Geostatistical expansion in the scipy style
Project description
Info: scikit-gstat needs Python >= 3.6!
How to cite
In case you use SciKit-GStat in other software or scientific publications, please reference this module. It is published and has a DOI. It can be cited as:
- Mirko Mälicke, Egil Möller, Helge David Schneider, & Sebastian Müller. (2021, May 28).
mmaelicke/scikit-gstat: A scipy flavoured geostatistical variogram analysis toolbox (Version v0.6.0). Zenodo. http://doi.org/10.5281/zenodo.4835779
Full Documentation
The full documentation can be found at: https://mmaelicke.github.io/scikit-gstat
Description
SciKit-Gstat is a scipy-styled analysis module for geostatistics. It includes two base classes Variogram and OrdinaryKriging. Additionally, various variogram classes inheriting from Variogram are available for solving directional or space-time related tasks. The module makes use of a rich selection of semi-variance estimators and variogram model functions, while being extensible at the same time. The estimators include:
matheron
cressie
dowd
genton
entropy
two experimental ones: quantiles, minmax
The models include:
sperical
exponential
gaussian
cubic
stable
matérn
with all of them in a nugget and no-nugget variation. All the estimator are implemented using numba’s jit decorator. The usage of numba might be subject to change in future versions.
Installation
PyPI
pip install scikit-gstat
Note: It can happen that the installation of numba or numpy is failing using pip. Especially on Windows systems. Usually, a missing Dll (see eg. #31) or visual c++ redistributable is the reason.
GIT:
git clone https://github.com/mmaelicke/scikit-gstat.git
cd scikit-gstat
pip install -r requirements.txt
pip install -e .
Conda-Forge:
From Version 0.5.5 on scikit-gstat is also available on conda-forge. Note that for versions < 1.0 conda-forge will not always be up to date, but from 1.0 on, each minor release will be available.
conda install -c conda-forge scikit-gstat
Quickstart
The Variogram class needs at least a list of coordiantes and values. All other attributes are set by default. You can easily set up an example by using the skgstat.data sub-module, that includes a growing list of sample data.
import skgstat as skg
# the data functions return a dict of 'sample' and 'description'
coordinates, values = skg.data.pancake(N=300).get('sample')
V = skg.Variogram(coordinates=coordinates, values=values)
print(V)
spherical Variogram
-------------------
Estimator: matheron
Effective Range: 353.64
Sill: 1512.24
Nugget: 0.00
All variogram parameters can be changed in place and the class will automatically invalidate and update dependent results and parameters.
V.model = 'exponential'
V.n_lags = 15
V.maxlag = 500
# plot - matplotlib and plotly are available backends
fig = V.plot()
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