Power Spectral Density two approaches

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Martin Kovac
Martin Kovac el 9 de En. de 2015
Comentada: Martin Kovac el 12 de En. de 2015
Hi all,
Please, can you explain me why I get two different results of Gaussian pulse Power Spectral Density? This two approaches should lead to the equivalent results but do not. I really dont know where I make mistake. Thank you very much. I also attached the source file. The code:
if true
%
% GAUSSIAN PULSE PSD
fc = 2e9; % Center frequency
tc = gmonopuls('cutoff',fc); % Width of each pulse
fs=50*fc; % Sampling frequency
SegmentDuration = 2*tc;
N = fs*SegmentDuration;
t = -SegmentDuration:(1/fs):(SegmentDuration-1/fs); % Signal evaluation time
y = gmonopuls(t,fc);
figure();
plot(t,y)
figure();
periodogram(y, rectwin(length(y)), [], fs, 'oneside', 'power');
hgcf = gcf;
hgcf.Color = [1,1,1];
mean_power = mean(y.^2);
mean_power_dBm = 10*log10(1000*mean_power);
%---------------------------------------------------------------------------------------------------------
fc = 2e9; % Center frequency
Fs = 100e9; % Sampling frequency
tc = gmonopuls('cutoff',fc); % Width of each pulse
t = 0:1/Fs:(4*tc-1/Fs); % Signal evaluation time
x = pulstran(t,2*tc,@gmonopuls,fc);
figure();
plot(t,x)
N = length(x);
NFFT = 2^nextpow2(N);
xdft = fft(x,NFFT);
xdft = xdft(1:NFFT/2+1);
psdx = (1/(Fs*NFFT)) * abs(xdft).^2;
psdx(2:end-1) = 2*psdx(2:end-1);
freq = 0:Fs/NFFT:Fs/2;
figure();
plot(freq,10*log10(psdx))
grid on
title('Periodogram Using FFT')
xlabel('Frequency (Hz)')
ylabel('Power/Frequency (dB/Hz)')
end

Respuesta aceptada

Rick Rosson
Rick Rosson el 12 de En. de 2015
Editada: Rick Rosson el 12 de En. de 2015
Please replace the following line of code:
periodogram(y, rectwin(length(y)), [], fs, 'oneside', 'power');
with:
periodogram(y, rectwin(length(y)), [], fs, 'oneside', 'psd');
  1 comentario
Martin Kovac
Martin Kovac el 12 de En. de 2015
Thank you very much. This is exactly what i need to know. Thank you once again.

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