def test_initialization(): from pyclaw.clawpack.clawpack import ClawSolver2D solver = ClawSolver2D() import peanoclaw peano_solver = peanoclaw.Solver(solver, 1.0) import inspect for member in inspect.getmembers(peano_solver): if (not member[0].startswith("_") and not inspect.ismethod(member[1])): print((member[0])) for member in inspect.getmembers(solver): if (not member[0].startswith("_") and not inspect.ismethod(member[1])): print((member[0]))
def shallow2D(use_petsc=False,iplot=0,htmlplot=False,outdir='./_output',solver_type='classic',amr_type=None): #=========================================================================== # Import libraries #=========================================================================== from clawpack import riemann if use_petsc: import clawpack.petclaw as pyclaw else: from clawpack import pyclaw #=========================================================================== # Setup solver and solver parameters #=========================================================================== if solver_type == 'classic': solver = pyclaw.ClawSolver2D(riemann.shallow_roe_with_efix_2D) solver.limiters = pyclaw.limiters.tvd.MC solver.dimensional_split=1 elif solver_type == 'sharpclaw': solver = pyclaw.SharpClawSolver2D(riemann.shallow_roe_with_efix_2D) solver.bc_lower[0] = pyclaw.BC.wall solver.bc_upper[0] = pyclaw.BC.wall solver.bc_lower[1] = pyclaw.BC.wall solver.bc_upper[1] = pyclaw.BC.wall #=========================================================================== # Initialize domain and state, then initialize the solution associated to the # state and finally initialize aux array #=========================================================================== # resolution of each grid mgrid = 6 # number of initial AMR grids in each dimension msubgrid = 9 if amr_type is not None: m = mgrid else: # number of Domain grid cells expressed as the product of # grid resolution and the number of AMR sub-grids for # easy comparison between the two methods m = mgrid*msubgrid mx = m my = m # Domain: xlower = 0 xupper = 1 ylower = 0 yupper = 1 x = pyclaw.Dimension('x',xlower,xupper,mx) y = pyclaw.Dimension('y',ylower,yupper,my) domain = pyclaw.Domain([x,y]) state = pyclaw.State(domain,solver.num_eqn) grav = 1.0 # Parameter (global auxiliary variable) state.problem_data['grav'] = grav # Initial solution # ================ # Riemann states of the dam break problem damRadius = 0.25 #0.5 hl = 2. ul = 0. vl = 0. hr = 1. ur = 0. vr = 0. qinit(state,hl,ul,vl,hr,ur,vl,damRadius) # This function is defined above # this closure is used by AMR-style codes def qinit_callback(state): qinit(state,hl,ul,vl,hr,ur,vl,damRadius) #=========================================================================== # Set up controller and controller parameters #=========================================================================== claw = pyclaw.Controller() claw.tfinal = 3e-1 #3e-1 #0.03 if amr_type is not None: if amr_type == 'peano': import peanoclaw as amrclaw claw.solver = amrclaw.Solver(solver ,1/(mgrid*msubgrid) ,qinit_callback #,refinement_criterion=refinement_criterion_time_dependent #,refinement_criterion=refinement_criterion #,refinement_criterion=refinement_criterion_gradient ) claw.solution = amrclaw.Solution(state, domain) else: raise Exception('unsupported amr_type %s' % amr_type) else: claw.solver = solver claw.solution = pyclaw.Solution(state,domain) #claw.keep_copy = True #claw.outdir = outdir claw.keep_copy = False claw.output_format = None claw.outdir = None claw.num_output_times = 10 #=========================================================================== # Plot results #=========================================================================== if htmlplot: pyclaw.plot.html_plot(outdir=outdir) if iplot: pyclaw.plot.interactive_plot(outdir=outdir) return claw
def test_3x3_grid(): r"""This test simply solves a 3x3 grid, once with PyClaw and once as one patch with PeanoClaw. In the end it checks if the resulting qbcs match. """ #=========================================================================== # Import libraries #=========================================================================== import numpy as np import pyclaw import peanoclaw #=========================================================================== # Setup solver and solver parameters for PyClaw run #=========================================================================== pyclaw_solver = setup_solver() #=========================================================================== # Setup solver and solver parameters for PeanoClaw run #=========================================================================== peanoclaw_solver = setup_solver() peano_solver = peanoclaw.Solver(peanoclaw_solver, 1.0) #=========================================================================== # Initialize domain and state, then initialize the solution associated to the # state and finally initialize aux array #=========================================================================== # Domain: xlower = 0.0 xupper = 1.0 mx = 3 ylower = 0.0 yupper = 1.0 my = 3 x = pyclaw.Dimension(xlower,xupper,mx,name='x') y = pyclaw.Dimension(ylower,yupper,my,name='y') domain = pyclaw.Domain([x,y]) num_eqn = 3 # Number of equations pyclaw_state = pyclaw.State(domain,num_eqn) peanoclaw_state = pyclaw.State(domain, num_eqn) grav = 1.0 # Parameter (global auxiliary variable) pyclaw_state.problem_data['grav'] = grav peanoclaw_state.problem_data['grav'] = grav # Initial solution # ================ # Riemann states of the dam break problem damRadius = 0.2 hl = 2. ul = 0. vl = 0. hr = 1. ur = 0. vr = 0. qinit(pyclaw_state,hl,ul,vl,hr,ur,vl,damRadius) # This function is defined above qinit(peanoclaw_state,hl,ul,vl,hr,ur,vl,damRadius) # This function is defined above tfinal = 1.0 #=========================================================================== # Set up controller and controller parameters for PyClaw run #=========================================================================== pyclaw_controller = pyclaw.Controller() pyclaw_controller.tfinal = tfinal pyclaw_controller.solution = pyclaw.Solution(pyclaw_state,domain) pyclaw_controller.solver = pyclaw_solver pyclaw_controller.num_output_times = 1 pyclaw_controller.run() #=========================================================================== # Set up controller and controller parameters for PyClaw run #=========================================================================== peanoclaw_controller = pyclaw.Controller() peanoclaw_controller.tfinal = tfinal peanoclaw_controller.solution = pyclaw.Solution(peanoclaw_state,domain) peanoclaw_controller.solver = peano_solver peanoclaw_controller.num_output_times = 1 peanoclaw_controller.run() assert(np.max(np.abs(pyclaw_solver.qbc - peanoclaw_solver.qbc)) < 1e-9)
def shockbubble(use_petsc=False, iplot=False, htmlplot=False, outdir='./_output', solver_type='classic', amr_type=None): """ Solve the Euler equations of compressible fluid dynamics. This example involves a bubble of dense gas that is impacted by a shock. """ from clawpack import riemann if use_petsc: import clawpack.petclaw as pyclaw else: from clawpack import pyclaw if solver_type == 'sharpclaw': solver = pyclaw.SharpClawSolver3D(riemann.euler_3D) solver.weno_order = 5 solver.lim_type = 2 else: solver = pyclaw.ClawSolver3D(riemann.euler_3D) solver.dimensional_split = 1 # solver.transverse_waves = 3 solver.limiters = 4 solver.cfl_max = 0.2 solver.cfl_desired = 0.15 solver.order = 2 solver.dt_initial = 1 # 0.000125 solver.num_waves = 3 solver.bc_lower[0] = pyclaw.BC.custom solver.bc_upper[0] = pyclaw.BC.extrap solver.bc_lower[1] = pyclaw.BC.extrap solver.bc_upper[1] = pyclaw.BC.extrap solver.bc_lower[2] = pyclaw.BC.extrap solver.bc_upper[2] = pyclaw.BC.extrap # Initialize domain factor = 1 #2.0/3.0+1e-10#1.5+1e-10 mx = int(12 * factor) my = int(6 * factor) mz = int(6 * factor) # number of initial AMR grids in each dimension msubgrid = 27 if amr_type is None: # number of Domain grid cells expressed as the product of # grid resolution and the number of AMR sub-grids for # easy comparison between the two methods mx = mx * msubgrid my = my * msubgrid mz = mz * msubgrid x = pyclaw.Dimension('x', 0.0, 2.0, mx) y = pyclaw.Dimension('y', -0.5, 0.5, my) z = pyclaw.Dimension('z', -0.5, 0.5, mz) domain = pyclaw.Domain([x, y, z]) num_eqn = 5 state = pyclaw.State(domain, num_eqn) state.problem_data['gamma'] = gamma state.problem_data['gamma1'] = gamma1 qinit(state) print np.min(state.q[0, ...].reshape(-1)) solver.user_bc_lower = shockbc claw = pyclaw.Controller() claw.tfinal = 0.5 #1 claw.num_output_times = 10 #50 claw.outdir = outdir claw.output_format = None if amr_type is not None: if amr_type == 'peano': import peanoclaw as amrclaw claw.solver = amrclaw.Solver( solver, (x.upper - x.lower) / (mx * msubgrid), qinit #,refinement_criterion=refinement_criterion_gradient , internal_settings=amrclaw.InternalSettings( enable_peano_logging=True, fork_level_increment=1, use_dimensional_splitting_optimization=True)) claw.solution = amrclaw.Solution(state, domain) else: raise Exception('unsupported amr_type %s' % amr_type) else: claw.solver = solver claw.solution = pyclaw.Solution(state, domain) return claw