scipy.interpolate.interpn#
- scipy.interpolate.interpn(points, values, xi, method='linear', bounds_error=True, fill_value=nan)[source]#
Multidimensional interpolation on regular grids.
- Parameters
- pointstuple of ndarray of float, with shapes (m1, ), …, (mn, )
The points defining the regular grid in n dimensions.
- valuesarray_like, shape (m1, …, mn, …)
The data on the regular grid in n dimensions.
- xindarray of shape (…, ndim)
The coordinates to sample the gridded data at
- methodstr, optional
The method of interpolation to perform. Supported are “linear” and “nearest”, and “splinef2d”. “splinef2d” is only supported for 2-dimensional data.
- bounds_errorbool, optional
If True, when interpolated values are requested outside of the domain of the input data, a ValueError is raised. If False, then fill_value is used.
- fill_valuenumber, optional
If provided, the value to use for points outside of the interpolation domain. If None, values outside the domain are extrapolated. Extrapolation is not supported by method “splinef2d”.
- Returns
- values_xndarray, shape xi.shape[:-1] + values.shape[ndim:]
Interpolated values at input coordinates.
See also
NearestNDInterpolator
Nearest neighbor interpolation on unstructured data in N dimensions
LinearNDInterpolator
Piecewise linear interpolant on unstructured data in N dimensions
RegularGridInterpolator
Linear and nearest-neighbor Interpolation on a regular grid in arbitrary dimensions
RectBivariateSpline
Bivariate spline approximation over a rectangular mesh
Notes
New in version 0.14.
Examples
Evaluate a simple example function on the points of a regular 3-D grid:
>>> from scipy.interpolate import interpn >>> def value_func_3d(x, y, z): ... return 2 * x + 3 * y - z >>> x = np.linspace(0, 4, 5) >>> y = np.linspace(0, 5, 6) >>> z = np.linspace(0, 6, 7) >>> points = (x, y, z) >>> values = value_func_3d(*np.meshgrid(*points, indexing='ij'))
Evaluate the interpolating function at a point
>>> point = np.array([2.21, 3.12, 1.15]) >>> print(interpn(points, values, point)) [12.63]