Repeating a time series from yyy-MM-dd to yyyy-MM-dd-hh-mm

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PetterS
PetterS el 17 de Feb. de 2015
Comentada: Guillaume el 20 de Feb. de 2015
I have a matrix where the first column is a time series with dates down to one minute resolution, in the format: yyyy-MM-dd-hh-mm. And in the columns next to it I want to add several types of measured data.
The problem is that some of this data has a lower resolution, for example only measured once a day in the format: yyyy-MM-dd.
What I want to do is insert this data in the high resolution matrix and having the daily values repeated across all hours and minutes of the correct day so that there are no gaps between the values.
Example: I have carbon dioxide data from 2011 measured daily. I want the measured value for 2011-01-01 to be repeated in the bigger matrix all the way from 2011-01-01-00-00 to 2011-01-01-23-59 where then 2011-01-02 starts and so on..
I imagine this shouldn’t be too complicated to do but I’m having trouble figuring out how to do it. Any suggestions?
Thanks.

Respuesta aceptada

Guillaume
Guillaume el 17 de Feb. de 2015
Actually, for this I would use date vectors. You can then use ismember with the 'rows' option to locate the matching rows of minute and daily data (using only the year month day columns of the date vectors):
%demo data, yours does not overlap:
DailyDatenum = [734504:734868; 1:365]';
MinuteDatenum = [734502:1/24/60:734870]';
Dailydv = datevec(DailyDatenum(:, 1));
Minutedv = datevec(MinuteDatenum(:, 1));
[ispresent, row] = ismember(Minutedv(:, 1:3), Dailydv(:, 1:3), 'rows');
MinuteDatenum(ispresent, 2) = DailyDatenum(row(ispresent), 2);
  6 comentarios
PetterS
PetterS el 20 de Feb. de 2015
What an amazing answer, thank you so much this is something I never would have figured out myself!
The code works great when I use your demo data, but when I try it with my real data it only works until the point where you have written “at this point we just copied..”, when I run the loop after that it gives me the error ”Attempted to access minutedata(0); index must be a positive integer or logical” .
This is because the first element in my nantransitions is 1 (which makes runstarts(1)=1 ) and therefore filldata = minutedata(runstart - 1) becomes impossible.
Maybe this is very easy to resolve but it’s a bit difficult for me to figure out how I should tweak the code to avoid this because I don’t fully understand what the whole nantransition part is about. Do you have any suggestions in mind about what to do when the first element of nantransitions =1?
Guillaume
Guillaume el 20 de Feb. de 2015
Yes, I should have mentioned that the code assumes that there's no missing data at the beginning (for 'fillwithlast' and 'interpolate') and the end (for 'interpolate' only) of minutedata. Because, if there is, there's nothing to replicate / interpolate between.
You can deal with these special case anywhere within the for loop, in the case statements for example if you want different behaviour:
case 'fillwithlast'
if runstart == 0
%missing data at the beginning
filldata = minutedata(runend+1); %not sure what you want to do. This will fail if everything is NaN since runend+1 is then past the end
else
filldata = minutedata(runstart - 1);
end
case 'interpolate'
if runstart == 0
filldata = minutedata(runend+1); %maybe?
elseif runend == numel(minutedata)
filldata = minutedata(runstart-1); %maybe?
else
filldata = linspace(minutedata(runstart-1), minutedata(runend+1), runend-runstart+3);
filldata = filldata(2:end-1);
end
nantransitions is a temporary variable to help in finding the beginning and end of each run of NaN. Since isnan returns a vector of 0 and 1, (e.g. [0 0 1 1 1 0 1 1 ]), you know that you go from non-nan to nan when the diff is 1 and from nan to non-nan when the diff is -1. The rest of the diff is always 0. Therefore, you've got a transition whenever the diff is non-zero. I just flank it with 0 to make sure that the first transition is always non-nan to nan and the last nan to non-nan (and to make sure that nan at the beginning or end are caught). Hence odd transitions are non-nan to nan and even transitions are nan to non-nan.

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