Detecting values in a vector that are different but very close to each other
3 views (last 30 days)
Show older comments
Hello there:
I have a t vector (time, increasing values) like this:
t=[ 1 1.1 2 3 3.1 4.1 5 6 7.1 7.2]
to which corresponds y values
y=[ 10 12 10 9 1 12 12 4 9 12 ]
I would like to remove in x the values whose difference to the next one is <= 0.1, so I get a
t_new=[ 1 2 3 4.1 5 6 7.1] and then to make a corrspondenece to the new y, in a way that the y values correspondent to the similar x values are added, so:
y_new=[10+12 10 9+1 12 12 4 9+12]
Thanks in advance!!
Regards
3 Comments
J. Alex Lee
on 3 Feb 2020
Then what is the rationale for rounding the 7.1 down to 7?
Might want to move your comment up to this thread
Accepted Answer
Steven Lord
on 3 Feb 2020
Use uniquetol to unique-ify the data with a tolerance. uniquetol can return a vector of indices that indicate to which of the unique values each original value corresponds. Then use accumarray to accumulate the corresponding values of the second vector together.
t=[ 1 1.1 2 3 3.1 4.1 5 6 7.1 7.2];
y=[ 10 12 10 9 1 12 12 4 9 12 ];
[t2, ~, ind2] = uniquetol(t, 0.11);
ynew = accumarray(ind2, y);
uniqueItemsWithValues = [t2.', ynew]
2 Comments
J. Alex Lee
on 3 Feb 2020
Cool, never knew about uniquetol, but on looking at the doc, isn't there an ambiguity about which value (within a tolerance) is returned? If this can be used as answer to the original question, it suggests that uniquetol will always return the lowest value in the tolerance-group as "the unique" value...running the example, this appears true, and it does not appear to be a side effect of the original order of t. This decision doesn't seem like a unique obvious choice to me...I could imagine wanting the average of the tolerance-group, or the max...or in general wanting to apply some custom function.
More Answers (2)
Image Analyst
on 3 Feb 2020
This works:
t=[ 1 1.1 2 3 3.1 4.1 5 6 7.1 7.2]
y=[ 10 12 10 9 1 12 12 4 9 12 ]
dt = diff(t)
bigDiff = dt >= 0.11 % Change according to what you think is a big enough difference.
badIndexes = find(~bigDiff) + 1
goodIndexes = [1, find(bigDiff) + 1]
yCopy = y;
yCopy(badIndexes - 1) = yCopy(badIndexes - 1) + yCopy(badIndexes)
t_new = t(goodIndexes)
y_new = yCopy(goodIndexes)
Adapt as needed.
4 Comments
Image Analyst
on 3 Feb 2020
Not until you give me the t and y you used. Because for the original ones, as in my code, it works beautifully.
See Also
Categories
Find more on Logical 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!