Improving Computation Time for Optimization Runs of Modelica-Based Energy Systems

Author:

Klute Sven1ORCID,Hadam Markus1,van Beek Mathias1,Budt Marcus1

Affiliation:

1. Fraunhofer Institute for Environmental, Safety, and Energy Technology UMSICHT, 46047 Oberhausen, Germany

Abstract

Mathematical optimization is a widespread method in order to improve, for instance, the efficiency of energy systems. A simulation approach based on partial differential equations can typically not be formulated as an optimization problem, thus requiring interfacing to an external optimization environment. This is, among others, also true for the programming language Modelica. Because of high computation time, such coupled approaches are often limited to small-scale optimization problems. Since simulation models tend to get more complex, simulation time and, in turn, associated optimization time rise significantly. To enable proper sampling of the search space, individual optimization runs need to be solved in acceptable times. This paper addresses the search for a proper optimization approach and tool to couple with Modelica/Dymola. The optimization is carried out on an exemplary power plant model from the ClaRa-Library using an evolutionary algorithm (SPEA2-based) with Ansys optiSlang. To verify and evaluate the results, a comparison with the standard Dymola optimization library is performed. Both parallelization and indirect optimization with surrogate models achieved a significant runtime reduction by a factor of up to 5.4. The use of meta models is particularly advantageous for repetitive optimization runs of the same optimization problem but may lead to deviations due to the calculated approximations.

Publisher

MDPI AG

Reference34 articles.

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2. Akesson, J. (2023, April 10). Optimica—An Extension of Modelica Supporting Dynamic Optimization. The Modelica Association. Available online: https://www.researchgate.net/publication/253089188_Optimica-An_Extension_of_Modelica_Supporting_Dynamic_Optimization.

3. Association, M. (2023, April 10). Modelica—A Unified Object-Oriented Language for Physical Systems Modeling Version 3.2 Revision 2. Available online: https://www.modelica.org/.

4. (2022, July 04). Dassault Systèmes; Dymola Dynamic Modeling Laboratory. Available online: https://www.3ds.com/.

5. (2023, April 10). Ansys optiSLang, Methods for Multi-Disciplinary Optimization and Robustness Analysis. Software Documentation, Version optiSLang 2022 R1. Available online: https://www.ansys.com/de-de/products/connect/ansys-optislang.

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