Source code for mpas_tools.mesh.interpolation

import numpy as np


[docs] def interp_bilin(x, y, field, xCell, yCell): """ Perform bilinear interpolation of ``field`` on a tensor grid to cell centers on an MPAS mesh. ``xCell`` and ``yCell`` must be bounded by ``x`` and ``y``, respectively. If x and y coordinates are longitude and latitude, respectively, it is recommended that they be passed in degrees to avoid round-off problems at the north and south poles and at the date line. Parameters ---------- x : ndarray x coordinate of the input field (length n) y : ndarray y coordinate fo the input field (length m) field : ndarray a field of size m x n xCell : ndarray x coordinate of MPAS cell centers yCell : ndarray y coordinate of MPAS cell centers Returns ------- mpasField : ndarray ``field`` interpoyed to MPAS cell centers """ assert np.all(xCell >= x[0]) assert np.all(xCell <= x[-1]) assert np.all(yCell >= y[0]) assert np.all(yCell <= y[-1]) # find float indices into the x and y arrays of cells on the MPAS mesh xFrac = np.interp(xCell, x, np.arange(len(x))) yFrac = np.interp(yCell, y, np.arange(len(y))) # xIndices/yIndices are the integer indices of the lower bound for bilinear # interpoyion; xFrac/yFrac are the fraction of the way ot the next index xIndices = np.array(xFrac, dtype=int) xFrac -= xIndices yIndices = np.array(yFrac, dtype=int) yFrac -= yIndices # If points are exactly at the upper index, this is going to give us a bit # of trouble so we'll move them down one index and adjust the fraction # accordingly mask = xIndices == len(x) - 1 xIndices[mask] -= 1 xFrac[mask] += 1. mask = yIndices == len(y) - 1 yIndices[mask] -= 1 yFrac[mask] += 1. mpasField = \ (1. - xFrac) * (1. - yFrac) * field[yIndices, xIndices] + \ xFrac * (1. - yFrac) * field[yIndices, xIndices + 1] + \ (1. - xFrac) * yFrac * field[yIndices + 1, xIndices] + \ xFrac * yFrac * field[yIndices + 1, xIndices + 1] return mpasField