Making a monthly mean

6 views (last 30 days)
Jonas Damsbo
Jonas Damsbo on 27 Oct 2018
Commented: Jonas Damsbo on 27 Oct 2018
Hi
I have data for the geopotential for every 6 hours over a whole month. I want to get a mean over the data for the month. For example for January, I have 124 timesteps, each with their data, but I only want data for the whole month (1 dataset). I have tried, but I'm not sure if I've done it right? Pleas can anyone help me?
lon = ncread(filename,'longitude') ; nx = length(lon) ;
lat = ncread(filename,'latitude') ; ny = length(lat) ;
time = ncread(filename,'time') ; nt = length(time);
zmean = zeros([nx ny]);
for n = 1:nt
z = ncread(filename,'z',[1 1 nt],[nx ny 1]);
zx(:,1:ny) = z(:,ny:-1:1);
zmean = zmean + zx;
end
zmean = zmean/nt;
Here is (lon = 360x1), (lat = 181x1), (time = 124x1 int32), (z = 360x181)

Accepted Answer

jonas
jonas on 27 Oct 2018
Edited: jonas on 27 Oct 2018
Use datetime with retime . Upload data for details.
  6 Comments
Jonas Damsbo
Jonas Damsbo on 27 Oct 2018
Edited: Jonas Damsbo on 27 Oct 2018
It is from ncfile and the 'units' are hours since 1900-01-01 00:00:0.0 (dont ask me why)
jonas
jonas on 27 Oct 2018
Edited: jonas on 27 Oct 2018
After looking at your data I think perhaps a timetable is in fact not the way to go, as I suspect that you want to retain the gridded nature of your data. If the problem is to average the monthly data, then I think there is a very simple solution. Simply,
z = ncread(filename,'z');
z_monthly(:,:,1) = mean(z,3);
This takes the average over the third dimension (time). Then you can simply put february's data in z_monthly(:,:,2) etc... and you will end up with a lat x lon x n matrix where n is the number of months.
If the data is uniformly spaced, then I see no point in using retime. If some data is missing, however, then you'd probably want to interpolate before taking the average.
I would also suggest you take your time-vector and convert it to datetime, to make life easier for you.
t = datetime(1900,1,1,0,0,0)+hours(time);
t =
124×1 datetime array
01-Dec-1979 00:00:00
01-Dec-1979 06:00:00
01-Dec-1979 12:00:00
Did I understand the issue?

Sign in to comment.

More Answers (1)

Jonas Damsbo
Jonas Damsbo on 27 Oct 2018
I think I understand your solution. You can see I have data for one month for every 6 hour and I want the mean for the month (over all hours in the month - in this example December).
  2 Comments
jonas
jonas on 27 Oct 2018
If you load the data one month at a time, then you can just average all the data along the time dimension. If you load more than one month, then you need to split the data in n segments when taking the mean (where n is the number of months).
Jonas Damsbo
Jonas Damsbo on 27 Oct 2018
Great! Thank you!

Sign in to comment.

Categories

Find more on Dates and Time in Help Center and File Exchange

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!