Unbiased Selection of Decision Variables for Optimization
Journal article, 2017

Complex chemical processes require complex simulation models. Selecting decision variables for optimization is increasingly difficult. This paper presents a study of a Subset Selection Algorithm (SSA) applied to the selection of decision variables to facilitate a reduction of the decision variable combination sets to consider for a process designer, aimed towards improving said selection, optimization, and thereby resource efficiency. The results help conclude that SSA is able to reduce the consideration set of decision variable combinations for the process designer, and selects combination sets that are more effective in terms of minimizing the objective.

Subset Selection Algorithm (SSA)

optimization

simulation

Author

Mikael Nolin

Lund University

Niklas Andersson

Lund University

Bernt Nilsson

Lund University

Mark Max-Hansen

Perstorp AB

Oleg Pajalic

Chalmers, Chemistry and Chemical Engineering, Chemical Technology

Computer Aided Chemical Engineering

1570-7946 (ISSN)

Subject Categories

Chemical Engineering

DOI

10.1016/B978-0-444-63965-3.50044-1

More information

Latest update

4/22/2020