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I am new to machine learning and trying to master my first steps with scikit-learn. I would like to calculate an interpolation, based on spatio-temporal sensor data. I have a larger number of measuring stations that all measure data at the same time (hourly). For each measuring station I have a unique coordinate (X, Y, Z). My measured/fixed values for each measuring station thus consist of:

     Timestamp,          X,           Y,        Z,   Value + Possible further values
2018-05-04 00:00:00, 32362422.00, 5656123.00, 54.28, 4.28, ..
2018-05-04 00:00:00, 32365418.00, 5656413.00, 72.47, 3.12, ..
2018-05-04 00:00:00, 32360290.00, 5656973.00, 51.11, 2.50, ..
...
2018-05-04 01:00:00, 32362422.00, 5656123.00, 54.28, 4.53, ..
2018-05-04 01:00:00, 32365418.00, 5656413.00, 72.47, 3.27, ..
...

(train data)

(All data is available as a CSV file).

I want to interpolate values for coordinates between my measuring stations. Of course, the values to be interpolated should depend on new values not yet known to the model

Sensor Data again
2018-05-22 16:00:00, 32362422.00, 5656123.00, 54.28, 0.29, ..
2018-05-22 16:00:00, 32365418.00, 5656413.00, 72.47, 1.12, ..
2018-05-22 16:00:00, 32360290.00, 5656973.00, 51.11, 0.73, ..
... -> All Measurements

New data to be interpolated in a grid:
2018-05-22 16:00:00, 32362500.00, 5656150.00, 55.81, ?, ..
2018-05-22 16:00:00, 32362500.00, 5656200.00, 56.44, ?, ..
...
(interpolation data)

For the calculation I would like to use the Random Forest Regressor.

However, I'm a bit overwhelmed:

  1. How can I pass my data as summarized blocks (with identical timestamp) to my model?

  2. How do I best validate such records? Also for the cross-validation my data must be bundled?

I am very grateful for any advice. The answers may also be somewhat detailed. Cheers.

EDIT:

  1. Of course, my labels are the values measured by the stations.

  2. I tried a One-Hot-Encoding for each timestamp (equal time = same group). In next step want to predict a value for each coordinate of my digital elevation model.

  3. Not yet, i thought RF would create the simpliest/best model. I will try it at next.

  • RF is a supervised model. It requires that you have labels for the expected/correct results for your training data. Do you have that? – jonnor Dec 16 '18 at 22:21
  • There are no position parameters or RF, so your interpolation model would only be valid for one particular location. Which does not seem very useful for your sensor problem? – jonnor Dec 16 '18 at 22:22
  • Have you tried a linear interpolation method (in 3d)? If not, definetely start with that – jonnor Dec 16 '18 at 22:23

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