Hi @MJZ82,
Welcome in the Community !
Considering the information and limited context you provided, as well as the helpful informations already provided by @statman, I will answer with a more practical approach.
I would use a blocking factor (with 4 runs per block) in the screening design, to account for the batch-to-batch variability, as well as a categorical 4-levels factor for the tank used. Using these blocking and categorical factors help allocate the experiments homogeneously across blocks and tanks, which can help detect any difference in time/batchs or between tanks. Using the block effect as a fixed effect in the analysis could inform you about the importance of this "batch factor" on the mean response (deviation of the mean response depending on time: bias), whereas using this block effect as a random effect could inform you about any change in the variance of the response.
- With the blocking factor, you would be able to compare the batch variability, by comparing the average of the experiments for each block, since the experiments inside each block should be as similar as possible between blocks. Simple graphs and Xbar and R charts may help visualizing this variability.
- With the 4-levels categorical factor, the allocation of the levels of the 6 controllable factors would be homogeneous between tanks, and help compare the tanks variability (and any bias) by comparing the average and response range of the experiments for each tank across the blocks.
For the analysis, it might be interesting to consider a two steps approach :
- Identify important active effects of the 6 controllable factors thanks to The Fit Two Level Screening Platform
- Fit a model using the effects identified previously, and adding categorical factor tank, as well as the random effect batch.
You will find attached an example of the design (created with Custom Design platform) and the two-steps approach on a simulated response.
If the topic of time-trend robust designs is interesting for you, I would recommend reading "Optimal Designs of Experiments : A Case Study Approach" (chapter 9) by Peter GOOS and Bradley JONES. You can also find a practical example of this methodology in this discussion Covariates in defined order in custom design
Hope this complementary answer may help you,
Victor GUILLER
"It is not unusual for a well-designed experiment to analyze itself" (Box, Hunter and Hunter)