LAPSE:2023.7756
Published Article

LAPSE:2023.7756
Decomposition of a Cooling Plant for Energy Efficiency Optimization Using OptTopo
February 24, 2023
Abstract
The operation of industrial supply technology is a broad field for optimization. Industrial cooling plants are often (a) composed of several components, (b) linked using network technology, (c) physically interconnected, and (d) complex regarding the effect of set-points and operating points in every entity. This leads to the possibility of overall optimization. An example containing a cooling tower, water circulations, and chillers entails a non-linear optimization problem with five dimensions. The decomposition of such a system allows the modeling of separate subsystems which can be structured according to the physical topology. An established method for energy performance indicators (EnPI) helps to formulate an optimization problem in a coherent way. The novel optimization algorithm OptTopo strives for efficient set-points by traversing a graph representation of the overall system. The advantages are (a) the ability to combine models of several types (e.g., neural networks and polynomials) and (b) an constant runtime independent from the number of operation points requested because new optimization needs just to be performed in case of plant model changes. An experimental implementation of the algorithm is validated using a simscape simulation. For a batch of five requests, OptTopo needs 61min while the solvers Cobyla, SDPEN, and COUENNE need 0.3 min, 1.4 min, and 3.1 min, respectively. OptTopo achieves an efficiency improvement similar to that of established solvers. This paper demonstrates the general feasibility of the concept and fortifies further improvements to reduce computing time.
The operation of industrial supply technology is a broad field for optimization. Industrial cooling plants are often (a) composed of several components, (b) linked using network technology, (c) physically interconnected, and (d) complex regarding the effect of set-points and operating points in every entity. This leads to the possibility of overall optimization. An example containing a cooling tower, water circulations, and chillers entails a non-linear optimization problem with five dimensions. The decomposition of such a system allows the modeling of separate subsystems which can be structured according to the physical topology. An established method for energy performance indicators (EnPI) helps to formulate an optimization problem in a coherent way. The novel optimization algorithm OptTopo strives for efficient set-points by traversing a graph representation of the overall system. The advantages are (a) the ability to combine models of several types (e.g., neural networks and polynomials) and (b) an constant runtime independent from the number of operation points requested because new optimization needs just to be performed in case of plant model changes. An experimental implementation of the algorithm is validated using a simscape simulation. For a batch of five requests, OptTopo needs 61min while the solvers Cobyla, SDPEN, and COUENNE need 0.3 min, 1.4 min, and 3.1 min, respectively. OptTopo achieves an efficiency improvement similar to that of established solvers. This paper demonstrates the general feasibility of the concept and fortifies further improvements to reduce computing time.
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Keywords
decomposition, Energy Efficiency, Optimization, OptTopo, system of systems
Subject
Suggested Citation
Thiele G, Johanni T, Sommer D, Krüger J. Decomposition of a Cooling Plant for Energy Efficiency Optimization Using OptTopo. (2023). LAPSE:2023.7756
Author Affiliations
Thiele G: Fraunhofer Institute IPK for Production Systems and Design Technology, 10587 Berlin, Germany [ORCID]
Johanni T: Faculty for Electrical Engineering and Computer Science, Technical University of Berlin, 10623 Berlin, Germany [ORCID]
Sommer D: Weierstrass Institute for Applied Analysis and Stochastics, 10117 Berlin, Germany [ORCID]
Krüger J: Institute for Machine Tools and Factory Management, Technical University of Berlin, 10587 Berlin, Germany [ORCID]
Johanni T: Faculty for Electrical Engineering and Computer Science, Technical University of Berlin, 10623 Berlin, Germany [ORCID]
Sommer D: Weierstrass Institute for Applied Analysis and Stochastics, 10117 Berlin, Germany [ORCID]
Krüger J: Institute for Machine Tools and Factory Management, Technical University of Berlin, 10587 Berlin, Germany [ORCID]
Journal Name
Energies
Volume
15
Issue
22
First Page
8387
Year
2022
Publication Date
2022-11-09
ISSN
1996-1073
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Original Submission
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PII: en15228387, Publication Type: Journal Article
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https://doi.org/10.3390/en15228387
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