Power Spectrum density plot

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i want to analyze my signal, and filter the noise from this signal based on the power specturm density plot. However, how can I know which filter and what frequecnies should i consider? Facing difficulty in interpretation of plot
of PSD plot
  3 Comments
Mathieu NOE
Mathieu NOE on 22 Sep 2023
would be helfull to know what you measure and what you want in terms of information
is it the mean peak at 3 MHz ? you want to bandpass it to remove below and above that frequency ?
MANINDER CHOUDHARY
MANINDER CHOUDHARY on 23 Oct 2023
This is my signal, I want to remove noise from this signal. So I plotted my signal as Welch's power spectral density plot, to see where the signal has high power, based on that I can extract the origninal signal by removing the noise. I'm confused how i design or implement filter that give me only denoised signal.

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Accepted Answer

Pooja Kumari
Pooja Kumari on 27 Sep 2023
Dear Maninder,
It is my understanding that you are facing issues with analysing the signal and choosing the filter for removing the noise from the signal based on power spectrum density plot.
You can look for frequency components with higher power values as the peak or spikes in the Power spectrum density plot. These peaks indicate the presence of significant frequency components in the signal. By examining the height and location of these peaks, you can identify the frequencies that contribute the most power to the signal. These are the frequency components of interest.
The PSD plot can reveal distinct frequency bands or regions of interest where the power is concentrated. From the graph plotted, you can see that the major signal of interest lies between 0 – 1.5e7 Hz frequency.
Hence, you can apply a low-pass filter to cutoff the frequency below 1.5*10^7 Hz, to filter noise from the signal. You can refer to the documentation below for more information on low-pass filter:
I hope this helps!
Regards,
Pooja Kumari

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