コード例 #1
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    def test_storage(self):
        a = np.eye(2, 2)
        b = np.array([[0], [1]])
        u = MonotonousInput()
        ic = np.zeros((2, 1))
        ss = sim.StateSpace("test", a, b, input_handle=u)

        # run simulation to fill the internal storage
        domain = sim.Domain((0, 10), step=.1)
        res = sim.simulate_state_space(ss, ic, domain)

        # don't return entries that are not there
        self.assertRaises(KeyError, u.get_results, domain, "Unknown Entry")

        # default key is "output"
        ed = u.get_results(domain)
        ed_explicit = u.get_results(domain, result_key="output")
        self.assertTrue(np.array_equal(ed, ed_explicit))

        # return np.ndarray as default
        self.assertIsInstance(ed, np.ndarray)

        # return EvalData if corresponding flag is set
        self.assertIsInstance(u.get_results(domain, as_eval_data=True),
                              sim.EvalData)
コード例 #2
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    def setUp(self):

        self.u = CorrectInput()

        # setup temp and spat domain
        spat_domain = sim.Domain((0, 1), num=3)
        nodes, ini_funcs = sf.cure_interval(sf.LagrangeFirstOrder,
                                            spat_domain.bounds,
                                            node_count=3)
        register_base("init_funcs", ini_funcs, overwrite=True)

        # enter string with mass equations for testing
        int1 = ph.IntegralTerm(
            ph.Product(ph.TemporalDerivedFieldVariable("init_funcs", 2),
                       ph.TestFunction("init_funcs")), spat_domain.bounds)
        s1 = ph.ScalarTerm(
            ph.Product(
                ph.TemporalDerivedFieldVariable("init_funcs", 2, location=0),
                ph.TestFunction("init_funcs", location=0)))
        int2 = ph.IntegralTerm(
            ph.Product(ph.SpatialDerivedFieldVariable("init_funcs", 1),
                       ph.TestFunction("init_funcs", order=1)),
            spat_domain.bounds)
        s2 = ph.ScalarTerm(
            ph.Product(ph.Input(self.u),
                       ph.TestFunction("init_funcs", location=1)), -1)

        string_pde = sim.WeakFormulation([int1, s1, int2, s2])
        self.cf = sim.parse_weak_formulation(string_pde)
        self.ic = np.zeros((3, 2))
コード例 #3
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    def test_call_arguments(self):
        a = np.eye(2, 2)
        b = np.array([[0], [1]])
        u = CorrectInput()
        ic = np.zeros((2, 1))
        ss = sim.StateSpace("test", {1: a}, {1: b}, input_handle=u)

        # if caller provides correct kwargs no exception should be raised
        res = sim.simulate_state_space(ss, ic, sim.Domain((0, 1), num=10))
コード例 #4
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    def setUp(self):

        z_start = 0
        z_end = 1
        z_step = 0.1
        self.dz = sim.Domain(bounds=(z_start, z_end), num=9)

        t_start = 0
        t_end = 10
        t_step = 0.01
        self.dt = sim.Domain(bounds=(t_start, t_end), step=t_step)

        self.params = ut.Parameters
        self.params.node_distance = 0.1
        self.params.m = 1.0
        self.params.order = 8
        self.params.sigma = 1
        self.params.tau = 1

        self.y_end = 10

        self.u = tr.FlatString(0, self.y_end, z_start, z_end, 0, 5,
                               self.params)

        def x(z, t):
            """
            initial conditions for testing
            """
            return 0

        def x_dt(z, t):
            """
            initial conditions for testing
            """
            return 0

        # initial conditions
        self.ic = np.array([
            cr.Function(lambda z: x(z, 0)),  # x(z, 0)
            cr.Function(lambda z: x_dt(z, 0)),  # dx_dt(z, 0)
        ])
コード例 #5
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# PARAMETERS TO VARY
# number of eigenfunctions, used for control law approximation
n_modal = 10
# number FEM test functions, used for system approximation/simulation
n_fem = 30
# control law parameter, stabilizing: param_a0_t < 0, destabilizing: param_a0_t > 0
param_a0_t = -6
# initial profile x(z,0) (desired x(z,0)=0)
init_profile = 0.2

# system/simulation parameters
actuation_type = 'robin'
bound_cond_type = 'robin'
l = 1
T = 1
spatial_domain = sim.Domain(bounds=(0, l), num=n_fem)
temporal_domain = sim.Domain(bounds=(0, T), num=1e2)
n = n_modal
show_plots = False

# original system parameters
a2 = .5
a1 = 1
a0 = 2
alpha = -0.5
beta = -1
param = [a2, a1, a0, alpha, beta]
adjoint_param = ef.get_adjoint_rad_evp_param(param)

# target system parameters (controller parameters)
a1_t = -1
コード例 #6
0
ファイル: test_control.py プロジェクト: schwinma/pyinduct
    def test_fem(self):

        # system/simulation parameters
        actuation_type = 'robin'
        bound_cond_type = 'robin'

        self.l = 1.
        spatial_disc = 30
        self.dz = sim.Domain(bounds=(0, self.l), num=spatial_disc)

        self.T = 1.
        temporal_disc = 1e2
        self.dt = sim.Domain(bounds=(0, self.T), num=temporal_disc)
        self.n = 12

        # original system parameters
        a2 = 1.5
        a1 = 2.5
        a0 = 28
        alpha = -2
        beta = -3
        self.param = [a2, a1, a0, alpha, beta]
        adjoint_param = ef.get_adjoint_rad_evp_param(self.param)

        # target system parameters (controller parameters)
        a1_t = -5
        a0_t = -25
        alpha_t = 3
        beta_t = 2
        self.param_t = [a2, a1_t, a0_t, alpha_t, beta_t]

        # actuation_type by b which is close to b_desired on a k times subdivided spatial domain
        b_desired = self.l / 2
        k = 51  # = k1 + k2
        k1, k2, self.b = ut.split_domain(k, b_desired, self.l,
                                         mode='coprime')[0:3]
        M = np.linalg.inv(
            ut.get_inn_domain_transformation_matrix(k1, k2, mode="2n"))

        # original intermediate ("_i") and traget intermediate ("_ti") system parameters
        _, _, a0_i, self.alpha_i, self.beta_i = ef.transform2intermediate(
            self.param)
        self.param_i = a2, 0, a0_i, self.alpha_i, self.beta_i
        _, _, a0_ti, self.alpha_ti, self.beta_ti = ef.transform2intermediate(
            self.param_t)
        self.param_ti = a2, 0, a0_ti, self.alpha_ti, self.beta_ti

        # create (not normalized) eigenfunctions
        eig_freq, self.eig_val = ef.compute_rad_robin_eigenfrequencies(
            self.param, self.l, self.n)
        init_eig_funcs = np.array([
            ef.SecondOrderRobinEigenfunction(om, self.param, self.dz.bounds)
            for om in eig_freq
        ])
        init_adjoint_eig_funcs = np.array([
            ef.SecondOrderRobinEigenfunction(om, adjoint_param, self.dz.bounds)
            for om in eig_freq
        ])

        # normalize eigenfunctions and adjoint eigenfunctions
        adjoint_and_eig_funcs = [
            cr.normalize_function(init_eig_funcs[i], init_adjoint_eig_funcs[i])
            for i in range(self.n)
        ]
        eig_funcs = np.array([f_tuple[0] for f_tuple in adjoint_and_eig_funcs])
        self.adjoint_eig_funcs = np.array(
            [f_tuple[1] for f_tuple in adjoint_and_eig_funcs])

        # eigenfunctions of the in-domain intermediate (_id) and the intermediate (_i) system
        eig_freq_i, eig_val_i = ef.compute_rad_robin_eigenfrequencies(
            self.param_i, self.l, self.n)
        self.assertTrue(all(np.isclose(eig_val_i, self.eig_val)))
        eig_funcs_id = np.array([
            ef.SecondOrderRobinEigenfunction(eig_freq_i[i], self.param_i,
                                             self.dz.bounds, eig_funcs[i](0))
            for i in range(self.n)
        ])
        eig_funcs_i = np.array([
            ef.SecondOrderRobinEigenfunction(
                eig_freq_i[i], self.param_i, self.dz.bounds, eig_funcs[i](0) *
                eig_funcs_id[i](self.l) / eig_funcs_id[i](self.b))
            for i in range(self.n)
        ])

        # eigenfunctions from target system ("_ti")
        eig_freq_ti = np.sqrt((a0_ti - self.eig_val) / a2)
        eig_funcs_ti = np.array([
            ef.SecondOrderRobinEigenfunction(eig_freq_ti[i], self.param_ti,
                                             self.dz.bounds, eig_funcs_i[i](0))
            for i in range(self.n)
        ])

        # create testfunctions
        nodes, self.fem_funcs = sf.cure_interval(sf.LagrangeFirstOrder,
                                                 self.dz.bounds,
                                                 node_count=self.n)

        # register eigenfunctions
        # register_functions("eig_funcs", eig_funcs, overwrite=True)
        register_base("adjoint_eig_funcs",
                      self.adjoint_eig_funcs,
                      overwrite=True)
        register_base("eig_funcs", eig_funcs, overwrite=True)
        register_base("eig_funcs_i", eig_funcs_i, overwrite=True)
        register_base("eig_funcs_ti", eig_funcs_ti, overwrite=True)
        register_base("fem_funcs", self.fem_funcs, overwrite=True)

        # init trajectory
        self.traj = tr.RadTrajectory(self.l, self.T, self.param_ti,
                                     bound_cond_type, actuation_type)

        # original () and target (_t) field variable
        fem_field_variable = ph.FieldVariable("fem_funcs", location=self.l)
        field_variable_i = ph.FieldVariable("eig_funcs_i",
                                            weight_label="eig_funcs",
                                            location=self.l)
        d_field_variable_i = ph.SpatialDerivedFieldVariable(
            "eig_funcs_i", 1, weight_label="eig_funcs", location=self.l)
        field_variable_ti = ph.FieldVariable("eig_funcs_ti",
                                             weight_label="eig_funcs",
                                             location=self.l)
        d_field_variable_ti = ph.SpatialDerivedFieldVariable(
            "eig_funcs_ti", 1, weight_label="eig_funcs", location=self.l)

        # intermediate (_i) and target intermediate (_ti) field variable (list of scalar terms = sum of scalar terms)
        self.x_fem_i_at_l = [ph.ScalarTerm(fem_field_variable)]
        self.x_i_at_l = [ph.ScalarTerm(field_variable_i)]
        self.xd_i_at_l = [ph.ScalarTerm(d_field_variable_i)]
        self.x_ti_at_l = [ph.ScalarTerm(field_variable_ti)]
        self.xd_ti_at_l = [ph.ScalarTerm(d_field_variable_ti)]

        # shift transformation
        shifted_fem_funcs_i = np.array([
            ef.FiniteTransformFunction(
                func,
                M,
                self.b,
                self.l,
                scale_func=lambda z: np.exp(a1 / 2 / a2 * z))
            for func in self.fem_funcs
        ])
        shifted_eig_funcs_id = np.array([
            ef.FiniteTransformFunction(func, M, self.b, self.l)
            for func in eig_funcs_id
        ])
        register_base("sh_fem_funcs_i", shifted_fem_funcs_i, overwrite=True)
        register_base("sh_eig_funcs_id", shifted_eig_funcs_id, overwrite=True)
        sh_fem_field_variable_i = ph.FieldVariable("sh_fem_funcs_i",
                                                   weight_label="fem_funcs",
                                                   location=self.l)
        sh_field_variable_id = ph.FieldVariable("sh_eig_funcs_id",
                                                weight_label="eig_funcs",
                                                location=self.l)
        self.sh_x_fem_i_at_l = [
            ph.ScalarTerm(sh_fem_field_variable_i),
            ph.ScalarTerm(field_variable_i),
            ph.ScalarTerm(sh_field_variable_id, -1)
        ]

        # discontinuous operator (Kx)(t) = int_kernel_zz(l)*x(l,t)
        self.int_kernel_zz = lambda z: self.alpha_ti - self.alpha_i + (
            a0_i - a0_ti) / 2 / a2 * z

        a2, a1, _, _, _ = self.param
        controller = ut.get_parabolic_robin_backstepping_controller(
            state=self.sh_x_fem_i_at_l,
            approx_state=self.x_i_at_l,
            d_approx_state=self.xd_i_at_l,
            approx_target_state=self.x_ti_at_l,
            d_approx_target_state=self.xd_ti_at_l,
            integral_kernel_zz=self.int_kernel_zz(self.l),
            original_beta=self.beta_i,
            target_beta=self.beta_ti,
            trajectory=self.traj,
            scale=np.exp(-a1 / 2 / a2 * self.b))

        # determine (A,B) with modal-transfomation
        rad_pde = ut.get_parabolic_robin_weak_form("fem_funcs", "fem_funcs",
                                                   controller, self.param,
                                                   self.dz.bounds, self.b)
        cf = sim.parse_weak_formulation(rad_pde)
        ss_weak = cf.convert_to_state_space()

        # simulate
        t, q = sim.simulate_state_space(ss_weak, np.zeros(
            (len(self.fem_funcs))), self.dt)

        # weights of the intermediate system
        mat = cr.calculate_base_transformation_matrix(self.fem_funcs,
                                                      eig_funcs)
        q_i = np.zeros((q.shape[0], len(eig_funcs_i)))
        for i in range(q.shape[0]):
            q_i[i, :] = np.dot(q[i, :], np.transpose(mat))

        eval_i = sim.evaluate_approximation("eig_funcs_i", q_i, t, self.dz)
        x_0t = eval_i.output_data[:, 0]
        yc, tc = tr.gevrey_tanh(self.T, 1)
        x_0t_desired = np.interp(t, tc, yc[0, :])
        self.assertLess(np.average((x_0t - x_0t_desired)**2), 1e-2)

        # display results
        if show_plots:
            eval_d = sim.evaluate_approximation("fem_funcs", q, t, self.dz)
            win1 = vis.PgSurfacePlot(eval_i)
            win2 = vis.PgSurfacePlot(eval_d)
            app.exec_()
コード例 #7
0
ファイル: test_control.py プロジェクト: schwinma/pyinduct
    def test_it(self):
        # system/simulation parameters
        actuation_type = 'robin'
        bound_cond_type = 'robin'

        self.l = 1.
        spatial_disc = 10
        self.dz = sim.Domain(bounds=(0, self.l), num=spatial_disc)

        self.T = 1.
        temporal_disc = 1e2
        self.dt = sim.Domain(bounds=(0, self.T), num=temporal_disc)

        self.n = 10

        # original system parameters
        a2 = 1.5
        a1_z = cr.Function(lambda z: 1, derivative_handles=[lambda z: 0])
        a0_z = lambda z: 3
        alpha = -2
        beta = -3
        self.param = [a2, a1_z, a0_z, alpha, beta]

        # target system parameters (controller parameters)
        a1_t = -5
        a0_t = -25
        alpha_t = 3
        beta_t = 2
        self.param_t = [a2, a1_t, a0_t, alpha_t, beta_t]
        adjoint_param_t = ef.get_adjoint_rad_evp_param(self.param_t)

        # original intermediate ("_i") and traget intermediate ("_ti") system parameters
        _, _, a0_i, alpha_i, beta_i = ef.transform2intermediate(self.param,
                                                                d_end=self.l)
        self.param_i = a2, 0, a0_i, alpha_i, beta_i
        _, _, a0_ti, alpha_ti, beta_ti = ef.transform2intermediate(
            self.param_t)
        self.param_ti = a2, 0, a0_ti, alpha_ti, beta_ti

        # create (not normalized) target (_t) eigenfunctions
        eig_freq_t, self.eig_val_t = ef.compute_rad_robin_eigenfrequencies(
            self.param_t, self.l, self.n)
        init_eig_funcs_t = np.array([
            ef.SecondOrderRobinEigenfunction(om, self.param_t, self.dz.bounds)
            for om in eig_freq_t
        ])
        init_adjoint_eig_funcs_t = np.array([
            ef.SecondOrderRobinEigenfunction(om, adjoint_param_t,
                                             self.dz.bounds)
            for om in eig_freq_t
        ])

        # normalize eigenfunctions and adjoint eigenfunctions
        adjoint_and_eig_funcs_t = [
            cr.normalize_function(init_eig_funcs_t[i],
                                  init_adjoint_eig_funcs_t[i])
            for i in range(self.n)
        ]
        eig_funcs_t = np.array(
            [f_tuple[0] for f_tuple in adjoint_and_eig_funcs_t])
        self.adjoint_eig_funcs_t = np.array(
            [f_tuple[1] for f_tuple in adjoint_and_eig_funcs_t])

        # # transformed original eigenfunctions
        self.eig_funcs = np.array([
            ef.TransformedSecondOrderEigenfunction(
                self.eig_val_t[i],
                [eig_funcs_t[i](0), alpha * eig_funcs_t[i](0), 0, 0],
                [a2, a1_z, a0_z], np.linspace(0, self.l, 1e4))
            for i in range(self.n)
        ])

        # create testfunctions
        nodes, self.fem_funcs = sf.cure_interval(sf.LagrangeFirstOrder,
                                                 self.dz.bounds,
                                                 node_count=self.n)

        # register functions
        register_base("eig_funcs_t", eig_funcs_t, overwrite=True)
        register_base("adjoint_eig_funcs_t",
                      self.adjoint_eig_funcs_t,
                      overwrite=True)
        register_base("eig_funcs", self.eig_funcs, overwrite=True)
        register_base("fem_funcs", self.fem_funcs, overwrite=True)

        # init trajectory
        self.traj = tr.RadTrajectory(self.l, self.T, self.param_ti,
                                     bound_cond_type, actuation_type)

        # original () and target (_t) field variable
        fem_field_variable = ph.FieldVariable("fem_funcs", location=self.l)
        field_variable_t = ph.FieldVariable("eig_funcs_t",
                                            weight_label="eig_funcs",
                                            location=self.l)
        d_field_variable_t = ph.SpatialDerivedFieldVariable(
            "eig_funcs_t", 1, weight_label="eig_funcs", location=self.l)
        field_variable = ph.FieldVariable("eig_funcs", location=self.l)
        d_field_variable = ph.SpatialDerivedFieldVariable("eig_funcs",
                                                          1,
                                                          location=self.l)
        # intermediate (_i) and target intermediate (_ti) transformations by z=l

        #  x_i  = x   * transform_i_at_l
        self.transform_i_at_l = np.exp(
            integrate.quad(lambda z: a1_z(z) / 2 / a2, 0, self.l)[0])

        # x  = x_i   * inv_transform_i_at_l
        self.inv_transform_i_at_l = np.exp(
            -integrate.quad(lambda z: a1_z(z) / 2 / a2, 0, self.l)[0])

        # x_ti = x_t * transform_ti_at_l
        self.transform_ti_at_l = np.exp(a1_t / 2 / a2 * self.l)

        # intermediate (_i) and target intermediate (_ti) field variable (list of scalar terms = sum of scalar terms)
        self.x_fem_i_at_l = [
            ph.ScalarTerm(fem_field_variable, self.transform_i_at_l)
        ]
        self.x_i_at_l = [ph.ScalarTerm(field_variable, self.transform_i_at_l)]
        self.xd_i_at_l = [
            ph.ScalarTerm(d_field_variable, self.transform_i_at_l),
            ph.ScalarTerm(field_variable,
                          self.transform_i_at_l * a1_z(self.l) / 2 / a2)
        ]
        self.x_ti_at_l = [
            ph.ScalarTerm(field_variable_t, self.transform_ti_at_l)
        ]
        self.xd_ti_at_l = [
            ph.ScalarTerm(d_field_variable_t, self.transform_ti_at_l),
            ph.ScalarTerm(field_variable_t,
                          self.transform_ti_at_l * a1_t / 2 / a2)
        ]

        # discontinuous operator (Kx)(t) = int_kernel_zz(l)*x(l,t)
        self.int_kernel_zz = alpha_ti - alpha_i + integrate.quad(
            lambda z: (a0_i(z) - a0_ti) / 2 / a2, 0, self.l)[0]

        controller = ut.get_parabolic_robin_backstepping_controller(
            state=self.x_fem_i_at_l,
            approx_state=self.x_i_at_l,
            d_approx_state=self.xd_i_at_l,
            approx_target_state=self.x_ti_at_l,
            d_approx_target_state=self.xd_ti_at_l,
            integral_kernel_zz=self.int_kernel_zz,
            original_beta=beta_i,
            target_beta=beta_ti,
            trajectory=self.traj,
            scale=self.inv_transform_i_at_l)

        rad_pde = ut.get_parabolic_robin_weak_form("fem_funcs", "fem_funcs",
                                                   controller, self.param,
                                                   self.dz.bounds)
        cf = sim.parse_weak_formulation(rad_pde)
        ss_weak = cf.convert_to_state_space()

        # simulate
        t, q = sim.simulate_state_space(ss_weak, np.zeros(
            (len(self.fem_funcs))), self.dt)
        eval_d = sim.evaluate_approximation("fem_funcs", q, t, self.dz)
        x_0t = eval_d.output_data[:, 0]
        yc, tc = tr.gevrey_tanh(self.T, 1)
        x_0t_desired = np.interp(t, tc, yc[0, :])
        self.assertLess(np.average((x_0t - x_0t_desired)**2), 1e-4)

        # display results
        if show_plots:
            win1 = vis.PgAnimatedPlot([eval_d], title="Test")
            win2 = vis.PgSurfacePlot(eval_d)
            app.exec_()
コード例 #8
0
ファイル: test_control.py プロジェクト: schwinma/pyinduct
    def setUp(self):
        # original system parameters
        a2 = 1.5
        a1 = 2.5
        a0 = 28
        alpha = -2
        beta = -3
        self.param = [a2, a1, a0, alpha, beta]
        adjoint_param = ef.get_adjoint_rad_evp_param(self.param)

        # target system parameters (controller parameters)
        a1_t = -5
        a0_t = -25
        alpha_t = 3
        beta_t = 2
        # a1_t = a1; a0_t = a0; alpha_t = alpha; beta_t = beta
        self.param_t = [a2, a1_t, a0_t, alpha_t, beta_t]

        # original intermediate ("_i") and target intermediate ("_ti") system parameters
        _, _, a0_i, self.alpha_i, self.beta_i = ef.transform2intermediate(
            self.param)
        self.param_i = a2, 0, a0_i, self.alpha_i, self.beta_i
        _, _, a0_ti, self.alpha_ti, self.beta_ti = ef.transform2intermediate(
            self.param_t)
        self.param_ti = a2, 0, a0_ti, self.alpha_ti, self.beta_ti

        # system/simulation parameters
        actuation_type = 'robin'
        bound_cond_type = 'robin'
        self.l = 1.
        spatial_disc = 10
        self.dz = sim.Domain(bounds=(0, self.l), num=spatial_disc)

        self.T = 1.
        temporal_disc = 1e2
        self.dt = sim.Domain(bounds=(0, self.T), num=temporal_disc)
        self.n = 10

        # create (not normalized) eigenfunctions
        eig_freq, self.eig_val = ef.compute_rad_robin_eigenfrequencies(
            self.param, self.l, self.n)
        init_eig_funcs = np.array([
            ef.SecondOrderRobinEigenfunction(om, self.param, self.dz.bounds)
            for om in eig_freq
        ])
        init_adjoint_eig_funcs = np.array([
            ef.SecondOrderRobinEigenfunction(om, adjoint_param, self.dz.bounds)
            for om in eig_freq
        ])

        # normalize eigenfunctions and adjoint eigenfunctions
        adjoint_and_eig_funcs = [
            cr.normalize_function(init_eig_funcs[i], init_adjoint_eig_funcs[i])
            for i in range(self.n)
        ]
        eig_funcs = np.array([f_tuple[0] for f_tuple in adjoint_and_eig_funcs])
        self.adjoint_eig_funcs = np.array(
            [f_tuple[1] for f_tuple in adjoint_and_eig_funcs])

        # eigenfunctions from target system ("_t")
        eig_freq_t = np.sqrt(-a1_t**2 / 4 / a2**2 + (a0_t - self.eig_val) / a2)
        eig_funcs_t = np.array([
            ef.SecondOrderRobinEigenfunction(eig_freq_t[i], self.param_t,
                                             self.dz.bounds).scale(
                                                 eig_funcs[i](0))
            for i in range(self.n)
        ])

        # create testfunctions
        nodes, self.fem_funcs = sf.cure_interval(sf.LagrangeFirstOrder,
                                                 self.dz.bounds,
                                                 node_count=self.n)

        # register eigenfunctions
        register_base("eig_funcs", eig_funcs, overwrite=True)
        register_base("adjoint_eig_funcs",
                      self.adjoint_eig_funcs,
                      overwrite=True)
        register_base("eig_funcs_t", eig_funcs_t, overwrite=True)
        register_base("fem_funcs", self.fem_funcs, overwrite=True)

        # init trajectory
        self.traj = tr.RadTrajectory(self.l, self.T, self.param_ti,
                                     bound_cond_type, actuation_type)

        # original () and target (_t) field variable
        fem_field_variable = ph.FieldVariable("fem_funcs", location=self.l)
        field_variable = ph.FieldVariable("eig_funcs", location=self.l)
        d_field_variable = ph.SpatialDerivedFieldVariable("eig_funcs",
                                                          1,
                                                          location=self.l)
        field_variable_t = ph.FieldVariable("eig_funcs_t",
                                            weight_label="eig_funcs",
                                            location=self.l)
        d_field_variable_t = ph.SpatialDerivedFieldVariable(
            "eig_funcs_t", 1, weight_label="eig_funcs", location=self.l)

        # intermediate (_i) and target intermediate (_ti) transformations by z=l
        self.transform_i = lambda z: np.exp(a1 / 2 / a2 * z
                                            )  # x_i  = x   * transform_i
        self.transform_ti = lambda z: np.exp(a1_t / 2 / a2 * z
                                             )  # x_ti = x_t * transform_ti

        # intermediate (_i) and target intermediate (_ti) field variable (list of scalar terms = sum of scalar terms)
        self.x_fem_i_at_l = [
            ph.ScalarTerm(fem_field_variable, self.transform_i(self.l))
        ]
        self.x_i_at_l = [
            ph.ScalarTerm(field_variable, self.transform_i(self.l))
        ]
        self.xd_i_at_l = [
            ph.ScalarTerm(d_field_variable, self.transform_i(self.l)),
            ph.ScalarTerm(field_variable,
                          self.transform_i(self.l) * a1 / 2 / a2)
        ]
        self.x_ti_at_l = [
            ph.ScalarTerm(field_variable_t, self.transform_ti(self.l))
        ]
        self.xd_ti_at_l = [
            ph.ScalarTerm(d_field_variable_t, self.transform_ti(self.l)),
            ph.ScalarTerm(field_variable_t,
                          self.transform_ti(self.l) * a1_t / 2 / a2)
        ]

        # discontinuous operator (Kx)(t) = int_kernel_zz(l)*x(l,t)
        self.int_kernel_zz = lambda z: self.alpha_ti - self.alpha_i + (
            a0_i - a0_ti) / 2 / a2 * z
コード例 #9
0
ファイル: test_control.py プロジェクト: schwinma/pyinduct
    def test_it(self):
        # original system parameters
        a2 = 1.5
        a1 = 2.5
        a0 = 28
        alpha = -2
        beta = -3
        param = [a2, a1, a0, alpha, beta]
        adjoint_param = ef.get_adjoint_rad_evp_param(param)

        # target system parameters (controller parameters)
        a1_t = -5
        a0_t = -25
        alpha_t = 3
        beta_t = 2
        # a1_t = a1; a0_t = a0; alpha_t = alpha; beta_t = beta
        param_t = [a2, a1_t, a0_t, alpha_t, beta_t]

        # original intermediate ("_i") and traget intermediate ("_ti") system parameters
        _, _, a0_i, alpha_i, beta_i = ef.transform2intermediate(param)
        _, _, a0_ti, alpha_ti, beta_ti = ef.transform2intermediate(param_t)

        # system/simulation parameters
        actuation_type = 'robin'
        bound_cond_type = 'robin'
        self.l = 1.
        spatial_disc = 10
        dz = sim.Domain(bounds=(0, self.l), num=spatial_disc)

        T = 1.
        temporal_disc = 1e2
        dt = sim.Domain(bounds=(0, T), num=temporal_disc)
        n = 10

        # create (not normalized) eigenfunctions
        eig_freq, eig_val = ef.compute_rad_robin_eigenfrequencies(
            param, self.l, n)
        init_eig_funcs = np.array([
            ef.SecondOrderRobinEigenfunction(om, param, dz.bounds)
            for om in eig_freq
        ])
        init_adjoint_eig_funcs = np.array([
            ef.SecondOrderRobinEigenfunction(om, adjoint_param, dz.bounds)
            for om in eig_freq
        ])

        # normalize eigenfunctions and adjoint eigenfunctions
        adjoint_and_eig_funcs = [
            cr.normalize_function(init_eig_funcs[i], init_adjoint_eig_funcs[i])
            for i in range(n)
        ]
        eig_funcs = np.array([f_tuple[0] for f_tuple in adjoint_and_eig_funcs])
        adjoint_eig_funcs = np.array(
            [f_tuple[1] for f_tuple in adjoint_and_eig_funcs])

        # eigenfunctions from target system ("_t")
        eig_freq_t = np.sqrt(-a1_t**2 / 4 / a2**2 + (a0_t - eig_val) / a2)
        eig_funcs_t = np.array([
            ef.SecondOrderRobinEigenfunction(eig_freq_t[i], param_t,
                                             dz.bounds).scale(eig_funcs[i](0))
            for i in range(n)
        ])

        # register eigenfunctions
        register_base("eig_funcs", eig_funcs, overwrite=True)
        register_base("adjoint_eig_funcs", adjoint_eig_funcs, overwrite=True)
        register_base("eig_funcs_t", eig_funcs_t, overwrite=True)

        # derive initial field variable x(z,0) and weights
        start_state = cr.Function(lambda z: 0., domain=(0, self.l))
        initial_weights = cr.project_on_base(start_state, adjoint_eig_funcs)

        # controller initialization
        x_at_l = ph.FieldVariable("eig_funcs", location=self.l)
        xd_at_l = ph.SpatialDerivedFieldVariable("eig_funcs",
                                                 1,
                                                 location=self.l)
        x_t_at_l = ph.FieldVariable("eig_funcs_t",
                                    weight_label="eig_funcs",
                                    location=self.l)
        xd_t_at_l = ph.SpatialDerivedFieldVariable("eig_funcs_t",
                                                   1,
                                                   weight_label="eig_funcs",
                                                   location=self.l)
        combined_transform = lambda z: np.exp((a1_t - a1) / 2 / a2 * z)
        int_kernel_zz = lambda z: alpha_ti - alpha_i + (a0_i - a0_ti
                                                        ) / 2 / a2 * z
        controller = ct.Controller(
            ct.ControlLaw([
                ph.ScalarTerm(x_at_l,
                              (beta_i - beta_ti - int_kernel_zz(self.l))),
                ph.ScalarTerm(x_t_at_l, -beta_ti * combined_transform(self.l)),
                ph.ScalarTerm(x_at_l, beta_ti),
                ph.ScalarTerm(xd_t_at_l, -combined_transform(self.l)),
                ph.ScalarTerm(x_t_at_l,
                              -a1_t / 2 / a2 * combined_transform(self.l)),
                ph.ScalarTerm(xd_at_l, 1),
                ph.ScalarTerm(x_at_l, a1 / 2 / a2 + int_kernel_zz(self.l))
            ]))

        # init trajectory
        traj = tr.RadTrajectory(self.l, T, param_t, bound_cond_type,
                                actuation_type)
        traj.scale = combined_transform(self.l)

        # input with feedback
        control_law = sim.SimulationInputSum([traj, controller])
        # control_law = sim.simInputSum([traj])

        # determine (A,B) with modal-transformation
        A = np.diag(np.real(eig_val))
        B = a2 * np.array(
            [adjoint_eig_funcs[i](self.l) for i in range(len(eig_freq))])
        ss_modal = sim.StateSpace("eig_funcs", A, B, input_handle=control_law)

        # simulate
        t, q = sim.simulate_state_space(ss_modal, initial_weights, dt)

        eval_d = sim.evaluate_approximation("eig_funcs", q, t, dz)
        x_0t = eval_d.output_data[:, 0]
        yc, tc = tr.gevrey_tanh(T, 1)
        x_0t_desired = np.interp(t, tc, yc[0, :])
        self.assertLess(np.average((x_0t - x_0t_desired)**2), 1e-4)

        # display results
        if show_plots:
            win1 = vis.PgAnimatedPlot([eval_d], title="Test")
            win2 = vis.PgSurfacePlot(eval_d)
            app.exec_()
コード例 #10
0
ファイル: test_control.py プロジェクト: schwinma/pyinduct
    def test_it(self):
        # original system parameters
        a2 = 1
        a1 = 0  # attention: only a2 = 1., a1 =0 supported in this test case
        a0 = 0
        param = [a2, a1, a0, None, None]

        # target system parameters (controller parameters)
        a1_t = 0
        a0_t = 0  # attention: only a2 = 1., a1 =0 and a0 =0 supported in this test case
        param_t = [a2, a1_t, a0_t, None, None]

        # system/simulation parameters
        actuation_type = 'dirichlet'
        bound_cond_type = 'dirichlet'

        l = 1.
        spatial_disc = 10
        dz = sim.Domain(bounds=(0, l), num=spatial_disc)

        T = 1.
        temporal_disc = 1e2
        dt = sim.Domain(bounds=(0, T), num=temporal_disc)

        n = 10

        # eigenvalues /-functions original system
        eig_freq = np.array([(i + 1) * np.pi / l for i in range(n)])
        eig_values = a0 - a2 * eig_freq**2 - a1**2 / 4. / a2
        norm_fac = np.ones(eig_freq.shape) * np.sqrt(2)
        eig_funcs = np.asarray([
            ef.SecondOrderDirichletEigenfunction(eig_freq[i], param, dz.bounds,
                                                 norm_fac[i]) for i in range(n)
        ])
        register_base("eig_funcs", eig_funcs, overwrite=True)

        # eigenfunctions target system
        eig_freq_t = np.sqrt(-eig_values.astype(complex))
        norm_fac_t = norm_fac * eig_freq / eig_freq_t
        eig_funcs_t = np.asarray([
            ef.SecondOrderDirichletEigenfunction(eig_freq_t[i], param_t,
                                                 dz.bounds, norm_fac_t[i])
            for i in range(n)
        ])
        register_base("eig_funcs_t", eig_funcs_t, overwrite=True)

        # derive initial field variable x(z,0) and weights
        start_state = cr.Function(lambda z: 0., domain=(0, l))
        initial_weights = cr.project_on_base(start_state, eig_funcs)

        # init trajectory / input of target system
        traj = tr.RadTrajectory(l, T, param_t, bound_cond_type, actuation_type)

        # init controller
        x_at_1 = ph.FieldVariable("eig_funcs", location=1)
        xt_at_1 = ph.FieldVariable("eig_funcs_t",
                                   weight_label="eig_funcs",
                                   location=1)
        controller = ct.Controller(
            ct.ControlLaw(
                [ph.ScalarTerm(x_at_1, 1),
                 ph.ScalarTerm(xt_at_1, -1)]))

        # input with feedback
        control_law = sim.SimulationInputSum([traj, controller])

        # determine (A,B) with modal-transfomation
        A = np.diag(eig_values)
        B = -a2 * np.array([eig_funcs[i].derive()(l) for i in range(n)])
        ss = sim.StateSpace("eig_funcs", A, B, input_handle=control_law)

        # simulate
        t, q = sim.simulate_state_space(ss, initial_weights, dt)

        eval_d = sim.evaluate_approximation("eig_funcs", q, t, dz)
        x_0t = eval_d.output_data[:, 0]
        yc, tc = tr.gevrey_tanh(T, 1)
        x_0t_desired = np.interp(t, tc, yc[0, :])
        self.assertLess(np.average((x_0t - x_0t_desired)**2), 0.5)

        # display results
        if show_plots:
            eval_d = sim.evaluate_approximation("eig_funcs", q, t, dz)
            win2 = vis.PgSurfacePlot(eval_d)
            app.exec_()
コード例 #11
0
    def test_it(self):
        actuation_type = 'dirichlet'
        bound_cond_type = 'dirichlet'
        param = [1., -2., -1., None, None]
        adjoint_param = ef.get_adjoint_rad_evp_param(param)
        a2, a1, a0, _, _ = param

        l = 1.
        spatial_disc = 10
        dz = sim.Domain(bounds=(0, l), num=spatial_disc)

        T = 1.
        temporal_disc = 1e2
        dt = sim.Domain(bounds=(0, T), num=temporal_disc)

        omega = np.array([(i + 1) * np.pi / l for i in range(spatial_disc)])
        eig_values = a0 - a2 * omega**2 - a1**2 / 4. / a2
        norm_fak = np.ones(omega.shape) * np.sqrt(2)
        eig_funcs = np.array([
            ef.SecondOrderDirichletEigenfunction(omega[i], param, dz.bounds,
                                                 norm_fak[i])
            for i in range(spatial_disc)
        ])
        register_base("eig_funcs", eig_funcs, overwrite=True)
        adjoint_eig_funcs = np.array([
            ef.SecondOrderDirichletEigenfunction(omega[i], adjoint_param,
                                                 dz.bounds, norm_fak[i])
            for i in range(spatial_disc)
        ])
        register_base("adjoint_eig_funcs", adjoint_eig_funcs, overwrite=True)

        # derive initial field variable x(z,0) and weights
        start_state = cr.Function(lambda z: 0., domain=(0, l))
        initial_weights = cr.project_on_base(start_state, adjoint_eig_funcs)

        # init trajectory
        u = tr.RadTrajectory(l, T, param, bound_cond_type, actuation_type)

        # determine (A,B) with weak-formulation (pyinduct)

        # derive sate-space system
        rad_pde = ut.get_parabolic_dirichlet_weak_form("eig_funcs",
                                                       "adjoint_eig_funcs", u,
                                                       param, dz.bounds)
        cf = sim.parse_weak_formulation(rad_pde)
        ss_weak = cf.convert_to_state_space()

        # determine (A,B) with modal-transfomation
        A = np.diag(eig_values)
        B = -a2 * np.array(
            [adjoint_eig_funcs[i].derive()(l) for i in range(spatial_disc)])
        ss_modal = sim.StateSpace("eig_funcs", A, B, input_handle=u)

        # TODO: resolve the big tolerance (rtol=3e-01) between ss_modal.A and ss_weak.A
        # check if ss_modal.(A,B) is close to ss_weak.(A,B)
        self.assertTrue(
            np.allclose(np.sort(np.linalg.eigvals(ss_weak.A[1])),
                        np.sort(np.linalg.eigvals(ss_modal.A[1])),
                        rtol=3e-1,
                        atol=0.))
        self.assertTrue(
            np.allclose(np.array([i[0] for i in ss_weak.B[1]]), ss_modal.B[1]))

        # display results
        if show_plots:
            t, q = sim.simulate_state_space(ss_modal, initial_weights, dt)
            eval_d = sim.evaluate_approximation("eig_funcs",
                                                q,
                                                t,
                                                dz,
                                                spat_order=1)
            win2 = vis.PgSurfacePlot(eval_d)
            app.exec_()
コード例 #12
0
    def test_it(self):
        param = [2., -1.5, -3., 2., .5]
        a2, a1, a0, alpha, beta = param

        l = 1.
        spatial_disc = 11
        dz = sim.Domain(bounds=(0, l), num=spatial_disc)

        T = 1.
        temporal_disc = 2e2
        dt = sim.Domain(bounds=(0, T), num=temporal_disc)

        # create test functions
        nodes_1, ini_funcs_1 = sf.cure_interval(sf.LagrangeFirstOrder,
                                                dz.bounds,
                                                node_count=spatial_disc)
        register_base("init_funcs_1", ini_funcs_1, overwrite=True)
        nodes_2, ini_funcs_2 = sf.cure_interval(sf.LagrangeSecondOrder,
                                                dz.bounds,
                                                node_count=spatial_disc)
        register_base("init_funcs_2", ini_funcs_2, overwrite=True)

        def test_dd():
            # trajectory
            bound_cond_type = 'dirichlet'
            actuation_type = 'dirichlet'
            u = tr.RadTrajectory(l, T, param, bound_cond_type, actuation_type)

            # derive state-space system
            rad_pde = ut.get_parabolic_dirichlet_weak_form(
                "init_funcs_2", "init_funcs_2", u, param, dz.bounds)
            cf = sim.parse_weak_formulation(rad_pde)
            ss = cf.convert_to_state_space()

            # simulate system
            t, q = sim.simulate_state_space(ss, np.zeros(ini_funcs_2.shape),
                                            dt)

            return t, q

        def test_rd():
            # trajectory
            bound_cond_type = 'robin'
            actuation_type = 'dirichlet'
            u = tr.RadTrajectory(l, T, param, bound_cond_type, actuation_type)

            # integral terms
            int1 = ph.IntegralTerm(
                ph.Product(
                    ph.TemporalDerivedFieldVariable("init_funcs_2", order=1),
                    ph.TestFunction("init_funcs_2", order=0)), dz.bounds)
            int2 = ph.IntegralTerm(
                ph.Product(
                    ph.SpatialDerivedFieldVariable("init_funcs_2", order=0),
                    ph.TestFunction("init_funcs_2", order=2)), dz.bounds, -a2)
            int3 = ph.IntegralTerm(
                ph.Product(
                    ph.SpatialDerivedFieldVariable("init_funcs_2", order=1),
                    ph.TestFunction("init_funcs_2", order=0)), dz.bounds, -a1)
            int4 = ph.IntegralTerm(
                ph.Product(
                    ph.SpatialDerivedFieldVariable("init_funcs_2", order=0),
                    ph.TestFunction("init_funcs_2", order=0)), dz.bounds, -a0)
            # scalar terms from int 2
            s1 = ph.ScalarTerm(
                ph.Product(
                    ph.SpatialDerivedFieldVariable("init_funcs_2",
                                                   order=1,
                                                   location=l),
                    ph.TestFunction("init_funcs_2", order=0, location=l)), -a2)
            s2 = ph.ScalarTerm(
                ph.Product(
                    ph.SpatialDerivedFieldVariable("init_funcs_2",
                                                   order=0,
                                                   location=0),
                    ph.TestFunction("init_funcs_2", order=0, location=0)),
                a2 * alpha)
            s3 = ph.ScalarTerm(
                ph.Product(
                    ph.SpatialDerivedFieldVariable("init_funcs_2",
                                                   order=0,
                                                   location=0),
                    ph.TestFunction("init_funcs_2", order=1, location=0)), -a2)
            s4 = ph.ScalarTerm(
                ph.Product(
                    ph.Input(u),
                    ph.TestFunction("init_funcs_2", order=1, location=l)), a2)

            # derive state-space system
            rad_pde = sim.WeakFormulation(
                [int1, int2, int3, int4, s1, s2, s3, s4])
            cf = sim.parse_weak_formulation(rad_pde)
            ss = cf.convert_to_state_space()

            # simulate system
            t, q = sim.simulate_state_space(ss, np.zeros(ini_funcs_2.shape),
                                            dt)

            return t, q

        def test_dr():
            # trajectory
            bound_cond_type = 'dirichlet'
            actuation_type = 'robin'
            u = tr.RadTrajectory(l, T, param, bound_cond_type, actuation_type)
            # integral terms
            int1 = ph.IntegralTerm(
                ph.Product(
                    ph.TemporalDerivedFieldVariable("init_funcs_1", order=1),
                    ph.TestFunction("init_funcs_1", order=0)), dz.bounds)
            int2 = ph.IntegralTerm(
                ph.Product(
                    ph.SpatialDerivedFieldVariable("init_funcs_1", order=1),
                    ph.TestFunction("init_funcs_1", order=1)), dz.bounds, a2)
            int3 = ph.IntegralTerm(
                ph.Product(
                    ph.SpatialDerivedFieldVariable("init_funcs_1", order=0),
                    ph.TestFunction("init_funcs_1", order=1)), dz.bounds, a1)
            int4 = ph.IntegralTerm(
                ph.Product(
                    ph.SpatialDerivedFieldVariable("init_funcs_1", order=0),
                    ph.TestFunction("init_funcs_1", order=0)), dz.bounds, -a0)
            # scalar terms from int 2
            s1 = ph.ScalarTerm(
                ph.Product(
                    ph.SpatialDerivedFieldVariable("init_funcs_1",
                                                   order=0,
                                                   location=l),
                    ph.TestFunction("init_funcs_1", order=0, location=l)), -a1)
            s2 = ph.ScalarTerm(
                ph.Product(
                    ph.SpatialDerivedFieldVariable("init_funcs_1",
                                                   order=0,
                                                   location=l),
                    ph.TestFunction("init_funcs_1", order=0, location=l)),
                a2 * beta)
            s3 = ph.ScalarTerm(
                ph.Product(
                    ph.SpatialDerivedFieldVariable("init_funcs_1",
                                                   order=1,
                                                   location=0),
                    ph.TestFunction("init_funcs_1", order=0, location=0)), a2)
            s4 = ph.ScalarTerm(
                ph.Product(
                    ph.Input(u),
                    ph.TestFunction("init_funcs_1", order=0, location=l)), -a2)
            # derive state-space system
            rad_pde = sim.WeakFormulation(
                [int1, int2, int3, int4, s1, s2, s3, s4])
            cf = sim.parse_weak_formulation(rad_pde)
            ss = cf.convert_to_state_space()

            # simulate system
            t, q = sim.simulate_state_space(ss, np.zeros(ini_funcs_1.shape),
                                            dt)

            # check if (x'(0,t_end) - 1.) < 0.1
            self.assertLess(
                np.abs(ini_funcs_1[0].derive(1)(sys.float_info.min) *
                       (q[-1, 0] - q[-1, 1])) - 1, 0.1)
            return t, q

        def test_rr():
            # trajectory
            bound_cond_type = 'robin'
            actuation_type = 'robin'
            u = tr.RadTrajectory(l, T, param, bound_cond_type, actuation_type)
            # derive state-space system
            rad_pde = ut.get_parabolic_robin_weak_form("init_funcs_1",
                                                       "init_funcs_1", u,
                                                       param, dz.bounds)
            cf = sim.parse_weak_formulation(rad_pde)
            ss = cf.convert_to_state_space()

            # simulate system
            t, q = sim.simulate_state_space(ss, np.zeros(ini_funcs_1.shape),
                                            dt)

            # check if (x(0,t_end) - 1.) < 0.1
            self.assertLess(
                np.abs(ini_funcs_1[0].derive(0)(0) * q[-1, 0]) - 1, 0.1)
            return t, q

        t, q = test_dr()
        _, _ = test_rr()
        # TODO: fit LagrangeSecondOrder to test_dd and test_rd
        # t, q = test_dd()
        # t, q = test_rd()

        # display results
        if show_plots:
            eval_d = sim.evaluate_approximation("init_funcs_1",
                                                q,
                                                t,
                                                dz,
                                                spat_order=1)
            win1 = vis.PgAnimatedPlot([eval_d], title="Test")
            win2 = vis.PgSurfacePlot(eval_d)
            app.exec_()
コード例 #13
0
    def test_it(self):
        actuation_type = 'robin'
        bound_cond_type = 'robin'
        param = [2., 1.5, -3., -1., -.5]
        adjoint_param = ef.get_adjoint_rad_evp_param(param)
        a2, a1, a0, alpha, beta = param

        l = 1.
        spatial_disc = 10
        dz = sim.Domain(bounds=(0, l), num=spatial_disc)

        T = 1.
        temporal_disc = 1e2
        dt = sim.Domain(bounds=(0, T), num=temporal_disc)
        n = 10

        eig_freq, eig_val = ef.compute_rad_robin_eigenfrequencies(param, l, n)

        init_eig_funcs = np.array([
            ef.SecondOrderRobinEigenfunction(om, param, dz.bounds)
            for om in eig_freq
        ])
        init_adjoint_eig_funcs = np.array([
            ef.SecondOrderRobinEigenfunction(om, adjoint_param, dz.bounds)
            for om in eig_freq
        ])

        # normalize eigenfunctions and adjoint eigenfunctions
        adjoint_and_eig_funcs = [
            cr.normalize_function(init_eig_funcs[i], init_adjoint_eig_funcs[i])
            for i in range(n)
        ]
        eig_funcs = np.array([f_tuple[0] for f_tuple in adjoint_and_eig_funcs])
        adjoint_eig_funcs = np.array(
            [f_tuple[1] for f_tuple in adjoint_and_eig_funcs])

        # register eigenfunctions
        register_base("eig_funcs", eig_funcs, overwrite=True)
        register_base("adjoint_eig_funcs", adjoint_eig_funcs, overwrite=True)

        # derive initial field variable x(z,0) and weights
        start_state = cr.Function(lambda z: 0., domain=(0, l))
        initial_weights = cr.project_on_base(start_state, adjoint_eig_funcs)

        # init trajectory
        u = tr.RadTrajectory(l, T, param, bound_cond_type, actuation_type)

        # determine (A,B) with weak-formulation (pyinduct)
        rad_pde = ut.get_parabolic_robin_weak_form("eig_funcs",
                                                   "adjoint_eig_funcs", u,
                                                   param, dz.bounds)
        cf = sim.parse_weak_formulation(rad_pde)
        ss_weak = cf.convert_to_state_space()

        # determine (A,B) with modal-transfomation
        A = np.diag(np.real_if_close(eig_val))
        B = a2 * np.array(
            [adjoint_eig_funcs[i](l) for i in range(len(eig_freq))])
        ss_modal = sim.StateSpace("eig_funcs", A, B, input_handle=u)

        # check if ss_modal.(A,B) is close to ss_weak.(A,B)
        self.assertTrue(
            np.allclose(np.sort(np.linalg.eigvals(ss_weak.A[1])),
                        np.sort(np.linalg.eigvals(ss_modal.A[1])),
                        rtol=1e-05,
                        atol=0.))
        self.assertTrue(
            np.allclose(np.array([i[0] for i in ss_weak.B[1]]), ss_modal.B[1]))

        # display results
        if show_plots:
            t, q = sim.simulate_state_space(ss_modal, initial_weights, dt)
            eval_d = sim.evaluate_approximation("eig_funcs",
                                                q,
                                                t,
                                                dz,
                                                spat_order=1)
            win1 = vis.PgAnimatedPlot([eval_d], title="Test")
            win2 = vis.PgSurfacePlot(eval_d)
            app.exec_()