Author
Listed:
- Michael Affenzeller
(University of Applied Sciences Upper Austria, Research Center Hagenberg, Heuristic and Evolutionary Algorithms Laboratory, School of Informatics, Communications and Media
Johannes Kepler University Linz, Institute for Formal Models and Verification)
- Andreas Beham
(University of Applied Sciences Upper Austria, Research Center Hagenberg, Heuristic and Evolutionary Algorithms Laboratory, School of Informatics, Communications and Media
Johannes Kepler University Linz, Institute for Formal Models and Verification)
- Stefan Vonolfen
(University of Applied Sciences Upper Austria, Research Center Hagenberg, Heuristic and Evolutionary Algorithms Laboratory, School of Informatics, Communications and Media
Johannes Kepler University Linz, Institute for Formal Models and Verification)
- Erik Pitzer
(University of Applied Sciences Upper Austria, Research Center Hagenberg, Heuristic and Evolutionary Algorithms Laboratory, School of Informatics, Communications and Media)
- Stephan M. Winkler
(University of Applied Sciences Upper Austria, Research Center Hagenberg, Heuristic and Evolutionary Algorithms Laboratory, School of Informatics, Communications and Media)
- Stephan Hutterer
(University of Applied Sciences Upper Austria, Research Center Hagenberg, Heuristic and Evolutionary Algorithms Laboratory, School of Informatics, Communications and Media
Johannes Kepler University Linz, Institute for Formal Models and Verification)
- Michael Kommenda
(University of Applied Sciences Upper Austria, Research Center Hagenberg, Heuristic and Evolutionary Algorithms Laboratory, School of Informatics, Communications and Media)
- Monika Kofler
(University of Applied Sciences Upper Austria, Research Center Hagenberg, Heuristic and Evolutionary Algorithms Laboratory, School of Informatics, Communications and Media
Johannes Kepler University Linz, Institute for Formal Models and Verification)
- Gabriel Kronberger
(University of Applied Sciences Upper Austria, Research Center Hagenberg, Heuristic and Evolutionary Algorithms Laboratory, School of Informatics, Communications and Media)
- Stefan Wagner
(University of Applied Sciences Upper Austria, Research Center Hagenberg, Heuristic and Evolutionary Algorithms Laboratory, School of Informatics, Communications and Media)
Abstract
Dynamic and stochastic problem environments are often difficult to model using standard problem formulations and algorithms. One way to model and then solve them is simulation-based optimization: Simulations are integrated into the optimization process in order to evaluate the quality of solution candidates and to identify optimized system configurations. Potential solutions are evaluated with a simulation model, which leads to new challenges regarding runtime performance, robustness, and distributed evaluation. In order to design, compare, and parameterize algorithmic approaches it is beneficial to use an optimization framework for algorithm design and evaluation. On the one hand, this chapter shows how arbitrary simulators can be coupled with the open-source HeuristicLab optimization framework. This coupling is implemented in a generic way so that the simulators act as external evaluators. On the other hand, we demonstrate how arbitrary optimizers available within HeuristicLab can be called from a simulator in order to perform complex optimization tasks within the simulation model. In order to illustrate the applicability of these approaches, real-world examples investigated by the authors are discussed. We show here application examples from different fields, namely logistics network design, vendor managed inventory routing, steel slab logistics, production optimization with dispatching rule scheduling, material flow simulation, and layout optimization.
Suggested Citation
Michael Affenzeller & Andreas Beham & Stefan Vonolfen & Erik Pitzer & Stephan M. Winkler & Stephan Hutterer & Michael Kommenda & Monika Kofler & Gabriel Kronberger & Stefan Wagner, 2015.
"Simulation-Based Optimization with HeuristicLab: Practical Guidelines and Real-World Applications,"
Springer Books, in: Miguel Mujica Mota & Idalia Flores De La Mota & Daniel Guimarans Serrano (ed.), Applied Simulation and Optimization, edition 127, pages 3-38,
Springer.
Handle:
RePEc:spr:sprchp:978-3-319-15033-8_1
DOI: 10.1007/978-3-319-15033-8_1
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