A dataset for non-reflecting boundary conditions in the context of the discontinuous Galerkin method
doi:10.4121/19354607.v2
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doi: 10.4121/19354607
doi: 10.4121/19354607
Datacite citation style:
Shehadi, Edmond (2022): A dataset for non-reflecting boundary conditions in the context of the discontinuous Galerkin method. Version 2. 4TU.ResearchData. dataset. https://doi.org/10.4121/19354607.v2
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Dataset
choose version:
version 2 - 2022-06-20 (latest)
version 1 - 2022-03-22
This is a dataset for computational work investigating non-reflecting boundary conditions (NRBCs). The framework used is based on a high-order nodal discontinuous Galerkin method. The flow is described by the two-dimensional non-linear Euler equations.
The data explores the efficacy of different NRBCs, mainly: perfectly matched layers (PML), sponge layers, supersonic layers, Riemann-extrapolation methods and a new polynomial-correction (PC-)Navier-Stokes charactestic boudnary condition (NSCBC) approach. Additionally, hybrid methods also are used, by combining some of these methods together (refer to folder name).
Finally, the configuration file for generating each of these datasets is included, per folder.
The data explores the efficacy of different NRBCs, mainly: perfectly matched layers (PML), sponge layers, supersonic layers, Riemann-extrapolation methods and a new polynomial-correction (PC-)Navier-Stokes charactestic boudnary condition (NSCBC) approach. Additionally, hybrid methods also are used, by combining some of these methods together (refer to folder name).
Finally, the configuration file for generating each of these datasets is included, per folder.
history
- 2022-03-22 first online
- 2022-06-20 published, posted
publisher
4TU.ResearchData
format
Once uncompressed, the data is ASCII-based, provided in CSV format.
organizations
University of Twente, Faculty of Engineering Technology (ET), Engineering Fluid Dynamics (EFD)
DATA
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