How to fit time series to the curve-linear trend

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Zain
Zain le 24 Jan 2019
Commenté : Adam Danz le 25 Jan 2019
Hi,
I have fluctuating data with its own curve-linear trend(2) and by polynomial fitting I got curve-linear trend(1). How can I fit fluctuating data(2) to the curve-linear trend(1), so that data are extended by symetric reflection or any kind of data extension?
Like in the figure below.
(Thank you Adam Danz)
untitled1_c.png
  3 commentaires
Zain
Zain le 24 Jan 2019
Modifié(e) : Zain le 25 Jan 2019
Line "1" is not covered, it is just polynomial fit trend extension of line "2" trend. I don't want to do any vertical shifting, I want instead of curve (1) to have similar fluctuations as in curve (2). So I tried to multiply 1st 15000* points of data from (2) with the curve (1) and take square root
sqrt(data2(15000:-1:1).*data1)
, but than I get this (around 2 times narrower characteristic than original):
* number of points for which data set is expanded.
Adam Danz
Adam Danz le 24 Jan 2019
Ahhh, I see. I'll continue in the answer section below.

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Réponses (1)

Adam Danz
Adam Danz le 24 Jan 2019
Modifié(e) : Adam Danz le 24 Jan 2019
Since your data look approximately normally distributed, you can measure the standard deviation of your data and use that to produce random numbers from a normal distrubution with a mean of your trendline. Here's general instructions.
Step 1: standardize your data by subtracting the mean (which is the trend line): dataStandard = data - trendline
Step 2: calcuate the standard deviation of the standardized data: sd = std(dataStandard)
Step 3: produce random-normal noise with standard deviation calucated in step 2 and the mean will be your red trend line.: newData = normrnd(0, sd, 1, length(trendline)) + trendline.
Step 4: plot the new data: plot(trendline, newData)
  4 commentaires
Zain
Zain le 25 Jan 2019
Your last solution, I understood as:
dataStandard = data - trendline;
new_data = dataStandard + trendline; new_data = data?
To answer your question - yes, there are no y values between let's say x = 0:15000, that is why I want to symetrically reflect data from x=15001:30001 in a way x(30001:-1:150001) and fit it to follow the trend line.
Adam Danz
Adam Danz le 25 Jan 2019
To clarify my solution (which seems like it would work in your explanation above),
dataStandard = data - trendlineBlue;
new_data = dataStandard + trendlineRed;

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