Azzera filtri
Azzera filtri

Get spectrum. Fourier Transform

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Ivan Volodin
Ivan Volodin il 14 Mar 2017
Modificato: Ivan Volodin il 15 Mar 2017
Hello! I need to get Fourier spectrum. I think, I am close to the goal, but have some misunderstandings. Variable 'signal' contains the array of input data (50006 points), step of measure is 0.1, so I have a signal in physical space (signal(time)) and attempt to achieve the same in Fourier space (FourierTransform(frequency)).
Here is my try:
%%discretisation in physical space
step_time=0.1;
T=step_time*length(signal); % the whole time of measurements
time_=0.1:step_time:T; % according to Nyquist theorem
%%disret. in Fourier space
f_step=1/T;
F_duration = 1/step_time;
f_frequency = 0: f_step: F_duration;
f_frequency(end) = [];
%%get spectrum and get it normalized
Fourier_trans = fft(signal);
N_=length(Fourier_trans);
a=(Fourier_trans.*conj(Fourier_trans))/N_; % amplitude and normalization
but it goes wrong. What did I do incorrect..? Probably in last lines? Thank you in advance!

Risposte (1)

Star Strider
Star Strider il 14 Mar 2017
See the R2015a documentation for fft. Note the code between the first (top) 2 plot figures.
See if this works:
step_time=0.1;
sampling_frequency = 1/step_time;
nyquist_frequency = sampling_frequency/2;
%%get spectrum and get it normalized
Fourier_trans = fft(signal);
N_ = length(Fourier_trans);
a = abs(Fourier_trans)/N_; % amplitude and normalization
frequency_vector = linspace(0, 1, fix(N_/2)+1)*nyquist_frequency;
idx_vct = 1:length(frequency_vector);
figure(1)
plot(frequency_vector, a(idx_vct)*2)
grid
Note This is UNTESTED CODE. It should work.
  5 Commenti
Star Strider
Star Strider il 15 Mar 2017
My pleasure.
This assignment:
a = (Fourier_trans.*conj(Fourier_trans))
calculates power (the square of amplitude), so you would have to divide by ‘N_^2’ to normalise it correctly.
Ivan Volodin
Ivan Volodin il 15 Mar 2017
I have tried, but it does not lead to correct result. Please check this code:
step_t=0.01;
first_step=0;
last_step=1;
t=first_step:step_t:last_step;
%%generate signal
y=22*sin(2*pi*4*t)+15*sin(2*pi*42*t) ;
%%plotting graph
subplot(3,1,1), plot(t,y);
%subplot(2,1,2), plot(f_freq_new,Y_new);
%%MatLab Guide
% http://www.mathworks.com/help/matlab/ref/fft.html
fourier=fft(y );
N_=length(fourier);
f_ = (1 / step_t) * ( 0: (N_/2) ) / N_;
a=(fourier.*conj(fourier))/(N_^2); % mormalization
a = a(1:N_ /2+1);
a(2:end-1) = 2*a(2:end-1);
subplot(3,1,2), plot(f_,a);
subplot(3,1,3), loglog(f_,a);
See.. what is incorrect? I took dicretization from matlab's example and normalized it as you said

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