The Multi-dimensional Optimal Order Detection (MOOD) method for two-dimensional geometries has been introduced in "A high-order finite volume method for hyperbolic systems: Multi-dimensional Optimal Order Detection (MOOD)", J. Comput. Phys. 230 (2011), and enhanced in "Improved Detection Criteria for the Multi-dimensional Optimal Order Detection (MOOD) on unstructured meshes with very high-order polynomials", Comput. & Fluids 64 (2012). We present in this paper the extension to 3D mixed meshes composed of tetrahedra, hexahedra, pyramids and prisms. In addition, we simplify the u2 detection process previously developed and show on a relevant set of numerical tests for both the convection equation and the Euler system that the optimal high-or...
In this paper a relaxed formulation of the a posteriori Multi-dimensional Optimal Order Detection (M...
Os datos relativos aos resultados deste artigo poden descargarse desde https://doi.org/10.17862/cran...
In this paper the relaxed, high-order, Multidimensional Optimal Order Detection (MOOD) framework is ...
The Multi-dimensional Optimal Order Detection (MOOD) method for two-dimensional geometries has been ...
The Multidimensional Optimal Order Detection (MOOD) method for two-dimensional geometries has been i...
International audienceIn this paper, we investigate an original way to deal with the problems genera...
The Multi-dimensional Optimal Order Detection (MOOD) method has been designed by authors in [5] and ...
Preprint for Finite Volume for Complex Applications 6 (FVCA6)The Multi-dimensional Optimal Order Det...
This paper extends the MOOD method proposed by the authors in [A high-order finite volume method f...
This paper extends the MOOD method proposed by the authors in ["A high-order finite volume method fo...
International audienceIn this paper, we investigate the coupling of the Multi-dimensional Optimal Or...
The Multi-dimensional Optimal Order Detection (MOOD) method has been designed by authors in [5] and ...
The Multi-dimensional Optimal Order Detection (MOOD) method is an original Very High-Order Finite ...
In this paper, we investigate an original way to deal with the problems generated by the limitation...
We present an a posteriori shock-capturing finite volume method algorithm called GP-MOOD that solves...
In this paper a relaxed formulation of the a posteriori Multi-dimensional Optimal Order Detection (M...
Os datos relativos aos resultados deste artigo poden descargarse desde https://doi.org/10.17862/cran...
In this paper the relaxed, high-order, Multidimensional Optimal Order Detection (MOOD) framework is ...
The Multi-dimensional Optimal Order Detection (MOOD) method for two-dimensional geometries has been ...
The Multidimensional Optimal Order Detection (MOOD) method for two-dimensional geometries has been i...
International audienceIn this paper, we investigate an original way to deal with the problems genera...
The Multi-dimensional Optimal Order Detection (MOOD) method has been designed by authors in [5] and ...
Preprint for Finite Volume for Complex Applications 6 (FVCA6)The Multi-dimensional Optimal Order Det...
This paper extends the MOOD method proposed by the authors in [A high-order finite volume method f...
This paper extends the MOOD method proposed by the authors in ["A high-order finite volume method fo...
International audienceIn this paper, we investigate the coupling of the Multi-dimensional Optimal Or...
The Multi-dimensional Optimal Order Detection (MOOD) method has been designed by authors in [5] and ...
The Multi-dimensional Optimal Order Detection (MOOD) method is an original Very High-Order Finite ...
In this paper, we investigate an original way to deal with the problems generated by the limitation...
We present an a posteriori shock-capturing finite volume method algorithm called GP-MOOD that solves...
In this paper a relaxed formulation of the a posteriori Multi-dimensional Optimal Order Detection (M...
Os datos relativos aos resultados deste artigo poden descargarse desde https://doi.org/10.17862/cran...
In this paper the relaxed, high-order, Multidimensional Optimal Order Detection (MOOD) framework is ...