© IFP Controlled CO 2 | Diversified fuels | Fuel-efficient vehicles | Clean refining | Extended reserves Écrire ici dans le masque le nom de votre Direction.

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© IFP Controlled CO 2 | Diversified fuels | Fuel-efficient vehicles | Clean refining | Extended reserves Écrire ici dans le masque le nom de votre Direction – Écrire ici dans le masque le titre de la présentation – Date de la présentation Local Time Step for a Finite Volume Scheme I.Faille F.Nataf*, F.Willien, S.Wolf** *: Laboratoire J.L.Lions **:Université Pierre et Marie Curie

© IFP Direction Technologie, informatique et Mathématique Appliquées 23/01./ Outline of this talk Industrial context Bibliography Local Time step strategy Numerical results

© IFP Direction Technologie, informatique et Mathématique Appliquées 23/01./ Reservoir simulation Oil Reservoir reservoir : hundred meters to km wells : 10 cm Reservoir simulation estimate production characteristics calibrate reservoir parameters help to position and manage wells and well trajectories in order to maximize the oil and gas recovery

© IFP Direction Technologie, informatique et Mathématique Appliquées 23/01./ A simple model : immiscible two phase flow  porosity, K permeability Main unknowns : P pressure S p saturation of phase p System Parabolic with respect to P (compressible phases) non linear hyperbolic (kr(S) )or degenerate parabolic if capillary pressure (Pc) not neglected Large range of parameters permeability : from 1mD to 10Darcy Two phase in a porous medium p =w, o Mass conservation of each phase Darcy's law for each phase Relative permeability

© IFP Direction Technologie, informatique et Mathématique Appliquées 23/01./ A simple model : immiscible two phase flow Numerical requirements Robust  able to solve a wide range of problems : compositionnal, 3 phase flow... Locally conservative Traditional scheme Cell centered finite Volume  upwind scheme for the saturation  two-point or multi-points scheme for pressure Fully implicit in Time Non linear algebraic system  Newton method  Difficult to solve if high flow rates, small cells

© IFP Direction Technologie, informatique et Mathématique Appliquées 23/01./ Representation of wells Wells Transient phenomena are initiated at wells :  depressurization  water injection .... Traditional approach : a priori knowledge of the singularity induced by a well analytical source terms, in cells at reservoir scale Detailed description of the near wellbore necessary to represent certain phenomena such as water coning already available in "near well bore" simulator challenge for fullfield simulation

© IFP Direction Technologie, informatique et Mathématique Appliquées 23/01./ Modeling wells on full field level Full field grid with refined near well bore area

© IFP Direction Technologie, informatique et Mathématique Appliquées 23/01./ Local Time stepping strategy Locally refined grids induce decreased time step length, due to convergence problems of the Newton method. Aim : implement a local time stepping strategy Parabolic equation Parabolic/hyperbolic coupled system Applicable to complex fluid flow Requirements Fully Implicit Finite Volume Locally conservative Reduced cpu-time / small time steps Accuracy of the solution

© IFP Direction Technologie, informatique et Mathématique Appliquées 23/01./ Bibliography(1) Ewing, Lazarov, Vassilevski 1990 Parabolic problem, Cell centered Finite Difference scheme t t n,j t n-1 x tntn t n+1 At the interface between the coarse time step and refined time step zones :  Coarse flux = Integral of refined ones  Unknowns at "slave" points : constant or linear interpolation Properties  Conservative  Stability and error analysis for piecewise constant interpolation, loss of accuracy : O(DT/h 1/2 ) Linear system for all the unknowns between two coarse time levels : Coarse grid preconditioner of the Schur complement where the refined unknowns have been eliminated

© IFP Direction Technologie, informatique et Mathématique Appliquées 23/01./ Bibliography(2) Ewing, Lazarov 1994 Parabolic problem Relax the conservation constraint to obtain stability even for linear interpolation of the unknown on the interface Linear interpolation for "slave" points Standard scheme for unknowns of the coarse time steps Stability Similar preconditioner Not conservative t t n,j t n-1 x tntn t n+1

© IFP Direction Technologie, informatique et Mathématique Appliquées 23/01./ Bibliography(3) Dawson, Du, Dupont 1991 Parabolic problem, Finite difference scheme Explicit update of interface unknowns with a large interface time step DT on a large mesh H Then, interior unknowns are updated by an implicit scheme and interpolation of the interface unknowns Stability condition DT<cH 2 Not conservative

© IFP Direction Technologie, informatique et Mathématique Appliquées 23/01./ Bibliography(4) Mlacnik, Heinemann 2001 Reservoir simulation, compositional multiphase flow Two steps method :  one implicit computation on the whole domain with a coarse time step  linearly implicit in the refined time-step zone to avoid convergence problems of the non linear solver  fully implicit elsewhere  one computation in the refined zone with a Neumann boundary condition Conservative, fast But potentially limited accuracy  No control on the continuity of the unknowns at the interface.

© IFP Direction Technologie, informatique et Mathématique Appliquées 23/01./ Local time stepping strategy Based on space-time domain decomposition framework Extends the approach proposed by Ewing et al (1), by generalizing the interface conditions Improves the predictor-corrector method of (4) Interface conditions : enforce flux and unknown continuity Classical Dirichlet-Neumann interface conditions, choosing the coarse grid as the master or the slave. On the interface : Dirichlet can be conditions written in the neighboring cells For two phase flow, continuity of P, S and phase fluxes.

© IFP Direction Technologie, informatique et Mathématique Appliquées 23/01./ Local time stepping strategy Solution method Predictor stage :  one implicit computation on the whole domain with a coarse time step  it gives a first guess for the interface unknowns Iterative corrector stage  solve alternatively the equations in the refined domain and the coarse one taking the interface condition previously computed  stop when both interface conditions are satisfied Remarks : Numerical scheme and solution method applicable to complex compositional multiphase flow : In the predictor stage, linear implicit approximation in the refined time-step zone to avoid convergence problems of the non linear solver Iterative corrector stage can be stopped after the resolution of the domain where a Neumann boundary condition is applied, without loosing conservation

© IFP Direction Technologie, informatique et Mathématique Appliquées 23/01./ Local time stepping strategy Analysis of the numerical scheme Theorem : The scheme is  unconditionally stable  of order 1 in space and time  if the Dirichlet condition is localized on the interface  under an assumption on the aspect ratio of the interface cells if the Dirichlet condition is written at cell centers.

© IFP Direction Technologie, informatique et Mathématique Appliquées 23/01./ Numerical results Parabolic problem (from Ewing 1994) Exact solution : Solution at t=0.1

© IFP Direction Technologie, informatique et Mathématique Appliquées 23/01./ Parabolic problem after convergence ( iterations)after one iteration interface x=0.25 DT=0.02 dx=0.01 dt=0.002 DX=0.1 Error with the exact solution Coarse DT Fine dt

© IFP Direction Technologie, informatique et Mathématique Appliquées 23/01./ Immiscible two phase flow Simple 1D problem, one well and one reservoir Constant initial pressure, depressurization at x=0 Algorithm wellreservoir Sw=0.1Sw=1 Coarse DT Linearly implicit Fully implicit Fully, dt Neumann BC(Fw,Fo) Dirichlet BC (P,S) Fully, DT wellreservoir

© IFP Direction Technologie, informatique et Mathématique Appliquées 23/01./ Immiscible two phase flow Dx=2 in well zone, Dx=9 in reservoir zone DT/dt = 20 2 to 5 iterations per coarse time step wellreservoir

© IFP Direction Technologie, informatique et Mathématique Appliquées 23/01./ Immiscible two phase flow Dx=2 in well zone, Dx=9 in reservoir zone DT/dt = 10 2 to 5 iterations per coarse time step wellreservoir Good results compared to the fine step solution

© IFP Direction Technologie, informatique et Mathématique Appliquées 23/01./ Conclusion Local time step strategy Dirichlet/Neumann interface conditions Iterative solution method, with coarse grid predictor Conservative Applicable to compositional multiphase flow Numerical results on simple 1D tests good behavior of the scheme and solution method Currently being implemented in a 3D reservoir simulator.