Fron Python to Matlab

1 visualización (últimos 30 días)
Pouyan Msgn
Pouyan Msgn el 14 de Nov. de 2018
Comentada: Nour Sd el 8 de Dic. de 2018
I got a code in Python that I will write it again in Matlab and get the same plot:
The code is :
npts = 1000 # number of points in uncorrelated data set
Emax = 10. # energy goes from zero to Emax
Ec = 0.1 # correlation energy
kT = 0.25
# create discrete values of Energy
E = np.linspace(0, Emax, npts)
E_extra = np.linspace(0, Emax, 2*npts-1) #sometimes we need this size to convolve
#PLOT 1: Tbar correlated
Tbar = np.random.normal(loc=0., scale=1.0, size=2*npts-1 )
y = np.exp(- ((E-Emax/2.)/Ec)**2)
#convolution between Tbar and correlation energy
Tbar_c = np.convolve(y, Tbar, mode='valid') #valid = no edge effects
# normalize the data (maximum=1, minimum=0)
Tbar_c = Tbar_c - Tbar_c.min()
Tbar_c = Tbar_c/Tbar_c.max()
# plot the correlated data set
ax1.plot(E, Tbar_c)
The plot is (I need the first plot (the one at the top T(E)))
Here is what I have done yet:
clc
clear all
Emax=10;
Ec=0.01;
E=0:0.01:10;
g=exp(-0.5.*((E-Emax).^2)./Ec);
y=rand(1,length(E));
%y=rand(size(E))
T1=conv(y,g,'same');
T=T1./norm(T1);
subplot(3,1,1);
plot(E,T)
The problem is for me here:
Draw random samples from a normal (Gaussian) distribution. in Python we can do it by :
Tbar = np.random.normal(loc=0., scale=1.0, size=2*npts-1 )
  4 comentarios
Adam Danz
Adam Danz el 8 de Dic. de 2018
Editada: Adam Danz el 8 de Dic. de 2018
Check out the convolution weight function convwf(). Carefully read the documentation to make sure this is doing what your python function does and that inputs are the same and in the same order (or not).
If this isn't want you're looking for, I suggest you open a new question. I'd rather not this thread turn into a Python --> Matlab conversion forum.
Nour Sd
Nour Sd el 8 de Dic. de 2018
Okay thank you very much :)

Iniciar sesión para comentar.

Respuesta aceptada

Adam Danz
Adam Danz el 14 de Nov. de 2018
Editada: Adam Danz el 14 de Nov. de 2018
I can't run your code right now in python so I can't compare the results but most of these lines should be the correct conversion.
See help normrnd to pull numbers from a given gaussian distribution.
npts = 1000; % number of points in uncorrelated data set
Emax = 10; % energy goes from zero to Emax
Ec = 0.1; % correlation energy
kT = 0.25;
% create discrete values of Energy
E = linspace(0, Emax, npts);
E_extra = linspace(0, Emax, 2*npts-1); %sometimes we need this size to convolve
%PLOT 1: Tbar correlated
Tbar = normrnd(0, 1, 1, 2*npts-1)
y = exp(- ((E-Emax/2.)/Ec).*2);
%convolution between Tbar and correlation energy
Tbar_c = conv(y, Tbar, 'same'); %valid = no edge effects
% normalize the data (maximum=1, minimum=0)
Tbar_c = Tbar_c - min(Tbar_c);
Tbar_c = Tbar_c/max(Tbar_c);
% plot the correlated data set
plot(E, Tbar_c)
  4 comentarios
Pouyan Msgn
Pouyan Msgn el 14 de Nov. de 2018
Thank you very much but one thing: y = np.exp(- ((E-Emax/2.)/Ec)**2) means exp(-((E-Emax/2)./Ec).^2)
Adam Danz
Adam Danz el 14 de Nov. de 2018
good catch!

Iniciar sesión para comentar.

Más respuestas (1)

dpb
dpb el 14 de Nov. de 2018
See
doc randn
When looking for something you don't know function name but have a clue about what is,
lookfor keyword
is useful; in this case either
lookfor random
lookfor normal
would lead you there...also just the venerable old
help
can show you what areas are in base Matlab plus the installed toolboxes available...

Categorías

Más información sobre Call Python from MATLAB en Help Center y File Exchange.

Etiquetas

Productos

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by