@inbook{1f9b367883454da4988fc126ab698e5e,
title = "Decision Support by Multicriteria Optimization in Process Development: An Integrated Approach for Robust Planning and Design of Plant Experiments",
abstract = "In simulation-based process design, model parameters, like thermodynamic data, are affected by uncertainties. Optimized process designs should, among different other objectives, also be robust to uncertainties of the model parameters. In industrial practise, it is important to know the trade-off between an increase in robustness and the other objectives - like minimizing costs or maximizing product purities. This contribution describes a practical procedure how to incorporate robustness as an objective into a multicriteria optimization framework. The general procedure is illustrated by a concrete example. Finally, we argue that the same approach is useable for an optimal design of plant experiments.",
keywords = "Optimization, Pareto solutions, Robust design, Sensitivity analysis",
author = "Michael Bortz and Volker Maag and Jan Schwientek and Regina Benfer and Roger B{\"o}ttcher and Jakob Burger and {von Harbou}, Erik and Norbert Asprion and K{\"u}fer, {Karl Heinz} and Hans Hasse",
note = "Publisher Copyright: {\textcopyright} 2015 Elsevier B.V.",
year = "2015",
doi = "10.1016/B978-0-444-63576-1.50038-8",
language = "English",
series = "Computer Aided Chemical Engineering",
publisher = "Elsevier B.V.",
pages = "2063--2068",
booktitle = "Computer Aided Chemical Engineering",
}