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Finding Rms Noise In A Spectra

I have an intensity v/s velocity spectrum and my aim is to find the RMS noise in the spectrum excluding the channels where the peak is present. So, after some research, I came to k

Solution 1:

  1. Yes, since you are to determine some properties of the noise, you should exclude the points that do not constitute the noise. If these are points number 10 to 14 - exclude them.
  2. Then you compute the average of the remaining y-values (intensity). However, from your data and the fitting function, a * exp(-(x-c)**2 / w), one might infer that the theoretical value of this mean value is just zero. If so, the average is only a means of validating your experiment / theory ("we've obtained almost zero, as expected) and use 0 as the true average value. Then, the noise level would amount to the square root of the second moment, E(Y^2).
  3. You should compare the stddev from your code with the square root of the second moment, they should be similar to each other, so similar, that it should not matter which of them you'll chose as the noise value.
  4. The part with SNR, signal to noise ratio, is wrong in your derivation. The signal is the signal, that is - it is the amplitude of the Gaussian obtained from the fit. You divide it by the noise level (either the square root of the second moment, or stddev). To my eye, you should obtain a value between 2 and about 10.
  5. Finally, remember that this is a public forum and that some people read it and may be puzzled by the question & answer: both are based on the previous question Fitting data to a gaussian profile which should've been referred to in the question itself.
  6. If this is a university assignment and you work on real experimental data, remember the purpose. Imagine yourself as a scientist who is to convince others that this a real signal, say, from the Aliens, not just an erratic result of the Mother Nature tossing dice at random. That's the primary purpose of the signal to noise ratio.

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