Exemplo n.º 1
0
def dJhat(turbine_density):
    farm = Farm(domain, turbine, function_space=V, site_ids=1)
    farm.turbine_density.assign(turbine_density)
    prob_params.tidal_farm = farm
    problem = SteadySWProblem(prob_params)
    sol_params = CoupledSWSolver.default_parameters()
    sol_params.dump_period = 1
    solver = CoupledSWSolver(problem, sol_params)
    functional = PowerFunctional(problem)
    control = Control(farm.turbine_density)
    rf = FenicsReducedFunctional(functional, control, solver)
    return rf.derivative()
Exemplo n.º 2
0
def moola_problem():
    adj_reset()
    mesh = UnitSquareMesh(256, 256)
    V = FunctionSpace(mesh, "CG", 1)
    f = interpolate(Constant(1), V)
    u = Function(V)
    phi = TestFunction(V)
    F = inner(grad(u), grad(phi)) * dx - f * phi * dx
    bc = DirichletBC(V, Constant(0), "on_boundary")
    solve(F == 0, u, bc)

    J = Functional(inner(u, u) * dx)
    m = Control(f)
    rf = ReducedFunctional(J, m)

    obj = rf.moola_problem().obj
    pf = moola.DolfinPrimalVector(f)

    return obj, pf
Exemplo n.º 3
0
    args.turbines, args.optimize, args.withcuts, args.cost)
sol_params.cache_forward_state = False
solver = CoupledSWSolver(problem, sol_params)

# Define the functional
#if args.withcuts:
#    power_functional = PowerFunctional(problem, cut_in_speed=1.0, cut_out_speed=3.)
#else:
#    power_functional = PowerFunctional(problem)
#cost_functional = args.cost * CostFunctional(problem)
#functional = power_functional - cost_functional

functional = PowerFunctional(problem)

# Define the control
control = Control(farm.friction_function)
rf = FenicsReducedFunctional(functional, control, solver)

# define optimization problem (link to optizelle)
opt_problem = MaximizationProblem(
    rf, bounds=(0., model_turbine.maximum_smeared_friction))

parameters = {
    "maximum_iterations": 100,
    "optizelle_parameters": {
        "msg_level": 10,
        "algorithm_class": Optizelle.AlgorithmClass.TrustRegion,
        "H_type": Optizelle.Operators.BFGS,
        "dir": Optizelle.LineSearchDirection.BFGS,
        "ipm": Optizelle.InteriorPointMethod.LogBarrier,
        "sigma": 0.5,
Exemplo n.º 4
0
    problem = SteadySWProblem(prob_params)
    sol_params = CoupledSWSolver.default_parameters()
    sol_params.dump_period = 1
    solver = CoupledSWSolver(problem, sol_params)
    functional = PowerFunctional(problem)
    control = Control(farm.turbine_density)
    rf = FenicsReducedFunctional(functional, control, solver)
    return rf.derivative()


# Friction function 1
turbine_density = Constant(0.1)
# Friction function 2
turbine_density = interpolate(
    Expression("1e-05*(1 + x[0]*x[0] + 2*x[1]*x[1])"), V)
# Fricyion function 3
turbine_density = interpolate(
    Expression("1e-02*(sin(2*pi*x[0]) - cos(2*pi*x[1]))"), V)

# Set control to turbine density
farm = Farm(domain, turbine, function_space=V, site_ids=1)
farm.turbine_density.assign(turbine_density)
control = Control(farm.turbine_density)

# Compute reduced funtional and its derivative
J_dens = Jhat(turbine_density)
dJ_dens = dJhat(turbine_density)

# Compute convergence rates using imported method from dolfin_adjoint
conv_rate = taylor_test(Jhat, control, J_dens, dJ_dens)