How to align two unequal sized timeseries numpy array?

I have two numpy array containing timeseries (unix timestamps). I want to find pairs of timestamps (1 from each array) whose difference is within a threshold. For achieving this I need to align two of the time series data into two arrays such that each index has the closest pairs. (In case of two timestamp in array equally close to another timestamp in another array i dont mind choosing either one as the count of pairs is important than the actual values)

So the aligned data set will have two arrays of same size and and smaller array being filled with empty data .

I was thinking of using timeseries package and the align function . But am not sure how to use aligned for my data which is a timeseries.

Example consider two timeseries array

``````ts1=np.array([ 1311242821.0, 1311242882.0, 1311244025.0, 1311244145.0, 1311251330.0, 1311282555.0, 1311282614.0])
ts2=np.array([ 1311226761.0, 1311227001.0, 1311257033.0, 1311257094.0, 1311281265.0])
``````

ts1:

array([ 1311242821.0, 1311242882.0, 1311244025.0, 1311244145.0, 1311251330.0, 1311282555.0, 1311282614.0])

ts2:

array([ 1311226761.0, 1311227001.0, 1311257033.0, 1311257094.0, 1311281265.0])

output sample:

Now for ts2[2] (1311257033.0) the closest should be ts1[4] (1311251330.0) because the difference is 5703.0 which is the smallest

Now that ts2[2] and ts1[4] are already paired they should be left out of other calculations.

Such pairs should be found out and so the out put array might be longer than the actual arrays

abs(ts1[0]-ts2[0]) = 16060

abs(ts1[0]-ts2[1]) = 15820 //pair

abs(ts1[0]-ts2[2]) = 14212

abs(ts1[0]-ts2[3]) = 14273

abs(ts1[0]-ts2[4]) = 38444

abs(ts1[1]-ts2[0]) = 16121

abs(ts1[1]-ts2[1]) = 15881

abs(ts1[1]-ts2[2]) = 14151

abs(ts1[1]-ts2[3]) = 14212

abs(ts1[1]-ts2[4]) = 38383

abs(ts1[2]-ts2[0]) = 17264

abs(ts1[2]-ts2[1]) = 17024

abs(ts1[2]-ts2[2]) = 13008

abs(ts1[2]-ts2[3]) = 13069

abs(ts1[2]-ts2[4]) = 37240

abs(ts1[3]-ts2[0]) = 17384

abs(ts1[3]-ts2[1]) = 17144

abs(ts1[3]-ts2[2]) = 12888

abs(ts1[3]-ts2[3]) = 17144

abs(ts1[3]-ts2[4]) = 37120

abs(ts1[4]-ts2[0]) = 24569

abs(ts1[4]-ts2[1]) = 24329

abs(ts1[4]-ts2[2]) = 5703 //pair

abs(ts1[4]-ts2[3]) = 5764

abs(ts1[4]-ts2[4]) = 29935

abs(ts1[5]-ts2[0]) = 55794

abs(ts1[5]-ts2[1]) = 55554

abs(ts1[5]-ts2[2]) = 25522

abs(ts1[5]-ts2[3]) = 25461

abs(ts1[5]-ts2[4]) = 1290 //pair

abs(ts1[6]-ts2[0]) = 55853

abs(ts1[6]-ts2[1]) = 55613

abs(ts1[6]-ts2[2]) = 25581

abs(ts1[6]-ts2[3]) = 25520

abs(ts1[6]-ts2[4]) = 1349

So the pairs are (ts1[0],ts2[1]), (ts1[4],ts2[2]), (ts1[5],ts2[4])

The rest of elements should have null as pair

The final two arrays will be of size 9

Please let me know if this question is clear.

-
Could you post a few lines of code that create a small example (or made-up) dataset and the result you would expect. i.e. `data_a = np.array([12345, 12846, 789789])` etc. Would help people trying to help you. – YXD May 28 '12 at 17:15

I don't know what you mean with aligning timestamps. But you can use the time module to represent timestamps as floats or integers. In a first step you can convert any userformat to an array defined by `time.struct_time`. In a second step you can convert this to seconds form start of the epoche. Then you have integervalues to do calculations with the timestamps.

How to convert user format using `time.strptime()` is well explained in the docs:

``````    >>> import time
>>> t = time.strptime("30 Nov 00", "%d %b %y")
>>> t
time.struct_time(tm_year=2000, tm_mon=11, tm_mday=30, tm_hour=0, tm_min=0,
tm_sec=0, tm_wday=3, tm_yday=335, tm_isdst=-1)
>>> time.mktime(t)
975538800.0
``````
-