Calculate peak of pulses above certain threshold
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MANINDER CHOUDHARY
el 10 de Mayo de 2022
Comentada: Mathieu NOE
el 11 de Mayo de 2022
Can you please guide how can I find the first peak of each pulse and its location. I use the peak command but peak time consider oscillations aslo. As seen in figure that each pulse decays in certain time. I just want to take in account the first rise of each pulse above any threshold value during a time duration 't' 
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2 comentarios
Mathieu NOE
el 10 de Mayo de 2022
hello
there are quite a fair amount of answers to this topic on this forum
etc...
If you still think you need help , attach some data and your code
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Mathieu NOE
el 11 de Mayo de 2022
hello
@Chunru : why the envelop ? this can create enough signal distorsion so that the peak instant is misread. I understand that some signal filtering could help remove spurious peaks
even simpler code :

load example.mat
figure;
plot(C);
findpeaks(C,'MinPeakDistance',1000, "MinPeakHeight",0.005); % doc findpeaks for more options
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Chunru
el 11 de Mayo de 2022
Hi @Mathieu NOE. The envelope helps to remove the fake peaks due to fluctuations. It is supposed to have more robust peak detection (with oscillation around the peaks). The following may demonstrate the difference.
t= 0:0.001:10
x = (2+cos(2*pi*.5*t)).*cos(2*pi*200*t);
plot(t, x)
hold on;
[~, locs] = findpeaks(x,'MinPeakDistance',100);
plot(t(locs), x(locs), '^');
e = envelope(x, 100, 'peak');
[~, locs] = findpeaks(e,'MinPeakDistance',100)
plot(t(locs), e(locs), 'go', 'MarkerFaceColor', 'g');
Mathieu NOE
el 11 de Mayo de 2022
hello again
ok - yes I recognize it can help in some cases. But it's sometimes tricky to find a way to smooth / envelop a signal with very sharp peaks without some time distorsion / shift of the peak
I believe evry situation is special and you have to try different solutions . here we see envelop works fine because the signal is quite nice - not abrupt and noisy as in the post.
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Chunru
el 11 de Mayo de 2022
load example.mat
%whos
plot(C(19e5:20e5));
% compute envelope before findpeaks
env = envelope(C, 1000, 'peak');
hold on
plot(env(19e5:20e5));
figure;
findpeaks(env); % doc findpeaks for more options
hold on;
plot(env)
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