RANS CRM wing 2-D data set ========================== .. code-block:: python import numpy as np raw = np.array( [ [ 2.000000000000000000e00, 4.500000000000000111e-01, 1.536799999999999972e-02, 3.674239999999999728e-01, 5.592279999999999474e-01, -1.258039999999999992e-01, -1.248699999999999984e-02, ], [ 3.500000000000000000e00, 4.500000000000000111e-01, 1.985100000000000059e-02, 4.904470000000000218e-01, 7.574600000000000222e-01, -1.615260000000000029e-01, 8.987000000000000197e-03, ], [ 5.000000000000000000e00, 4.500000000000000111e-01, 2.571000000000000021e-02, 6.109189999999999898e-01, 9.497949999999999449e-01, -1.954619999999999969e-01, 4.090900000000000092e-02, ], [ 6.500000000000000000e00, 4.500000000000000111e-01, 3.304200000000000192e-02, 7.266120000000000356e-01, 1.131138999999999895e00, -2.255890000000000117e-01, 8.185399999999999621e-02, ], [ 8.000000000000000000e00, 4.500000000000000111e-01, 4.318999999999999923e-02, 8.247250000000000414e-01, 1.271487000000000034e00, -2.397040000000000004e-01, 1.217659999999999992e-01, ], [ 0.000000000000000000e00, 5.799999999999999600e-01, 1.136200000000000057e-02, 2.048760000000000026e-01, 2.950280000000000125e-01, -7.882100000000000217e-02, -2.280099999999999835e-02, ], [ 1.500000000000000000e00, 5.799999999999999600e-01, 1.426000000000000011e-02, 3.375619999999999732e-01, 5.114130000000000065e-01, -1.189420000000000061e-01, -1.588200000000000028e-02, ], [ 3.000000000000000000e00, 5.799999999999999600e-01, 1.866400000000000003e-02, 4.687450000000000228e-01, 7.240400000000000169e-01, -1.577669999999999906e-01, 3.099999999999999891e-03, ], [ 4.500000000000000000e00, 5.799999999999999600e-01, 2.461999999999999952e-02, 5.976639999999999731e-01, 9.311709999999999710e-01, -1.944160000000000055e-01, 3.357500000000000068e-02, ], [ 6.000000000000000000e00, 5.799999999999999600e-01, 3.280700000000000283e-02, 7.142249999999999988e-01, 1.111707999999999918e00, -2.205870000000000053e-01, 7.151699999999999724e-02, ], [ 0.000000000000000000e00, 6.800000000000000488e-01, 1.138800000000000055e-02, 2.099310000000000065e-01, 3.032230000000000203e-01, -8.187899999999999345e-02, -2.172699999999999979e-02, ], [ 1.500000000000000000e00, 6.800000000000000488e-01, 1.458699999999999927e-02, 3.518569999999999753e-01, 5.356630000000000003e-01, -1.257649999999999879e-01, -1.444800000000000077e-02, ], [ 3.000000000000000000e00, 6.800000000000000488e-01, 1.952800000000000022e-02, 4.924879999999999813e-01, 7.644769999999999621e-01, -1.678040000000000087e-01, 6.023999999999999841e-03, ], [ 4.500000000000000000e00, 6.800000000000000488e-01, 2.666699999999999973e-02, 6.270339999999999803e-01, 9.801630000000000065e-01, -2.035240000000000105e-01, 3.810000000000000192e-02, ], [ 6.000000000000000000e00, 6.800000000000000488e-01, 3.891800000000000120e-02, 7.172730000000000494e-01, 1.097855999999999943e00, -2.014620000000000022e-01, 6.640000000000000069e-02, ], [ 0.000000000000000000e00, 7.500000000000000000e-01, 1.150699999999999987e-02, 2.149069999999999869e-01, 3.115740000000000176e-01, -8.498999999999999611e-02, -2.057700000000000154e-02, ], [ 1.250000000000000000e00, 7.500000000000000000e-01, 1.432600000000000019e-02, 3.415969999999999840e-01, 5.199390000000000400e-01, -1.251009999999999900e-01, -1.515400000000000080e-02, ], [ 2.500000000000000000e00, 7.500000000000000000e-01, 1.856000000000000011e-02, 4.677589999999999804e-01, 7.262499999999999512e-01, -1.635169999999999957e-01, 3.989999999999999949e-04, ], [ 3.750000000000000000e00, 7.500000000000000000e-01, 2.472399999999999945e-02, 5.911459999999999493e-01, 9.254930000000000101e-01, -1.966150000000000120e-01, 2.524900000000000061e-02, ], [ 5.000000000000000000e00, 7.500000000000000000e-01, 3.506800000000000195e-02, 7.047809999999999908e-01, 1.097736000000000045e00, -2.143069999999999975e-01, 5.321300000000000335e-02, ], [ 0.000000000000000000e00, 8.000000000000000444e-01, 1.168499999999999921e-02, 2.196390000000000009e-01, 3.197160000000000002e-01, -8.798200000000000465e-02, -1.926999999999999894e-02, ], [ 1.250000000000000000e00, 8.000000000000000444e-01, 1.481599999999999931e-02, 3.553939999999999877e-01, 5.435950000000000504e-01, -1.317419999999999980e-01, -1.345599999999999921e-02, ], [ 2.500000000000000000e00, 8.000000000000000444e-01, 1.968999999999999917e-02, 4.918299999999999894e-01, 7.669930000000000359e-01, -1.728079999999999894e-01, 3.756999999999999923e-03, ], [ 3.750000000000000000e00, 8.000000000000000444e-01, 2.785599999999999882e-02, 6.324319999999999942e-01, 9.919249999999999456e-01, -2.077100000000000057e-01, 3.159800000000000109e-02, ], [ 5.000000000000000000e00, 8.000000000000000444e-01, 4.394300000000000289e-02, 7.650689999999999991e-01, 1.188355999999999968e00, -2.332680000000000031e-01, 5.645000000000000018e-02, ], [ 0.000000000000000000e00, 8.299999999999999600e-01, 1.186100000000000002e-02, 2.232899999999999885e-01, 3.261100000000000110e-01, -9.028400000000000314e-02, -1.806500000000000120e-02, ], [ 1.000000000000000000e00, 8.299999999999999600e-01, 1.444900000000000004e-02, 3.383419999999999761e-01, 5.161710000000000464e-01, -1.279530000000000112e-01, -1.402400000000000001e-02, ], [ 2.000000000000000000e00, 8.299999999999999600e-01, 1.836799999999999891e-02, 4.554270000000000262e-01, 7.082190000000000429e-01, -1.642339999999999911e-01, -1.793000000000000106e-03, ], [ 3.000000000000000000e00, 8.299999999999999600e-01, 2.466899999999999996e-02, 5.798410000000000508e-01, 9.088819999999999677e-01, -2.004589999999999983e-01, 1.892900000000000138e-02, ], [ 4.000000000000000000e00, 8.299999999999999600e-01, 3.700400000000000217e-02, 7.012720000000000065e-01, 1.097366000000000064e00, -2.362420000000000075e-01, 3.750699999999999867e-02, ], [ 0.000000000000000000e00, 8.599999999999999867e-01, 1.224300000000000041e-02, 2.278100000000000125e-01, 3.342720000000000136e-01, -9.307600000000000595e-02, -1.608400000000000107e-02, ], [ 1.000000000000000000e00, 8.599999999999999867e-01, 1.540700000000000056e-02, 3.551839999999999997e-01, 5.433130000000000459e-01, -1.364730000000000110e-01, -1.162200000000000039e-02, ], [ 2.000000000000000000e00, 8.599999999999999867e-01, 2.122699999999999934e-02, 4.854620000000000046e-01, 7.552919999999999634e-01, -1.817850000000000021e-01, 1.070999999999999903e-03, ], [ 3.000000000000000000e00, 8.599999999999999867e-01, 3.178899999999999781e-02, 6.081849999999999756e-01, 9.510380000000000500e-01, -2.252020000000000133e-01, 1.540799999999999982e-02, ], [ 4.000000000000000000e00, 8.599999999999999867e-01, 4.744199999999999806e-02, 6.846989999999999466e-01, 1.042564000000000046e00, -2.333600000000000119e-01, 2.035400000000000056e-02, ], ] ) def get_rans_crm_wing(): # data structure: # alpha, mach, cd, cl, cmx, cmy, cmz deg2rad = np.pi / 180.0 xt = np.array(raw[:, 0:2]) yt = np.array(raw[:, 2:4]) xlimits = np.array([[-3.0, 10.0], [0.4, 0.90]]) xt[:, 0] *= deg2rad xlimits[0, :] *= deg2rad return xt, yt, xlimits def plot_rans_crm_wing(xt, yt, limits, interp): import matplotlib import numpy as np matplotlib.use("Agg") import matplotlib.pyplot as plt rad2deg = 180.0 / np.pi num = 500 num_a = 50 num_M = 50 x = np.zeros((num, 2)) colors = ["b", "g", "r", "c", "m", "k", "y"] nrow = 3 ncol = 2 plt.close() fig, axs = plt.subplots(nrow, ncol, figsize=(15, 15)) # ----------------------------------------------------------------------------- mach_numbers = [0.45, 0.68, 0.80, 0.86] legend_entries = [] alpha_sweep = np.linspace(0.0, 8.0, num) for ind, mach in enumerate(mach_numbers): x[:, 0] = alpha_sweep / rad2deg x[:, 1] = mach CD = interp.predict_values(x)[:, 0] CL = interp.predict_values(x)[:, 1] mask = np.abs(xt[:, 1] - mach) < 1e-10 axs[0, 0].plot(xt[mask, 0] * rad2deg, yt[mask, 0], "o" + colors[ind]) axs[0, 0].plot(alpha_sweep, CD, colors[ind]) mask = np.abs(xt[:, 1] - mach) < 1e-10 axs[0, 1].plot(xt[mask, 0] * rad2deg, yt[mask, 1], "o" + colors[ind]) axs[0, 1].plot(alpha_sweep, CL, colors[ind]) legend_entries.append("M={}".format(mach)) legend_entries.append("exact") axs[0, 0].set(xlabel="alpha (deg)", ylabel="CD") axs[0, 0].legend(legend_entries) axs[0, 1].set(xlabel="alpha (deg)", ylabel="CL") axs[0, 1].legend(legend_entries) # ----------------------------------------------------------------------------- alphas = [2.0, 4.0, 6.0] legend_entries = [] mach_sweep = np.linspace(0.45, 0.86, num) for ind, alpha in enumerate(alphas): x[:, 0] = alpha / rad2deg x[:, 1] = mach_sweep CD = interp.predict_values(x)[:, 0] CL = interp.predict_values(x)[:, 1] axs[1, 0].plot(mach_sweep, CD, colors[ind]) axs[1, 1].plot(mach_sweep, CL, colors[ind]) legend_entries.append("alpha={}".format(alpha)) axs[1, 0].set(xlabel="Mach number", ylabel="CD") axs[1, 0].legend(legend_entries) axs[1, 1].set(xlabel="Mach number", ylabel="CL") axs[1, 1].legend(legend_entries) # ----------------------------------------------------------------------------- x = np.zeros((num_a, num_M, 2)) x[:, :, 0] = np.outer(np.linspace(0.0, 8.0, num_a), np.ones(num_M)) / rad2deg x[:, :, 1] = np.outer(np.ones(num_a), np.linspace(0.45, 0.86, num_M)) CD = interp.predict_values(x.reshape((num_a * num_M, 2)))[:, 0].reshape( (num_a, num_M) ) CL = interp.predict_values(x.reshape((num_a * num_M, 2)))[:, 1].reshape( (num_a, num_M) ) axs[2, 0].plot(xt[:, 1], xt[:, 0] * rad2deg, "o") axs[2, 0].contour(x[:, :, 1], x[:, :, 0] * rad2deg, CD, 20) pcm1 = axs[2, 0].pcolormesh( x[:, :, 1], x[:, :, 0] * rad2deg, CD, cmap=plt.get_cmap("rainbow"), shading="auto", ) fig.colorbar(pcm1, ax=axs[2, 0]) axs[2, 0].set(xlabel="Mach number", ylabel="alpha (deg)") axs[2, 0].set_title("CD") axs[2, 1].plot(xt[:, 1], xt[:, 0] * rad2deg, "o") axs[2, 1].contour(x[:, :, 1], x[:, :, 0] * rad2deg, CL, 20) pcm2 = axs[2, 1].pcolormesh( x[:, :, 1], x[:, :, 0] * rad2deg, CL, cmap=plt.get_cmap("rainbow"), shading="auto", ) fig.colorbar(pcm2, ax=axs[2, 1]) axs[2, 1].set(xlabel="Mach number", ylabel="alpha (deg)") axs[2, 1].set_title("CL") plt.show() RMTB ---- .. code-block:: python from smt.examples.rans_crm_wing.rans_crm_wing import ( get_rans_crm_wing, plot_rans_crm_wing, ) from smt.surrogate_models import RMTB xt, yt, xlimits = get_rans_crm_wing() interp = RMTB( num_ctrl_pts=20, xlimits=xlimits, nonlinear_maxiter=100, energy_weight=1e-12 ) interp.set_training_values(xt, yt) interp.train() plot_rans_crm_wing(xt, yt, xlimits, interp) :: ___________________________________________________________________________ RMTB ___________________________________________________________________________ Problem size # training points. : 35 ___________________________________________________________________________ Training Training ... Pre-computing matrices ... Computing dof2coeff ... Computing dof2coeff - done. Time (sec): 0.0005047 Initializing Hessian ... Initializing Hessian - done. Time (sec): 0.0000238 Computing energy terms ... Computing energy terms - done. Time (sec): 0.0036764 Computing approximation terms ... Computing approximation terms - done. Time (sec): 0.0000000 Pre-computing matrices - done. Time (sec): 0.0042050 Solving for degrees of freedom ... Solving initial startup problem (n=400) ... Solving for output 0 ... Iteration (num., iy, grad. norm, func.) : 0 0 9.429150220e-02 1.114942861e-02 Iteration (num., iy, grad. norm, func.) : 0 0 6.229432982e-09 1.793038469e-10 Solving for output 0 - done. Time (sec): 0.0067441 Solving for output 1 ... Iteration (num., iy, grad. norm, func.) : 0 1 1.955493282e+00 4.799845498e+00 Iteration (num., iy, grad. norm, func.) : 0 1 2.880003477e-07 4.567660731e-08 Solving for output 1 - done. Time (sec): 0.0067930 Solving initial startup problem (n=400) - done. Time (sec): 0.0135372 Solving nonlinear problem (n=400) ... Solving for output 0 ... Iteration (num., iy, grad. norm, func.) : 0 0 6.652713506e-09 1.793037943e-10 Iteration (num., iy, grad. norm, func.) : 0 0 5.849717047e-09 1.703954640e-10 Iteration (num., iy, grad. norm, func.) : 1 0 3.028427146e-08 1.034023971e-10 Iteration (num., iy, grad. norm, func.) : 2 0 1.125871064e-08 2.505156303e-11 Iteration (num., iy, grad. norm, func.) : 3 0 3.657654439e-09 1.062711951e-11 Iteration (num., iy, grad. norm, func.) : 4 0 2.384395507e-09 9.420573075e-12 Iteration (num., iy, grad. norm, func.) : 5 0 6.795760320e-10 7.398469916e-12 Iteration (num., iy, grad. norm, func.) : 6 0 1.893580345e-10 6.530836833e-12 Iteration (num., iy, grad. norm, func.) : 7 0 3.914693345e-11 6.262121148e-12 Iteration (num., iy, grad. norm, func.) : 8 0 2.607684883e-11 6.261389686e-12 Iteration (num., iy, grad. norm, func.) : 9 0 1.596473148e-11 6.260468564e-12 Iteration (num., iy, grad. norm, func.) : 10 0 8.775713015e-12 6.260124667e-12 Iteration (num., iy, grad. norm, func.) : 11 0 3.358656828e-12 6.256629410e-12 Iteration (num., iy, grad. norm, func.) : 12 0 5.210392100e-13 6.255688670e-12 Solving for output 0 - done. Time (sec): 0.0867264 Solving for output 1 ... Iteration (num., iy, grad. norm, func.) : 0 1 9.729377248e-08 4.567642993e-08 Iteration (num., iy, grad. norm, func.) : 0 1 9.338363991e-08 4.538219456e-08 Iteration (num., iy, grad. norm, func.) : 1 1 2.891391770e-06 3.242337200e-08 Iteration (num., iy, grad. norm, func.) : 2 1 8.605107278e-07 4.652778039e-09 Iteration (num., iy, grad. norm, func.) : 3 1 5.067375622e-07 2.745465684e-09 Iteration (num., iy, grad. norm, func.) : 4 1 4.513840269e-07 2.455226693e-09 Iteration (num., iy, grad. norm, func.) : 5 1 1.339167789e-07 6.881109113e-10 Iteration (num., iy, grad. norm, func.) : 6 1 6.591489027e-08 5.500475184e-10 Iteration (num., iy, grad. norm, func.) : 7 1 3.839790426e-08 4.862409238e-10 Iteration (num., iy, grad. norm, func.) : 8 1 1.327787768e-08 4.053646260e-10 Iteration (num., iy, grad. norm, func.) : 9 1 4.178809432e-09 3.129533457e-10 Iteration (num., iy, grad. norm, func.) : 10 1 1.162280444e-09 2.724104537e-10 Iteration (num., iy, grad. norm, func.) : 11 1 9.071092861e-10 2.722854123e-10 Iteration (num., iy, grad. norm, func.) : 12 1 5.267790369e-10 2.722199641e-10 Iteration (num., iy, grad. norm, func.) : 13 1 3.128933500e-10 2.721466104e-10 Iteration (num., iy, grad. norm, func.) : 14 1 1.223449033e-10 2.716612344e-10 Iteration (num., iy, grad. norm, func.) : 15 1 3.662769998e-11 2.714261096e-10 Iteration (num., iy, grad. norm, func.) : 16 1 1.874681541e-11 2.713872039e-10 Iteration (num., iy, grad. norm, func.) : 17 1 4.264650696e-11 2.713834397e-10 Iteration (num., iy, grad. norm, func.) : 18 1 9.492032166e-12 2.713607454e-10 Iteration (num., iy, grad. norm, func.) : 19 1 1.706167514e-11 2.713578816e-10 Iteration (num., iy, grad. norm, func.) : 20 1 7.138581938e-12 2.713509077e-10 Iteration (num., iy, grad. norm, func.) : 21 1 8.869098799e-12 2.713470556e-10 Iteration (num., iy, grad. norm, func.) : 22 1 7.413215243e-12 2.713459004e-10 Iteration (num., iy, grad. norm, func.) : 23 1 2.698341151e-12 2.713454840e-10 Iteration (num., iy, grad. norm, func.) : 24 1 2.260359199e-12 2.713454159e-10 Iteration (num., iy, grad. norm, func.) : 25 1 2.987484747e-12 2.713452000e-10 Iteration (num., iy, grad. norm, func.) : 26 1 9.299976611e-13 2.713450184e-10 Solving for output 1 - done. Time (sec): 0.1703207 Solving nonlinear problem (n=400) - done. Time (sec): 0.2570472 Solving for degrees of freedom - done. Time (sec): 0.2705843 Training - done. Time (sec): 0.2747893 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0050061 Prediction time/pt. (sec) : 0.0000100 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 2500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 2500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 .. figure:: rans_crm_wing.png :scale: 60 % :align: center RMTC ---- .. code-block:: python from smt.examples.rans_crm_wing.rans_crm_wing import ( get_rans_crm_wing, plot_rans_crm_wing, ) from smt.surrogate_models import RMTC xt, yt, xlimits = get_rans_crm_wing() interp = RMTC( num_elements=20, xlimits=xlimits, nonlinear_maxiter=100, energy_weight=1e-10 ) interp.set_training_values(xt, yt) interp.train() plot_rans_crm_wing(xt, yt, xlimits, interp) :: ___________________________________________________________________________ RMTC ___________________________________________________________________________ Problem size # training points. : 35 ___________________________________________________________________________ Training Training ... Pre-computing matrices ... Computing dof2coeff ... Computing dof2coeff - done. Time (sec): 0.0000000 Initializing Hessian ... Initializing Hessian - done. Time (sec): 0.0000000 Computing energy terms ... Computing energy terms - done. Time (sec): 0.0100546 Computing approximation terms ... Computing approximation terms - done. Time (sec): 0.0000000 Pre-computing matrices - done. Time (sec): 0.0100546 Solving for degrees of freedom ... Solving initial startup problem (n=1764) ... Solving for output 0 ... Iteration (num., iy, grad. norm, func.) : 0 0 1.279175539e-01 1.114942861e-02 Iteration (num., iy, grad. norm, func.) : 0 0 1.385647944e-05 2.113817982e-08 Solving for output 0 - done. Time (sec): 0.0195696 Solving for output 1 ... Iteration (num., iy, grad. norm, func.) : 0 1 2.653045755e+00 4.799845498e+00 Iteration (num., iy, grad. norm, func.) : 0 1 1.835453629e-04 6.133814507e-06 Solving for output 1 - done. Time (sec): 0.0100391 Solving initial startup problem (n=1764) - done. Time (sec): 0.0296087 Solving nonlinear problem (n=1764) ... Solving for output 0 ... Iteration (num., iy, grad. norm, func.) : 0 0 8.170166619e-07 2.098025715e-08 Iteration (num., iy, grad. norm, func.) : 0 0 8.847293057e-07 1.664225412e-08 Iteration (num., iy, grad. norm, func.) : 1 0 3.427919843e-07 3.193069608e-09 Iteration (num., iy, grad. norm, func.) : 2 0 1.137630487e-07 1.029220558e-09 Iteration (num., iy, grad. norm, func.) : 3 0 6.109929034e-08 5.279191682e-10 Iteration (num., iy, grad. norm, func.) : 4 0 3.605405965e-08 4.130753776e-10 Iteration (num., iy, grad. norm, func.) : 5 0 2.318933911e-08 3.786222757e-10 Iteration (num., iy, grad. norm, func.) : 6 0 2.055706046e-08 3.748153689e-10 Iteration (num., iy, grad. norm, func.) : 7 0 2.080398568e-08 3.737271940e-10 Iteration (num., iy, grad. norm, func.) : 8 0 1.400752576e-08 3.614333601e-10 Iteration (num., iy, grad. norm, func.) : 9 0 1.535535986e-08 3.414576338e-10 Iteration (num., iy, grad. norm, func.) : 10 0 6.286307298e-09 3.054221098e-10 Iteration (num., iy, grad. norm, func.) : 11 0 2.173842728e-09 2.892041321e-10 Iteration (num., iy, grad. norm, func.) : 12 0 1.644968580e-09 2.876378425e-10 Iteration (num., iy, grad. norm, func.) : 13 0 2.166797487e-09 2.875669821e-10 Iteration (num., iy, grad. norm, func.) : 14 0 1.418858149e-09 2.873856956e-10 Iteration (num., iy, grad. norm, func.) : 15 0 3.264633984e-09 2.872133489e-10 Iteration (num., iy, grad. norm, func.) : 16 0 4.864508117e-10 2.867614633e-10 Iteration (num., iy, grad. norm, func.) : 17 0 2.452490534e-10 2.867574376e-10 Iteration (num., iy, grad. norm, func.) : 18 0 1.146830253e-09 2.867401107e-10 Iteration (num., iy, grad. norm, func.) : 19 0 4.901797822e-10 2.866842810e-10 Iteration (num., iy, grad. norm, func.) : 20 0 1.120508723e-09 2.866415142e-10 Iteration (num., iy, grad. norm, func.) : 21 0 2.628463901e-10 2.865557933e-10 Iteration (num., iy, grad. norm, func.) : 22 0 1.994580750e-10 2.865477824e-10 Iteration (num., iy, grad. norm, func.) : 23 0 4.252361563e-10 2.865432258e-10 Iteration (num., iy, grad. norm, func.) : 24 0 3.400922254e-10 2.865366354e-10 Iteration (num., iy, grad. norm, func.) : 25 0 5.721385122e-10 2.865330235e-10 Iteration (num., iy, grad. norm, func.) : 26 0 2.467899171e-10 2.865237594e-10 Iteration (num., iy, grad. norm, func.) : 27 0 3.784371037e-10 2.865148717e-10 Iteration (num., iy, grad. norm, func.) : 28 0 1.432543980e-10 2.865051477e-10 Iteration (num., iy, grad. norm, func.) : 29 0 1.922781607e-10 2.865035878e-10 Iteration (num., iy, grad. norm, func.) : 30 0 1.470289879e-10 2.865030124e-10 Iteration (num., iy, grad. norm, func.) : 31 0 2.154831922e-10 2.865002293e-10 Iteration (num., iy, grad. norm, func.) : 32 0 8.372363702e-11 2.864957953e-10 Iteration (num., iy, grad. norm, func.) : 33 0 8.643575837e-11 2.864956924e-10 Iteration (num., iy, grad. norm, func.) : 34 0 7.524569579e-11 2.864952499e-10 Iteration (num., iy, grad. norm, func.) : 35 0 1.191849438e-10 2.864946915e-10 Iteration (num., iy, grad. norm, func.) : 36 0 4.733988673e-11 2.864937458e-10 Iteration (num., iy, grad. norm, func.) : 37 0 6.836674773e-11 2.864937147e-10 Iteration (num., iy, grad. norm, func.) : 38 0 4.576618421e-11 2.864935963e-10 Iteration (num., iy, grad. norm, func.) : 39 0 9.062374748e-11 2.864932363e-10 Iteration (num., iy, grad. norm, func.) : 40 0 1.865606754e-11 2.864928217e-10 Iteration (num., iy, grad. norm, func.) : 41 0 1.208977127e-11 2.864927560e-10 Iteration (num., iy, grad. norm, func.) : 42 0 3.060201463e-11 2.864927331e-10 Iteration (num., iy, grad. norm, func.) : 43 0 3.318556983e-11 2.864927006e-10 Iteration (num., iy, grad. norm, func.) : 44 0 3.527265730e-11 2.864926733e-10 Iteration (num., iy, grad. norm, func.) : 45 0 2.543278041e-11 2.864925918e-10 Iteration (num., iy, grad. norm, func.) : 46 0 1.064237463e-11 2.864925023e-10 Iteration (num., iy, grad. norm, func.) : 47 0 1.365382439e-11 2.864924986e-10 Iteration (num., iy, grad. norm, func.) : 48 0 1.253587017e-11 2.864924893e-10 Iteration (num., iy, grad. norm, func.) : 49 0 1.272518442e-11 2.864924753e-10 Iteration (num., iy, grad. norm, func.) : 50 0 1.320097458e-11 2.864924458e-10 Iteration (num., iy, grad. norm, func.) : 51 0 3.345236096e-12 2.864924280e-10 Iteration (num., iy, grad. norm, func.) : 52 0 2.951427197e-12 2.864924280e-10 Iteration (num., iy, grad. norm, func.) : 53 0 3.888555007e-12 2.864924264e-10 Iteration (num., iy, grad. norm, func.) : 54 0 4.615616233e-12 2.864924235e-10 Iteration (num., iy, grad. norm, func.) : 55 0 5.283669347e-12 2.864924221e-10 Iteration (num., iy, grad. norm, func.) : 56 0 3.999402052e-12 2.864924212e-10 Iteration (num., iy, grad. norm, func.) : 57 0 3.932024726e-12 2.864924210e-10 Iteration (num., iy, grad. norm, func.) : 58 0 2.974921496e-12 2.864924196e-10 Iteration (num., iy, grad. norm, func.) : 59 0 3.312202394e-12 2.864924186e-10 Iteration (num., iy, grad. norm, func.) : 60 0 2.042864289e-12 2.864924175e-10 Iteration (num., iy, grad. norm, func.) : 61 0 1.978885857e-12 2.864924168e-10 Iteration (num., iy, grad. norm, func.) : 62 0 1.498977956e-12 2.864924164e-10 Iteration (num., iy, grad. norm, func.) : 63 0 1.203181940e-12 2.864924163e-10 Iteration (num., iy, grad. norm, func.) : 64 0 1.595998918e-12 2.864924161e-10 Iteration (num., iy, grad. norm, func.) : 65 0 1.491373606e-12 2.864924159e-10 Iteration (num., iy, grad. norm, func.) : 66 0 1.171107018e-12 2.864924158e-10 Iteration (num., iy, grad. norm, func.) : 67 0 1.171106858e-12 2.864924157e-10 Iteration (num., iy, grad. norm, func.) : 68 0 8.770194220e-13 2.864924156e-10 Solving for output 0 - done. Time (sec): 1.1213665 Solving for output 1 ... Iteration (num., iy, grad. norm, func.) : 0 1 1.367869966e-05 6.109564377e-06 Iteration (num., iy, grad. norm, func.) : 0 1 1.319928369e-05 5.876221159e-06 Iteration (num., iy, grad. norm, func.) : 1 1 1.504368857e-05 7.950689278e-07 Iteration (num., iy, grad. norm, func.) : 2 1 1.364089388e-05 2.901411460e-07 Iteration (num., iy, grad. norm, func.) : 3 1 4.197544968e-06 1.079803725e-07 Iteration (num., iy, grad. norm, func.) : 4 1 3.402593983e-06 7.128625666e-08 Iteration (num., iy, grad. norm, func.) : 5 1 3.308481787e-06 5.181131928e-08 Iteration (num., iy, grad. norm, func.) : 6 1 8.581211358e-07 2.708426431e-08 Iteration (num., iy, grad. norm, func.) : 7 1 6.776957242e-07 2.663613311e-08 Iteration (num., iy, grad. norm, func.) : 8 1 3.877387000e-07 2.636493901e-08 Iteration (num., iy, grad. norm, func.) : 9 1 2.641371191e-07 2.258562814e-08 Iteration (num., iy, grad. norm, func.) : 10 1 9.582805345e-08 1.752736695e-08 Iteration (num., iy, grad. norm, func.) : 11 1 5.308914871e-08 1.518155562e-08 Iteration (num., iy, grad. norm, func.) : 12 1 3.229772740e-08 1.469802463e-08 Iteration (num., iy, grad. norm, func.) : 13 1 3.099202869e-08 1.469636052e-08 Iteration (num., iy, grad. norm, func.) : 14 1 3.081838250e-08 1.469633744e-08 Iteration (num., iy, grad. norm, func.) : 15 1 3.261710449e-08 1.465395392e-08 Iteration (num., iy, grad. norm, func.) : 16 1 1.715800143e-08 1.460280697e-08 Iteration (num., iy, grad. norm, func.) : 17 1 2.311511246e-08 1.456621138e-08 Iteration (num., iy, grad. norm, func.) : 18 1 7.959073619e-09 1.450261585e-08 Iteration (num., iy, grad. norm, func.) : 19 1 5.764606503e-09 1.447723163e-08 Iteration (num., iy, grad. norm, func.) : 20 1 4.407517861e-09 1.447458062e-08 Iteration (num., iy, grad. norm, func.) : 21 1 4.867993231e-09 1.447400215e-08 Iteration (num., iy, grad. norm, func.) : 22 1 4.870975676e-09 1.447261995e-08 Iteration (num., iy, grad. norm, func.) : 23 1 7.137066415e-09 1.447070115e-08 Iteration (num., iy, grad. norm, func.) : 24 1 2.865429197e-09 1.446781266e-08 Iteration (num., iy, grad. norm, func.) : 25 1 3.463483123e-09 1.446681543e-08 Iteration (num., iy, grad. norm, func.) : 26 1 2.277376624e-09 1.446607008e-08 Iteration (num., iy, grad. norm, func.) : 27 1 3.123003298e-09 1.446538599e-08 Iteration (num., iy, grad. norm, func.) : 28 1 1.333461211e-09 1.446468907e-08 Iteration (num., iy, grad. norm, func.) : 29 1 1.024515958e-09 1.446456316e-08 Iteration (num., iy, grad. norm, func.) : 30 1 1.350508181e-09 1.446436301e-08 Iteration (num., iy, grad. norm, func.) : 31 1 1.231423744e-09 1.446411871e-08 Iteration (num., iy, grad. norm, func.) : 32 1 1.551707725e-09 1.446376867e-08 Iteration (num., iy, grad. norm, func.) : 33 1 4.110955742e-10 1.446366277e-08 Iteration (num., iy, grad. norm, func.) : 34 1 4.110955742e-10 1.446366277e-08 Iteration (num., iy, grad. norm, func.) : 35 1 3.851751924e-10 1.446366099e-08 Iteration (num., iy, grad. norm, func.) : 36 1 3.751853101e-10 1.446362105e-08 Iteration (num., iy, grad. norm, func.) : 37 1 1.975704793e-10 1.446358535e-08 Iteration (num., iy, grad. norm, func.) : 38 1 4.186286142e-10 1.446357999e-08 Iteration (num., iy, grad. norm, func.) : 39 1 2.452723922e-10 1.446357647e-08 Iteration (num., iy, grad. norm, func.) : 40 1 3.288169801e-10 1.446357363e-08 Iteration (num., iy, grad. norm, func.) : 41 1 1.550050582e-10 1.446356987e-08 Iteration (num., iy, grad. norm, func.) : 42 1 1.370308197e-10 1.446356974e-08 Iteration (num., iy, grad. norm, func.) : 43 1 1.589237931e-10 1.446356787e-08 Iteration (num., iy, grad. norm, func.) : 44 1 1.517098286e-10 1.446356487e-08 Iteration (num., iy, grad. norm, func.) : 45 1 7.299488554e-11 1.446356219e-08 Iteration (num., iy, grad. norm, func.) : 46 1 8.790485467e-11 1.446356143e-08 Iteration (num., iy, grad. norm, func.) : 47 1 7.089934327e-11 1.446356137e-08 Iteration (num., iy, grad. norm, func.) : 48 1 5.158743812e-11 1.446356109e-08 Iteration (num., iy, grad. norm, func.) : 49 1 6.533390375e-11 1.446356048e-08 Iteration (num., iy, grad. norm, func.) : 50 1 3.857710486e-11 1.446355972e-08 Iteration (num., iy, grad. norm, func.) : 51 1 2.998455911e-11 1.446355942e-08 Iteration (num., iy, grad. norm, func.) : 52 1 2.598028591e-11 1.446355942e-08 Iteration (num., iy, grad. norm, func.) : 53 1 2.409026670e-11 1.446355940e-08 Iteration (num., iy, grad. norm, func.) : 54 1 2.703403194e-11 1.446355936e-08 Iteration (num., iy, grad. norm, func.) : 55 1 2.266882361e-11 1.446355930e-08 Iteration (num., iy, grad. norm, func.) : 56 1 2.000016567e-11 1.446355927e-08 Iteration (num., iy, grad. norm, func.) : 57 1 1.615580154e-11 1.446355924e-08 Iteration (num., iy, grad. norm, func.) : 58 1 9.504719926e-12 1.446355921e-08 Iteration (num., iy, grad. norm, func.) : 59 1 1.414162368e-11 1.446355921e-08 Iteration (num., iy, grad. norm, func.) : 60 1 1.108830579e-11 1.446355920e-08 Iteration (num., iy, grad. norm, func.) : 61 1 1.550459948e-11 1.446355917e-08 Iteration (num., iy, grad. norm, func.) : 62 1 2.631550598e-12 1.446355915e-08 Iteration (num., iy, grad. norm, func.) : 63 1 2.387300428e-12 1.446355915e-08 Iteration (num., iy, grad. norm, func.) : 64 1 2.387300440e-12 1.446355915e-08 Iteration (num., iy, grad. norm, func.) : 65 1 5.286292800e-12 1.446355915e-08 Iteration (num., iy, grad. norm, func.) : 66 1 1.043822052e-12 1.446355915e-08 Iteration (num., iy, grad. norm, func.) : 67 1 2.896119839e-12 1.446355915e-08 Iteration (num., iy, grad. norm, func.) : 68 1 1.696220169e-12 1.446355915e-08 Iteration (num., iy, grad. norm, func.) : 69 1 2.533341849e-12 1.446355915e-08 Iteration (num., iy, grad. norm, func.) : 70 1 9.767728234e-13 1.446355915e-08 Solving for output 1 - done. Time (sec): 1.1237657 Solving nonlinear problem (n=1764) - done. Time (sec): 2.2451322 Solving for degrees of freedom - done. Time (sec): 2.2747409 Training - done. Time (sec): 2.2847955 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0045211 Prediction time/pt. (sec) : 0.0000090 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 ___________________________________________________________________________ Evaluation # eval points. : 2500 Predicting ... Predicting - done. Time (sec): 0.0020697 Prediction time/pt. (sec) : 0.0000008 ___________________________________________________________________________ Evaluation # eval points. : 2500 Predicting ... Predicting - done. Time (sec): 0.0000000 Prediction time/pt. (sec) : 0.0000000 .. figure:: rans_crm_wing.png :scale: 60 % :align: center