class SteelReinfMatMod(ReinfMatMod, bu.InjectSymbExpr): name = 'Steel' symb_class = SteelReinfMatModSymbExpr E_s = bu.Float(200000, MAT=True, desc='E modulus of steel') f_sy = bu.Float(500, MAT=True, desc='steel yield stress') eps_ud = bu.Float(0.025, MAT=True, desc='steel failure strain') eps_sy = tr.Property(bu.Float, depends_on='+MAT') @tr.cached_property def _get_eps_sy(self): return self.f_sy / self.E_s ipw_view = bu.View( bu.Item('factor'), bu.Item('E_s', latex=r'E_\mathrm{s} \mathrm{[N/mm^{2}]}'), bu.Item('f_sy', latex=r'f_\mathrm{sy} \mathrm{[N/mm^{2}]}'), bu.Item('eps_ud', latex=r'\varepsilon_\mathrm{ud} \mathrm{[-]}'), bu.Item('eps_sy', latex=r'\varepsilon_\mathrm{sy} \mathrm{[-]}', readonly=True), ) def get_eps_plot_range(self): return np.linspace(-1.1 * self.eps_ud, 1.1 * self.eps_ud, 300) def get_sig(self, eps): temp = self.f_sy self.f_sy *= self.factor sig = self.symb.get_sig(eps) self.f_sy = temp return sig
class AbaqusDamageFn(DamageFnInjectSymbExpr): name = 'Abaqus damage function' symb_class = AbaqusDamageFnSymbExpr latex_eq = Str(r'''Damage function (Abaqus) \begin{align} \omega = g(\kappa) = 1 -\left(\frac{s_0}{\kappa}\right)\left[ 1 - \frac{1 - \exp(- \alpha(\frac{\kappa - s_0}{s_u - s_0})}{1 - \exp(-\alpha)} \right] \end{align} where $\kappa$ is the state variable representing the maximum slip that occurred so far in in the history of loading. ''') kappa_u = bu.Float( 0.003, MAT=True, symbol="kappa_u", unit='mm', desc="parameter of the damage function", ) alpha = bu.Float(0.1, MAT=True, symbol=r"\alpha", desc="parameter controlling the slope of damage", unit='-') ipw_view = bu.View( bu.Item('kappa_0', latex=r'\kappa_0'), bu.Item('kappa_u', latex=r'\kappa_\mathrm{u}'), bu.Item('alpha'), )
class CarbonReinfMatMod(ReinfMatMod, bu.InjectSymbExpr): name = 'Carbon' symb_class = CarbonReinfMatModSymbExpr E = bu.Float(200000, MAT=True, desc='E modulus of carbon') f_t = bu.Float(2000, MAT=True, desc='carbon breaking stress') eps_cr = tr.Property(bu.Float, depends_on='+MAT') @tr.cached_property def _get_eps_cr(self): return self.f_t / self.E ipw_view = bu.View( bu.Item('factor'), bu.Item('E', latex=r'E \mathrm{[N/mm^{2}]}'), bu.Item('f_t', latex=r'f_\mathrm{t} \mathrm{[N/mm^{2}]}'), bu.Item('eps_cr', latex=r'\varepsilon_\mathrm{cr} \mathrm{[-]}'), ) def get_eps_plot_range(self): return np.linspace(-0.1 * self.eps_cr, 1.1 * self.eps_cr, 300) def get_sig(self, eps): # TODO: factor should be applied only to strength in case of steel/carbon according to EC2 temp = self.f_t self.f_t *= self.factor sig = self.symb.get_sig(eps) self.f_t = temp return sig
class WeibullDamageFn(DamageFnInjectSymbExpr): name = 'Linear damage function' symb_class = WeibullDamageFnSymbExpr kappa_0 = bu.Float(1e-5) # the inelastic regime starts right from the beginning lambda_ = bu.Float( 0.03, MAT=True, symbol="lambda_", unit='mm', desc="Weibull scale parameter", ) m = bu.Float( 5, MAT=True, symbol="m", desc="Weibull shape parameter", ) ipw_view = bu.View( bu.Item('lambda_', latex=r'\lambda'), bu.Item('m', latex=r'm'), )
class CrossSection(BMCSLeafNode, RInputRecord): '''Parameters of the pull-out cross section ''' node_name = 'cross-section' A_m = bu.Float(15240, CS=True, input=True, unit=r'$\mathrm{mm}^2$', symbol=r'A_\mathrm{m}', auto_set=False, enter_set=True, desc='matrix area') A_f = bu.Float(153.9, CS=True, input=True, unit='$\\mathrm{mm}^2$', symbol='A_\mathrm{f}', auto_set=False, enter_set=True, desc='reinforcement area') P_b = bu.Float(44, CS=True, input=True, unit='$\\mathrm{mm}$', symbol='p_\mathrm{b}', auto_set=False, enter_set=True, desc='perimeter of the bond interface') view = View(Item('A_m'), Item('A_f'), Item('P_b')) tree_view = view ipw_view = bu.View(bu.Item('A_m'), bu.Item('A_f'), bu.Item('P_b'))
class TLine(BMCSLeafNode): ''' Time line for the control parameter. This class sets the time-range of the computation - the start and stop time. val is the value of the current time. TODO - the info page including the number of load steps and estimated computation time. TODO - the slide bar is not read-only. How to include a real progress bar? ''' node_name = 'time range' min = bu.Float(0.0, TIME=True) max = bu.Float(1.0, TIME=True) step = bu.Float(0.1, TIME=True) val = bu.Float(0.0) def _val_changed(self): if self.time_change_notifier: self.time_change_notifier(self.val) @on_trait_change('min,max') def _time_range_changed(self): if self.time_range_change_notifier: self.time_range_change_notifier(self.max) time_change_notifier = Callable time_range_change_notifier = Callable ipw_view = View(Item('min', full_size=True), Item('max'), Item('step'), Item('val', style='readonly'))
class DamageFn(BMCSLeafNode): mats = WeakRef kappa_0 = bu.Float(0.0004, MAT=True, symbol="s_0", desc="elastic strain limit", unit='mm') E_name = Str('E') '''Name of the stiffness variable in the material model''' def get_f_trial(self, eps_eq_Em, kappa_Em): k_Em = np.copy(kappa_Em) k_Em[k_Em < self.kappa_0] = self.kappa_0 return np.where(eps_eq_Em >= k_Em) plot_min = bu.Float(1e-9) plot_max_ = bu.Float(1e-2) # name of the trait controlling the plot range x_max_name = bu.Str('s_max') # if the parameter database is set get the values from there plot_max = Property(bu.Float) def _get_plot_max(self): if self.mats: return getattr(self.mats, self.x_max_name) else: return self.plot_max_ def plot(self, ax, **kw): ax_omega, ax_d_omega = ax n_vals = 200 kappa_range = np.linspace(self.plot_min, self.plot_max, n_vals) omega_range = np.zeros_like(kappa_range) I = kappa_range > self.kappa_0 if len(I) > 0: omega_range[I] = self.__call__(kappa_range[I]) color = kw.pop('color', 'green') ax_omega.plot(kappa_range, omega_range, color=color, **kw) ax_d_omega.plot(kappa_range, self.diff(kappa_range), color='gray', linestyle='dashed', **kw) ax_omega.set_xlabel(r'$\kappa$ [mm]') ax_omega.set_ylabel(r'$\omega$ [-]') ax_d_omega.set_ylabel( r'$\mathrm{d} \omega / \mathrm{d} \kappa$ [-/mm]') def subplots(self, fig): ax_omega = fig.subplots(1, 1) ax_d_omega = ax_omega.twinx() return ax_omega, ax_d_omega def update_plot(self, axes): self.plot(axes)
class LiDamageFn(DamageFn): name = 'Two parameter damage' latex_eq = Str(r'''Damage function (Li) \begin{align} \omega = g(\kappa) = \frac{\alpha_1}{1 + \exp(-\alpha_2 \kappa + 6 )} \end{align} where $\kappa$ is the state variable representing the maximum slip that occurred so far in in the history of loading. ''') alpha_1 = bu.Float( value=1, MAT=True, symbol=r'\alpha_1', unit='-', desc="parameter controlling the shape of the damage function") alpha_2 = bu.Float( 2000., MAT=True, symbol=r'\alpha_2', unit='-', desc="parameter controlling the shape of the damage function") def __call__(self, kappa): alpha_1 = self.alpha_1 alpha_2 = self.alpha_2 s_0 = self.s_0 omega = np.zeros_like(kappa, dtype=np.float_) d_idx = np.where(kappa >= s_0)[0] k = kappa[d_idx] omega[d_idx] = 1. / \ (1. + np.exp(-1. * alpha_2 * (k - s_0) + 6.)) * alpha_1 return omega def diff(self, kappa): alpha_1 = self.alpha_1 alpha_2 = self.alpha_2 s_0 = self.s_0 return ((alpha_1 * alpha_2 * np.exp(-1. * alpha_2 * (kappa - s_0) + 6.)) / (1 + np.exp(-1. * alpha_2 * (kappa - s_0) + 6.))**2) ipw_view = bu.View( bu.Item('s_0'), bu.Item('alpha_1', editor=bu.FloatRangeEditor(low=0, high=1)), bu.Item('alpha_2'), )
class WBNumTessellationInvest(WBNumTessellationBase): """ A class to investigate the angles for tessellating three cells manually. """ name = 'WBNumTessellationInvest' rot_br = bu.Float(0.5) rot_ur = bu.Float(0.5) investigate_rot = bu.Bool ipw_view = bu.View( *WBNumTessellationBase.ipw_view.content, bu.Item('investigate_rot'), bu.Item('rot_br', latex=r'rot~br', editor=bu.FloatRangeEditor(low=0, high=2 * np.pi, n_steps=150, continuous_update=True)), bu.Item('rot_ur', latex=r'rot~ur', editor=bu.FloatRangeEditor(low=0, high=2 * np.pi, n_steps=150, continuous_update=True)), ) def setup_plot(self, pb): super().setup_plot(pb) def update_plot(self, pb): if self.k3d_mesh: sol = self.sol X_Ia = self.X_Ia.astype(np.float32) br_X_Ia = self._get_br_X_Ia( self.X_Ia, self.rot_br if self.investigate_rot else sol[0]).astype( np.float32) ur_X_Ia = self._get_ur_X_Ia( self.X_Ia, self.rot_ur if self.investigate_rot else sol[1]).astype( np.float32) self.k3d_mesh['X_Ia'].vertices = X_Ia self.k3d_mesh['br_X_Ia'].vertices = br_X_Ia self.k3d_mesh['ur_X_Ia'].vertices = ur_X_Ia self.k3d_wireframe['X_Ia'].vertices = X_Ia self.k3d_wireframe['br_X_Ia'].vertices = br_X_Ia self.k3d_wireframe['ur_X_Ia'].vertices = ur_X_Ia else: self.setup_plot(pb)
class ModelWithHistory(Model): """Example model with a cross sectional shape""" name = 'Example' b = Int(5, desc='input parameter') t = Float(0) t_max = Float(10) ipw_view = View(Item('b', latex=r'\beta', readonly=True), Item('t', latex=r't', readonly=True), Item('t_max', latex=r'\theta'), time_editor=HistoryEditor( var='t', max_var='t_max', )) exponent = bu.Float(1) def update_plot(self, axes): with bu.print_output: print('SELF', self) x_range = np.linspace(0, self.t_max, 100) y_range = x_range**self.exponent axes.plot(x_range, y_range) y_val = self.t**self.exponent axes.plot(self.t, y_val, marker='o')
class EC2ConcreteMatMod(EC2ConcreteMatModBase, bu.InjectSymbExpr): name = 'EC2 Concrete' symb_class = EC2ConcreteMatModSymbExpr # Required attributes f_cm = bu.Float(28) f_ck = tr.Property(desc='Characteristic compressive strength of concrete', MAT=True) def _get_f_ck(self): return EC2.get_f_ck_from_f_cm(self.f_cm) eps_cy = tr.Property(desc='Matrix compressive yield strain', MAT=True) def _get_eps_cy(self): return -EC2.get_eps_c1(self.f_ck) eps_cu = tr.Property(desc='Ultimate matrix compressive strain', MAT=True) def _get_eps_cu(self): return -EC2.get_eps_cu1(self.f_ck) ipw_view = bu.View(*EC2ConcreteMatModBase.ipw_view.content, ) def get_sig(self, eps): return self.factor * self.symb.get_sig(eps)
class PO_ELF_RLM(bu.Model, bu.InjectSymbExpr): """ Pullout elastic long fiber and rigid long matrix """ symb_class = PO_ELF_RLM_Symb name = "PO-ELF-RLM" E_f = bu.Float(210000, MAT=True) tau = bu.Float(8, MAT=True) A_f = bu.Float(100, CS=True) p = bu.Float(20, CS=True) L_b = bu.Float(300, GEO=True) w_max = bu.Float(3, BC=True) ipw_view = bu.View(bu.Item('E_f', latex=r'E_\mathrm{f}~[\mathrm{MPa}]'), bu.Item('tau', latex=r'\tau~[\mathrm{MPa}]'), bu.Item('A_f', latex=r'A_\mathrm{f}~[\mathrm{mm}^2]'), bu.Item('p', latex=r'p~[\mathrm{mm}]'), bu.Item('L_b', latex=r'L_\mathrm{b}~[\mathrm{mm}]'), bu.Item('w_max', latex=r'w_\max~[\mathrm{mm}]')) w_range = tr.Property(depends_on='state_changed') """Pull-out range w""" @tr.cached_property def _get_w_range(self): return np.linspace(0, self.w_max, 100) def update_plot(self, ax): P_range = self.symb.get_Pw_pull(self.w_range) ax.plot(self.w_range, P_range * 0.001) ax.set_ylabel(r'$P$ [kN]') ax.set_xlabel(r'$w$ [mm]')
class GfDamageFn(DamageFnInjectSymbExpr): name = 'self-regularized' symb_class = GfDamageFnSymbExpr G_f = bu.Float( 0.1, MAT=True, symbol="G_\mathrm{f}", unit='N/mm', desc="derivative of the damage function at the onset of damage") min_G_f = Property(bu.Float, depends_on='state_changed') def _get_min_G_f(self): return self.E * self.kappa_0**2 / 2 E_ = bu.Float(10000.0, MAT=True, label="E", desc="Young's modulus") E = Property(bu.Float) def _get_E(self): if self.mats: return getattr(self.mats, self.E_name) else: return self.E_ def __call__(self, kappa): return self.symb.get_omega_(kappa) def diff(self, kappa): return self.symb.get_d_omega_(kappa) ipw_view = bu.View( bu.Item('kappa_0', latex=r'\kappa_0 [\mathrm{mm}]'), bu.Item('G_f', latex=r'G_\mathrm{f} [\mathrm{N/mm}]'), bu.Item('E', latex=r'E [\mathrm{MPa}]', readonly=True), bu.Item('min_G_f', latex=r'\min(G_\mathrm{f})', readonly=True), bu.Item('plot_max', readonly=True), )
class PWLConcreteMatMod(ConcreteMatMod, bu.InjectSymbExpr): name = 'Concrete PWL' symb_class = PWLConcreteMatModSymbExpr E_ct = bu.Float(24000, MAT=True, desc='E modulus of matrix on tension') E_cc = bu.Float(25000, MAT=True, desc='E modulus of matrix on compression') eps_cr = bu.Float(0.001, MAT=True, desc='Matrix cracking strain') _eps_cy = bu.Float(-0.003, MAT=True) _eps_cu = bu.Float(-0.01, MAT=True) # Enforcing negative values for eps_cu and eps_cy eps_cy = tr.Property(desc='Matrix compressive yield strain') def _set_eps_cy(self, value): self._eps_cy = value def _get_eps_cy(self): return -np.fabs(self._eps_cy) eps_cu = tr.Property(desc='Ultimate matrix compressive strain') def _set_eps_cu(self, value): self._eps_cu = value def _get_eps_cu(self): return -np.fabs(self._eps_cu) eps_tu = bu.Float(0.003, MAT=True, desc='Ultimate matrix tensile strain') mu = bu.Float( 0.33, MAT=True, desc= 'Post crack tensile strength ratio (represents how much strength is left after \ the crack because of short steel fibers in the mixture)' ) ipw_view = bu.View( bu.Item('factor'), bu.Item('E_ct', latex=r'E_\mathrm{ct} \mathrm{[N/mm^{2}]}'), bu.Item('E_cc', latex=r'E_\mathrm{cc} \mathrm{[N/mm^{2}]}'), bu.Item('eps_cr', latex=r'\varepsilon_{cr}'), bu.Item('eps_cy', latex=r'\varepsilon_{cy}', editor=bu.FloatEditor()), bu.Item('eps_cu', latex=r'\varepsilon_{cu}', editor=bu.FloatEditor()), bu.Item('eps_tu', latex=r'\varepsilon_{tu}'), bu.Item('mu', latex=r'\mu')) def get_eps_plot_range(self): return np.linspace(1.1 * self.eps_cu, 1.1 * self.eps_tu, 300) def get_sig(self, eps): return self.factor * self.symb.get_sig(eps)
class Geometry(BMCSLeafNode, RInputRecord): node_name = 'geometry' L_x = bu.Float(45, GEO=True, input=True, unit='$\mathrm{mm}$', symbol='L', auto_set=False, enter_set=True, desc='embedded length') view = View(Item('L_x'), ) tree_view = view ipw_view = bu.View(bu.Item('L_x'), )
class ExpSlopeDamageFn(DamageFnInjectSymbExpr): name = 'Exponential with slope' symb_class = ExpSlopeDamageFnSymbExpr kappa_f = bu.Float( 0.001, MAT=True, symbol=r'\kappa_\mathrm{f}', unit='mm/mm', desc="derivative of the damage function at the onset of damage") ipw_view = bu.View( bu.Item('kappa_0', latex=r'\kappa_0'), bu.Item('kappa_f', latex=r'\kappa_\mathrm{f}'), )
class EC2PlateauConcreteMatMod(EC2ConcreteMatModBase, bu.InjectSymbExpr): name = 'EC2 Concrete with Plateau' symb_class = EC2PlateauConcreteMatModSymbExpr f_cm = bu.Float(28) f_cd = tr.Property(desc='Design compressive strength of concrete', MAT=True) def _get_f_cd(self): if self.factor == 1: return self.f_cm else: return EC2.get_f_cd(self.f_ck, factor=self.factor) f_ck = tr.Property(desc='Characteristic compressive strength of concrete', MAT=True) def _get_f_ck(self): return EC2.get_f_ck_from_f_cm(self.f_cm) n = tr.Property(desc='Exponent used in EC2, eq. 3.17', MAT=True) def _get_n(self): return EC2.get_n(self.f_ck) eps_cy = tr.Property(desc='Matrix compressive yield strain', MAT=True) def _get_eps_cy(self): return -EC2.get_eps_c2(self.f_ck) eps_cu = tr.Property(desc='Ultimate matrix compressive strain', MAT=True) def _get_eps_cu(self): return -EC2.get_eps_cu2(self.f_ck) def get_sig(self, eps): sig = self.symb.get_sig(eps) # Compression branch is scaled when defining f_cd sig_with_scaled_tension_branch = np.where(sig > 0, self.factor * sig, sig) return sig_with_scaled_tension_branch ipw_view = bu.View(*EC2ConcreteMatModBase.ipw_view.content, )
class LinearDamageFn(DamageFnInjectSymbExpr): name = 'Linear damage function' symb_class = LinearDamageFnSymbExpr kappa_0 = 0.01 kappa_u = bu.Float( 0.03, MAT=True, symbol="kappa_u", unit='mm', desc="parameter of the damage function", ) ipw_view = bu.View( bu.Item('kappa_0', latex=r'\kappa_0'), bu.Item('kappa_u', latex=r'\kappa_\mathrm{u}'), )
class LDMModel(TStepBC): name = 'LDM' ipw_view = bu.View( bu.Item('w_max', resizable=True, full_size=True), ) lattice_tessellation = Instance( LatticeTessellation, MESH=True, report=True, desc='cross section parameters' ) def _lattice_tessellation_default(self): return LatticeTessellation() control_variable = bu.Enum(options=['u', 'f'], BC=True) #========================================================================= # Algorithimc parameters #========================================================================= k_max = Int(400, unit='-', symbol='k_{\max}', desc='maximum number of iterations', ALG=True) tolerance = Float(1e-4, unit='-', symbol='\epsilon', desc='required accuracy', ALG=True) mats = bu.EitherType(options=[ ('elastic', MATS3DIfcElastic), ('slide', Slide34) ], MAT=True, desc='material model type' ) dots_lattice = Property(Instance(XDomainLattice), depends_on='state_changed') '''Discretization object. ''' @cached_property def _get_dots_lattice(self): return XDomainLattice( mesh=self.lattice_tessellation ) domains = Property(depends_on='state_changed') @cached_property def _get_domains(self): return [(self.dots_lattice, self.mats_)] #========================================================================= # Boundary conditions #========================================================================= w_max = bu.Float(1, BC=True, symbol='w_{\max}', unit='mm', desc='maximum pullout slip', auto_set=False, enter_set=True) fixed_dofs = Array(np.int_, value=[], BC=True) fixed_bc_list = Property(depends_on=itags_str) r'''Foxed boundary condition''' @cached_property def _get_fixed_bc_list(self): return [ BCDof(node_name='fixed dof %d' % dof, var='u', dof=dof, value=0.0) for dof in self.fixed_dofs ] control_dofs = Array(np.int_, value=[], BC=True) control_bc_list = Property(depends_on='state_changed') r'''Control boundary condition - make it accessible directly for the visualization adapter as property ''' @cached_property def _get_control_bc_list(self): return [ BCDof(node_name='control dof %d' % dof, var=self.control_variable, dof=dof, value=self.w_max,) for dof in self.control_dofs ] bc = Property(depends_on='state_changed') @cached_property def _get_bc(self): return self.control_bc_list + self.fixed_bc_list def get_window(self): self.record['Pw'] = LatticeRecord() self.record['eps'] = Vis3DLattice(var='eps') w = BMCSWindow(sim=self) fw = Viz2DLatticeFW(name='FW-curve', vis2d=self.hist['Pw']) w.viz_sheet.viz2d_list.append(fw) viz3d_u_Lb = Viz3DLattice(vis3d=self.hist['eps']) w.viz_sheet.add_viz3d(viz3d_u_Lb) w.viz_sheet.monitor_chunk_size = 10 return w
class Slide32(bu.InteractiveModel, bu.InjectSymbExpr): name = 'Slide 3.4' symb_class = Slide23Expr E_T = bu.Float(28000, MAT=True) gamma_T = bu.Float(10, MAT=True) K_T = bu.Float(8, MAT=True) S_T = bu.Float(1, MAT=True) c_T = bu.Float(1, MAT=True) bartau = bu.Float(28000, MAT=True) E_N = bu.Float(28000, MAT=True) S_N = bu.Float(1, MAT=True) c_N = bu.Float(1, MAT=True) m = bu.Float(0.1, MAT=True) f_t = bu.Float(3, MAT=True) f_c = bu.Float(30, MAT=True) f_c0 = bu.Float(20, MAT=True) eta = bu.Float(0.5, MAT=True) r = bu.Float(1, MAT=True) c_NT = tr.Property(bu.Float, depends_on='state_changed') @tr.cached_property def _get_c_NT(self): return np.sqrt(self.c_N * self.c_T) S_NT = tr.Property(bu.Float, depends_on='state_changed') @tr.cached_property def _get_S_NT(self): return np.sqrt(self.S_N * self.S_T) def C_codegen(self): import os import os.path as osp C_code = [] for symb_name, symb_params in self.symb.symb_expressions: c_func_name = 'get_' + symb_name c_func = ccode(c_func_name, getattr(self.symb, symb_name), 'SLIDE33') C_code.append(c_func) code_dirname = 'sympy_codegen' code_fname = 'SLIDE33_3D' home_dir = osp.expanduser('~') code_dir = osp.join(home_dir, code_dirname) if not osp.exists(code_dir): os.makedirs(code_dir) code_file = osp.join(code_dir, code_fname) print('generated code_file', code_file) h_file = code_file + '.h' c_file = code_file + '.c' h_f = open(h_file, 'w') c_f = open(c_file, 'w') if True: for function_C in C_code: h_f.write(function_C[1][1]) c_f.write(function_C[0][1]) h_f.close() c_f.close() ipw_view = bu.View(bu.Item('E_T', latex='E_T'), bu.Item('S_T'), bu.Item('c_T'), bu.Item('gamma_T', latex=r'\gamma_\mathrm{T}'), bu.Item('K_T'), bu.Item('bartau', latex=r'\bar{\tau}'), bu.Item('E_N'), bu.Item('S_N'), bu.Item('c_N'), bu.Item('m'), bu.Item('f_t'), bu.Item('f_c', latex=r'f_\mathrm{c}'), bu.Item('f_c0', latex=r'f_\mathrm{c0}'), bu.Item('eta', minmax=(0, 1)), bu.Item('r')) damage_interaction = tr.Enum('final', 'geometric', 'arithmetic') get_phi_ = tr.Property def _get_get_phi_(self): return self.symb.get_phi_final_ get_Phi_ = tr.Property def _get_get_Phi_(self): return self.symb.get_Phi_final_ def get_f_df(self, s_x_n1, s_y_n1, w_n1, Sig_k, Eps_k): if self.debug_level == 1: print('>>>>>>>>>>>>> get_f_df(): INPUT') print('u_N', w_n1) print('u_T_x', s_x_n1) print('u_T_y', s_y_n1) print('Eps_k', Eps_k) print('Sig_k', Sig_k) print('<<<<<<<<<<<<< get_f_df(): INPUT') Sig_k = self.symb.get_Sig_(s_x_n1, s_y_n1, w_n1, Sig_k, Eps_k)[0] dSig_dEps_k = self.symb.get_dSig_dEps_(s_x_n1, s_y_n1, w_n1, Sig_k, Eps_k) H_sig_pi = self.symb.get_H_sig_pi_(Sig_k) f_k = np.array([self.symb.get_f_(Eps_k, Sig_k, H_sig_pi)]) df_dSig_k = self.symb.get_df_dSig_(Eps_k, Sig_k, H_sig_pi) ddf_dEps_k = self.symb.get_ddf_dEps_(Eps_k, Sig_k, H_sig_pi) df_dEps_k = np.einsum('ik,ji->jk', df_dSig_k, dSig_dEps_k) + ddf_dEps_k Phi_k = self.get_Phi_(Eps_k, Sig_k, H_sig_pi) dEps_dlambda_k = Phi_k df_dlambda = np.einsum('ki,kj->ij', df_dEps_k, dEps_dlambda_k) df_k = df_dlambda if self.debug_level == 1: print('>>>>>>>>>>>>> get_f_df(): OUTPUT') print('Sig_k', Sig_k) print('f_k', f_k) print('df_k', df_k) print('<<<<<<<<<<<<< get_f_df(): OUTPUT') return f_k, df_k, Sig_k def get_Eps_k1(self, s_x_n1, s_y_n1, w_n1, Eps_n, lam_k, Sig_k, Eps_k): '''Evolution equations: The update of state variables for an updated $\lambda_k$ is performed using this procedure. ''' Sig_k = self.symb.get_Sig_(s_x_n1, s_y_n1, w_n1, Sig_k, Eps_k)[0] H_sig_pi = self.symb.get_H_sig_pi_(Sig_k) Phi_k = self.get_Phi_(Eps_k, Sig_k, H_sig_pi) Eps_k1 = Eps_n + lam_k * Phi_k[:, 0] Eps_k1[-2] = min(0.99, Eps_k1[-2]) Eps_k1[-1] = min(0.99, Eps_k1[-1]) return Eps_k1 rtol = bu.Float(1e-3, ALG=True) '''Relative tolerance of the return mapping algorithm related to the tensile strength ''' f_lambda_recording = bu.Bool(False) f_list = tr.List lam_list = tr.List lam_max = bu.Float(1) def reset_flam_profile(self): self.f_list = [] self.lam_list = [] def record_flam_profile(self, lam_k, s_x_n1, s_y_n1, w_n1, Sig_n, Eps_n): Eps_k = np.copy(Eps_n) Sig_k = np.copy(Sig_n) lam_range = np.linspace(0, self.lam_max, 30) f_range = np.zeros_like(lam_range) for i, lam in enumerate(lam_range): Eps_k = self.get_Eps_k1(s_x_n1, s_y_n1, w_n1, Eps_n, lam - lam_k, Sig_k, Eps_k) f_k, df_k, Sig_k = self.get_f_df(s_x_n1, s_y_n1, w_n1, Sig_k, Eps_k) f_range[i] = f_k self.lam_list.append(lam_range) self.f_list.append(np.array(f_range)) debug_level = bu.Int(0) def get_sig_n1(self, s_x_n1, s_y_n1, w_n1, Sig_n, Eps_n, k_max): '''Return mapping iteration: This function represents a user subroutine in a finite element code or in a lattice model. The input is $s_{n+1}$ and the state variables representing the state in the previous solved step $\boldsymbol{\mathcal{E}}_n$. The procedure returns the stresses and state variables of $\boldsymbol{\mathcal{S}}_{n+1}$ and $\boldsymbol{\mathcal{E}}_{n+1}$ ''' if self.f_lambda_recording: self.reset_flam_profile() Eps_k = np.copy(Eps_n) Sig_k = np.copy(Sig_n) lam_k = 0 f_k, df_k, Sig_k = self.get_f_df(s_x_n1, s_y_n1, w_n1, Sig_k, Eps_k) f_k_norm = np.linalg.norm(f_k) f_k_trial = f_k[0] k = 0 while k < k_max: if self.debug_level == 1: print('============= RETURN STEP:', k) if self.f_lambda_recording: self.record_flam_profile(lam_k, s_x_n1, s_y_n1, w_n1, Sig_k, Eps_k) if f_k_trial < 0 or f_k_norm < self.f_t * self.rtol: if self.debug_level == 1: print('============= SUCCESS') return Eps_k, Sig_k, k + 1 dlam = np.linalg.solve(df_k, -f_k) lam_k += dlam if self.debug_level == 1: print('lam_k', lam_k, dlam) Eps_k = self.get_Eps_k1(s_x_n1, s_y_n1, w_n1, Eps_n, lam_k, Sig_k, Eps_k) f_k, df_k, Sig_k = self.get_f_df(s_x_n1, s_y_n1, w_n1, Sig_k, Eps_k) f_k_norm = np.linalg.norm(f_k) k += 1 else: raise ConvergenceError('no convergence for step', [s_x_n1, s_y_n1, w_n1]) Eps_names = tr.Property @tr.cached_property def _get_Eps_names(self): return [eps.codename for eps in self.symb.Eps] Sig_names = tr.Property @tr.cached_property def _get_Sig_names(self): return [sig.codename for sig in self.symb.Sig] state_var_shapes = tr.Property @tr.cached_property def _get_state_var_shapes(self): '''State variables shapes: variables are using the codename string in the Cymbol definition Since the same string is used in the lambdify method via print_Symbol method defined in Cymbol as well''' return {eps_name: () for eps_name in self.Eps_names + self.Sig_names} def plot_f_state(self, ax, Eps, Sig, color='red'): lower = -self.f_c * 1.05 upper = self.f_t + 0.05 * self.f_c lower_tau = -self.bartau * 2 upper_tau = self.bartau * 2 lower_tau = -10 upper_tau = 10 tau_x, tau_y, sig = Sig[:3] tau = np.sqrt(tau_x**2 + tau_y**2) sig_ts, tau_x_ts = np.mgrid[lower:upper:201j, lower_tau:upper_tau:201j] Sig_ts = np.zeros((len(self.symb.Eps), ) + tau_x_ts.shape) Eps_ts = np.zeros_like(Sig_ts) Sig_ts[0, ...] = tau_x_ts Sig_ts[2, ...] = sig_ts Sig_ts[3:, ...] = Sig[3:, np.newaxis, np.newaxis] Sig_ts[4, ...] = np.sqrt(Sig_ts[4, ...]**2 + Sig_ts[5, ...]**2) Sig_ts[5, ...] = 0 Eps_ts[...] = Eps[:, np.newaxis, np.newaxis] Eps_ts[0, ...] = np.sqrt(Eps_ts[0, ...]**2 + Eps_ts[1, ...]**2) Eps_ts[1, ...] = 0 Eps_ts[4, ...] = np.sqrt(Eps_ts[4, ...]**2 + Eps_ts[5, ...]**2) Eps_ts[5, ...] = 0 H_sig_pi = self.symb.get_H_sig_pi_(Sig_ts) f_ts = np.array([self.symb.get_f_(Eps_ts, Sig_ts, H_sig_pi)]) #phi_ts = np.array([self.symb.get_phi_(Eps_ts, Sig_ts)]) ax.set_title('threshold function') omega_N = Eps_ts[-1, :] omega_T = Eps_ts[-2, :] sig_ts_eff = sig_ts / (1 - H_sig_pi * omega_N) tau_x_ts_eff = tau_x_ts / (1 - omega_T) #ax.contour(sig_ts_eff, tau_x_ts_eff, f_ts[0,...], [0], colors=('green',)) ax.contour(sig_ts, tau_x_ts, f_ts[0, ...], [0], colors=(color, )) #ax.contour(sig_ts, tau_x_ts, phi_ts[0, ...]) ax.plot(sig, tau, marker='H', color='red') ax.plot([lower, upper], [0, 0], color='black', lw=0.4) ax.plot([0, 0], [lower_tau, upper_tau], color='black', lw=0.4) ax.set_ylim(ymin=0, ymax=upper_tau) def plot_f(self, ax): lower = -self.f_c * 1.05 upper = self.f_t + 0.05 * self.f_c lower_tau = -self.bartau * 2 upper_tau = self.bartau * 2 sig_ts, tau_x_ts = np.mgrid[lower:upper:201j, lower_tau:upper_tau:201j] Sig_ts = np.zeros((len(self.symb.Eps), ) + tau_x_ts.shape) Sig_ts[0, :] = tau_x_ts Sig_ts[2, :] = sig_ts Eps_ts = np.zeros_like(Sig_ts) H_sig_pi = self.symb.get_H_sig_pi_(Sig_ts) f_ts = np.array([self.symb.get_f_(Eps_ts, Sig_ts, H_sig_pi)]) phi_ts = np.array([self.get_phi_(Eps_ts, Sig_ts, H_sig_pi)]) ax.set_title('threshold function') ax.contour(sig_ts, tau_x_ts, f_ts[0, ...], levels=0) ax.contour(sig_ts, tau_x_ts, phi_ts[0, ...]) ax.plot([lower, upper], [0, 0], color='black', lw=0.4) ax.plot([0, 0], [lower_tau, upper_tau], color='black', lw=0.4) def plot_phi_Y(self, ax): lower_N = 0 upper_N = 1 lower_T = 0 upper_T = 1 Y_N, Y_T = np.mgrid[lower_N:upper_N:201j, lower_T:upper_T:201j] Sig_ts = np.zeros((len(self.symb.Eps), ) + Y_T.shape) Sig_ts[0, :] = Y_N Sig_ts[2, :] = Y_T Eps_ts = np.zeros_like(Sig_ts) H_sig_pi = self.symb.get_H_sig_pi_(Sig_ts) phi_ts = np.array([self.get_phi_(Eps_ts, Sig_ts, H_sig_pi)]) ax.set_title('potential function') ax.contour(Y_N, Y_T, phi_ts[0, ...]) #, levels=0) def update_plot(self, ax): self.plot_f(ax) def plot3d(self, pb): delta_f = self.f_t * 0.05 lower = -self.f_c - delta_f upper = self.f_t + delta_f lower_tau = -self.bartau * 2 upper_tau = self.bartau * 2 sig_ts, tau_x_ts = np.mgrid[lower:upper:201j, lower_tau:upper_tau:201j] Sig_ts = np.zeros((len(self.symb.Eps), ) + tau_x_ts.shape) Sig_ts[0, :] = tau_x_ts Sig_ts[2, :] = sig_ts Eps_ts = np.zeros_like(Sig_ts) H_sig_pi = self.symb.get_H_sig_pi_(Sig_ts) f_ts = np.array([self.symb.get_f_(Eps_ts, Sig_ts, H_sig_pi)]) # max_f_c = self.f_c # max_f_t = self.f_t # max_tau_bar = self.bartau # X_a, Y_a = np.mgrid[-1.1*max_f_c:1.1*max_f_t:210j, -max_tau_bar:max_tau_bar:210j] # Z_a = self.symb.get_f_solved(X_a, Y_a) * self.z_scale # #ax.contour(X_a, Y_a, Z_a, levels=8) Z_0 = np.zeros_like(f_ts) self.surface = k3d.surface(f_ts.astype(np.float32)) pb.plot_fig += self.surface self.surface0 = k3d.surface(Z_0.astype(np.float32), color=0xbbbbbe) pb.plot_fig += self.surface0
class EC2ConcreteMatModBase(ConcreteMatMod): # Optional attributes # mu must be between 0 and 1 mu = bu.Float( 0.0, MAT=True, desc= 'Post crack tensile strength ratio (represents how much strength is left after \ the crack because of short steel fibers in the mixture)' ) _eps_cr = None eps_cr = tr.Property(desc='Matrix cracking strain', MAT=True) def _set_eps_cr(self, value): self._eps_cr = value def _get_eps_cr(self): if self._eps_cr is not None: return self._eps_cr else: return EC2.get_f_ctm(self.f_ck) / self.E_ct _eps_tu = None eps_tu = tr.Property(desc='Ultimate matrix tensile strain', MAT=True) def _set_eps_tu(self, value): self._eps_tu = value def _get_eps_tu(self): if self._eps_tu is not None: return self._eps_tu else: return self.eps_cr _E_cc = None E_cc = tr.Property(desc='E modulus of matrix on compression', MAT=True) def _set_E_cc(self, value): self._E_cc = value def _get_E_cc(self): if self._E_cc is not None: return self._E_cc else: return EC2.get_E_cm(self.f_ck) _E_ct = None E_ct = tr.Property(desc='E modulus of matrix on tension', MAT=True) def _set_E_ct(self, value): self._E_ct = value def _get_E_ct(self): if self._E_ct is not None: return self._E_ct else: return EC2.get_E_cm(self.f_ck) ipw_view = bu.View( bu.Item('f_cm', latex=r'^*f_\mathrm{cm}', editor=bu.FloatEditor()), bu.Item('eps_cr', latex=r'\varepsilon_{cr}', editor=bu.FloatEditor()), bu.Item('eps_tu', latex=r'\varepsilon_{tu}', editor=bu.FloatEditor()), bu.Item('mu', latex=r'\mu'), bu.Item('E_ct', latex=r'E_\mathrm{ct} \mathrm{[N/mm^{2}]}', editor=bu.FloatEditor()), bu.Item('E_cc', latex=r'E_\mathrm{cc} \mathrm{[N/mm^{2}]}', editor=bu.FloatEditor()), bu.Item('factor'), ) def get_eps_plot_range(self): return np.linspace(1.5 * self.eps_cu, 1.5 * self.eps_tu, 300)
class Slide34(MATSEval, bu.InjectSymbExpr): name = 'Slide 3.4' symb_class = Slide34Expr E_T = bu.Float(28000, MAT=True) gamma_T = bu.Float(10, MAT=True) K_T = bu.Float(8, MAT=True) S_T = bu.Float(1, MAT=True) c_T = bu.Float(1, MAT=True) bartau = bu.Float(28000, MAT=True) E_N = bu.Float(28000, MAT=True) S_N = bu.Float(1, MAT=True) c_N = bu.Float(1, MAT=True) m = bu.Float(0.1, MAT=True) f_t = bu.Float(3, MAT=True) f_c = bu.Float(30, MAT=True) f_c0 = bu.Float(20, MAT=True) eta = bu.Float(0.5, MAT=True) r = bu.Float(1, MAT=True) c_NT = tr.Property(bu.Float, depends_on='state_changed') @tr.cached_property def _get_c_NT(self): return np.sqrt(self.c_N * self.c_T) S_NT = tr.Property(bu.Float, depends_on='state_changed') @tr.cached_property def _get_S_NT(self): return np.sqrt(self.S_N * self.S_T) debug = bu.Bool(False) def C_codegen(self): import os import os.path as osp C_code = [] for symb_name, symb_params in self.symb.symb_expressions: c_func_name = 'get_' + symb_name c_func = ccode(c_func_name, getattr(self.symb, symb_name), 'SLIDE33') C_code.append(c_func) code_dirname = 'sympy_codegen' code_fname = 'SLIDE33_3D' home_dir = osp.expanduser('~') code_dir = osp.join(home_dir, code_dirname) if not osp.exists(code_dir): os.makedirs(code_dir) code_file = osp.join(code_dir, code_fname) print('generated code_file', code_file) h_file = code_file + '.h' c_file = code_file + '.c' h_f = open(h_file, 'w') c_f = open(c_file, 'w') if True: for function_C in C_code: h_f.write(function_C[1][1]) c_f.write(function_C[0][1]) h_f.close() c_f.close() ipw_view = bu.View( bu.Item('E_T', latex='E_T'), bu.Item('S_T'), bu.Item('c_T'), bu.Item('gamma_T'), bu.Item('K_T'), bu.Item('bartau', latex=r'\bar{\tau}'), bu.Item('E_N'), bu.Item('S_N'), bu.Item('c_N'), bu.Item('m'), bu.Item('f_t'), bu.Item('f_c', latex=r'f_\mathrm{c}'), bu.Item('f_c0', latex=r'f_\mathrm{c0}'), bu.Item('eta'), bu.Item('r'), bu.Item('c_NT', readonly=True), bu.Item('S_NT', readonly=True), ) damage_interaction = tr.Enum('final', 'geometric', 'arithmetic') get_phi_ = tr.Property def _get_get_phi_(self): return self.symb.get_phi_final_ get_Phi_ = tr.Property def _get_get_Phi_(self): return self.symb.get_Phi_final_ def get_f_df(self, u_N_n1, u_Tx_n1, u_Ty_n1, Sig_k, Eps_k): if self.debug: print('w_n1', u_N_n1.dtype, u_N_n1.shape) print('s_x_n1', u_Tx_n1.dtype, u_Tx_n1.shape) print('s_y_n1', u_Ty_n1.dtype, u_Ty_n1.shape) print('Eps_k', Eps_k.dtype, Eps_k.shape) print('Sig_k', Sig_k.dtype, Sig_k.shape) ONES = np.ones_like(u_Tx_n1, dtype=np.float_) if self.debug: print('ONES', ONES.dtype) ZEROS = np.zeros_like(u_Tx_n1, dtype=np.float_) if self.debug: print('ZEROS', ZEROS.dtype) Sig_k = self.symb.get_Sig_(u_N_n1, u_Tx_n1, u_Ty_n1, Sig_k, Eps_k)[0] if self.debug: print('Sig_k', Sig_k.dtype, Sig_k.shape) dSig_dEps_k = self.symb.get_dSig_dEps_(u_N_n1, u_Tx_n1, u_Ty_n1, Sig_k, Eps_k, ZEROS, ONES) if self.debug: print('dSig_dEps_k', dSig_dEps_k.dtype) H_sig_pi = self.symb.get_H_sig_pi_(Sig_k) if self.debug: print('H_sig_pi', H_sig_pi.dtype) f_k = np.array([self.symb.get_f_(Eps_k, Sig_k, H_sig_pi)]) if self.debug: print('f_k', f_k.dtype) df_dSig_k = self.symb.get_df_dSig_(Eps_k, Sig_k, H_sig_pi, ZEROS, ONES) if self.debug: print('df_dSig_k', df_dSig_k.dtype) ddf_dEps_k = self.symb.get_ddf_dEps_(Eps_k, Sig_k, H_sig_pi, ZEROS, ONES) if self.debug: print('ddf_dEps_k', ddf_dEps_k.dtype) df_dEps_k = np.einsum('ik...,ji...->jk...', df_dSig_k, dSig_dEps_k) + ddf_dEps_k Phi_k = self.get_Phi_(Eps_k, Sig_k, H_sig_pi, ZEROS, ONES) dEps_dlambda_k = Phi_k df_dlambda = np.einsum('ki...,kj...->ij...', df_dEps_k, dEps_dlambda_k) df_k = df_dlambda return f_k, df_k, Sig_k def get_Eps_k1(self, u_N_n1, u_Tx_n1, u_Ty_n1, Eps_n, lam_k, Sig_k, Eps_k): '''Evolution equations: The update of state variables for an updated $\lambda_k$ is performed using this procedure. ''' ONES = np.ones_like(u_Tx_n1) ZEROS = np.zeros_like(u_Tx_n1) Sig_k = self.symb.get_Sig_(u_N_n1, u_Tx_n1, u_Ty_n1, Sig_k, Eps_k)[0] H_sig_pi = self.symb.get_H_sig_pi_(Sig_k) Phi_k = self.get_Phi_(Eps_k, Sig_k, H_sig_pi, ZEROS, ONES) Eps_k1 = Eps_n + lam_k * Phi_k[:, 0] return Eps_k1 rtol = bu.Float(1e-3, ALG=True) '''Relative tolerance of the return mapping algorithm related to the tensile strength ''' Eps_names = tr.Property @tr.cached_property def _get_Eps_names(self): return [eps.codename for eps in self.symb.Eps] Sig_names = tr.Property @tr.cached_property def _get_Sig_names(self): return [sig.codename for sig in self.symb.Sig] state_var_shapes = tr.Property @tr.cached_property def _get_state_var_shapes(self): '''State variables shapes: variables are using the codename string in the Cymbol definition Since the same string is used in the lambdify method via print_Symbol method defined in Cymbol as well''' return {eps_name: () for eps_name in self.Eps_names + self.Sig_names} k_max = bu.Int(100, ALG=True) '''Maximum number of iterations''' def get_corr_pred(self, eps_Ema, t_n1, **state): '''Return mapping iteration: This function represents a user subroutine in a finite element code or in a lattice model. The input is $s_{n+1}$ and the state variables representing the state in the previous solved step $\boldsymbol{\mathcal{E}}_n$. The procedure returns the stresses and state variables of $\boldsymbol{\mathcal{S}}_{n+1}$ and $\boldsymbol{\mathcal{E}}_{n+1}$ ''' eps_aEm = np.einsum('...a->a...', eps_Ema) dim = len(eps_aEm) if dim == 2: # hack - only one slip considered - 2D version select_idx = (1, 0) u_Tx_n1, u_N_n1 = eps_aEm u_Ty_n1 = np.zeros_like(u_Tx_n1) else: raise ValueError('3D not implemented here') ONES = np.ones_like(u_Tx_n1, dtype=np.float_) if self.debug: print('ONES', ONES.dtype) ZEROS = np.zeros_like(u_Tx_n1, dtype=np.float_) if self.debug: print('ZEROS', ZEROS.dtype) # Transform state to Eps_k and Sig_k Eps_n = np.array([state[eps_name] for eps_name in self.Eps_names], dtype=np.float_) Eps_k = np.copy(Eps_n) #Sig_k = np.array([state[sig_name] for sig_name in self.Sig_names], dtype=np.float_) Sig_k = np.zeros_like(Eps_k) f_k, df_k, Sig_k = self.get_f_df(u_N_n1, u_Tx_n1, u_Ty_n1, Sig_k, Eps_k) f_k, df_k = f_k[0, ...], df_k[0, 0, ...] f_k_trial = f_k # indexes of inelastic entries L = np.where(f_k_trial > 0) # f norm in inelastic entries - to allow also positive values less the rtol f_k_norm_I = np.fabs(f_k_trial[L]) lam_k = np.zeros_like(f_k_trial) k = 0 while k < self.k_max: if self.debug: print('k', k) # which entries are above the tolerance I = np.where(f_k_norm_I > (self.f_t * self.rtol)) if self.debug: print('f_k_norm_I', f_k_norm_I, self.f_t * self.rtol, len(I[0])) if (len(I[0]) == 0): # empty inelastic entries - accept state #return Eps_k, Sig_k, k + 1 dSig_dEps_k = self.symb.get_dSig_dEps_(u_N_n1, u_Tx_n1, u_Ty_n1, Sig_k, Eps_k, ZEROS, ONES) ix1, ix2 = np.ix_(select_idx, select_idx) D_ = np.einsum('ab...->...ab', dSig_dEps_k[ix1, ix2, ...]) sig_ = np.einsum('a...->...a', Sig_k[select_idx, ...]) # quick fix _, _, _, _, _, _, omega_T, omega_N = Eps_k D_ = np.zeros(sig_.shape + (sig_.shape[-1], )) D_[..., 0, 0] = self.E_N * (1 - omega_N) D_[..., 1, 1] = self.E_T * (1 - omega_T) if dim == 3: D_[..., 2, 2] = self.E_T #* (1 - omega_T) for eps_name, Eps_ in zip(self.Eps_names, Eps_k): state[eps_name][...] = Eps_[...] for sig_name, Sig_ in zip(self.Sig_names, Sig_k): state[sig_name][...] = Sig_[...] return sig_, D_ if self.debug: print('I', I) print('L', L) LL = tuple(Li[I] for Li in L) L = LL if self.debug: print('new L', L) print('f_k', f_k[L].shape, f_k[L].dtype) print('df_k', df_k[L].shape, df_k[L].dtype) # return mapping on inelastic entries dlam_L = -f_k[L] / df_k[L] # np.linalg.solve(df_k[I], -f_k[I]) if self.debug: print('dlam_I', dlam_L, dlam_L.dtype) lam_k[L] += dlam_L if self.debug: print('lam_k_L', lam_k, lam_k.dtype, lam_k[L].shape) L_slice = (slice(None), ) + L Eps_k_L = self.get_Eps_k1(u_N_n1[L], u_Tx_n1[L], u_Ty_n1[L], Eps_n[L_slice], lam_k[L], Sig_k[L_slice], Eps_k[L_slice]) Eps_k[L_slice] = Eps_k_L f_k_L, df_k_L, Sig_k_L = self.get_f_df(u_N_n1[L], u_Tx_n1[L], u_Ty_n1[L], Sig_k[L_slice], Eps_k_L) f_k[L], df_k[L] = f_k_L[0, ...], df_k_L[0, 0, ...] Sig_k[L_slice] = Sig_k_L if self.debug: print('Sig_k', Sig_k) print('f_k', f_k) f_k_norm_I = np.fabs(f_k[L]) k += 1 else: raise ConvergenceError('no convergence for entries', [L, u_N_n1[I], u_Tx_n1[I], u_Ty_n1[I]]) # add the algorithmic stiffness # recalculate df_k and -f_k for a unit increment of epsilon and solve for lambda # def plot_f_state(self, ax, Eps, Sig): lower = -self.f_c * 1.05 upper = self.f_t + 0.05 * self.f_c lower_tau = -self.bartau * 2 upper_tau = self.bartau * 2 lower_tau = 0 upper_tau = 10 sig, tau_x, tau_y = Sig[:3] tau = np.sqrt(tau_x**2 + tau_y**2) sig_ts, tau_x_ts = np.mgrid[lower:upper:201j, lower_tau:upper_tau:201j] Sig_ts = np.zeros((len(self.symb.Eps), ) + tau_x_ts.shape) Eps_ts = np.zeros_like(Sig_ts) Sig_ts[0, ...] = sig_ts Sig_ts[1, ...] = tau_x_ts Sig_ts[3:, ...] = Sig[3:, np.newaxis, np.newaxis] Eps_ts[...] = Eps[:, np.newaxis, np.newaxis] H_sig_pi = self.symb.get_H_sig_pi_(Sig_ts) f_ts = np.array([self.symb.get_f_(Eps_ts, Sig_ts, H_sig_pi)]) #phi_ts = np.array([self.symb.get_phi_(Eps_ts, Sig_ts)]) ax.set_title('threshold function') omega_N = Eps_ts[-1, :] omega_T = Eps_ts[-2, :] sig_ts_eff = sig_ts / (1 - H_sig_pi * omega_N) tau_x_ts_eff = tau_x_ts / (1 - omega_T) ax.contour(sig_ts_eff, tau_x_ts_eff, f_ts[0, ...], levels=0, colors=('green', )) ax.contour(sig_ts, tau_x_ts, f_ts[0, ...], levels=0, colors=('red', )) #ax.contour(sig_ts, tau_x_ts, phi_ts[0, ...]) ax.plot(sig, tau, marker='H', color='red') ax.plot([lower, upper], [0, 0], color='black', lw=0.4) ax.plot([0, 0], [lower_tau, upper_tau], color='black', lw=0.4) ax.set_ylim(ymin=0, ymax=10) def plot_f(self, ax): lower = -self.f_c * 1.05 upper = self.f_t + 0.05 * self.f_c lower_tau = -self.bartau * 2 upper_tau = self.bartau * 2 sig_ts, tau_x_ts = np.mgrid[lower:upper:201j, lower_tau:upper_tau:201j] Sig_ts = np.zeros((len(self.symb.Eps), ) + tau_x_ts.shape) Sig_ts[0, :] = sig_ts Sig_ts[1, :] = tau_x_ts Eps_ts = np.zeros_like(Sig_ts) H_sig_pi = self.symb.get_H_sig_pi_(Sig_ts) f_ts = np.array([self.symb.get_f_(Eps_ts, Sig_ts, H_sig_pi)]) phi_ts = np.array([self.get_phi_(Eps_ts, Sig_ts, H_sig_pi)]) ax.set_title('threshold function') ax.contour(sig_ts, tau_x_ts, f_ts[0, ...], levels=0) ax.contour(sig_ts, tau_x_ts, phi_ts[0, ...]) ax.plot([lower, upper], [0, 0], color='black', lw=0.4) ax.plot([0, 0], [lower_tau, upper_tau], color='black', lw=0.4) def plot_sig_w(self, ax): pass def plot_tau_s(self, ax): pass def subplots(self, fig): return fig.subplots(2, 2) def update_plot(self, axes): (ax_sig_w, ax_tau_s), (ax_f, _) = axes self.plot_sig_w(ax_sig_w) self.plot_tau_s(ax_tau_s) self.plot_f(ax_f)
class ConcreteMatMod(MatMod): factor = bu.Float(1, MAT=True) # 0.85 / 1.5 '''Factor to embed a EC2 based safety factors.
class SlideExplorer(bu.Model): name = 'Explorer' tree = [ 'slide_model', 'inel_state_evolution', 'energy_dissipation', 'tf_s_x', 'tf_s_y', 'tf_w' ] slide_model = bu.Instance(Slide32, (), tree=True) # slide_model = bu.Instance(Slide34, (), tree=True) energy_dissipation = bu.Instance(EnergyDissipation, tree=True) '''Viewer to the energy dissipation''' def _energy_dissipation_default(self): return EnergyDissipation(slider_exp=self) inel_state_evolution = bu.Instance(InelStateEvolution, tree=True) '''Viewer to the inelastic state evolution''' def _inel_state_evolution_default(self): return InelStateEvolution(slider_exp=self) time_fn = bu.Instance(TimeFunction, (), tree=True) def __init__(self, *args, **kw): super(SlideExplorer, self).__init__(*args, **kw) self.reset_i() n_Eps = tr.Property() def _get_n_Eps(self): return len(self.slide_model.symb.Eps) s_x_1 = bu.Float(0, INC=True) s_y_1 = bu.Float(0, INC=True) w_1 = bu.Float(0, INC=True) tf_s_x = bu.Instance(TimeFunction, TIME=True) def _tf_s_x_default(self): return TFSelector() tf_s_y = bu.Instance(TimeFunction, TIME=True) def _tf_s_y_default(self): return TFSelector() tf_w = bu.Instance(TimeFunction, TIME=True) def _tf_w_default(self): return TFSelector() n_steps = bu.Int(10, ALG=True) k_max = bu.Int(20, ALG=True) Sig_arr = tr.Array Eps_arr = tr.Array Sig_t = tr.Property def _get_Sig_t(self): return self.Sig_arr Eps_t = tr.Property def _get_Eps_t(self): return self.Eps_arr ipw_view = bu.View(bu.Item('s_x_1', latex=r's_x'), bu.Item('s_y_1', latex=r's_y'), bu.Item('w_1', latex=r'w'), bu.Item('n_steps'), bu.Item('k_max'), bu.Item('t_max', readonly=True), time_editor=bu.ProgressEditor( run_method='run', reset_method='reset', interrupt_var='sim_stop', time_var='t', time_max='t_max', )) def reset_i(self): self.s_x_0, self.s_y_0, self.w_0 = 0, 0, 0 self.t0 = 0 self.t = 0 self.t_max = 1 self.Sig_arr = np.zeros((0, self.n_Eps)) self.Eps_arr = np.zeros((0, self.n_Eps)) self.Sig_record = [] self.Eps_record = [] self.iter_record = [] self.t_arr = [] self.s_x_t, self.s_y_t, self.w_t = [], [], [] self.Eps_n1 = np.zeros((self.n_Eps, ), dtype=np.float_) self.Sig_n1 = np.zeros((self.n_Eps, ), dtype=np.float_) self.s_x_1 = 0 self.s_y_1 = 0 self.w_1 = 0 t = bu.Float(0) t_max = bu.Float(1) def _t_max_changed(self): self.inel_state_evolution.t_max = self.t_max def get_response_i(self, update_progress=lambda t: t): # global Eps_record, Sig_record, iter_record # global t_arr, s_x_t, s_y_t, w_t, s_x_0, s_y_0, w_0, t0, Eps_n1 n_steps = self.n_steps t_i = np.linspace(0, 1, n_steps + 1) t1 = self.t0 + 1 self.t_max = t1 ti_arr = np.linspace(self.t0, t1, n_steps + 1) delta_t = t1 - self.t0 tf_s_x = self.tf_s_x(np.linspace(0, delta_t, n_steps + 1)) tf_s_y = self.tf_s_y(np.linspace(0, delta_t, n_steps + 1)) tf_w = self.tf_w(np.linspace(0, delta_t, n_steps + 1)) # si_x_t = tf_s_x * np.linspace(self.s_x_0, self.s_x_1, n_steps + 1) + 1e-9 # si_y_t = tf_s_y * np.linspace(self.s_y_0, self.s_y_1, n_steps + 1) + 1e-9 # wi_t = tf_w * np.linspace(self.w_0, self.w_1, n_steps + 1) + 1e-9 si_x_t = self.s_x_0 + tf_s_x * (self.s_x_1 - self.s_x_0) + 1e-9 si_y_t = self.s_y_0 + tf_s_y * (self.s_y_1 - self.s_y_0) + 1e-9 wi_t = self.w_0 + tf_w * (self.w_1 - self.w_0) + 1e-9 for i, (t, s_x_n1, s_y_n1, w_n1) in enumerate(zip(t_i, si_x_t, si_y_t, wi_t)): if self.slide_model.debug_level == 1: print('============= INCREMENT', i) try: self.Eps_n1, self.Sig_n1, k = self.slide_model.get_sig_n1( s_x_n1, s_y_n1, w_n1, self.Sig_n1, self.Eps_n1, self.k_max) except ConvergenceError as e: print(e) break self.Sig_record.append(self.Sig_n1) self.Eps_record.append(self.Eps_n1) self.iter_record.append(k) self.t = t self.Sig_arr = np.array(self.Sig_record, dtype=np.float_) self.Eps_arr = np.array(self.Eps_record, dtype=np.float_) self.iter_t = np.array(self.iter_record, dtype=np.int_) n_i = len(self.iter_t) self.t_arr = np.hstack([self.t_arr, ti_arr])[:n_i] self.s_x_t = np.hstack([self.s_x_t, si_x_t])[:n_i] self.s_y_t = np.hstack([self.s_y_t, si_y_t])[:n_i] self.w_t = np.hstack([self.w_t, wi_t])[:n_i] self.t0 = t1 self.s_x_0, self.s_y_0, self.w_0 = self.s_x_1, self.s_y_1, self.w_1 # set the last step index in the response browser self.inel_state_evolution.t_max = self.t_arr[-1] return # ## Plotting functions # To simplify postprocessing examples, here are two aggregate plotting functions, one for the state and force variables, the other one for the evaluation of energies def plot_sig_w(self, ax): sig_t = self.Sig_arr.T[2, ...] ax.plot(self.w_t, sig_t, color='orange', lw=3) def plot3d_Sig_Eps(self, ax3d): tau_x, tau_y = self.Sig_arr.T[:2, ...] tau = np.sqrt(tau_x**2 + tau_y**2) ax3d.plot3D(self.s_x_t, self.s_y_t, tau, color='orange', lw=2) def run(self, update_progress=lambda t: t): try: self.get_response_i(update_progress) except ValueError: print('No convergence reached') return def reset(self): self.reset_i() def subplots(self, fig): ax = fig.add_gridspec(1, 3) ax1 = fig.add_subplot(ax[0, 0:2], projection='3d') ax2 = fig.add_subplot(ax[0:, -1]) return ax1, ax2 def update_plot(self, axes): ax_sxy, ax_sig = axes self.plot_sig_w(ax_sig) ax_sig.set_xlabel(r'$w$ [mm]') ax_sig.set_ylabel(r'$\sigma$ [MPa]') # plot_tau_s(ax1, Eps_arr[-1,...],s_max,500,get_g3,**kw) ax_sxy.plot(self.s_x_t, self.s_y_t, 0, color='red', lw=1) self.plot3d_Sig_Eps(ax_sxy) ax_sxy.set_xlabel(r'$s_x$ [mm]') ax_sxy.set_ylabel(r'$s_y$ [mm]') ax_sxy.set_zlabel(r'$\| \tau \| = \sqrt{\tau_x^2 + \tau_y^2}$ [MPa]')
class GfDamageFn2(DamageFn): '''Class defining the damage function coupled with the fracture energy of a cohesive crack model. ''' name = 'damage function Gf' L_s = bu.Float(1.0, MAT=True, label="L_s", desc="Length of the softening zone") E_ = bu.Float(34000.0, MAT=True, label="E", desc="Young's modulus") E = Property(bu.Float) def _get_E(self): if self.mats: return getattr(self.mats, self.E_name) else: return self.E_ f_t = bu.Float(4.5, MAT=True, label="f_t", desc="Tensile strength") f_t_Em = Array(np.float_, value=None) G_f = bu.Float( 0.004, MAT=True, label="G_f", desc="Fracture energy", ) s_0 = Property(bu.Float) def _get_s_0(self): return self.f_t / self.E eps_ch = Property(bu.Float) def _get_eps_ch(self): return self.G_f / self.f_t ipw_view = bu.View( bu.Item('L_s', latex=r'L_\mathrm{s}'), bu.Item('f_t', latex=r'f_\mathrm{t}'), bu.Item('G_f', latex=r'G_\mathrm{f}'), bu.Item('E', readonly=True), bu.Item('s_0', latex=r's_0', readonly=True), ) def __call__(self, kappa): L_s = self.L_s f_t = self.f_t G_f = self.G_f E = self.E s_0 = self.s_0 return (1 - f_t * np.exp(-f_t * (kappa - s_0) * L_s / G_f) / (E * kappa)) def diff(self, kappa): L_s = self.L_s f_t = self.f_t G_f = self.G_f E = self.E s_0 = self.s_0 return (f_t * np.exp(L_s * (s_0 - kappa) * f_t / G_f) / (E * G_f * kappa**2) * (G_f + L_s * kappa * f_t))
class WBCell5ParamV2(WBCell): name = 'waterbomb cell 5p v2' plot_backend = 'k3d' gamma = bu.Float(np.pi / 6, GEO=True) a = bu.Float(500, GEO=True) b = bu.Float(750, GEO=True) c = bu.Float(400, GEO=True) # beta = bu.Float(np.pi / 3, GEO=True) beta = tr.Property(depends_on='+GEO') @tr.cached_property def _get_beta(self): return round(self.beta_1 + self.beta_0, 8) beta_1 = bu.Float(0, GEO=True) beta_0 = tr.Property(depends_on='+GEO') @tr.cached_property def _get_beta_0(self): """ This is the value of beta that makes the cell symmetric, derived in wb_cell_4p_deriving_beta_0.ipynb""" return np.arccos(self.a * (1 - 2 * sin(self.gamma)) / sqrt(self.a**2 + self.b**2)) continuous_update = True ipw_view = bu.View( bu.Item('gamma', latex=r'\gamma', editor=bu.FloatRangeEditor( low=1e-6, high=np.pi / 2, n_steps=501, continuous_update=continuous_update)), # bu.Item('beta', latex=r'\beta', editor=bu.FloatRangeEditor( # low=1e-6, high=np.pi - 1e-6, n_steps=501, continuous_update=continuous_update)), bu.Item('beta_1', latex=r'\beta_1', editor=bu.FloatRangeEditor( low=-4, high=4, n_steps=501, continuous_update=continuous_update)), bu.Item('a', latex='a', editor=bu.FloatRangeEditor( low=1e-6, high=2000, n_steps=201, continuous_update=continuous_update)), bu.Item('b', latex='b', editor=bu.FloatRangeEditor( low=1e-6, high=2000, n_steps=201, continuous_update=continuous_update)), bu.Item('c', latex='c', editor=bu.FloatRangeEditor( low=1e-6, high=2000, n_steps=201, continuous_update=continuous_update)), *WBCell.ipw_view.content, ) X_Ia = tr.Property(depends_on='+GEO') '''Array with nodal coordinates I - node, a - dimension ''' @tr.cached_property def _get_X_Ia(self): return self.get_cell_vertices() def get_cell_vertices(self, a=0.5, b=0.75, c=0.4, gamma=np.pi / 6, beta=np.pi / 3): a = self.a b = self.b c = self.c gamma = self.gamma beta = self.beta # phi1 is angle between OU_ur line and z axis cos_psi1 = ((b**2 - a**2) - a * sqrt(a**2 + b**2) * cos(beta)) / ( b * sqrt(a**2 + b**2) * sin(beta)) sin_psi1 = sqrt(a**2 * (3 * b**2 - a**2) + 2 * a * (b**2 - a**2) * sqrt(a**2 + b**2) * cos(beta) - (a**2 + b**2)**2 * cos(beta)**2) / ( b * sqrt(a**2 + b**2) * sin(beta)) cos_psi5 = (sqrt(a**2 + b**2) * cos(beta) - a * cos(2 * gamma)) / (b * sin(2 * gamma)) sin_psi5 = sqrt( b**2 + 2 * a * sqrt(a**2 + b**2) * cos(beta) * cos(2 * gamma) - (a**2 + b**2) * (cos(beta)**2 + cos(2 * gamma)**2)) / (b * sin(2 * gamma)) cos_psi6 = (a - sqrt(a**2 + b**2) * cos(beta) * cos(2 * gamma)) / ( sqrt(a**2 + b**2) * sin(beta) * sin(2 * gamma)) sin_psi6 = sqrt(b**2 + 2 * a * sqrt(a**2 + b**2) * cos(beta) * cos(2 * gamma) - (a**2 + b**2) * (cos(beta)**2 + cos(2 * gamma)**2)) / ( sqrt(a**2 + b**2) * sin(beta) * sin(2 * gamma)) cos_psi1plus6 = cos_psi1 * cos_psi6 - sin_psi1 * sin_psi6 sin_psi1plus6 = sin_psi1 * cos_psi6 + cos_psi1 * sin_psi6 cos_phi1 = cos_psi1plus6 cos_phi2 = cos_psi5 cos_phi3 = cos_psi5 cos_phi4 = cos_psi1plus6 sin_phi1 = sin_psi1plus6 sin_phi2 = sin_psi5 sin_phi3 = sin_psi5 sin_phi4 = sin_psi1plus6 U_ur = np.array([ a * sin(gamma) - b * cos_phi1 * cos(gamma), b * sin_phi1, a * cos(gamma) + b * cos_phi1 * sin(gamma) ]) U_ul = np.array([ -a * sin(gamma) + b * cos_phi2 * cos(gamma), b * sin_phi2, a * cos(gamma) + b * cos_phi2 * sin(gamma) ]) U_lr = np.array([ a * sin(gamma) - b * cos_phi3 * cos(gamma), -b * sin_phi3, a * cos(gamma) + b * cos_phi3 * sin(gamma) ]) U_ll = np.array([ -a * sin(gamma) + b * cos_phi4 * cos(gamma), -b * sin_phi4, a * cos(gamma) + b * cos_phi4 * sin(gamma) ]) V_r = np.array([c * sin(gamma), 0, c * cos(gamma)]) V_l = np.array([-c * sin(gamma), 0, c * cos(gamma)]) X_Ia = np.vstack( (np.zeros(3), U_lr, U_ll, U_ur, U_ul, V_r, V_l)).astype(np.float32) return X_Ia
class FRPDamageFn(DamageFn): name = 'FRP damage function' B = bu.Float(10.4, MAT=True, symbol="B", unit='mm$^{-1}$', desc="parameter controlling the damage maximum stress level") Gf = bu.Float(1.19, MAT=True, symbol="G_\mathrm{f}", unit='N/mm', desc="fracture energy") E_bond = bu.Float(0.0) E_b = Property(Float) def _get_E_b(self): return self.mats.E_b def _set_E_b(self, value): self.E_bond = value self.mats.E_b = value @observe('B, Gf') def _update_dependent_params(self, event=None): self.E_b = 1.734 * self.Gf * self.B**2.0 # calculation of s_0, implicit function solved using Newton method def f_s(s_0): return s_0 / \ (np.exp(- self.B * s_0) - np.exp(-2.0 * self.B * s_0)) - \ 2.0 * self.B * self.Gf / self.E_b self.s_0 = newton(f_s, 0.00000001, tol=1e-5, maxiter=20) def __call__(self, kappa): b = self.B Gf = self.Gf Eb = self.E_b # 1.734 * Gf * b**2 s_0 = self.s_0 # calculation of s_0, implicit function solved using Newton method # def f_s(s_0): return s_0 / \ # (np.exp(-b * s_0) - np.exp(-2.0 * b * s_0)) - 2.0 * b * Gf / Eb # s_0 = newton(f_s, 0.00000001, tol=1e-5, maxiter=20) omega = np.zeros_like(kappa, dtype=np.float_) I = np.where(kappa >= s_0)[0] kappa_I = kappa[I] omega[I] = 1 - \ (2.0 * b * Gf * (np.exp(-b * kappa_I) - np.exp(-2.0 * b * kappa_I))) / (kappa_I * Eb) return omega def diff(self, kappa): nz_ix = np.where(kappa != 0.0)[0] b = self.B Gf = self.Gf Eb = 1.734 * Gf * b**2 domega_dkappa = np.zeros_like(kappa) kappa_nz = kappa[nz_ix] domega_dkappa[nz_ix] = ( (2.0 * b * Gf * (np.exp(-b * kappa_nz) - np.exp(-2.0 * b * kappa_nz))) / (Eb * kappa_nz**2.0) - (2.0 * b * Gf * (-b * np.exp(-b * kappa_nz) + 2.0 * b * np.exp(-2.0 * b * kappa_nz))) / (Eb * kappa_nz)) return domega_dkappa latex_eq = r'''Damage function (FRP) \begin{align} \omega = g(\kappa) = 1 - {\frac {{\exp(-2\,Bs)}-{\exp(-Bs)}}{Bs}} \end{align} where $\kappa$ is the state variable representing the maximum slip that occurred so far in in the history of loading. ''' ipw_view = bu.View( bu.Item('s_0', readonly=True), bu.Item('E_bond', readonly=True), bu.Item('B'), bu.Item('Gf'), )
class WBShellAnalysis(TStepBC, bu.InteractiveModel): name = 'WBShellAnalysis' plot_backend = 'k3d' id = bu.Str """ if you saved boundary conditions for your current analysis, this id will make sure these bcs are loaded automatically next time you create an instance with the same id """ h = bu.Float(10, GEO=True) show_wireframe = bu.Bool(True, GEO=True) ipw_view = bu.View( bu.Item('h', editor=bu.FloatRangeEditor(low=1, high=100, n_steps=100), continuous_update=False), bu.Item('show_wireframe'), time_editor=bu.ProgressEditor(run_method='run', reset_method='reset', interrupt_var='interrupt', time_var='t', time_max='t_max'), ) n_phi_plus = tr.Property() def _get_n_phi_plus(self): return self.xdomain.mesh.n_phi_plus tree = ['geo', 'bcs', 'tmodel', 'xdomain'] geo = bu.Instance(WBShellGeometry4P, ()) tmodel = bu.Instance(MATS2DElastic, ()) # tmodel = bu.Instance(MATSShellElastic, ()) bcs = bu.Instance(BoundaryConditions) def _bcs_default(self): return BoundaryConditions(geo=self.geo, n_nodal_dofs=self.xdomain.fets.n_nodal_dofs, id=self.id) xdomain = tr.Property(tr.Instance(TriXDomainFE), depends_on="state_changed") '''Discretization object.''' @tr.cached_property def _get_xdomain(self): # prepare the mesh generator # mesh = WBShellFETriangularMesh(geo=self.geo, direct_mesh=False, subdivision=2) mesh = WBShellFETriangularMesh(geo=self.geo, direct_mesh=True) # construct the domain with the kinematic strain mapper and stress integrator return TriXDomainFE( mesh=mesh, integ_factor=self.h, ) # mesh = WBShellFETriangularMesh(geo=self.geo, direct_mesh=True) # mesh.fets = FETS2DMITC(a= self.h) # return TriXDomainMITC( # mesh=mesh # ) domains = tr.Property(depends_on="state_changed") @tr.cached_property def _get_domains(self): return [(self.xdomain, self.tmodel)] def reset(self): self.sim.reset() t = tr.Property() def _get_t(self): return self.sim.t def _set_t(self, value): self.sim.t = value t_max = tr.Property() def _get_t_max(self): return self.sim.t_max def _set_t_max(self, value): self.sim.t_max = value interrupt = tr.Property() def _get_interrupt(self): return self.sim.interrupt def _set_interrupt(self, value): self.sim.interrupt = value bc = tr.Property(depends_on="state_changed") # @tr.cached_property def _get_bc(self): bc_fixed, _, _ = self.bcs.bc_fixed bc_loaded, _, _ = self.bcs.bc_loaded return bc_fixed + bc_loaded def run(self): s = self.sim s.tloop.k_max = 10 s.tline.step = 1 s.tloop.verbose = False s.run() def get_max_vals(self): self.run() U_1 = self.hist.U_t[-1] U_max = np.max(np.fabs(U_1)) return U_max def export_abaqus(self): al = AbaqusLink(shell_analysis=self) al.model_name = 'test_name' al.build_inp() def setup_plot(self, pb): print('analysis: setup_plot') X_Id = self.xdomain.mesh.X_Id if len(self.hist.U_t) == 0: U_1 = np.zeros_like(X_Id) print('analysis: U_I', ) else: U_1 = self.hist.U_t[-1] U_1 = U_1.reshape(-1, self.xdomain.fets.n_nodal_dofs)[:, :3] X1_Id = X_Id + U_1 X1_Id = X1_Id.astype(np.float32) I_Ei = self.xdomain.I_Ei.astype(np.uint32) # Original state mesh wb_mesh_0 = k3d.mesh(self.xdomain.X_Id.astype(np.float32), I_Ei, color=0x999999, opacity=0.5, side='double') pb.plot_fig += wb_mesh_0 pb.objects['wb_mesh_0'] = wb_mesh_0 # Deformed state mesh wb_mesh_1 = k3d.mesh(X1_Id, I_Ei, color_map=k3d.colormaps.basic_color_maps.Jet, attribute=U_1[:, 2], color_range=[np.min(U_1), np.max(U_1)], side='double') pb.plot_fig += wb_mesh_1 pb.objects['wb_mesh_1'] = wb_mesh_1 if self.show_wireframe: k3d_mesh_wireframe = k3d.mesh(X1_Id, I_Ei, color=0x000000, wireframe=True) pb.plot_fig += k3d_mesh_wireframe pb.objects['mesh_wireframe'] = k3d_mesh_wireframe def update_plot(self, pb): X_Id = self.xdomain.mesh.X_Id print('analysis: update_plot') if len(self.hist.U_t) == 0: U_1 = np.zeros_like(X_Id) print('analysis: U_I', ) else: U_1 = self.hist.U_t[-1] U_1 = U_1.reshape(-1, self.xdomain.fets.n_nodal_dofs)[:, :3] X1_Id = X_Id + U_1 X1_Id = X1_Id.astype(np.float32) I_Ei = self.xdomain.I_Ei.astype(np.uint32) mesh = pb.objects['wb_mesh_1'] mesh.vertices = X1_Id mesh.indices = I_Ei mesh.attribute = U_1[:, 2] mesh.color_range = [np.min(U_1), np.max(U_1)] if self.show_wireframe: wireframe = pb.objects['mesh_wireframe'] wireframe.vertices = X1_Id wireframe.indices = I_Ei def get_Pw(self): import numpy as np F_to = self.hist.F_t U_to = self.hist.U_t _, _, loaded_dofs = self.bcs.bc_loaded F_loaded = np.sum(F_to[:, loaded_dofs], axis=-1) U_loaded = np.average(U_to[:, loaded_dofs], axis=-1) return U_loaded, F_loaded
class WBTessellation4P(bu.Model): name = 'WB Tessellation 4P' wb_cell = bu.Instance(WBCell4Param) def _wb_cell_default(self): wb_cell = WBCell4Param() self.update_wb_cell_params(wb_cell) return wb_cell tree = ['wb_cell'] plot_backend = 'k3d' n_phi_plus = bu.Int(5, GEO=True) n_x_plus = bu.Int(3, GEO=True) gamma = bu.Float(1.25, GEO=True) a = bu.Float(1000, GEO=True) a_high = bu.Float(2000) b = bu.Float(1000, GEO=True) b_high = bu.Float(2000) c = bu.Float(1000, GEO=True) c_high = bu.Float(2000) show_wireframe = bu.Bool(True, GEO=True) show_nodes = bu.Bool(False, GEO=True) show_node_labels = bu.Bool(False, GEO=True) WIREFRAME = 'k3d_mesh_wireframe' NODES = 'k3d_nodes' NODES_LABELS = 'k3d_nodes_labels' @tr.observe('+GEO', post_init=True) def update_wb_cell(self, event): self.update_wb_cell_params(self.wb_cell) def update_wb_cell_params(self, wb_cell): wb_cell.trait_set( gamma=self.gamma, a=self.a, a_high=self.a_high, b=self.b, b_high=self.b_high, c=self.c, c_high=self.c_high, ) ipw_view = bu.View( # bu.Item('wb_cell'), *WBCell4Param.ipw_view.content, bu.Item('n_phi_plus', latex=r'n_\phi'), bu.Item('n_x_plus', latex=r'n_x'), # bu.Item('show_wireframe'), # bu.Item('show_node_labels'), bu.Item('show_nodes'), ) def get_phi_range(self, delta_phi): return np.arange(-(self.n_phi_plus - 1), self.n_phi_plus) * delta_phi def get_X_phi_range(self, delta_phi, R_0): """Given an array of angles and radius return an array of coordinates """ phi_range = self.get_phi_range((delta_phi)) return np.array([ np.fabs(R_0) * np.sin(phi_range), np.fabs(R_0) * np.cos(phi_range) + R_0 ]).T def get_X_x_range(self, delta_x): return np.arange(-(self.n_x_plus - 1), self.n_x_plus) * delta_x cell_map = tr.Property def _get_cell_map(self): delta_x = self.wb_cell.delta_x delta_phi = self.wb_cell.delta_phi R_0 = self.wb_cell.R_0 X_x_range = self.get_X_x_range(delta_x) X_phi_range = self.get_X_phi_range(delta_phi, R_0) n_idx_x = len(X_x_range) n_idx_phi = len(X_phi_range) idx_x = np.arange(n_idx_x) idx_phi = np.arange(n_idx_phi) idx_x_ic = idx_x[(n_idx_x) % 2::2] idx_x_id = idx_x[(n_idx_x + 1) % 2::2] idx_phi_ic = idx_phi[(n_idx_phi) % 2::2] idx_phi_id = idx_phi[(n_idx_phi + 1) % 2::2] n_ic = len(idx_x_ic) * len(idx_phi_ic) n_id = len(idx_x_id) * len(idx_phi_id) n_cells = n_ic + n_id return n_cells, n_ic, n_id, idx_x_ic, idx_x_id, idx_phi_ic, idx_phi_id n_cells = tr.Property def _get_n_cells(self): n_cells, _, _, _, _, _, _ = self.cell_map return n_cells X_cells_Ia = tr.Property(depends_on='+GEO') '''Array with nodal coordinates of uncoupled cells I - node, a - dimension ''' @tr.cached_property def _get_X_cells_Ia(self): delta_x = self.wb_cell.delta_x delta_phi = self.wb_cell.delta_phi R_0 = self.wb_cell.R_0 X_Ia_wb_rot = np.copy(self.wb_cell.X_Ia) X_Ia_wb_rot[..., 2] -= R_0 X_cIa = np.array([X_Ia_wb_rot], dtype=np.float_) rotation_axes = np.array([[1, 0, 0]], dtype=np.float_) rotation_angles = self.get_phi_range(delta_phi) q = axis_angle_to_q(rotation_axes, rotation_angles) X_dIa = qv_mult(q, X_cIa) X_dIa[..., 2] += R_0 X_x_range = self.get_X_x_range(delta_x) X_phi_range = self.get_X_phi_range(delta_phi, R_0) n_idx_x = len(X_x_range) n_idx_phi = len(X_phi_range) idx_x = np.arange(n_idx_x) idx_phi = np.arange(n_idx_phi) idx_x_ic = idx_x[(n_idx_x) % 2::2] idx_x_id = idx_x[(n_idx_x + 1) % 2::2] idx_phi_ic = idx_phi[(n_idx_phi) % 2::2] idx_phi_id = idx_phi[(n_idx_phi + 1) % 2::2] X_E = X_x_range[idx_x_ic] X_F = X_x_range[idx_x_id] X_CIa = X_dIa[idx_phi_ic] X_DIa = X_dIa[idx_phi_id] expand = np.array([1, 0, 0]) X_E_a = np.einsum('i,j->ij', X_E, expand) X_ECIa = X_CIa[np.newaxis, :, :, :] + X_E_a[:, np.newaxis, np.newaxis, :] X_F_a = np.einsum('i,j->ij', X_F, expand) X_FDIa = X_DIa[np.newaxis, :, :, :] + X_F_a[:, np.newaxis, np.newaxis, :] X_Ia = np.vstack( [X_ECIa.flatten().reshape(-1, 3), X_FDIa.flatten().reshape(-1, 3)]) return X_Ia I_cells_Fi = tr.Property(depends_on='+GEO') '''Array with nodal coordinates I - node, a - dimension ''' @tr.cached_property def _get_I_cells_Fi(self): I_Fi_cell = self.wb_cell.I_Fi n_I_cell = self.wb_cell.n_I n_cells = self.n_cells i_range = np.arange(n_cells) * n_I_cell I_Fi = (I_Fi_cell[np.newaxis, :, :] + i_range[:, np.newaxis, np.newaxis]).reshape(-1, 3) return I_Fi X_Ia = tr.Property(depends_on='+GEO') '''Array with nodal coordinates I - node, a - dimension ''' @tr.cached_property def _get_X_Ia(self): idx_unique, idx_remap = self.unique_node_map return self.X_cells_Ia[idx_unique] I_Fi = tr.Property(depends_on='+GEO') '''Facet - node mapping ''' @tr.cached_property def _get_I_Fi(self): _, idx_remap = self.unique_node_map return idx_remap[self.I_cells_Fi] node_match_threshold = tr.Property(depends_on='+GEO') def _get_node_match_threshold(self): min_length = np.min([self.a, self.b, self.c]) return min_length * 1e-4 unique_node_map = tr.Property(depends_on='+GEO') '''Property containing the mapping between the crease pattern nodes with duplicate nodes and pattern with compressed nodes array. The criterion for removing a node is geometric, the threshold is specified in node_match_threshold. ''' def _get_unique_node_map(self): # reshape the coordinates in array of segments to the shape (n_N, n_D x_0 = self.X_cells_Ia # construct distance vectors between every pair of nodes x_x_0 = x_0[:, np.newaxis, :] - x_0[np.newaxis, :, :] # calculate the distance between every pair of nodes dist_0 = np.sqrt(np.einsum('...i,...i', x_x_0, x_x_0)) # identify those at the same location zero_dist = dist_0 < self.node_match_threshold # get their indices i_idx, j_idx = np.where(zero_dist) # take only the upper triangle indices upper_triangle = i_idx < j_idx idx_multi, idx_delete = i_idx[upper_triangle], j_idx[upper_triangle] # construct a boolean array with True at valid and False at deleted # indices idx_unique = np.ones((len(x_0), ), dtype='bool') idx_unique[idx_delete] = False # Boolean array of nodes to keep - includes both those that # are unique and redirection nodes to be substituted for duplicates idx_keep = np.ones((len(x_0), ), dtype=np.bool_) idx_keep[idx_delete] = False # prepare the enumeration map map ij_map = np.ones_like(dist_0, dtype=np.int_) + len(x_0) i_ = np.arange(len(x_0)) # indexes of nodes that are being kept idx_row = i_[idx_keep] # enumerate the kept nodes by putting their number onto the diagonal ij_map[idx_keep, idx_keep] = np.arange(len(idx_row)) # broadcast the substitution nodes into the interaction positions ij_map[i_idx, j_idx] = ij_map[i_idx, i_idx] # get the substitution node by picking up the minimum index within ac column idx_remap = np.min(ij_map, axis=0) return idx_unique, idx_remap I_CDij = tr.Property(depends_on='+GEO') @tr.cached_property def _get_I_CDij(self): n_cells, n_ic, n_id, _, x_cell_idx, _, y_cell_idx = self.cell_map x_idx, y_idx = x_cell_idx / 2, y_cell_idx / 2 n_x_, n_y_ = len(x_idx), len(y_idx) I_cell_offset = (n_ic + np.arange(n_x_ * n_y_).reshape( n_x_, n_y_)) * self.wb_cell.n_I I_CDij_map = (I_cell_offset.T[:, :, np.newaxis, np.newaxis] + self.wb_cell.I_boundary[np.newaxis, np.newaxis, :, :]) return I_CDij_map def setup_plot(self, pb): self.pb = pb X_Ia = self.X_Ia.astype(np.float32) I_Fi = self.I_Fi.astype(np.uint32) I_M = self.I_CDij[(0, -1), :, (0, -1), :] _, idx_remap = self.unique_node_map J_M = idx_remap[I_M] X_Ma = X_Ia[J_M.flatten()] k3d_mesh = k3d.mesh(X_Ia, I_Fi, color=0x999999, side='double') pb.objects['k3d_mesh'] = k3d_mesh pb.plot_fig += k3d_mesh if self.show_nodes: self._add_nodes_to_fig(pb, X_Ma) if self.wb_cell.show_node_labels: self._add_nodes_labels_to_fig(pb, X_Ia) if self.show_wireframe: self._add_wireframe_to_fig(pb, X_Ia, I_Fi) def update_plot(self, pb): X_Ia = self.X_Ia.astype(np.float32) I_Fi = self.I_Fi.astype(np.uint32) I_M = self.I_CDij[(0, -1), :, (0, -1), :] _, idx_remap = self.unique_node_map J_M = idx_remap[I_M] X_Ma = X_Ia[J_M.flatten()] mesh = pb.objects['k3d_mesh'] mesh.vertices = X_Ia mesh.indices = I_Fi if self.show_nodes: if self.NODES in pb.objects: pb.objects[self.NODES].positions = X_Ma else: self._add_nodes_to_fig(pb, X_Ma) else: if self.NODES in pb.objects: pb.clear_object(self.NODES) if self.show_wireframe: if self.WIREFRAME in pb.objects: wireframe = pb.objects[self.WIREFRAME] wireframe.vertices = X_Ia wireframe.indices = I_Fi else: self._add_wireframe_to_fig(pb, X_Ia, I_Fi) else: if self.WIREFRAME in pb.objects: pb.clear_object(self.WIREFRAME) if self.show_node_labels: if self.NODES_LABELS in pb.objects: pb.clear_object(self.NODES_LABELS) self._add_nodes_labels_to_fig(pb, X_Ia) else: if self.NODES_LABELS in pb.objects: pb.clear_object(self.NODES_LABELS) def _add_nodes_labels_to_fig(self, pb, X_Ia): text_list = [] for I, X_a in enumerate(X_Ia): k3d_text = k3d.text('%g' % I, tuple(X_a), label_box=False, size=0.8, color=0x00FF00) pb.plot_fig += k3d_text text_list.append(k3d_text) pb.objects[self.NODES_LABELS] = text_list def _add_wireframe_to_fig(self, pb, X_Ia, I_Fi): k3d_mesh_wireframe = k3d.mesh(X_Ia, I_Fi, color=0x000000, wireframe=True) pb.plot_fig += k3d_mesh_wireframe pb.objects[self.WIREFRAME] = k3d_mesh_wireframe def _add_nodes_to_fig(self, pb, X_Ma): k3d_points = k3d.points(X_Ma, point_size=300) pb.objects[self.NODES] = k3d_points pb.plot_fig += k3d_points def _show_or_hide_fig_object(self, pb, show_obj, obj_name, obj_add_fun, obj_update_fun): if show_obj: if obj_name in pb.objects: obj_update_fun() else: obj_add_fun() else: if obj_name in pb.objects: pb.clear_object(obj_name) def export_fold_file(self, path=None): # See https://github.com/edemaine/fold/blob/master/doc/spec.md for fold file specification # Viewer: https://edemaine.github.io/fold/examples/foldviewer.html output_data = { "file_spec": 1, "file_creator": "BMCS software suite", "file_author": "RWTH Aachen - Institute of Structural Concrete", "file_title": "Preliminary Base", "file_classes": ["singleModel"], "frame_title": "Preliminary Base Crease Pattern", "frame_classes": ["creasePattern"], "vertices_coords": self.X_Ia.tolist(), "faces_vertices": self.I_Fi.tolist(), # To be completed } if path is None: path = time.strftime("%Y%m%d-%H%M%S") + '-shell.fold' with open(path, 'w') as outfile: json.dump(output_data, outfile, sort_keys=True, indent=4)
class MATS3DScalarDamage(MATS3DEval): r''' Isotropic damage model. ''' node_name = 'Scalar damage' stiffness = tr.Enum("secant", "algorithmic", input=True) r'''Selector of the stiffness calculation. ''' strain_norm = EitherType(klasses=[ Rankine, ], MAT=True) r'''Selector of the strain norm defining the load surface. ''' # TODO - generalize # damage_fn = EitherType(klasses=[], MAT=True) # r'''Selector of the damage function. # ''' epsilon_0 = bu.Float(5e-2, label="eps_0", desc="Strain at the onset of damage", auto_set=False, MAT=True) r'''Damage function parameter - slope of the damage function. ''' epsilon_f = bu.Float(191e-1, label="eps_f", desc="Slope of the damage function", auto_set=False, MAT=True) r'''Damage function parameter - slope of the damage function. ''' ipw_view = bu.View(bu.Item('epsilon_0'), bu.Item('epsilon_f')) changed = tr.Event r'''This event can be used by the clients to trigger an action upon the completed reconfiguration of the material model ''' state_var_shapes = {'kappa': (), 'omega': ()} r''' Shapes of the state variables to be stored in the global array at the level of the domain. ''' def init(self, kappa, omega): r''' Initialize the state variables. ''' kappa[...] = 0 omega[...] = 0 def get_corr_pred(self, eps_Emab_n1, tn1, kappa, omega): r''' Corrector predictor computation. ''' self.update_state_variables(eps_Emab_n1, kappa, omega) phi_Em = (1.0 - omega) D_Emabcd = np.einsum('...,abcd->...abcd', phi_Em, self.D_abef) sigma_Emab = np.einsum('...abcd,...cd->...ab', D_Emabcd, eps_Emab_n1) # algorithmic switched off - because the derivative # of the strain norm is still not available if False: # algorithmic: D_Emabcd_red_I = self._get_D_abcd_alg_reduction( kappa[I], eps_Emab_n1[I]) D_Emabcd[I] -= D_Emabcd_red_I return sigma_Emab, D_Emabcd def update_state_variables(self, eps_Emab, kappa, omega): eps_eq_Em = self.strain_norm.get_eps_eq(eps_Emab, kappa) f_trial_Em = eps_eq_Em - self.epsilon_0 I = np.where(f_trial_Em > 0) kappa[I] = eps_eq_Em[I] omega[I] = self._get_omega(eps_eq_Em[I]) return I def _get_omega(self, kappa_Em): r''' Return new value of damage parameter @param kappa_Em: maximum strain norm achieved so far ''' omega_Em = np.zeros_like(kappa_Em) epsilon_0 = self.epsilon_0 epsilon_f = self.epsilon_f I = np.where(kappa_Em >= epsilon_0) omega_Em[I] = ( 1.0 - (epsilon_0 / kappa_Em[I] * np.exp(-1.0 * (kappa_Em[I] - epsilon_0) / (epsilon_f - epsilon_0)))) return omega_Em def _get_domega(self, kappa_Em): ''' Return new value of damage parameter derivative @param kappa_Em: maximum strain norm achieved so far ''' epsilon_0 = self.epsilon_0 epsilon_f = self.epsilon_f domega_Em = np.zeros_like(kappa_Em) I = np.where(kappa_Em >= epsilon_0) factor_1 = epsilon_0 / (kappa_Em[I] * kappa_Em[I]) factor_2 = epsilon_0 / (kappa_Em[I] * (epsilon_f - epsilon_0)) domega_Em[I] = ((factor_1 + factor_2) * np.exp(-(kappa_Em[I] - epsilon_0) / (epsilon_f - epsilon_0))) return domega_Em def _get_D_abcd_alg_reduction(self, kappa_Em, eps_Emab_n1): '''Calculate the stiffness term to be subtracted from the secant stiffness to get the algorithmic stiffness. ''' domega_Em = self._get_domega(kappa_Em) deps_eq_Emcd = self.strain_norm.get_deps_eq(eps_Emab_n1) return np.einsum('...,...cd,abcd,...cd->...abcd', domega_Em, deps_eq_Emcd, self.D_abef, eps_Emab_n1) traits_view = View(VSplit( Group(Item('E'), Item('nu'), Item('epsilon_0'), Item('epsilon_f'), Item('strain_norm')), Group( Item('stiffness', style='custom'), Spring(resizable=True), label='Configuration parameters', show_border=True, ), ), resizable=True) tree_view = View( Group(Item('E', full_size=True, resizable=True), Item('nu'), Item('epsilon_0'), Item('epsilon_f'), Item('strain_norm')), ) # Declare and fill-in the rte_dict - it is used by the clients to # assemble all the available time-steppers. # rte_dict = tr.Trait(tr.Dict) def _rte_dict_default(self): return {'omega': self.get_omega}