WAFO is a toolbox Python routines for statistical analysis and simulation of random waves and random loads. WAFO is freely redistributable software, see WAFO icence, cf. the GNU General Public License (GPL) and contain tools for:
- Fatigue life prediction for random loads
- Theoretical density of rainflow cycles
- Simulation of linear and non-linear Gaussian waves
- Estimation of seamodels (spectrums)
- Joint wave height, wave steepness, wave period distributions
- Extreme value analysis
- Kernel density estimation
- Hidden markov models
- TimeSeries:
- Data analysis of time series. Example: extraction of turning points, estimation of spectrum and covariance function. Estimation transformation used in transformed Gaussian model.
- CovData:
- Computation of spectral functions, linear and non-linear time series simulation.
- SpecData:
- Computation of spectral moments and covariance functions, linear and non-linear time series simulation. Ex: common spectra implemented, directional spectra, bandwidth measures, exact distributions for wave characteristics.
- CyclePairs:
- Cycle counting, discretization, and crossings, calculation of damage. Simulation of discrete Markov chains, switching Markov chains, harmonic oscillator. Ex: Rainflow cycles and matrix, discretization of loads. Damage of a rainflow count or matrix, damage matrix, S-N plot.
- TRANSFORM
- Modelling with linear or transformed Gaussian waves.
- STATS
- Statistical tools and extreme-value distributions. Ex: generation of random numbers, estimation of parameters, evaluation of pdf and cdf
- KDETOOLS
- Kernel-density estimation.
- MISC
- Miscellaneous routines.
- DOCS
- Documentation of toolbox, definitions. An overview is given in the routine wafomenu.
- DATA
- Measurements from marine applications.
WAFO homepage: <http://www.maths.lth.se/matstat/wafo/> On the WAFO home page you will find: - The WAFO Tutorial - List of publications related to WAFO.
WAFO contains some Fortran and C extensions that require a properly configured compiler and NumPy/f2py.
Create a binary wheel package and place it in the dist folder as follows:
python setup.py bdist_wheel -d dist
And install the wheel package with:
pip install dist/wafo-X.Y.Z+abcd123-os_platform.whl
A quick introduction to some of the many features of wafo can be found in the Tutorial IPython notebooks in the `tutorial scripts folder`_:
- Chapter 1 - Some applications of WAFO
- Chapter 2 - Modelling random loads and stochastic waves
- Chapter 3 - Demonstrates distributions of wave characteristics
- Chapter 4 - Fatigue load analysis and rain-flow cycles
- Chapter 5 - Extreme value analysis
-- _tutorial scripts folder: http://nbviewer.jupyter.org/github/wafo-project/pywafo/tree/master/wafo/doc/tutorial_scripts/
To test if the toolbox is working paste the following in an interactive python session:
import wafo as wf wf.test(coverage=True, doctests=True)
This project has been set up using PyScaffold 2.4.2. For details and usage information on PyScaffold see http://pyscaffold.readthedocs.org/.