Again difficult because I don't understand the situation well enough. Can the outputs be measured after each group or is the response only measured at the end or all groups?
I provide the following advice;
1. Don't use one factor experiments to conclude anything. The inference space is entirely too small, interactions with other design factors and noise are impossible to estimate. In fact, what may appear as a quadratic could be an interaction or a noise effect.
2. Start with your hypotheses, your explanations as to how and why each factor would contribute to the effect on the response. Use your hypotheses to develop models.
3. Create multiple experiment designs and evaluate each one for what potential information they will provide (what can be estimated), what will be restricted (inference space) and what will be confounded (perhaps higher order effects). Contrast this with the resources required for each design.
4. Predict ALL possible outcomes from each design and what subsequent action you will take. Predict the rank order of model effects.
5. Then pick one and run it with the expectation this is the beginning of your journey, not the end. There is NO one shot solution.
Realize many optimal designs, as they are called, have very complex confounding and it is challenging to determine how to iterate when things don't make sense.
"All models are wrong, some are useful" G.E.P. Box