case = SliceProperties(time=time, casedir=casedir, casename=casename, rot_z=rot_z, result_folder=result_folder)
# Read slices and store them in case.slice_* dict
case.readSlices(properties=property, slicenames=slicenames, slicenames_sub=slicenames_sub)
# Initialize lists to store multiple slices coor and value data
list_x, list_y, list_z = [], [], []
list_rgb, list_bij, list_rij = [], [], []
# Go through specified slices
for i, slicename in enumerate(case.slicenames):
    """
    Process Uninterpolated Anisotropy Tensor
    """
    # Retrieve Rij of this slice
    rij = case.slices_val[slicename]
    rij = expandSymmetricTensor(rij).reshape((-1, 3, 3))
    # Rotate Rij if requested, rotateData only accept full matrix form
    if rotate_data: rij = rotateData(rij, anglez=rot_z)
    rij = contractSymmetricTensor(rij)
    rij_tmp = rij.copy()
    # Get bij from Rij and its corresponding eigenval and eigenvec
    bij, eig_val, eig_vec = processReynoldsStress(rij_tmp, realization_iter=0, make_anisotropic=make_anisotropic, to_old_grid_shape=False)
    # bij was (n_samples, 3, 3) contract it
    bij = contractSymmetricTensor(bij)
    # Get barycentric map coor and normalized RGB
    xy_bary, rgb = getBarycentricMapData(eig_val, c_offset=c_offset, c_exp=c_exp)


    """
    Interpolation
    """
    # 1st coor is always x not matter vertical or horizontal slice
    # 2nd coor is y if horizontal slice otherwise z, take appropriate confinebox limit
Exemplo n.º 2
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    # Remove NaN predictions
    if bij_novelty == 'excl':
        print(
            "Since bij_novelty is 'excl', removing NaN and making y_pred_test realizable..."
        )
        nan_mask = np.isnan(y_pred_test).any(axis=1)
        ccx_test = ccx_test[~nan_mask]
        ccy_test = ccy_test[~nan_mask]
        ccz_test = ccz_test[~nan_mask]
        y_pred_test = y_pred_test[~nan_mask]
        for _ in range(2):
            y_pred_test = makeRealizable(y_pred_test)

    # Rotate field
    y_pred_test = expandSymmetricTensor(y_pred_test).reshape((-1, 3, 3))
    y_pred_test = rotateData(y_pred_test, anglez=fieldrot)
    y_pred_test = contractSymmetricTensor(y_pred_test)
    t1 = t.time()
    print('\nFinished bij prediction in {:.4f} s'.format(t1 - t0))
    """
    Postprocess Machine Learning Predictions
    """
    # Filter the result if requested.
    # This requires:
    # 1. Remove any component outside bound and set to NaN
    # 2. Interpolate to 2D slice mesh grid with nearest method
    # 3. Use 2D Gaussian filter to smooth the mesh grid while ignoring NaN, for every component
    # 4. Make whatever between bound and limits realizable
    if filter:
        cc2_test = ccz_test if slicedir == 'vertical' else ccy_test
        ccx_test_mesh, cc2_test_mesh, _, y_predtest_mesh = fieldSpatialSmoothing(
Exemplo n.º 3
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    # Remove NaN predictions
    if bij_novelty == 'excl':
        print(
            "Since bij_novelty is 'excl', removing NaN and making y_pred realizable..."
        )
        nan_mask = np.isnan(y_pred).any(axis=1)
        ccx_test = ccx_test[~nan_mask]
        ccy_test = ccy_test[~nan_mask]
        ccz_test = ccz_test[~nan_mask]
        y_pred = y_pred[~nan_mask]
        for _ in range(2):
            y_pred = makeRealizable(y_pred)

    # Rotate field
    y_pred = expandSymmetricTensor(y_pred).reshape((-1, 3, 3))
    y_pred = rotateData(y_pred, anglez=fieldrot)
    y_pred = contractSymmetricTensor(y_pred)
    t1 = t.time()
    print('\nFinished bij prediction in {:.4f} s'.format(t1 - t0))
    """
    Postprocess Machine Learning Predictions
    """
    # Filter the result if requested.
    # This requires:
    # 1. Remove any component outside bound and set to NaN
    # 2. Interpolate to 2D slice mesh grid with nearest method
    # 3. Use 2D Gaussian filter to smooth the mesh grid while ignoring NaN, for every component
    # 4. Make whatever between bound and limits realizable
    if filter:
        cc2_test = ccz_test if slicedir == 'vertical' else ccy_test
        ccx_test_mesh, cc2_test_mesh, _, y_pred_mesh = fieldSpatialSmoothing(