import numpy as np from scipy import sparse as sp from matutils import mkvc, ndgrid, sub2ind, sdiag from codeutils import asArray_N_x_Dim from codeutils import isScalar import os def exampleLrmGrid(nC, exType): assert type(nC) == list, "nC must be a list containing the number of nodes" assert len(nC) == 2 or len(nC) == 3, "nC must either two or three dimensions" exType = exType.lower() possibleTypes = ['rect', 'rotate'] assert exType in possibleTypes, "Not a possible example type." if exType == 'rect': return list(ndgrid([np.cumsum(np.r_[0, np.ones(nx)/nx]) for nx in nC], vector=False)) elif exType == 'rotate': if len(nC) == 2: X, Y = ndgrid([np.cumsum(np.r_[0, np.ones(nx)/nx]) for nx in nC], vector=False) amt = 0.5-np.sqrt((X - 0.5)**2 + (Y - 0.5)**2) amt[amt < 0] = 0 return [X + (-(Y - 0.5))*amt, Y + (+(X - 0.5))*amt] elif len(nC) == 3: X, Y, Z = ndgrid([np.cumsum(np.r_[0, np.ones(nx)/nx]) for nx in nC], vector=False) amt = 0.5-np.sqrt((X - 0.5)**2 + (Y - 0.5)**2 + (Z - 0.5)**2) amt[amt < 0] = 0 return [X + (-(Y - 0.5))*amt, Y + (-(Z - 0.5))*amt, Z + (-(X - 0.5))*amt] def meshTensor(value): """ **meshTensor** takes a list of numbers and tuples that have the form:: mT = [ float, (cellSize, numCell), (cellSize, numCell, factor) ] For example, a time domain mesh code needs many time steps at one time:: [(1e-5, 30), (1e-4, 30), 1e-3] Means take 30 steps at 1e-5 and then 30 more at 1e-4, and then one step of 1e-3. Tensor meshes can also be created by increase factors:: [(10.0, 5, -1.3), (10.0, 50), (10.0, 5, 1.3)] When there is a third number in the tuple, it refers to the increase factor, if this number is negative this section of the tensor is flipped right-to-left. .. plot:: from SimPEG import Mesh tx = [(10.0,10,-1.3),(10.0,40),(10.0,10,1.3)] ty = [(10.0,10,-1.3),(10.0,40)] M = Mesh.TensorMesh([tx, ty]) M.plotGrid(showIt=True) """ if type(value) is not list: raise Exception('meshTensor must be a list of scalars and tuples.') proposed = [] for v in value: if isScalar(v): proposed += [float(v)] elif type(v) is tuple and len(v) == 2: proposed += [float(v[0])]*int(v[1]) elif type(v) is tuple and len(v) == 3: start = float(v[0]) num = int(v[1]) factor = float(v[2]) pad = ((np.ones(num)*np.abs(factor))**(np.arange(num)+1))*start if factor < 0: pad = pad[::-1] proposed += pad.tolist() else: raise Exception('meshTensor must contain only scalars and len(2) or len(3) tuples.') return np.array(proposed) def closestPoints(mesh, pts, gridLoc='CC'): """ Move a list of points to the closest points on a grid. :param simpeg.Mesh.BaseMesh mesh: The mesh :param numpy.ndarray pts: Points to move :param string gridLoc: ['CC', 'N', 'Fx', 'Fy', 'Fz', 'Ex', 'Ex', 'Ey', 'Ez'] :rtype: numpy.ndarray :return: nodeInds """ pts = asArray_N_x_Dim(pts, mesh.dim) grid = getattr(mesh, 'grid' + gridLoc) nodeInds = np.empty(pts.shape[0], dtype=int) for i, pt in enumerate(pts): if mesh.dim == 1: nodeInds[i] = ((pt - grid)**2).argmin() else: nodeInds[i] = ((np.tile(pt, (grid.shape[0],1)) - grid)**2).sum(axis=1).argmin() return nodeInds def readUBCTensorMesh(fileName): """ Read UBC GIF 3DTensor mesh and generate 3D Tensor mesh in simpegTD Input: :param fileName, path to the UBC GIF mesh file Output: :param SimPEG TensorMesh object :return """ # Interal function to read cell size lines for the UBC mesh files. def readCellLine(line): for seg in line.split(): if '*' in seg: st = seg sp = seg.split('*') re = np.array(sp[0],dtype=int)*(' ' + sp[1]) line = line.replace(st,re.strip()) return np.array(line.split(),dtype=float) # Read the file as line strings, remove lines with comment = ! msh = np.genfromtxt(fileName,delimiter='\n',dtype=np.str,comments='!') # Fist line is the size of the model sizeM = np.array(msh[0].split(),dtype=float) # Second line is the South-West-Top corner coordinates. x0 = np.array(msh[1].split(),dtype=float) # Read the cell sizes h1 = readCellLine(msh[2]) h2 = readCellLine(msh[3]) h3temp = readCellLine(msh[4]) h3 = h3temp[::-1] # Invert the indexing of the vector to start from the bottom. # Adjust the reference point to the bottom south west corner x0[2] = x0[2] - np.sum(h3) # Make the mesh from SimPEG import Mesh tensMsh = Mesh.TensorMesh([h1,h2,h3],x0) return tensMsh def readUBCTensorModel(fileName, mesh): """ Read UBC 3DTensor mesh model and generate 3D Tensor mesh model in simpeg Input: :param fileName, path to the UBC GIF mesh file to read :param mesh, TensorMesh object, mesh that coresponds to the model Output: :return numpy array, model with TensorMesh ordered """ f = open(fileName, 'r') model = np.array(map(float, f.readlines())) f.close() model = np.reshape(model, (mesh.nCz, mesh.nCx, mesh.nCy), order = 'F') model = model[::-1,:,:] model = np.transpose(model, (1, 2, 0)) model = mkvc(model) return model def writeUBCTensorMesh(fileName, mesh): """ Writes a SimPEG TensorMesh to a UBC-GIF format mesh file. :param str fileName: File to write to :param simpeg.Mesh.TensorMesh mesh: The mesh """ assert mesh.dim == 3 s = '' s += '%i %i %i\n' %tuple(mesh.vnC) origin = mesh.x0 + np.array([0,0,mesh.hz.sum()]) # Have to it in the same operation or use mesh.x0.copy(), otherwise the mesh.x0 is updated. origin.dtype = float s += '%.2f %.2f %.2f\n' %tuple(origin) s += ('%.2f '*mesh.nCx+'\n')%tuple(mesh.hx) s += ('%.2f '*mesh.nCy+'\n')%tuple(mesh.hy) s += ('%.2f '*mesh.nCz+'\n')%tuple(mesh.hz[::-1]) f = open(fileName, 'w') f.write(s) f.close() def writeUBCTensorModel(fileName, mesh, model): """ Writes a model associated with a SimPEG TensorMesh to a UBC-GIF format model file. :param str fileName: File to write to :param simpeg.Mesh.TensorMesh mesh: The mesh :param numpy.ndarray model: The model """ # Reshape model to a matrix modelMat = mesh.r(model,'CC','CC','M') # Transpose the axes modelMatT = modelMat.transpose((2,0,1)) # Flip z to positive down modelMatTR = mkvc(modelMatT[::-1,:,:]) np.savetxt(fileName, modelMatTR.ravel()) def readVTRFile(fileName): """ Read VTK Rectilinear (vtr xml file) and return SimPEG Tensor mesh and model Input: :param vtrFileName, path to the vtr model file to write to Output: :return SimPEG TensorMesh object :return SimPEG model dictionary """ # Import from vtk import vtkXMLRectilinearGridReader as vtrFileReader from vtk.util.numpy_support import vtk_to_numpy # Read the file vtrReader = vtrFileReader() vtrReader.SetFileName(fileName) vtrReader.Update() vtrGrid = vtrReader.GetOutput() # Sort information hx = np.abs(np.diff(vtk_to_numpy(vtrGrid.GetXCoordinates()))) xR = vtk_to_numpy(vtrGrid.GetXCoordinates())[0] hy = np.abs(np.diff(vtk_to_numpy(vtrGrid.GetYCoordinates()))) yR = vtk_to_numpy(vtrGrid.GetYCoordinates())[0] zD = np.diff(vtk_to_numpy(vtrGrid.GetZCoordinates())) # Check the direction of hz if np.all(zD < 0): hz = np.abs(zD[::-1]) zR = vtk_to_numpy(vtrGrid.GetZCoordinates())[-1] else: hz = np.abs(zD) zR = vtk_to_numpy(vtrGrid.GetZCoordinates())[0] x0 = np.array([xR,yR,zR]) # Make the SimPEG object from SimPEG import Mesh tensMsh = Mesh.TensorMesh([hx,hy,hz],x0) # Grap the models modelDict = {} for i in np.arange(vtrGrid.GetCellData().GetNumberOfArrays()): modelName = vtrGrid.GetCellData().GetArrayName(i) if np.all(zD < 0): modFlip = vtk_to_numpy(vtrGrid.GetCellData().GetArray(i)) tM = tensMsh.r(modFlip,'CC','CC','M') modArr = tensMsh.r(tM[:,:,::-1],'CC','CC','V') else: modArr = vtk_to_numpy(vtrGrid.GetCellData().GetArray(i)) modelDict[modelName] = modArr # Return the data return tensMsh, modelDict def writeVTRFile(fileName,mesh,model=None): """ Makes and saves a VTK rectilinear file (vtr) for a simpeg Tensor mesh and model. Input: :param str, path to the output vtk file :param mesh, SimPEG TensorMesh object - mesh to be transfer to VTK :param model, dictionary of numpy.array - Name('s) and array('s). Match number of cells """ # Import from vtk import vtkRectilinearGrid as rectGrid, vtkXMLRectilinearGridWriter as rectWriter from vtk.util.numpy_support import numpy_to_vtk # Deal with dimensionalities if mesh.dim >= 1: vX = mesh.vectorNx xD = mesh.nNx yD,zD = 1,1 vY, vZ = np.array([0,0]) if mesh.dim >= 2: vY = mesh.vectorNy yD = mesh.nNy if mesh.dim == 3: vZ = mesh.vectorNz zD = mesh.nNz # Use rectilinear VTK grid. # Assign the spatial information. vtkObj = rectGrid() vtkObj.SetDimensions(xD,yD,zD) vtkObj.SetXCoordinates(numpy_to_vtk(vX,deep=1)) vtkObj.SetYCoordinates(numpy_to_vtk(vY,deep=1)) vtkObj.SetZCoordinates(numpy_to_vtk(vZ,deep=1)) # Assign the model('s) to the object if model is not None: for item in model.iteritems(): # Convert numpy array vtkDoubleArr = numpy_to_vtk(item[1],deep=1) vtkDoubleArr.SetName(item[0]) vtkObj.GetCellData().AddArray(vtkDoubleArr) # Set the active scalar vtkObj.GetCellData().SetActiveScalars(model.keys()[0]) # Check the extension of the fileName if fileName is not None: ext = os.path.splitext(fileName)[1] if ext is '': fileName = fileName + '.vtr' elif ext not in '.vtr': raise IOError('{:s} is an incorrect extension, has to be .vtr') # Write the file. vtrWriteFilter = rectWriter() vtrWriteFilter.SetInputData(vtkObj) vtrWriteFilter.SetFileName(fileName) vtrWriteFilter.Update() else: return vtkObj def ExtractCoreMesh(xyzlim, mesh, meshType='tensor'): """ Extracts Core Mesh from Global mesh xyzlim: 2D array [ndim x 2] mesh: SimPEG mesh This function ouputs: - actind: corresponding boolean index from global to core - meshcore: core SimPEG mesh Warning: 1D and 2D has not been tested """ from SimPEG import Mesh if mesh.dim ==1: xyzlim = xyzlim.flatten() xmin, xmax = xyzlim[0], xyzlim[1] xind = np.logical_and(mesh.vectorCCx>xmin, mesh.vectorCCxxmin) & (mesh.gridCC[:,0]ymin, mesh.vectorCCyzmin, mesh.vectorCCzxmin) & (mesh.gridCC[:,0]ymin) & (mesh.gridCC[:,1]xmin, mesh.vectorCCxymin, mesh.vectorCCyzmin, mesh.vectorCCzxmin) & (mesh.gridCC[:,0]ymin) & (mesh.gridCC[:,1]zmin) & (mesh.gridCC[:,2]