Approximation Schemes for convective term - structured grids - Summary of Discretizations Schemes and examples
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- | \alpha = \left[ \frac{ | + | \alpha = \left[ \frac{\varphi_{h_{1}} - \varphi_{h_{2}}}{ h^{p}_{2} - h^{p}_{1}} \right] + O \left(h^{p+1}_{1} \right) + O \left(h^{p+1}_{2} \right) |
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</td><td width="5%">(3)</td></tr></table> | </td><td width="5%">(3)</td></tr></table> |
Revision as of 10:57, 8 April 2012
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Contents |
Discretizations Schemes - Estimation of critical Peclet number
Discretizations Schemes - Estimation of order - Richardson extrapolation
William L. Oberkampf, Timothy G. Trucano (2002) Verification and validation in Computational Fluid Dynamics
Roache PJ.(1998) Verification and validation in computational science and engineering. Albuquerque, NM: Hermosa Publishers
Alvin KF, Oberkampf WL, Rutherford BM, Diegert KV.(2000) Methodology for characterizing modeling and discretization uncertainties in computational simulation. SAND2000-0515, Sandia National Laboratories, Albuquerque, NM.
We discuss a posteriori error estimation through the use of Richardson extrapolation (Roache PJ.1998). An elegant and concise discussion of this topic within a larger context of characterizing modeling uncertainties can also be found in (Alvin KF, Oberkampf WL, Rutherford BM, Diegert KV.2000). To illustrate the challenges, we focus on grid convergence extrapolation as discussed in (Alvin KF, Oberkampf WL, Rutherford BM, Diegert KV.2000). Consider for simplicity a steady-state computational problem in one spatial dimension with uniform mesh spacing : We must make several assumptions in order to perform Richardson extrapolation in a straightforward way:
- Assumption 1: is a smooth solution (existence of sufficient derivatives to justify the application of a Taylor expansion in the mesh spacing) of the exact PDEs.
- Assumption 2: The formal convergence order of the spatial discretization method is known a priori. In addition, it is assumed that the computer code has empirically demonstrated convergence order .
- Assumption 3: The mesh spacing is small enough that the leading-order error term dominates the total discretization error. This is also called the asymptotic range of the discretization (Roache PJ. 1998). One key implication of this is that convergence is monotone in the asymptotic range.
Thus, under these assumptions, expand the exact solution of the PDE of interest as
| (1) |
| (2a) |
| (2b) |
| (3) |
Selection advice
Comparison of Discretizations Schemes
Numerical examples
Pure convection of a scalar step by a rotating velocity field (Smith-Hutton problem)
R.M.Smith and A.G.Hutton (1982), "The numerical treatment of advection: A performance comparison of current methods", Numerical Heat Transfer, Vol. 5, p439.
This was the test problem devised for evaluating a range of numerical models of convection at the third meeting of the International Association for Hydraulic Research Working Group on Refined Modelling of flow
Sometimes it was used scalar profile with a discontinuity at
We shall use here smooth inlet profile
This is a simple problem with a strong discontinuity in a scalar profile and flow that is not parallel to the boundaries of the domain being tested. As such it should reveal the poor convergence of the first order schemes, which exhibit false diffusion on flow that is not parallel to the grid, whilst the sharp gradient should generate oscillations in the solutions generated using the second and third order schemes.
The steady transport equation is solved in the region \ , \ , with the streamfunction being specified as
| (1) |
which is shown in figure below. This streamfunction gives a velocity field of
| (1) |
| (1) |
The scalar is solved over the domain, with the value of being prescribed at the inlet and on the left, right and top boundaries, whilst on the outlet the derivative of normal to the boudary is set to zero. The inlet profile is given as
| (1) |
where is a parameter which defines the sharpness of the inlet profile. The outer boundaries are prescribed as
| (2) |
Thus is on and , and is at the origin. At the outlet a zero normal derivative is prescribed
| (2) |
The two parameters which define the scalar field are the Peclet number, which specifies the diffusivity of the problem, and which is a parameter that defines the sharpness of the inlet profile.
Square Lid-driven cavity flow
Example code for solving Smith-Hutton problem
Dear friends
It's just a scrap. Later I'll correct it, although it's a complete working code
Michail
Sample code for solving Smith-Hutton test - Fortran 90
It's a results, obtained using this code (UDS and HLPA schemes)
Below it's cleary seen the numerical diffusion impact, comparing the contour fields obtaining using the UDS and HLPA. A bit later we shall place here a solution gained with QUICK scheme, and it will be seen the osscilations.
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