Geostatistical expansion in the scipy style
Project description
Info: scikit-gstat needs Python >= 3.5!
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, HelgeDavidSchneider, & Codacy Badger. (2019, November 7). mmaelicke/scikit-gstat: Version 0.2.6 (Version v0.2.6). Zenodo. http://doi.org/10.5281/zenodo.3531816
Full Documentation
The full documentation can be found at: https://mmaelicke.github.io/scikit-gstat
New Version 0.2
Scikit-gstat was rewritten in major parts. Most of the changes are internal, but the attributes and behaviour of the Variogram has also changed substantially. A detailed description of of the new versions usage will follow. The last version of the old Variogram class, 0.1.8, is kept in the version-0.1.8 branch on GitHub, but not developed any further. Those two versions are not compatible.
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. At the current stage, the package does not include any kriging. This is planned for a future release.
Installation
PyPI:
pip install scikit-gstat
GIT:
git clone https://github.com/mmaelicke/scikit-gstat.git
cd scikit-gstat
pip install -r requirements.txt
pip install -e .
Usage
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 generating some random data:
import numpy as np
import skgstat as skg
coordinates = np.random.gamma(0.7, 2, (30,2))
values = np.random.gamma(2, 2, 30)
V = skg.Variogram(coordinates=coordinates, values=values)
print(V)
spherical Variogram
-------------------
Estimator: matheron
Range: 1.64
Sill: 5.35
Nugget: 0.00
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