Skip to main content

Ocean wave 2D spectrum partitioning and fitting JONSWAP spectrum

Project description

Ocean Wave Spectra 2D Splitting/Fitting

Introduction

The main purpose of this package is to find parameters of JONSWAP wave spectra with spreading that, when recombined, best match the input 2D frequency direction wave spectra. Given a 2D wave spectrum S(f,theta), the package finds parameters of multiple JONSWAP partitions including wave spreading (i.e. Hs, Tp, Gamma, Tail exponent, ThetaP).

The aim of the package is to provide an industry wide approach to derive usable wave spectral parameters that provide the best possible reconstruction of the input wave spectrum. The method is designed to be tunable, but robust in the default configuration. A large number of observed and numerically modelled datasets have been tested during the creation and validation of the method.

It is the intention that the package will be used by consultants and weather forecastors to improve the descriptions of the ocean wave partitions for use in operations and engineering applications. It provides the metocean engineer with a robust way to separate swells and wind seas.

Usage

Import the waveSpec class

import numpy as np
from wavespectra2dsplitfit.S2DFit import readWaveSpectrum_mat
filename = 'data/ExampleWaveSpectraObservations.mat'
f, th, S, sDate = readWaveSpectrum_mat(filename)
S = S * np.pi/180 # convert from m^2/(Hz.rad) to m^2/(Hz.deg)
   
# Setup fitting configuration - simple example with no wind (also usually best setup with no wind)    
tConfig = {
    'maxPartitions': 3,
    'useClustering': True,
    'useWind': False,
    'useFittedWindSea': False, 
    'useWindSeaInClustering': False,
}

# Just do the first spectrum
from wavespectra2dsplitfit.S2DFit import fit2DSpectrum
specParms, fitStatus, diagOut = fit2DSpectrum(f[0], th[0], S[0,:,:], **tConfig)
print(specParms, fitStatus)

for tSpec in specParms:
    print("===== PARTITION =====")
    print("Hs = ",tSpec[0])
    print("Tp = ",tSpec[1])
    print("Gamma = ",tSpec[2])
    print("Sigma A = ",tSpec[3])
    print("Sigma B = ",tSpec[4])
    print("Tail Exp = ",tSpec[5])
    print("ThetaP = ",tSpec[6])
print("===== FITTING OUTCOME =====")
print(f"Fitting successful: ",fitStatus[0])
print(f"RMS error of fit: ",fitStatus[1])
print(f"Number of function evalutions: ",fitStatus[2])

from wavespectra2dsplitfit.S2DFit import plot2DFittingDiagnostics
f, th, S, f_sm, th_sm, S_sm, wsMask, Tp_pk, ThetaP_pk, Tp_sel, ThetaP_sel, whichClus = diagOut
plot2DFittingDiagnostics(
    specParms, 
    f, th, S, 
    f_sm, th_sm, S_sm, 
    wsMask,
    Tp_pk, ThetaP_pk, Tp_sel, ThetaP_sel, whichClus,
    tConfig['useWind'], tConfig['useClustering'],
    saveFigFilename = 'test',  
    tag = "S2DFit Simple Test"  
)

Example Result

Check out the test.py script as an example with data.

$ python test.py
Optimization terminated successfully.
         Current function value: 0.082135
         Iterations: 1082
         Function evaluations: 1733
[[0.5859285326910995, 4.716981132075468, 1.0000053476007895, 0.07, 0.09, -4.234276488479486, 300.0, 4.716981132075468], [0.6129423521749234, 7.812499999999995, 5.970526837658344, 0.07, 0.09, -5.140143260428807, 290.0, 7.812499999999995], [0.4047506936099149, 10.869565217391298, 1.0000041524068202, 0.07, 0.09, -15.401874257914326, 240.0, 10.869565217391298]] [True, 0.08213522716322981, 1733]
===== PARTITION =====
Hs =  0.5859285326910995
Tp =  4.716981132075468
Gamma =  1.0000053476007895
Sigma A =  0.07
Sigma B =  0.09
Tail Exp =  -4.234276488479486
ThetaP =  300.0
===== PARTITION =====
Hs =  0.6129423521749234
Tp =  7.812499999999995
Gamma =  5.970526837658344
Sigma A =  0.07
Sigma B =  0.09
Tail Exp =  -5.140143260428807
ThetaP =  290.0
===== PARTITION =====
Hs =  0.4047506936099149
Tp =  10.869565217391298
Gamma =  1.0000041524068202
Sigma A =  0.07
Sigma B =  0.09
Tail Exp =  -15.401874257914326
ThetaP =  240.0
===== FITTING OUTCOME =====
Fitting successful:  True
RMS error of fit:  0.08213522716322981
Number of function evalutions:  1733

An example of the input and output reconstructed spectrum are shown in the image below.

This is an example output image

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

wavespectra2dsplitfit-0.5.7.tar.gz (21.9 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

wavespectra2dsplitfit-0.5.7-py3-none-any.whl (20.8 kB view details)

Uploaded Python 3

File details

Details for the file wavespectra2dsplitfit-0.5.7.tar.gz.

File metadata

  • Download URL: wavespectra2dsplitfit-0.5.7.tar.gz
  • Upload date:
  • Size: 21.9 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.2 CPython/3.9.13

File hashes

Hashes for wavespectra2dsplitfit-0.5.7.tar.gz
Algorithm Hash digest
SHA256 9c86a5154f25a1d84151fa1578874a01f5318200d717f242d1df97dc5347e69f
MD5 43b7614f582c6df142049d03d8f22173
BLAKE2b-256 f9bd4800473c4626fa1d827110b7495f82c12b27ea12cb7f92261db16865b1a5

See more details on using hashes here.

File details

Details for the file wavespectra2dsplitfit-0.5.7-py3-none-any.whl.

File metadata

File hashes

Hashes for wavespectra2dsplitfit-0.5.7-py3-none-any.whl
Algorithm Hash digest
SHA256 ca59403b938c9ae9d32f06ac72a3806550d8be5e44c1b3a476abeb4ea480039d
MD5 a50edd390967b44c7d885e6afdf00a55
BLAKE2b-256 16c26af5a9dd706bc24c79db3009dc25c936ee15ef6d26c9afbfce0a4bf5c5b2

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page