"Levelling" out a signal with moving average

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Sandy
Sandy el 23 de Feb. de 2012
I'm doing studies on stress-relaxation with a dynamic displacement. The result I have is a almost sinusoidal signal with a moving average (decreasing due to stress-relaxation).
I'm wondering what is the best way to shift all the waves so that instead of having a moving average, I can have a constant average?
Thanks!
  3 comentarios
Tom
Tom el 23 de Feb. de 2012
If it is fairly sinusoidal, you could do an FFT (or several over different 'windows' of data) to determine the time period of one oscillation, and work out an average over this period?
Sandy
Sandy el 23 de Feb. de 2012
Here is a sample of the signal I have:
http://dl.dropbox.com/u/22993792/signal.jpg
I was initially thinking of doing it your way, Tom, but thought maybe there was a quick function in MATLAB that may do it for me quickly! I think if all else fails, manually averaging it will have to do.

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Respuesta aceptada

Sean de Wolski
Sean de Wolski el 23 de Feb. de 2012
What about using medfilt1 in the signal processing toolbox?
doc medfilt1
Edit: more
pictures really are worth thousands of words
Use the median filter, medfilt1 to create a new vector and then subtract this from your original.
  6 comentarios
Sandy
Sandy el 23 de Feb. de 2012
Thank you all so much! The medfilt1 idea seems to have worked quite well. As suggested, I used medfilt1 to smooth the data as much as possible so it was practically just a single non-linear line and subtracted that from my original result:
http://dl.dropbox.com/u/22993792/medfilt1result.jpg
Unfortunately, it looks like there may be a problem with the initial value as it looks like it starts at 1.4 and immediately falls to 0. Anyhow, I will have a closer look at the problem.
Once again, all the help was very much appreciated!
Honglei Chen
Honglei Chen el 23 de Feb. de 2012
You will have to drop the edge if you use medfilt1 because that is your transient response.

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Más respuestas (2)

Honglei Chen
Honglei Chen el 23 de Feb. de 2012
Maybe you want to try detrend?
doc detrend
  2 comentarios
Sandy
Sandy el 23 de Feb. de 2012
Thanks,
I've had a look at the detrend function and it seems that it's for linear trends. I tried using the function on my results and unfortunately it didn't make a difference.
The trend I have decreases non-linearly, kind of like the results here:
http://www.sensorprod.com/research-articles/white-papers/2005_nop/Representative-data-of-Pressure01.jpg
Honglei Chen
Honglei Chen el 23 de Feb. de 2012
Then what I can think of is to do a polyfit on your data and then subtract the resulting fit from your data. But I don't know how good it can work out.

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Gurudatha Pai
Gurudatha Pai el 23 de Feb. de 2012
I would recommend fitting an exponential curve rather than a poly fit. e.g see example 8.10 in Steven M. Kay, "Fundamentals of Statistical Signal Processing: Estimation Theory." pp 257.

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