User Guide 025: Difference between revisions

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In order to determine the appropriate grain sizes for a simulation it is useful to be able to determine ahead of time the size class fractions using a log-normal distribution for different median grain sizes and sorting. The Matlab example below determines the grain size distribution given the smallest and largest grain sizes, number of sediment sizes, median grain size and geometric standard deviation. The figure shows the computed grain size distribution.  
In order to determine the appropriate grain sizes for a simulation it is useful to be able to determine ahead of time the size class fractions using a log-normal distribution for different median grain sizes and sorting. The Matlab example below determines the grain size distribution given the smallest and largest grain sizes, number of sediment sizes, median grain size and geometric standard deviation. The figure shows the computed grain size distribution.  


matlab code
 
----
clear all; close all
%--- Start Input ---
d1 = 0.234;  %mm, smallest grain size
dn = 2;      %mm, largest grain size
nsed = 5;    %number of grain sizes
d50 = 0.4;  %mm, median grain size
sg = 1.5;  %mm, geometric standard deviation
%--- End Input ---
%Characteristic diameters
d = exp(log(d1) + log(dn/d1)*((1:nsed)-1.0)/(nsed-1));
%Limits or bounds
dlim = zeros(1,nsed+1);
dlim(2:nsed)=sqrt(d(2:nsed).*d(1:nsed-1));
dlim(1)=d(1)*d(1)/dlim(2);
dlim(nsed+1)=d(nsed)*d(nsed)/dlim(nsed);
%Fractions
p = diff(dlim).*lognpdf(d,log(d50),log(sg));
p = p/sum(p);
%Plotting
figure
hold on
for k=1:nsed   
  fill([dlim(k) dlim(k+1) dlim(k+1) dlim(k)],...       
    [0 0 p(k) p(k)]*100,0.5*[1,1,1])
end
ylabel('Fraction, %')
xlabel('Grain size, mm') 
set(gca,'box','On','TickDir','out',...
  'XMinorTick','OFF','YMinorTick','OFF')
[d',p']
return
----
 


[[File:fig_e-1.png]]
[[File:fig_e-1.png]]


Figure E-1. Computed grain size distribution from the Matlab script above.
Figure E-1. Computed grain size distribution from the Matlab script above.

Revision as of 21:23, 8 May 2015

14 Appendix D: Determining the sediment size Classes

In order to determine the appropriate grain sizes for a simulation it is useful to be able to determine ahead of time the size class fractions using a log-normal distribution for different median grain sizes and sorting. The Matlab example below determines the grain size distribution given the smallest and largest grain sizes, number of sediment sizes, median grain size and geometric standard deviation. The figure shows the computed grain size distribution.



clear all; close all %--- Start Input --- d1 = 0.234; %mm, smallest grain size dn = 2; %mm, largest grain size nsed = 5; %number of grain sizes d50 = 0.4; %mm, median grain size sg = 1.5; %mm, geometric standard deviation %--- End Input --- %Characteristic diameters d = exp(log(d1) + log(dn/d1)*((1:nsed)-1.0)/(nsed-1)); %Limits or bounds dlim = zeros(1,nsed+1); dlim(2:nsed)=sqrt(d(2:nsed).*d(1:nsed-1)); dlim(1)=d(1)*d(1)/dlim(2); dlim(nsed+1)=d(nsed)*d(nsed)/dlim(nsed); %Fractions p = diff(dlim).*lognpdf(d,log(d50),log(sg)); p = p/sum(p); %Plotting figure hold on for k=1:nsed

 fill([dlim(k) dlim(k+1) dlim(k+1) dlim(k)],...        
   [0 0 p(k) p(k)]*100,0.5*[1,1,1])

end ylabel('Fraction, %') xlabel('Grain size, mm') set(gca,'box','On','TickDir','out',...

 'XMinorTick','OFF','YMinorTick','OFF')

[d',p'] return



File:Fig e-1.png

Figure E-1. Computed grain size distribution from the Matlab script above.