Conference proceedings article

Metamodel-based Simulation Optimization Using Machine Learning for Solving Production Planning Problems in the Automotive Industry.



Publication Details
Authors:
Schweitzer, F.; Habel, L.; Vilca, O.; Kulzer, T.; Wenzel, S.
Editor:
Bui, Tung X.
Publisher:
University of Hawaii at Manoa
Place:
Honolulu

Publication year:
2025
Pages range :
1679-1688
Book title:
Proceedings of the 58th Hawaii International Conference on System Sciences
ISBN:
978-0-9981331-8-8


Abstract

Due to the rising complexity of production systems in the automotive industry, simulation has become an established tool for analyzing dynamic systems. However, once the number of parameter combinations rises exponentially, the generation and evaluation of all possible solutions gets impractical. While the combination of simulation and optimization has a long tradition in academic research, its adoption in the automotive industry remains limited, often due to the high execution time associated with optimization experiments. To enable more efficient decision-making, this paper explores the integration of machine learning and optimization for simulation optimization. Specifically, it focuses on the use of metamodels incorporating various machine learning algorithms and metaheuristics to optimize two production planning problems with multiple parameter classes. The presented approach enables decision-makers to conduct a rapid assessment of complex production systems.



Keywords
machine learning, Material flow simulation, metaheuristics, metamodeling, optimization


Authors/Editors

Last updated on 2025-30-01 at 22:30