustics”, Worst, 2016.
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Form Factor | GPU | Scope of Application | Level |
---|---|---|---|
Laptop | NVIDIA GTX 970 M | Live demos during presentations | Consumption |
Small workstation | NVIDIA GTX Titan X | Live demos at exhibitions, science nights, etc. | Consumption |
Standard workstation | NVIDIA GTX Titan X | Student research assistant work, theses work | Application |
Rack server (small) | 4x NVIDIA Tesla C2075 | Overnight runs | Research |
Rack server (large) | 4x NVIDIA K80 GPUs | Overnight runs | Research |
Activity | Topic of the Task | ||
---|---|---|---|
Scientific Results | Scientific Methods | Scientific Processes | |
Consumption | Students consume research results. | Students consume research methods. | Students receive explanations of scientific processes. |
Examples: | Attend lectures or presentations at science nights on recent CFD results. | Listen to a presentation on numerical methods. | Listen to a presentation on the history of ELBE. |
Watch animated results of numerical simulations on YouTube. | Attend a lecture on fluid mechanics with a live demo. | Participate in an excursion to a model basin to compare experimental results with numerical results. | |
Application | Students discuss or transfer research results. | Students discuss or practice existing methods. | Students discuss or develop research processes. |
Examples: | Read literature to write a wiki article on turbulent mixing. | Determine if the grid resolution that meets the computational constraints is sufficient to answer a question. | Decide for/against higher grid resolution (vs. duration of calculation) for a numerical simulation. |
Learn from an ELBE simulation of wing profiles in a wind tunnel to improve personal sailing skills. | Replicate a predefined ELBE test scenario in order to practice running the code. | Figure out a research design to answer questions on nonlinear flow physics using ELBE. | |
Research | Students systematically study the literature on a scientific topic | Students apply existing methods to a research question. | Students apply the full scientific research cycle. |
Examples: | Find a suitable parametrization for an array of wind turbines for a simulation in ELBE. | Figure out a way to determine the influence of the shape of a blade on the efficiency of mixing of a gas into a liquid using ELBE simulations. | Address own research questions using ELBE. |
Find the state of the art knowledge on parametrizations of turbulent mixing to consider modifications to the ELBE code. | Suggest a parametrization from literature to parametrize the shape of pools and tanks subject to violent sloshing. | Extend ELBE with novel algorithms to be able to address the new problem. |
Author | Title | Date | Type | ID |
---|---|---|---|---|
Steinert, A. | Numerical simulation of wave propagation and wave run-up | Jul 2012 | B.Sc. | elbe-2012-01 |
Gralher, S. | Numerical simulation of sloshing and slamming | Jul 2012 | B.Sc. | elbe-2012-02 |
Bengel, S. | An LB method for the numerical simulation of sloshing in partly filled tanks | Dec 2012 | B.Sc. | elbe-2012-03 |
Marckmann, H. | Entwicklung und Implementierung eines Simulationsverfahrens zur effizienten Berechnung von Körpern in Seegang | Apr 2013 | M.Sc. | elbe-2013-04 |
Nagrelli, H. | Numerical Analysis of Fluid-Structure-Interaction with an LBM-VOF solver on GPGPU hardware | Aug 2013 | P.Th. | elbe-2013-05 |
Koliha, N. | Computation and Real-Time Rendering of Complex Multiphase Flows on GPGPU Clusters | Oct 2013 | M.Sc. | elbe-2013-06 |
Bieler, C. | Numerical analysis and fluid-mechanical optimization of a formula student racer | Jun 2014 | B.Sc. | elbe-2014-07 |
Nagrelli, H. | Simulation of Fluid-Structure Interactions with a GPGPU-accelerated lattice Boltzmann Method | Jul 2014 | M.Sc. | elbe-2014-08 |
Schimonek, P. | On the applicability of the flow solver ELBE to aircraft ditching | Nov 2014 | P.Th. | elbe-2014-09 |
Mierke, D. | Coupling of a GPU-based lattice Boltzmann solver to a physics engine for the simulation of colliding multi-body systems | Dec 2014 | P.Th. | elbe-2014-10 |
Überrück, M. | Development of a numerical towing tank for the analysis of wave loads on partly and fully submerged bodies | Dec 2014 | P.Th. | elbe-2014-11 |
Gehrke, M. | Validation of a GPU-accelerated, non-uniform Lattice-Boltzmann solvers for turbulent flows | Jan 2015 | M.Sc. | elbe-2015-12 |
Huisman, M. | Numerical modeling of ship-ice interactions with physics engines under the consideration of ice breaking | Jul 2015 | M.Sc. | elbe-2015-13 |
Mierke, D. | An Efficient and Accurate Simulation Procedure for Modelling coupled Fluid-Ice-Ship-Interaction on Graphics Processing Units | Oct 2015 | M.Sc. | elbe-2015-14 |
Überrück, M. | Alternative advection schemes and outlet boundary conditions for numerical towing tanks | Oct 2015 | M.Sc. | elbe-2015-15 |
Richter, M. | Implementation of a seaway boundary condition into a GPU-accelerated lattice Boltzmann solver | Nov 2015 | B.Sc. | elbe-2015-16 |
Reichert, L. | Fluiddynamic Analysis of Front- and Rear Wings of a Formula Student Racing Car | Nov 2015 | M.Sc. | elbe-2015-17 |
Hartmann, M.C.N. | Development of a cavitation model for Lattice-Boltzmann-Methods | Nov 2015 | P.Th. | elbe-2015-18 |
Angerbauer, R. | Numerical Simulation of Propeller Flows with a GPU-accelerated Lattice-Boltzmann solver | Dec 2015 | P.Th. | elbe-2015-19 |
Metzner, A. | Performance Analysis of CUDA-aware MPI for a 2D Laplace Solver | Apr 2016 | P.Th. | elbe-2016-20 |
Asmuth, H. | Development of Overset Strategies for LBM-Based Flow Solvers | Oct 2016 | M.Sc. | elbe-2016-21 |
Budde, A. | Pool-Sloshing aboard of mega yachts | Oct 2016 | M.Sc. | elbe-2016-22 |
Faulkner- Harding, P. | Multi-GPU parallelization techniques for the acceleration of LBM-type flow solvers | Oct 2016 | M.Sc. | elbe-2016-23 |
Brüdigam, N. | Implementation and Validation of a RANS model for Lattice-Boltzmann models with local grid refinement | Jan 2017 | M.Sc. | elbe-2017-24 |
Angerbauer, R. | A hybrid RANS/LES method for LBM-based simulations of propeller flows | Feb 2017 | M.Sc. | elbe-2017-25 |
Boelle, T. | Implicit Large Eddy Simulation with the Cumulant lattice Boltzmann Method: A theoretical Analysis | Feb 2017 | P.Th. | elbe-2017-26 |
Hartmann, M. | Development of a numerical method for the prediction of ice loads on vessels traveling in pre-broken ice. | Jul 2017 | M.Sc. | elbe-2017-27 |
Rodriguez, A. | Volume Rendering extension and general enhancements for the TUHH-ELBE visualization tool | Mar 2016 | P.Th. | ext-2016-01 |
Bach, C. | Extending a panel code for deformed airplane sections with the help of viscous CFD | May 2016 | P.Th. | ext-2016-02 |
Conradi, H. | Optimization of the hull shape of the Flying Dutchman dinghy with CFD simulations | Aug 2016 | P.Th. | ext-2016-03 |
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Glessmer, M.S.; Janßen, C.F. Using an Interactive Lattice Boltzmann Solver in Fluid Mechanics Instruction. Computation 2017, 5, 35. https://doi.org/10.3390/computation5030035
Glessmer MS, Janßen CF. Using an Interactive Lattice Boltzmann Solver in Fluid Mechanics Instruction. Computation. 2017; 5(3):35. https://doi.org/10.3390/computation5030035
Chicago/Turabian StyleGlessmer, Mirjam S., and Christian F. Janßen. 2017. "Using an Interactive Lattice Boltzmann Solver in Fluid Mechanics Instruction" Computation 5, no. 3: 35. https://doi.org/10.3390/computation5030035
APA StyleGlessmer, M. S., & Janßen, C. F. (2017). Using an Interactive Lattice Boltzmann Solver in Fluid Mechanics Instruction. Computation, 5(3), 35. https://doi.org/10.3390/computation5030035