Hi @Tiago,
Just for clarification, are you talking about replicates or repetitions ?
- Repetition is about making multiple response(s) measurements on the same experimental run(s) (same sample(s) without any resetting between measurements). Repetitions only reduce the variation from the measurement system (by using the average of the repeated measurements). Repetitions can be added manually in a data table as new columns, as you're repeating the measurement on the same experimental unit. You can then use these columns to calculate and model the average measurement, variance, etc ...
- Replication is about making multiple independent randomized experimental runs (multiple samples with resetting between each runs) for each treatment combination. Replications reduce the total experimental variation (process + measurements) in order to provide an estimate for pure error and reduce the prediction error (with more accurate parameters estimates). They are added automatically (after design generation or augmentation) in a data table as new rows, as they are independent experimental runs.
In the first case, you can use the average with the appropriate distribution (Gamma may work in this setting, to be checked with the Distributions platform). In the second case, the ZI-Poisson distribution may be a more appropriate distribution (only positive integers).
Hope this clarify the situation,
Victor GUILLER
"It is not unusual for a well-designed experiment to analyze itself" (Box, Hunter and Hunter)