Make unequally spaced data, equally spaced
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    Konstantinos Belivanis
 el 28 de Abr. de 2015
  
    
    
    
    
    Comentada: Star Strider
      
      
 el 1 de Mayo de 2015
            Hello all,
I have the hourly temperature history for a long period of time (100k datapoints) for several locations. For easier data manipulation I would like 24 measurements for each day. However the data I have, has sometimes either 2-4 measurements within the same hour or inversely there are some hours without any measurement.
The time spamps are of the format 200001010000 (YEARMODAHRMN). I would like to ask you if you can think or have any script that could do the interpolation between adjacent data so that finally I end up with data points that are equally spaced.
Thank you in advance.
3 comentarios
  Star Strider
      
      
 el 28 de Abr. de 2015
				Are the timestamps imported as integer (numeric) or string variables?
Respuesta aceptada
  Star Strider
      
      
 el 30 de Abr. de 2015
        Now that we have the data file, this is one option:
[d,s,r] = xlsread('Austin-Temperatures.xlsx');
d(any(isnan(d),2),:) = [];                  % Rmeove NaN Rows
ds = num2str(d(:,1), '%11d');               % Convert To Strings
dn = datenum(ds, 'yyyymmddHHMM');           % Date Numbers
dvck = datevec(dn);                         % Check Conversion
dn_intrp = datenum([dvck(1,1:4) 0 0]):(1/24):datenum([dvck(end,1:4) 0 0]);
T = interp1(dn, d(:,2), dn_intrp', 'linear','extrap');
figure(1)
plot(dn, d(:,2), 'gp', 'MarkerSize',10)
hold on
plot(dn_intrp, T, 'bp', 'MarkerFaceColor','c')
hold off
grid
datetick('x', 'HH:MM')
legend('Original Data', 'Hourly Interpolated Data','Location','N')
The ‘dn_intrp’ assignment creates a vector of hourly ‘date number’ values between the first hour value and the last hour value. It then uses that to interpolate the temperatures in the ‘T’ assignment. I set it to do a linear extrapolation, so here it creates a temperature at 3:00. Delete that if necessary simply by deleting it (the first element) from the ‘dn_intrp’ and ‘T’ vectors.
The plot is simply to illustrate the data the routine produces. It is not necessary for the code.
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  pfb
      
 el 28 de Abr. de 2015
        
      Editada: pfb
      
 el 28 de Abr. de 2015
  
      Perhaps this is obvious, but
 datenum(date,'yyyymmddhhMM');
where "date" is a char variable containing your timestamp, converts the date into a number. E.g.
 datenum('200001010000','yyyymmddhhMM')
Gives
 730486
and
 dd=['200001010000';'200101010000']
 datenum(dd,'yyyymmddhhMM')
gives
 730486
 730852
You can go through your timestamps individually, in a loop, or form a Nx12 matrix of chars and feed it to datenum. Either way you end with a Nx1 vector of numbers representing the timestamps, and you'll have a similar vector containing the corresponding temperatures.
At this point, you can form an equally spaced grid using linspace, and use "interp1" to interpolate your data. You'll have to be a bit careful in selecting the correct number of gridpoints, but that should not be hard.
Type "help function" or "doc function" to summon the documentation for the builtin functions.
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