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Azzera filtri

how to calculate mean and stdev of unequally intervalled data based on different time?

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Hello every one,
I am trying to calculate the hourly mean and standard deviation of my five minutes data. The number of data should be 12 in one hour but unfortunately due to data missing sometimes less than 12 and even only one data.
My data format in the file is as follows (two consecutive data set):
7/16/2012 6:40 2.20E+03
7/16/2012 6:45 1.87E+03
7/16/2012 6:50 1.83E+03
7/16/2012 6:55 1.94E+03
7/16/2012 7:00 1.86E+03
7/16/2012 7:05 1.74E+03
7/16/2012 7:10 1.78E+03
7/16/2012 7:15 1.65E+03
7/16/2012 7:20 1.77E+03
7/16/2012 7:25 1.74E+03
7/16/2012 7:30 1.82E+03
7/16/2012 7:35 1.65E+03
7/16/2012 8:40 1.68E+03
7/16/2012 8:45 1.61E+03
7/16/2012 8:50 1.78E+03
7/16/2012 8:55 1.67E+03
7/16/2012 9:00 1.66E+03
7/16/2012 9:05 1.66E+03
7/16/2012 9:10 1.71E+03
7/16/2012 9:15 1.65E+03
7/16/2012 9:20 1.73E+03
7/16/2012 9:25 1.66E+03
7/16/2012 9:30 1.70E+03
7/16/2012 9:35 1.64E+03
After calculating the mean and stdev, I want to get the output in a new array as follows:
start-time End-time Mean stdev
I will highly appreciate any of your helping hand. Thank you very much in advance.
Rahman

Risposte (2)

Matt J
Matt J il 26 Ott 2012
Modificato: Matt J il 26 Ott 2012
Use HISTC to bin the data into hourly intervals.
Then use ACCUMARRAY to get the mean and std over each bin.

Andrei Bobrov
Andrei Bobrov il 26 Ott 2012
Modificato: Andrei Bobrov il 26 Ott 2012
Your data in file yourtext.txt:
7/16/2012 6:40 2.20E+03
7/16/2012 6:45 1.87E+03
7/16/2012 6:50 1.83E+03
7/16/2012 6:55 1.94E+03
7/16/2012 7:00 1.86E+03
7/16/2012 7:05 1.74E+03
7/16/2012 7:10 1.78E+03
7/16/2012 7:15 1.65E+03
7/16/2012 7:20 1.77E+03
7/16/2012 7:25 1.74E+03
7/16/2012 7:30 1.82E+03
7/16/2012 7:35 1.65E+03
7/16/2012 8:40 1.68E+03
7/16/2012 8:45 1.61E+03
7/16/2012 8:50 1.78E+03
7/16/2012 8:55 1.67E+03
7/16/2012 9:00 1.66E+03
7/16/2012 9:05 1.66E+03
7/16/2012 9:10 1.71E+03
7/16/2012 9:15 1.65E+03
7/16/2012 9:20 1.73E+03
7/16/2012 9:25 1.66E+03
7/16/2012 9:30 1.70E+03
7/16/2012 9:35 1.64E+03
f1 = fopen('yourtxt.txt'); c = textscan(f1,'%s %s %f'); fclose(f1);
[Y M D H] = datevec(strrep(strcat(c{1},'_',c{2}),'_',' '));
[a,cc,cc] = unique([Y M D H],'rows');
a1 = num2cell(a,1);
daten = cellstr(datestr(datenum(a1{1:3},a1{4}+1,0, 0)));
data = ...
cell2mat(cellfun(@(x)[mean(x),std(x)],accumarray(cc,c{3},[],@(x){x}),'un',0));
out = [daten, num2cell(data)];
ADD
f1 = fopen('yourtxt.txt'); c = textscan(f1,'%s %s %f'); fclose(f1);
sdate = strrep(strcat(c{1},'_',c{2}),'_',' ');
[~,~,~, H MM] = datevec(sdate);
t = abs(diff([H MM]*[1;1/60]) - 5/60) > eps(100);
dc = accumarray(cumsum([1;t]),c{3},[],@(x){x});
datan = num2cell(cell2mat(cellfun(@(x) [mean(x), std(x)],dc,'un',0)));
ii = find(t);
out = [sdate([1;ii]) sdate([ii+1;end]) datan];
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