FFT example on MATLAB help
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Hi everybody, I am trying to learn FFT in MATLAB by understanding the example available in help file(<http://www.mathworks.co.uk/help/techdoc/ref/fft.html>). I don't know why in the line : Y = fft(y,NFFT)/L; the fft result is divided by L.
your help is apreciated
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Honglei Chen
am 3 Aug. 2012
This is basically done to preserve the power at each frequency sample point. The original series has L samples in it. At each frequency sample point, L copies of signal at corresponding frequency are coherently added together via FFT. So to preserve the power, you need to divide by L.
This is best seen when there is no noise involved
Fs = 1000; % Sampling frequency
T = 1/Fs; % Sample time
L = 1000; % Length of signal
t = (0:L-1)*T; % Time vector
x = 0.7*sin(2*pi*Fs/8*t) + sin(2*pi*Fs/4*t);
NFFT = 2^nextpow2(L); % Next power of 2 from length of y
Y = fft(x,NFFT)/L;
f = Fs/2*linspace(0,1,NFFT/2+1);
% Plot single-sided amplitude spectrum.
plot(f,2*abs(Y(1:NFFT/2+1)))
title('Single-Sided Amplitude Spectrum of y(t)')
xlabel('Frequency (Hz)')
ylabel('|Y(f)|')
2 Kommentare
Alzapoa
am 3 Aug. 2012
Honglei Chen
am 3 Aug. 2012
Yes and No. There are N samples added together. But because your L is less than N, the signal is zero-padded. Therefore, in terms of power, you only have L effective samples. That's why you need to divide by L, not N to preserve the power.
Since you bring up the DC point, I have to mention that the way the DC is treated is not entirely correct in the example. To get the one-sided spectrum, you don't need to scale both DC and Nyquist frequency as these two points are unique.
Wayne King
am 3 Aug. 2012
Bearbeitet: Wayne King
am 3 Aug. 2012
Both Honglei and Rick have given you good responses. If you want the magnitudes recovered from the DFT to equal the time domain amplitudes: yes, you have to scale by the length of the input vector and multiply by 2 if you have a real-valued signal, because the real-valued signal results in complex exponentials scaled by 1/2.
Fs = 1000;
t = 0:1/Fs:1-1/Fs;
x = 0.7*cos(2*pi*50*t)+ cos(2*pi*100*t);
xdft = fft(x);
% the DFT bin for 50 Hz is 51
% the DFT bin for 100 Hz is 101
amp50 = 2/length(x)*xdft(51);
amp100 = 2/length(x)*xdft(101);
abs(amp50)
abs(amp100)
1 Kommentar
Alzapoa
am 4 Aug. 2012
ajay munaga
am 10 Nov. 2021
0 Stimmen
Compute the 8 point DFT of the sequence x(n)={ 1, 0, 1, 0, 0.5, 0, 0.5, 0} using radix-2 DIF FFT algorithm. Implement using MATLAB
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