Utilities: Difference between revisions

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* Filter1D uses a windowed sinc filter which is a non-recursive finite impulse response filter.  
* Filter1D uses a windowed sinc filter which is a non-recursive finite impulse response filter.  
* Wiki Manual [[Filter1d]]
* Wiki Manual [[Filter1d]]
* Download Matlab script [[Media:filter1d.rar | filter1d.m]]
* PDF User Guide [[Media:Filter1d user-guide.pdf| filter1d_user-guide.pdf]]
* Download Matlab script [[Media:Filter1d.m| filter1d.m]]
* Download Matlab executable [[Media:Filter1d v3.zip| filter1d.exe]]
* Link to download Matlab Compiler Runtime library: http://www.mathworks.com/products/compiler/mcr/
* Download sample time series data file [[Media:Blind Pass.tsd| Blind_Pass.tsd]]


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== TAP: Tidal Analysis and Prediction software ==
== TAP: Tidal Analysis and Prediction software ==
** TAPtides is the ideal package to explore and develop preliminary or finalized tidal predictions from serial records spanning several weeks to several months.
:* TAPtides is the ideal package to explore and develop preliminary or finalized tidal predictions from serial records spanning several weeks to several months.
** Designed to be easy to use, its Graphical User Interface permits quick separation of a time series of water level measurements into its tidal and non-tidal components using a selective least squares harmonic reduction employing up to 35 tidal constituents.
:* Designed to be easy to use, its Graphical User Interface permits quick separation of a time series of water level measurements into its tidal and non-tidal components using a selective least squares harmonic reduction employing up to 35 tidal constituents.
** After saving the tidal constants for the constituents selected during analysis, the user can generate predictions of the astronomical tide, the water level that varies at known tidal frequencies attributable to gravitational interactions between the earth, moon, and sun.
:* After saving the tidal constants for the constituents selected during analysis, the user can generate predictions of the astronomical tide, the water level that varies at known tidal frequencies attributable to gravitational interactions between the earth, moon, and sun.
* Wiki Manual for TAPtides [[TAPtides]]
* Wiki Manual for TAPtides [[TAPtides]]
* Wiki Manual for TAPcurrents [[TAPcurrents]]
* Wiki Manual for TAPcurrents [[TAPcurrents]]
* Download software [[Media:TAP.rar | TAP.rar]]
* Download software [[Media:TAP.rar| TAP.rar]]


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= Post-processing =
= Matlab scripts =
* [[proc_flux | Sediment transport integration tool]]
== Read CMS-Flow Grid File (*_grid.h5) ==
: cms_read_grid.m Reads a CMS nonuniform Cartesian grid
 
* Description:
: Reads a CMS grid file and creates a structure variable containing the grid variables
 
* Usage:
<font size=2>
: grd = cms_read_grid(filename);
</font>


= Matlab scripts =
==Read CMS-Flow Grid File (*_grid.h5) ==
* Description: Reads a CMS grid file and creates a structure variable containing the grid datasets values
* Input:
* Input:
:filename - input file name including full path
: filename - Input file name including full path (e.g. 'Flow_grd.h5')
:varargin - dataset names
 
* Output:
* Output:
:grd - structure variable containing dataset values and times
: grd - structure variable containing the following variables
:varargout - variable datasets corresponding to varargin
:: nx - Grid size in x direction [-]
:: ny - Grid size in y direction [-]
:: x0 - Grid origin in x direction [m]
:: y0 - Grid origin in y direction [m]
:: angle - Grid angle [deg]
:: x(1:nx) - Cell-center coordinates in x direction [m]
:: y(1:ny) - Cell-center coordinates in y direction [m]
:: depth(1:ny,1:nx) - Cell-centered depth [m]
:: active(1:ny,1:nx) - Cell activity (1-active and 0-inactive) [logical]
:: Plus other optional datasets such as mannings, d50, etc.
 
* Author: Alex Sanchez, USACE-ERDC-CHL
 
* Download Matlab script - [[Media:Cms read grid.m| cms_read_grid.m]]
 
<br style="clear:both"  />
 
==Read CMS-Flow Tel File (*.tel) ==
* Description:
:  Reads a CMS telescoping grid file and output all variables to a structure array.
 
* Usage:
* Usage:
<font size=2>
<font size = 2>
sol = readcmshgrd(filename,...'dataset1','dataset2',...)
: out = cms_read_tel(telfile);
grd = readcmsgrd('test_grd.h5');
x = readcmsgrd(filename,'x');
[x,y] = readcmsgrd(filename,'x','y');
</font>
</font>


* Download Matlab script [[Media:readcmsgrd.rar | readcmsgrd.m]]
* Input:
: telfile - Telescoping grid file including path (*.tel)
 
* Output:
: tel - Structure including the following fields
:: ncells - Number of cells
:: x0 - Grid origin in x-direction [m]
:: y0 - Grid origin in y-direction [m]
:: angle - Grid angle [deg]
:: id - Cell ID number
:: x - Grid cell-centered coordinate in x-direction [m]
:: y - Grid cell-centered coordinate in y-direction [m]
:: dx - Grid cell resolution in x-direction [m]
:: dy - Grid cell resolution in y-direction [m]
:: iloc - Cell connectivity
:: depth - Cell-centered depths (-999 = inactive cell) [m]
 
* Author: Alex Sanchez, USACE
 
* Download Matlab script - [[Media:Cms read tel.m| cms_read_tel.m]]


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==Read CMS-Flow Tel File (*.tel) ==
==Read CMS-Flow solution files==
* Description: Reads a CMS telescoping grid file and creates a structure variable containing the grid information.
* Description:
: Reads a CMS solution file and creates a structure variable containing the solution datasets values and times
 
* Input:
* Input:
:filename - input file name including full path
: filename - input file name including full path
:: grd - Grid structure containing the following fields
:: nx - Grid size in x direction
:: ny - Grid size in y direction
:: varargin - dataset names
 
* Output:
* Output:
:tel - structure variable containing datasets
: sol - structure variable containing dataset values and times
: varargout - variable length datasets corresponding to varargin
 
* Usage:
* Usage:
<font size=2>
<font size=2>
  tel= readcmshgrd(filename grd = readcmsgrd('Flow_test.tel');
: filename = 'test_sol.h5';
:  sol = cms_read_sol(filename,grd);
:  wse = cms_read_sol(filename,grd,'Water_Elevation');
:  [wse,uv] = cms_read_sol(filename,'Water_Elevation','Current_Velocity');
:  sol = cms_read_sol(filename,'grid',grd,'datasetnames',dnames,...
:    'points',pts,'cells',ids,'polygon',poly,'steps',nstep,'times',t)
</font>
</font>


* Download Matlab script [[Media:readcmstel.rar | readcmstel.m]]
* Author: Alex Sanchez, USACE-ERDC-CHL
 
* Download Matlab script - [[Media:Cms read sol.m| cms_read_sol.m]]
* Download sample solution file [[Media:Test sol.zip| test_sol.h5]]


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==Read CMS-Flow solution files==
==Read SMS Time Series Data File ==
* Description: Reads the CMS-Flow XMDF (*.h5) solution file in Matlab. Can read individual datasets are the whole solution.
* Description: Reads the Surface-water Modeling System time-series data (*.tsd) file.
* Usage:
<font size=2>
:[t,dat,name,units] = sms_read_tsd(<font color=magenta>'data.tsd'</font>);
</font>
* Download Matlab script - [[Media:Sms read tsd.m| sms_read_tsd.m]].
 
<br style="clear:both"  />
 
==Read a CMS Save Point File ==
* Description:
: Reads a CMS Save Point file
 
* Usage:
* Usage:
<font size=2>
<font size=2>
filename = <font color=magenta>'test_sol.h5'</font>;
: sp = cms_read_sp(filename);
sol = readcmsh5(filename);
wse = readcmsh5(filename,<font color=magenta>'Water_Elevation'</font>);
[wse,uv] = readcmsh5(filename,<font color=magenta>'Water_Elevation'</font>,<font color=magenta>'Current_Velocity'</font>);
</font>
</font>
* Download Matlab script [[Media:readcmsh5.rar | readcmsh5.m]]
 
* Input:
: filename - CMS Save Point file name
 
* Output:
: sp - Structure with the following fields
:: variable - Name of output variable
:: reference_time_str - Reference time string in the following format 'yyyy-mm-dd HH:MM:SS'
:: reference_time - Reference time
:: label - Save point label
:: creation_date - Creation date
:: horizontal_projection - Horizontal projection
:: vertical_datum - Vertical datum
:: time_units - Time units
:: output_units - Units of output variable
:: cms_version - CMS version number
:: number_points - Number of points in time series
:: names - Names of output points
:: xy - Coordinates of output points
:: time - Output times
:: scalar - Output scalar
:: vector - Output vector
 
* Author: Alex Sanchez, USACE-CHL
 
* Download Matlab script - [[Media:Cms read sp.m| cms_read_sp.m]].


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==Read SMS Time Series Data File ==
==Write SMS Time Series Data File ==
* Description: Reads the Surface-water Modeling System time-series data (*.tsd) file.
* Description: Writes a Surface-water Modeling System time-series data (*.tsd) file.
* Usage:
* Usage:
<font size=2>
<font size=2>
[t,dat,name,units] = read_tsd(<font color=magenta>'data.tsd'</font>);
: sms_write_tsd(filenamet,dat,curvename,curvetype);
</font>
</font>
* Download Matlab script [[Media:read_tsd.m | read_tsd.m]].
* Download Matlab script - [[Media:Sms write tsd.m| sms_write_tsd.m]].


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==Read SMS XY Series File ==
== Read SMS XY Series File ==
* Description: Reads the Surface-water Modeling System xy series (*.xys) file.
* Description: Reads the Surface-water Modeling System xy series (*.xys) file.
* Usage:
* Usage:
<font size=2>
<font size=2>
[x,y,name] = read_xys(<font color=magenta>'data.xys'</font>);
:[x,y,name] = sms_read_xys(<font color=magenta>'data.xys'</font>);
</font>
</font>
* Download Matlab script [[Media:read_xys.rar | read_xys.m]].
* Download Matlab script - [[Media:Sms read xys.m| sms_read_xys.m]].
 
<br style="clear:both"  />
 
==Write SMS XY Series File ==
* Description: Writes a Surface-water Modeling System xy series (*.xys) file.
* Usage:
<font size=2>
: sms_write_xys(file,x,y,name)
</font>
* Download Matlab script - [[Media:Sms write xys.m| sms_write_xys.m]].


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== Bin scatter data ==
== Bin scatter data ==
[[Image:xyzbin_swath_5m.png|thumb|right|400px| Example of xyzbin.m application to multibeam data with 5-m bins. ]]
[[Image:xyzbin_swath_5m.png|thumb|right|400px| Example of xyzbin.m application to multibeam data with 5-m bins. ]]
* Description: Averages the x, y, and z values of points within the same bin. The grid used to define the bins may be user specified are calculated based on the extent of the scatter points.  
* Description: Averages the x, y, and z values of points within the same bin. The grid used to define the bins may be user specified are calculated based on the extent of the scatter points. The routine is useful for thinning/smoothing large scatter sets such as multibeam or LIDAR data. The binning method is less accurate then the search radius method, but is much faster.
* Usage:
* Usage:
<font size=2>
<font size=2>
[x,y,z] = xyzbin(...);
:[x,y,z] = xyzbin(...);
[x,y,z] = xyzbin(<font color=magenta>'infile'</font>,infile,<font color=magenta>'outfile'</font>,outfile,<font color=magenta>'dx'</font>,dx);
:[x,y,z] = xyzbin(<font color=magenta>'infile'</font>,infile,<font color=magenta>'outfile'</font>,outfile,<font color=magenta>'dx'</font>,dx);
[x,y,z] = xyzbin(<font color=magenta>'x'</font>,xin,<font color=magenta>'y'</font>,yin,<font color=magenta>'z'</font>,zin,<font color=magenta>'dx'</font>,dx);
:[x,y,z] = xyzbin(<font color=magenta>'x'</font>,xin,<font color=magenta>'y'</font>,yin,<font color=magenta>'z'</font>,zin,<font color=magenta>'dx'</font>,dx);
[x,y,z] = xyzbin(<font color=magenta>'x'</font>,xin,<font color=magenta>'y'</font>,yin,<font color=magenta>'z'</font>,zin,<font color=magenta>'dx'</font>,dx,<font color=magenta>'dy'</font>,dy);
:[x,y,z] = xyzbin(<font color=magenta>'x'</font>,xin,<font color=magenta>'y'</font>,yin,<font color=magenta>'z'</font>,zin,<font color=magenta>'dx'</font>,dx,<font color=magenta>'dy'</font>,dy);
[x,y,z] = xyzbin(<font color=magenta>'infile'</font>,infile,<font color=magenta>'dx'</font>,dx,<font color=magenta>'x0'</font>,x0,<font color=magenta>'y0'</font>,y0,<font color=magenta>'theta'</font>,theta);
:[x,y,z] = xyzbin(<font color=magenta>'infile'</font>,infile,<font color=magenta>'dx'</font>,dx,<font color=magenta>'x0'</font>,x0,<font color=magenta>'y0'</font>,y0,<font color=magenta>'theta'</font>,theta);
</font>
</font>
* Download Matlab script [[Media:xyzbin.rar | xyzbin.m]].
* Download Matlab script - [[Media:Xyzbin.m| xyzbin.m]].


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* Usage:  
* Usage:  
<font size=2>
<font size=2>
interp_eng(<font color=magenta>'Wave.eng'</font>,<font color=magenta>'New.eng'</font>,1,0.5) <font color=green>%interpolates to every half interval</font>
:interp_eng(<font color=magenta>'Wave.eng'</font>,<font color=magenta>'New.eng'</font>,1,0.5) <font color=green>%interpolates to every half interval</font>
interp_eng(<font color=magenta>'Wave.eng'</font>,<font color=magenta>'New.eng'</font>,1,2)  <font color=green> %resamples every two spectra</font>
:interp_eng(<font color=magenta>'Wave.eng'</font>,<font color=magenta>'New.eng'</font>,1,2)  <font color=green> %resamples every two spectra</font>
interp_eng(<font color=magenta>'Wave.eng'</font>,<font color=magenta>'New.eng'</font>,2,1)  <font color=green> %hrs</font>
:interp_eng(<font color=magenta>'Wave.eng'</font>,<font color=magenta>'New.eng'</font>,2,1)  <font color=green> %hrs</font>
</font>
</font>
* Download Matlab script [[Media:interp_eng.rar | interp_eng.m]].
* Input:
:engin = Input eng file
:engout = Output eng file
:mode = 1 - Index, 2 - Time
:dtout = Output steering interval in hours for mode=2 or index for mode 1 (can be less than 1)
* Download Matlab script - [[Media:Interp eng2.m| interp_eng.m]].
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== Principle Component Analysis of Vector Time Series ==
== Principle Component Analysis ==
[[Image:uv2ellipse.png|thumb|right|400px| Example of a principle component analysis. ]]
[[Image:pca2d_example.png|thumb|right|300px| Example of a principle component analysis. ]]
* Description: Calculates the principle axes of vector time series data. This subroutine is useful for determining the main direction of fluid flow and extracting the velocity component along the major axis. The principle axes are determined by solving the eigenvalue problem for two-dimensional scatter data.  
* Description: Calculates the principle axes of vector time series data. This subroutine is useful for determining the main direction of fluid flow and extracting the velocity component along the major axis. The principle axes are determined by solving the eigenvalue problem for two-dimensional scatter data.  
* Usage:
* Usage:
<font size=2>
<font size=2>
s = uv2ellipse(u,v);
:s = pca2d(u,v)
s = uv2ellipse(u,v,show); <font color=green> %show=1 - Plots results</font>
s = uv2ellipse(u,v,show,pos); <font color=green>%pos - displays a table on figure with results at pos=(x,y)
</font>
</font>
</font>
* Output:
* Output:
:s = Structure with the following fields:
:s = Structure with the following fields:
::area = Area del ellipse
::center = Ellipse center (centroid)
::axes = Magnitude of ellipse axes [major, minor];
::area = Ellipse area
::vartotal = Total variance
::axes = Ellipse axes
::Percentages = Percentage variance for each axes
::eigen_values = Eigen values
::Angles = Angles for each axes in degrees [major, minor];
::eigen_vectors = Eigen vectors
::excen = Excentricity of the ellipse
::total_variance = Total variance
::ellipse = Points [x,y] which describe the ellipse
::percentage_variance = Percentage variance for each axes
::Slope = Slope of the linear fit which goes through the origin
::angles = Angles for each axes in degrees
::Center = Center of the ellipse [cu,cv]
::eccentricity = Ellipse eccentricity
::slope = Slope of the linear fit which goes through the origin
* Note: An alternative simple way of determining the principle axes of vector time series is  
* Note: An alternative simple way of determining the principle axes of vector time series is  
\begin{equation} \tag{1}
{{Equation|
  \phi_p  = \frac{1}{2} \arctan ^{-1} \biggl( \frac{2 \big\langle u v \big\rangle }{ \big\langle v^2 \big\rangle - \big\langle u^2 \big\rangle } \biggr) + \frac{\pi}{2}  
<math>
\end{equation}
\phi_p  = \frac{1}{2} \arctan ^{-1} \biggl( \frac{2 \big\langle u' v' \big\rangle }{ \big\langle u'^2 \big\rangle - \big\langle v'^2 \big\rangle } \biggr)
* Download Matlab script [[Media:uv2ellipse.rar | uv2ellipse.m:]].
+ \pi/2</math>|1}}
 
where <math> u' = u - \bar{u} </math> and <math> v' = v - \bar{v} </math>.
 
 
* Download Matlab script - [[Media:Pca2d.m| pca2d.m:]].
 
<br  style="clear:both"  />
 
== Data Density Scatter Plot ==
[[Image:Data_Density_Plot.png|thumb|right|400px| Example of a data density plot. ]]
* Description: datadensity Computes and plots the data density (points/area) of scattered points
* Usage:
<font size=2>
:dd = datadensity(x,y,method,radius)
</font>
* Input:
::(x,y) -  coordinates of points
::method - either 'squares','circles', or 'voronoi'
::default = 'voronoi'
::radius - Equal to the circle radius or half the square width
 
* Download Matlab script - [[Media:Datadensity.m| datadensity.m:]].


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== Spectral Analysis ==
== Spectral Analysis ==
[[Image:specwelch.png|thumb|right|400px| Example of Power Spectrum for an idealized water level time series with white noise and a large gap. ]]
[[Image:specwelch.png|thumb|right|500px| Example of Power Spectrum for an idealized water level time series with white noise and a large gap. ]]
* Description: Calculates the spectrum for a scalar time series  using Welch's method. The confidence intervals are calculated with the inverse of chi-square distribution. Also includes a filtering option using the  butterworth filter to see the effect of the filter on the spectrum.
* Description: Calculates the spectrum for a scalar time series  using Welch's method. The confidence intervals are calculated with the inverse of chi-square distribution. Also includes a filtering option using the  butterworth filter to see the effect of the filter on the spectrum.
* Usage:  
* Usage:  
<font size=2>
<font size=2>
q = specwelch(x,dt,w,Nsg,pnv,Wn,ftype,n);
:q = specwelch(x,dt,w,Nsg,pnv,Wn,ftype,n);
[psdf,f] = specwelch(x,dt,w,Nsg,pnv,Wn,ftype,n);
:[psdf,f] = specwelch(x,dt,w,Nsg,pnv,Wn,ftype,n);
[psdf,conf,f] = specwelch(x,dt,w,Nsg,pnv,Wn,ftype,n);
:[psdf,conf,f] = specwelch(x,dt,w,Nsg,pnv,Wn,ftype,n);
</font>
</font>
* Input:
* Input:
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::psdT - Power Spectrum Density, Pxx(T), [Power*time-unit]
::psdT - Power Spectrum Density, Pxx(T), [Power*time-unit]
::conf - Upper and Lower Confidence Interval multiplication factors using chi-squared approach
::conf - Upper and Lower Confidence Interval multiplication factors using chi-squared approach
* Download Matlab script [[Media:specwelch.rar | specwelch.m]].
* Download Matlab script - [[Media:Specwelch.m| specwelch.m]].


== Vector Plot ==
== Vector Plot ==
[[Image:vecplot_v2_small.png|thumb|right|600px| Example comparisons between feater.m, quiver.m, and vecplot.m ]]
[[Image:vecplot_v2_small.png|thumb|right|600px| Example comparisons between feather.m, quiver.m, and vecplot.m ]]
* Description: Plots directionally correct vectors. Both of matlab subroutines feather.m and quiver.m do not preserve the correct vctor angles.
* Description: Plots directionally correct vectors. Both of Matlab subroutines feather.m and quiver.m do not preserve the correct vector angles.
* Usage:  
* Usage:  
<font size=2>
<font size=2>
h = vecplot(x,y,u,v,'PropertyName',PropertyValue,...)
:h = vecplot(x,y,u,v,'PropertyName',PropertyValue,...)
h = vecplot(u,v,'PropertyName',PropertyValue,...)
:h = vecplot(u,v,'PropertyName',PropertyValue,...)
</font>
</font>
* Input:
* Input:
:x,y = Position Coordinates
:x,y = Position Coordinates
:u,v = Vector Componentes
:u,v = Vector Componentes
:* Optional Properties
* Optional Properties
: 'DataAspectRatio' = Scaling factor between x and y axes. This is set as the second element of the property 'DataAspectRatio'
: 'DataAspectRatio' = Scaling factor between x and y axes. This is set as the second element of the property 'DataAspectRatio'
: 'LengthScale' = Length scaling factor for the barbs or arrows
: 'LengthScale' = Length scaling factor for the barbs or arrows
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* Output:
* Output:
:h = handles for plot objects
:h = handles for plot objects
* Download Matlab script [[Media:vecplot.m | vecplot.m]].
* Download Matlab script - [[Media:Vecplot.m| vecplot.m]].
<br style="clear:both"  />
<br style="clear:both"  />


[[Image:Waves_2009-2010.png|thumb|left|600px| Example using vecplot to plot wave conditions. ]]
[[Image:Waves_GH_low.png|thumb|left|600px| Example using vecplot to plot wave conditions. ]]
 
<br style="clear:both"  />


== Tidal Harmonic Analysis ==
[[Image:tha_Crescent_City2.png|thumb|right|600px| Example tidal harmonic analysis results for Crescent City, CA]]
* Description: Simple program which performs a tidal harmonic anlaysis of scalar (e.g. water level) or vector (current velocity) time series. The script is only applicable for relatively short time series of a few months.
* Usage:
<font size=2>
:out = tha(in);
</font>
*Input:
:in - Structure array with the following fields
::x - real or complex vector [arbitrary units]
::t - time in hrs from zero [hours startin from zero]
::start_time - starting time as [yyyy,mm,dd,HH,MM,SS]
::constituents - optional input constituent names
::rayleigh - optional rayleigh criteria (<=1)
::secular - optional secular correction. Either 'linear' or 'none'. If set to 'linear', the slope is included as a correction to the time series.
*Output:
:out - Structure array with different fields depending on whether the input time series in real or complex.
::amplitudes - Tidal constituent amplitudes (real time series)
::constituents - Tidal constituent names
::equilibrium_arguments - Equilibrium arguments (v+u) for each constituent and starting time
::frequencies - Tidal constituent frequencies
::frequency_units - 'cycles/hour'
::nodal_factors - Nodal factors for each constituent and year.
::phases - Tidal constituent phases
::phase_units = 'degrees'   
::percent_variance_explained - Percent variance explained of the measured time series by the fitted time series.
::residuals - difference between measured and fit time series
::slope - fitted slope(s)
::speeds - Tidal constituent speeds in degrees/hour
::speed_units = 'degrees/hour'
::time - Julien time in hours from start of year
::time_units = 'hours'
::(variables bewlow are only for complex time series only)
::major_amplitude - Semi-major axis amplitude
::minor_amplitude - Semi-minor axis amplitude
::positive_amplitude - Positive axis amplitude (a+)
::negative_amplitude - Negative axis amplitude (a-)
::positive_phase - Positive axis phase (phase+) [deg]
::negitive_phase - Negative axis phase (phase-) [deg]
::ellipse_inclination - Ellipse orientation or inclination [deg]
::eccentricity
* Version: 3.0
* Date: November 5, 2012
* Author: Alex Sanchez, USACE-CHL
* Download Matlab function [[Media:Tha.m| tha.m]].
* Download Matlab test script [[Media:Tha test.m| tha_test.m]].
* Download tidal data file with nodal factors and equilibrium arguments [[Media:Tide data v1.mat| tide_data_v1.mat]].
* Download sample time series file for Crescent City, CA [[Media:TimeSeries 9419750.txt| TimeSeries_9419750.txt]].
* Download sample constituent file for Crescent City, CA [[Media:Constituents 9419750.txt| Constituents_9419750.txt]].
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<br style="clear:both"  />


== Extract Time Series from NOAA World Blended Sea Winds ==
== Extract Time Series from NOAA World Blended Sea Winds ==
* Description: Extracts a time series of wind speed and direction for use in CMS from the 6 hrly global blended sea wind database (http://www.ncdc.noaa.gov/oa/rsad/air-sea/seawinds.html) which has a 0.25º resolution. Outputs *.xys files which can easily be imported into SMS.
* Description: Extracts a time series of wind speed and direction for use in CMS from the 6 hrly global blended sea wind database (http://www.ncdc.noaa.gov/oa/rsad/air-sea/seawinds.html) which has a 0.25º resolution. Outputs *.xys files which can easily be imported into SMS.
* Download Matlab script [[Media:blended_winds_extract_time_series.rar| blended_winds_extract_time_series.m ]]
* Download Matlab script - [[Media:Blended winds extract time series.m| blended_winds_extract_time_series.m]]
[[Image:Blended_Sea_Winds_Map.png|thumb|left|400px| Blended Surface  Sea Winds for a section of the North-West US coast.]]
[[Image:Blended_Sea_Winds_Map.png|thumb|left|400px| Blended Surface  Sea Winds for a section of the North-West US coast.]]
[[Image:Blended_Winds_Time_Series.png|thumb|none|400px| Extracted sea winds]]
[[Image:Blended_Winds_Time_Series.png|thumb|none|400px| Extracted sea winds]]
[[Image:Blended_Winds_Vel_Dir.png|thumb|none|400px| Extracted sea winds]]
[[Image:Blended_Winds_Vel_Dir.png|thumb|none|400px| Extracted sea winds]]
<br style="clear:both"  />
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:x,y = Position Coordinates
:u,v = Vector Componentes
* Output:
: h = handles for plot objects
* Download Matlab script [[Media:vecplot.rar | vecplot.m:]].
<br style="clear:both"  />
== Image Digitization Tool ==
== Image Digitization Tool ==
[[Image:digi_screenshot.JPG|thumb|right|400px| Example digitization of an earthquake rupture zone.]]
[[Image:digi_screenshot.JPG|thumb|right|400px| Example digitization of an earthquake rupture zone.]]
Line 249: Line 426:
:# Click on "Export" and select one of the output options including variables to the workspace and an ASCII file.
:# Click on "Export" and select one of the output options including variables to the workspace and an ASCII file.


* Download Matlab script [[Media:digitize.rar | digitize.m]].
* Download Matlab script - [[Media:Digitize.m| digitize.m]].


<br style="clear:both"  />
<br style="clear:both"  />
Line 257: Line 434:
* Usage: Type mfile name in Matlab command window
* Usage: Type mfile name in Matlab command window
<font size=2>
<font size=2>
CMS_WIS_to_txt_for_spectragen
:CMS_WIS_to_txt_for_spectragen
</font>  
</font>  


* Download Matlab script [[Media: CMS_WIS_to_txt_for_spectragen.m | CMS_WIS_to_txt_for_spectragen.m]].
* Download Matlab script - [[Media:CMS WIS to txt for spectragen.m| CMS_WIS_to_txt_for_spectragen.m]].


<br style="clear:both"  />
<br style="clear:both"  />
Line 268: Line 445:
* Usage:  
* Usage:  
<font size=2>
<font size=2>
[t,x] = read_superdat(filename);
:[t,x] = readsuperdat(filename);
</font>  
</font>  
* Download Matlab script [[Media: read_superdat.m | read_superdat.m]].
* Download Matlab script - [[Media:Readsuperdat.m| readsuperdat.m]].
<br style="clear:both"  />
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Line 277: Line 454:
* Usage:  
* Usage:  
<font size=2>
<font size=2>
[t,x] = read_xy(filename);
:[t,x] = read_xy(filename);
</font>
* Download Matlab script - [[Media:Read xy.m| read_xy.m]].
<br style="clear:both"  />
 
== Wave Number Calculation ==
* Description: Simple program which solves the wave dispersion relation sig^2 = g*k*tanh(k*h).
* Usage:
<font size=2>
:wk = wavenumber(g,wa,wd,h,u,v,tol)
:[wk,err] = wavenumber(g,wa,wd,h,u,v)
</font>  
</font>  
* Download Matlab script [[Media: read_xy.m | read_xy.m]].
* Download Matlab script - [[Media:Wavenumber.m| wavenumber.m]].
<br style="clear:both"  />
<br style="clear:both"  />
== Read Sediment Flux ==
* Description: Reads in data from CMS sediment flux output file, skipping header lines.
* Usage:
<font size=2>
: data = read_sed_flux(filename)
</font>
* Input:
: no arguments - use ui to select file manually
: one argument (<filename>) - input file name (as a string). If path is not specified it will be assumed to be the present working directory.
* Output: data - a double in which each column represents a column from the file.
* Download Matlab script - [[Media:Read sed flux.m| read_sed_flux.m]]'
<br style="clear:both" />
= New CMS Tools menu (v5.2.5 and later) =
This is a tool which works from the Command Line for CMS.  Run '<cms executable> Tools' to get the menu. Note: depending on version number, certain options may not have been added yet. For all, get the latest version.
== Print RT_JULIAN/REFTIME corresponding to actual date ==
This option will prompt the user for a date and will return an reference number.
:For example, the date '''2022-08-05 00:00:00:00''' returns the value '''983103.50'''
== Print actual date corresponding to RT_JULIAN/REFTIME ==
This option will prompt the user for reference time and will return the actual date it corresponds to.  This is useful for some ASCII Output from CMS that contains this value.
:For example, the reference time '''983103.50''' returns the date '''2022-08-05 00:00:00:00'''
== Read WSE Dataset and output a Max WSE dataset for all times ==
*This prompts the user to enter the filename for a water surface elevation solution file which was output from a CMS simulation.
*It then reads all times for all cells in the file and then writes a new solution file that contains one record which is the Maximum value for each cell in the grid over the entire simulation run.  Can be used to see the maximum surge from storms or other events.
*The resulting file has the same prefix as other solution files but ends with '_maxwse.h5'.
== Take multiple solution datasets and merge into one file ==
Many times a user will have several different files containing one or more datasets and they wish to pick and choose certain datasets to combine into one new file. This may be for use with PTM or perhaps the Sediment Mapping feature of CMS.
*The tool asks how many solution datasets to merge into a new file.
*Using the number from the first step, the code asks for the filename containing the datasets that the user wishes to merge into the new file.
**Once the name is entered, CMS reads the file and presents a list of datasets names for the user to choose from.
**The user will then choose which of the numbered datasets they want from the list.
*The tool then asks the user for the name of the merged file. '''Warning - an existing file of that name will be overwritten'''.
*The tool then displays the progress as it processes each of the selected datasets and then writes out the new file containing all of the data from the selected files.
== Extract data for one cell from multiple datasets to a text file ==
Testing in progress.


= TextPad Syntax File for CMS-Flow Card File=
= TextPad Syntax File for CMS-Flow Card File=
[[Image:Textpad_cmcards.png|thumb|right|600px| Example cmcards file viewed in Textpad ]]
[[Image:cmcards_textpad.png|thumb|right|400px| Example cmcards file viewed in Textpad ]]
* Color codes the CMS-Flow card file (*.cmcards) so that it is easier to read and avoids misspelling of keywords.
* Color codes the CMS-Flow card file (*.cmcards) so that it is easier to read and avoids misspelling of keywords.
* To setup the file:
* To setup the file:
Line 294: Line 525:
:# Enable the syntax highlighting and select the CMS-Flow_V4.syn file.
:# Enable the syntax highlighting and select the CMS-Flow_V4.syn file.
:# Click on Finish and your done!
:# Click on Finish and your done!
* To download click: [[Media:CMS-Flow_v4.zip‎ | CMS-Flow_V4.syn]].
* Version 4.0 and earlier: [[Media:CMS-Flow v4.syn| CMS-Flow_V4.syn]].
* Version 4.1 and earlier: [[Media:CMS-Flow v4p1.syn| CMS-Flow_V4p1.syn]].
<br style="clear:both"  />
 
= Notepad++ Syntax File for CMS-Flow Card File=
[[Image:cmcards_notepad++.png|thumb|right|400px| Example cmcards file viewed in Notepad++]]
* Color codes the CMS-Flow card file (*.cmcards) so that it is easier to read and avoids misspelling of keywords.
* Version 4.1 and earlier: [[Media:CMS-Flow v4p1.xml.zip| CMS-Flow_v4p1.xml]].
<br style="clear:both"  />
 
= UltraEdit Syntax File for CMS-Flow Card File=
[[Image:cmcards_ultraedit.png|thumb|right|400px| Example cmcards file viewed in UltraEdit]]
* Color codes the CMS-Flow card file (*.cmcards) so that it is easier to read and avoids misspelling of keywords.
* Version 4.1 and earlier: [[Media:CMS-Flow v4p1.uew.zip| CMS-Flow_v4p1.uew]].
<br style="clear:both"  />
<br style="clear:both"  />


= HDFview =
= HDFview =
* HDFview is a free visualziation tool for browsing and editing HDF4 and HDF5 files.  
* HDFview is a free visualization tool for browsing and editing HDF4 and HDF5 files.  
* To download or download a free copy visit:
* To download or download a free copy visit:
: http://www.hdfgroup.org/hdf-java-html/hdfview/
: https://www.hdfgroup.org/downloads/hdfview/
 
*Later HDFView binaries require C++ redistributables.  If you install the viewer and still cannot access the files, try installing this:
: https://support.microsoft.com/en-us/help/2977003/the-latest-supported-visual-c-downloads


= Grain Size Distribution Analysis =
= Grain Size Distribution Analysis =
* This Excel worksheet calculates statistics for many samples using several methods including Folk and Ward and the Method of Moments.
* This Excel worksheet calculates statistics for many samples using several methods including Folk and Ward and the Method of Moments.
: http://www.cedex.es/pipermail/rivers-list/attachments/20061004/56b4085f/gradistat-0001.xls
* Disclaimer: The analysis software GRADISTAT is developed by Kenneth Pyle Associates Ltd. This reference does not imply official or unofficial endorsement.
* Link: http://www.kpal.co.uk/gradistat.html


<br style="clear:both" />
<br style="clear:both" />


= Wave Transformation =
= Wave Transformation =
* [[media:Ww3-spectra.zip | Wave Watch III spectra]]
== From Wave Characteristics to CMS-Wave spectral energy file. ==
* [[media:Wis-spectra.zip | WIS wave spectra]]
'''Fortran executables for Windows'''
* [[media:Cdip-spectra.zip | CDIP Buoy wave spectra]]
* [[Media:Ww3-spectra.zip| Wave Watch III spectra]]
* [[media:Ndbc-spectra.zip | NDBC Buoy wave spectra]]
* [[Media:Wis-spectra.zip| WIS wave spectra]]
* [[Media:Cdip-spectra.zip| CDIP Buoy wave spectra]]
* [[Media:Ndbc-spectra.zip| NDBC Buoy wave spectra]]
 
== From 2D Spectra to CMS-Wave spectral energy file ==
'''Python source code'''
 
* [[Media:WISspec2CMS.zip | WIS Stations]]
 


----
----
[[CMS#Documentation_Portal | Documentation Portal]]
[[CMS#Documentation_Portal | Documentation Portal]]

Latest revision as of 14:46, 23 May 2024

Time Series Analysis

filter1d.m

Filter1D: Time Series Analysis Tool

  • The Matlab utility provides users of the SMS, a one-stop package for preparing model input time series and allows users to interpolate, resample, filter, and transform any type of model forcing and supports SMS compatible file formats for ease of data transfer.
  • The main feature of the software is the ability to apply high-pass, low-pass, band-pass, and band-stop filters to time series.
  • Filter1D uses a windowed sinc filter which is a non-recursive finite impulse response filter.
  • Wiki Manual Filter1d
  • PDF User Guide filter1d_user-guide.pdf
  • Download Matlab script filter1d.m
  • Download Matlab executable filter1d.exe
  • Link to download Matlab Compiler Runtime library: http://www.mathworks.com/products/compiler/mcr/
  • Download sample time series data file Blind_Pass.tsd


TAP Interface

TAP: Tidal Analysis and Prediction software

  • TAPtides is the ideal package to explore and develop preliminary or finalized tidal predictions from serial records spanning several weeks to several months.
  • Designed to be easy to use, its Graphical User Interface permits quick separation of a time series of water level measurements into its tidal and non-tidal components using a selective least squares harmonic reduction employing up to 35 tidal constituents.
  • After saving the tidal constants for the constituents selected during analysis, the user can generate predictions of the astronomical tide, the water level that varies at known tidal frequencies attributable to gravitational interactions between the earth, moon, and sun.


Matlab scripts

Read CMS-Flow Grid File (*_grid.h5)

cms_read_grid.m Reads a CMS nonuniform Cartesian grid
  • Description:
Reads a CMS grid file and creates a structure variable containing the grid variables
  • Usage:

grd = cms_read_grid(filename);

  • Input:
filename - Input file name including full path (e.g. 'Flow_grd.h5')
  • Output:
grd - structure variable containing the following variables
nx - Grid size in x direction [-]
ny - Grid size in y direction [-]
x0 - Grid origin in x direction [m]
y0 - Grid origin in y direction [m]
angle - Grid angle [deg]
x(1:nx) - Cell-center coordinates in x direction [m]
y(1:ny) - Cell-center coordinates in y direction [m]
depth(1:ny,1:nx) - Cell-centered depth [m]
active(1:ny,1:nx) - Cell activity (1-active and 0-inactive) [logical]
Plus other optional datasets such as mannings, d50, etc.
  • Author: Alex Sanchez, USACE-ERDC-CHL


Read CMS-Flow Tel File (*.tel)

  • Description:
Reads a CMS telescoping grid file and output all variables to a structure array.
  • Usage:

out = cms_read_tel(telfile);

  • Input:
telfile - Telescoping grid file including path (*.tel)
  • Output:
tel - Structure including the following fields
ncells - Number of cells
x0 - Grid origin in x-direction [m]
y0 - Grid origin in y-direction [m]
angle - Grid angle [deg]
id - Cell ID number
x - Grid cell-centered coordinate in x-direction [m]
y - Grid cell-centered coordinate in y-direction [m]
dx - Grid cell resolution in x-direction [m]
dy - Grid cell resolution in y-direction [m]
iloc - Cell connectivity
depth - Cell-centered depths (-999 = inactive cell) [m]
  • Author: Alex Sanchez, USACE


Read CMS-Flow solution files

  • Description:
Reads a CMS solution file and creates a structure variable containing the solution datasets values and times
  • Input:
filename - input file name including full path
grd - Grid structure containing the following fields
nx - Grid size in x direction
ny - Grid size in y direction
varargin - dataset names
  • Output:
sol - structure variable containing dataset values and times
varargout - variable length datasets corresponding to varargin
  • Usage:

filename = 'test_sol.h5';
sol = cms_read_sol(filename,grd);
wse = cms_read_sol(filename,grd,'Water_Elevation');
[wse,uv] = cms_read_sol(filename,'Water_Elevation','Current_Velocity');
sol = cms_read_sol(filename,'grid',grd,'datasetnames',dnames,...
'points',pts,'cells',ids,'polygon',poly,'steps',nstep,'times',t)

  • Author: Alex Sanchez, USACE-ERDC-CHL


Read SMS Time Series Data File

  • Description: Reads the Surface-water Modeling System time-series data (*.tsd) file.
  • Usage:

[t,dat,name,units] = sms_read_tsd('data.tsd');


Read a CMS Save Point File

  • Description:
Reads a CMS Save Point file
  • Usage:

sp = cms_read_sp(filename);

  • Input:
filename - CMS Save Point file name
  • Output:
sp - Structure with the following fields
variable - Name of output variable
reference_time_str - Reference time string in the following format 'yyyy-mm-dd HH:MM:SS'
reference_time - Reference time
label - Save point label
creation_date - Creation date
horizontal_projection - Horizontal projection
vertical_datum - Vertical datum
time_units - Time units
output_units - Units of output variable
cms_version - CMS version number
number_points - Number of points in time series
names - Names of output points
xy - Coordinates of output points
time - Output times
scalar - Output scalar
vector - Output vector
  • Author: Alex Sanchez, USACE-CHL


Write SMS Time Series Data File

  • Description: Writes a Surface-water Modeling System time-series data (*.tsd) file.
  • Usage:

sms_write_tsd(filenamet,dat,curvename,curvetype);


Read SMS XY Series File

  • Description: Reads the Surface-water Modeling System xy series (*.xys) file.
  • Usage:

[x,y,name] = sms_read_xys('data.xys');


Write SMS XY Series File

  • Description: Writes a Surface-water Modeling System xy series (*.xys) file.
  • Usage:

sms_write_xys(file,x,y,name)


Bin scatter data

Example of xyzbin.m application to multibeam data with 5-m bins.
  • Description: Averages the x, y, and z values of points within the same bin. The grid used to define the bins may be user specified are calculated based on the extent of the scatter points. The routine is useful for thinning/smoothing large scatter sets such as multibeam or LIDAR data. The binning method is less accurate then the search radius method, but is much faster.
  • Usage:

[x,y,z] = xyzbin(...);
[x,y,z] = xyzbin('infile',infile,'outfile',outfile,'dx',dx);
[x,y,z] = xyzbin('x',xin,'y',yin,'z',zin,'dx',dx);
[x,y,z] = xyzbin('x',xin,'y',yin,'z',zin,'dx',dx,'dy',dy);
[x,y,z] = xyzbin('infile',infile,'dx',dx,'x0',x0,'y0',y0,'theta',theta);


Interpolation of CMS-Wave Spectra

  • Description: Interpolates the energy spectra in the CMS-Wave *.eng file to a specified output interval which may be specified in intervals or time units (hours). For example, an output interval of 0.5 index units, interpolates the spectra at half intervals. This subroutine is useful for filling small gaps in CMS spectra.
  • Usage:

interp_eng('Wave.eng','New.eng',1,0.5) %interpolates to every half interval
interp_eng('Wave.eng','New.eng',1,2) %resamples every two spectra
interp_eng('Wave.eng','New.eng',2,1) %hrs

  • Input:
engin = Input eng file
engout = Output eng file
mode = 1 - Index, 2 - Time
dtout = Output steering interval in hours for mode=2 or index for mode 1 (can be less than 1)


Principle Component Analysis

Example of a principle component analysis.
  • Description: Calculates the principle axes of vector time series data. This subroutine is useful for determining the main direction of fluid flow and extracting the velocity component along the major axis. The principle axes are determined by solving the eigenvalue problem for two-dimensional scatter data.
  • Usage:

s = pca2d(u,v)

  • Output:
s = Structure with the following fields:
center = Ellipse center (centroid)
area = Ellipse area
axes = Ellipse axes
eigen_values = Eigen values
eigen_vectors = Eigen vectors
total_variance = Total variance
percentage_variance = Percentage variance for each axes
angles = Angles for each axes in degrees
eccentricity = Ellipse eccentricity
slope = Slope of the linear fit which goes through the origin
  • Note: An alternative simple way of determining the principle axes of vector time series is
 

(1)

where and .



Data Density Scatter Plot

Example of a data density plot.
  • Description: datadensity Computes and plots the data density (points/area) of scattered points
  • Usage:

dd = datadensity(x,y,method,radius)

  • Input:
(x,y) - coordinates of points
method - either 'squares','circles', or 'voronoi'
default = 'voronoi'
radius - Equal to the circle radius or half the square width


Spectral Analysis

Example of Power Spectrum for an idealized water level time series with white noise and a large gap.
  • Description: Calculates the spectrum for a scalar time series using Welch's method. The confidence intervals are calculated with the inverse of chi-square distribution. Also includes a filtering option using the butterworth filter to see the effect of the filter on the spectrum.
  • Usage:

q = specwelch(x,dt,w,Nsg,pnv,Wn,ftype,n);
[psdf,f] = specwelch(x,dt,w,Nsg,pnv,Wn,ftype,n);
[psdf,conf,f] = specwelch(x,dt,w,Nsg,pnv,Wn,ftype,n);

  • Input:
x - Time series, [vector]
dt - Sampling Rate, [scalar]
win - Window, one of: 'hanning', 'hamming', 'boxcar'
Nsg - Number of Segments (>=1)
pnv - Percentage Noverlap of Segments (0-100)
Nb - Band Averaging, number of bands to average
P - Probability for confidence intervals, (e.g. 0.95)
Wn - Cut-Off frequencies, used for filtering
ftype - Type of filter, 'high', 'low' or 'stop'
n - Number of coefficients to use in the Butterworth filter
  • Output:
q - structure with the following fields:
xp - detrended x
f - Frequencies
T - Periods
m - Magnitude
a - Amplitude
s - Power spectrum, Sxx(win), [Power]
psdw - Power Spectrum Density, Pxx(win), [Power/rad/sample]
psdf - Power Spectrum Density, Pxx(f), [Power/sample-freq]
psdT - Power Spectrum Density, Pxx(T), [Power*time-unit]
conf - Upper and Lower Confidence Interval multiplication factors using chi-squared approach

Vector Plot

Example comparisons between feather.m, quiver.m, and vecplot.m
  • Description: Plots directionally correct vectors. Both of Matlab subroutines feather.m and quiver.m do not preserve the correct vector angles.
  • Usage:

h = vecplot(x,y,u,v,'PropertyName',PropertyValue,...)
h = vecplot(u,v,'PropertyName',PropertyValue,...)

  • Input:
x,y = Position Coordinates
u,v = Vector Componentes
  • Optional Properties
'DataAspectRatio' = Scaling factor between x and y axes. This is set as the second element of the property 'DataAspectRatio'
'LengthScale' = Length scaling factor for the barbs or arrows
'LineSpec' = Line specification string syntax (default '-k^') (e.g. '^k' - plots black arrows, 'k' - plots black sticks)
'Linewidth' = Linewidth
'Marker' = '^' for triangle arrows, 'v' for angled arrows,
and for stick plots (default stick)
'MarkerFaceColor' = Arrow fill color (default none)
'MarkerEdgeColor' = Arrow edge color (default line color)
'MarkerSize' = Marker size
'LegendLength' = Sets the length of the legend vector
'LegendUnits' = Sets the units for the legend vector
'legendPosition' = Sets the legend position (normalized units 0-1)
  • Output:
h = handles for plot objects


Example using vecplot to plot wave conditions.


Tidal Harmonic Analysis

Example tidal harmonic analysis results for Crescent City, CA
  • Description: Simple program which performs a tidal harmonic anlaysis of scalar (e.g. water level) or vector (current velocity) time series. The script is only applicable for relatively short time series of a few months.
  • Usage:

out = tha(in);

  • Input:
in - Structure array with the following fields
x - real or complex vector [arbitrary units]
t - time in hrs from zero [hours startin from zero]
start_time - starting time as [yyyy,mm,dd,HH,MM,SS]
constituents - optional input constituent names
rayleigh - optional rayleigh criteria (<=1)
secular - optional secular correction. Either 'linear' or 'none'. If set to 'linear', the slope is included as a correction to the time series.
  • Output:
out - Structure array with different fields depending on whether the input time series in real or complex.
amplitudes - Tidal constituent amplitudes (real time series)
constituents - Tidal constituent names
equilibrium_arguments - Equilibrium arguments (v+u) for each constituent and starting time
frequencies - Tidal constituent frequencies
frequency_units - 'cycles/hour'
nodal_factors - Nodal factors for each constituent and year.
phases - Tidal constituent phases
phase_units = 'degrees'
percent_variance_explained - Percent variance explained of the measured time series by the fitted time series.
residuals - difference between measured and fit time series
slope - fitted slope(s)
speeds - Tidal constituent speeds in degrees/hour
speed_units = 'degrees/hour'
time - Julien time in hours from start of year
time_units = 'hours'
(variables bewlow are only for complex time series only)
major_amplitude - Semi-major axis amplitude
minor_amplitude - Semi-minor axis amplitude
positive_amplitude - Positive axis amplitude (a+)
negative_amplitude - Negative axis amplitude (a-)
positive_phase - Positive axis phase (phase+) [deg]
negitive_phase - Negative axis phase (phase-) [deg]
ellipse_inclination - Ellipse orientation or inclination [deg]
eccentricity


Extract Time Series from NOAA World Blended Sea Winds

Blended Surface Sea Winds for a section of the North-West US coast.
Extracted sea winds
Extracted sea winds


Image Digitization Tool

Example digitization of an earthquake rupture zone.
  • Description: digitize is a user interfase that allows to import image files (.bmp, etc) into MatLab to digitize data from. Previous sessions can also be loaded. It is useful for digitizing plots%and making world files for images. The utility can be used for digitizing time series plots, geographic features such as coastlines, or elevation contours.
  • Instructions:
  • Load image
  1. To start a new session, click on the "Load" menu and select "Image File".
  2. To load a saved session, click on the "Load" menu and select "Session".
  • Reference the image
  1. Click on the "Transformation" menu and select "Add Points".
  2. Left-click on the points reference points and Right-click when finished.
  3. Right-click on any reference point and select "Reference" to enter the points "true" coordinate.
  4. When the coordinated for all the reference points have been entered the "Reference Data Complete" item under the "Transformation" menu will be checked.
  5. To delete Transformation points, right-click on a point and select "Delete".
  • Digitize Points
  1. Click on the "Digitization" menu and select "Add Points". The digitized points may be entered at any time, but their transformed coordinated are not calculated until the reference data is complete.
  2. To see a digitized point's transformed coordinate, right-click on a point and select "Coordinates".
  • Export the Digitized Points
  1. Click on "Export" and select one of the output options including variables to the workspace and an ASCII file.


Create Spectra Generation Import file with WIS datafiles

  • Description: This function creates the .txt file used in the spectra generator of CMS Wave. It prompts the user to select all the desired WIS output files, specify the depth of the station, and whether or not to average the data series. The data and user inputs are manipulated into the format used by CMS Wave file import for spectra generation. Currently the output file is saved in the active directory of matlab.
  • Usage: Type mfile name in Matlab command window

CMS_WIS_to_txt_for_spectragen


Read an SMS Super ASCII data file (*.dat)

  • Description: This function reads an SMS Super ASCII data file (*.dat). These files are part of the SMS Super ASCII format and is an output option for global solution datasets in CMS. The SMS Super ASCII format also includes a coordinates file (*.xy) and a super file (*.sup) which contains the names of the coordinate file and dataset files.
  • Usage:

[t,x] = readsuperdat(filename);


Read an SMS xy file (*.xy)

  • Description: This function reads an SMS xy file (*.xy). These files are used in the SMS Super ASCII in conjuction with the by CMS as an ASCII output option for global solution datasets. The SMS Super ASCII format also includes dataset files (*.dat) and a super file (*.sup) which contains the names of the coordinate file and dataset files.
  • Usage:

[t,x] = read_xy(filename);


Wave Number Calculation

  • Description: Simple program which solves the wave dispersion relation sig^2 = g*k*tanh(k*h).
  • Usage:

wk = wavenumber(g,wa,wd,h,u,v,tol)
[wk,err] = wavenumber(g,wa,wd,h,u,v)


Read Sediment Flux

  • Description: Reads in data from CMS sediment flux output file, skipping header lines.
  • Usage:

data = read_sed_flux(filename)

  • Input:
no arguments - use ui to select file manually
one argument (<filename>) - input file name (as a string). If path is not specified it will be assumed to be the present working directory.
  • Output: data - a double in which each column represents a column from the file.
  • Download Matlab script - read_sed_flux.m'


New CMS Tools menu (v5.2.5 and later)

This is a tool which works from the Command Line for CMS. Run '<cms executable> Tools' to get the menu. Note: depending on version number, certain options may not have been added yet. For all, get the latest version.

Print RT_JULIAN/REFTIME corresponding to actual date

This option will prompt the user for a date and will return an reference number.

For example, the date 2022-08-05 00:00:00:00 returns the value 983103.50

Print actual date corresponding to RT_JULIAN/REFTIME

This option will prompt the user for reference time and will return the actual date it corresponds to. This is useful for some ASCII Output from CMS that contains this value.

For example, the reference time 983103.50 returns the date 2022-08-05 00:00:00:00

Read WSE Dataset and output a Max WSE dataset for all times

  • This prompts the user to enter the filename for a water surface elevation solution file which was output from a CMS simulation.
  • It then reads all times for all cells in the file and then writes a new solution file that contains one record which is the Maximum value for each cell in the grid over the entire simulation run. Can be used to see the maximum surge from storms or other events.
  • The resulting file has the same prefix as other solution files but ends with '_maxwse.h5'.

Take multiple solution datasets and merge into one file

Many times a user will have several different files containing one or more datasets and they wish to pick and choose certain datasets to combine into one new file. This may be for use with PTM or perhaps the Sediment Mapping feature of CMS.

  • The tool asks how many solution datasets to merge into a new file.
  • Using the number from the first step, the code asks for the filename containing the datasets that the user wishes to merge into the new file.
    • Once the name is entered, CMS reads the file and presents a list of datasets names for the user to choose from.
    • The user will then choose which of the numbered datasets they want from the list.
  • The tool then asks the user for the name of the merged file. Warning - an existing file of that name will be overwritten.
  • The tool then displays the progress as it processes each of the selected datasets and then writes out the new file containing all of the data from the selected files.

Extract data for one cell from multiple datasets to a text file

Testing in progress.

TextPad Syntax File for CMS-Flow Card File

Example cmcards file viewed in Textpad
  • Color codes the CMS-Flow card file (*.cmcards) so that it is easier to read and avoids misspelling of keywords.
  • To setup the file:
  1. Open Textpad and click on the menu Configure and go to Preferences.
  2. Click on folder on the left hand side and note the path to the syntax files.
  3. Copy-paste the .syn to the path noted in step 2.
  4. Click on Configure | New Class Document.
  5. Enter CMS-Flow as the document name and click next.
  6. Enter *.cmcards in Class members and click next.
  7. Enable the syntax highlighting and select the CMS-Flow_V4.syn file.
  8. Click on Finish and your done!


Notepad++ Syntax File for CMS-Flow Card File

Example cmcards file viewed in Notepad++
  • Color codes the CMS-Flow card file (*.cmcards) so that it is easier to read and avoids misspelling of keywords.
  • Version 4.1 and earlier: CMS-Flow_v4p1.xml.


UltraEdit Syntax File for CMS-Flow Card File

Example cmcards file viewed in UltraEdit
  • Color codes the CMS-Flow card file (*.cmcards) so that it is easier to read and avoids misspelling of keywords.
  • Version 4.1 and earlier: CMS-Flow_v4p1.uew.


HDFview

  • HDFview is a free visualization tool for browsing and editing HDF4 and HDF5 files.
  • To download or download a free copy visit:
https://www.hdfgroup.org/downloads/hdfview/
  • Later HDFView binaries require C++ redistributables. If you install the viewer and still cannot access the files, try installing this:
https://support.microsoft.com/en-us/help/2977003/the-latest-supported-visual-c-downloads

Grain Size Distribution Analysis

  • This Excel worksheet calculates statistics for many samples using several methods including Folk and Ward and the Method of Moments.
  • Disclaimer: The analysis software GRADISTAT is developed by Kenneth Pyle Associates Ltd. This reference does not imply official or unofficial endorsement.
  • Link: http://www.kpal.co.uk/gradistat.html


Wave Transformation

From Wave Characteristics to CMS-Wave spectral energy file.

Fortran executables for Windows

From 2D Spectra to CMS-Wave spectral energy file

Python source code



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