Forte, EsterEsterForteHarbou, Erik vonErik vonHarbouBurger, JakobJakobBurgerAsprion, NorbertNorbertAsprionBortz, MichaelMichaelBortz2022-03-052022-03-052017https://publica.fraunhofer.de/handle/publica/25085810.1002/cite.201600104Performing an experimental design prior to the collection of data is in most circumstances important to ensure efficiency. The focus of this work is the combination of model-based and statistical approaches to optimal design of experiments. The knowledge encoded in the model is used to identify the most interesting range for the experiments via a Pareto optimization of the most important conflicting objectives. Analysis of the trade-offs found is in itself useful to design an experimental plan. This can be complemented using a factorial design in the most interesting part of the Pareto frontier.en660Optimal design of laboratory and pilot-plant experiments using multiobjective optimizationjournal article