Hi
Maliesha,
No problem, happy to help!
1) Do you mean what is an acceptable misorientation tolerance to use when segmenting grains in an EBSD data set? I think a good rule of thumb is 5 degrees, but a good exercise is to perhaps try a series of values (0.5, 1.0, 5.0, 10.0 degrees?) and assess the sensitivity of the tolerance on the results. If your material is heavily textured (i.e., many grains are aligned in the same orientation), then you might have to drop from 5 degrees to ~0.5-1.0 degrees. However, you do not want to go so low such that the intragranular misorientation within a single grain results in multiple segmented grains. This also depends on what you will do with the data. For example, if you will be performing a crystal plasticity simulation, the difference between simulating one grain with a uniform orientation vs. two neighboring grains with very similar orientations will be very small, likely negligible.
2) The bad data is ignored in this case. But a good way to test this would be to process your .ctf file (in excel, MatLab, Python, etc.) and sum the total number of "good" voxels. You can then compare this to the total "NumElements" in the features.csv file written by the "Write Feature Data as CSV File" filter.
As another note, when grain segmentation takes place, all the "bad data" is lumped into FeatureID = 0, as shown in the screenshot below of your data without the use of the "Erode/Dilate Bad Data" filter. The threshold filter in ParaView was used to view only FeatureIDs = 0.
3) I think the best way to determine average grain statistics is to use the "Write Feature Data as CSV File" filter to write the data of each feature ID into a .csv file.
Another point on the calculation of microstructure statistics using your EBSD scan: it may be more appropriate to compute the statistics before you perform the eroding operation, since growing the good regions will bias the metrics you compute. But you can try after eroding the bad data as well; it would be interesting to see how this influences the statistics!
Best regards,
Krzysztof Stopka