Submitted by hotspicynoodles t3_104ldbr in MachineLearning
projekt_treadstone t1_j35wtvt wrote
There can be a two way to achieve it. One by image classification and another based on gas flow rate like time series data or combination of both. If your data is not big enough I would refrain from making square wave assumptions. You can look into methods based on RNN or time series Data based prediction method. But be aware if you are going for this way then you should be reasonably sure that gas flow is the only or most important parameter in welding defect.
hotspicynoodles OP t1_j35xfrz wrote
it certainly does not only depend on gas flow rate but also current and arc length, so there are 3-4 variables. I guess I'm looking towards multi variate time series prediction method then
projekt_treadstone t1_j35yy00 wrote
Now it makes more sense and if you can gather some data of defect image and non defect image of welding then it can learn from 2 modalities (time series and image) and might generate better results. One of my friend used this method for similar defect analysis. You might need to do some feature analysis to find some pattern as non useful or outlier feature can produce unnecessary noise and pose difficulties for optimization.
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