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Machine Learning and Metaheuristics for Black-Box Optimization of Product Families: A Case-Study Investigating Solution Quality vs. Computational Overhead

In: Operations Research Proceedings 2018

Author

Listed:
  • David Stenger

    (RWTH Aachen University)

  • Lena C. Altherr

    (TU Darmstadt)

  • Dirk Abel

    (RWTH Aachen University)

Abstract

In product development, numerous design decisions have to be made. Multi-domain virtual prototyping provides a variety of tools to assess technical feasibility of design options, however often requires substantial computational effort for just a single evaluation. A special challenge is therefore the optimal design of product families, which consist of a group of products derived from a common platform. Finding an optimal platform configuration (stating what is shared and what is individually designed for each product) and an optimal design of all products simultaneously leads to a mixed-integer nonlinear black-box optimization model. We present an optimization approach based on metamodels and a metaheuristic. To increase computational efficiency and solution quality, we compare different types of Gaussian process regression metamodels adapted from the domain of machine learning, and combine them with a genetic algorithm. We illustrate our approach on the example of a product family of electrical drives, and investigate the trade-off between solution quality and computational overhead.

Suggested Citation

  • David Stenger & Lena C. Altherr & Dirk Abel, 2019. "Machine Learning and Metaheuristics for Black-Box Optimization of Product Families: A Case-Study Investigating Solution Quality vs. Computational Overhead," Operations Research Proceedings, in: Bernard Fortz & Martine LabbĂ© (ed.), Operations Research Proceedings 2018, pages 379-385, Springer.
  • Handle: RePEc:spr:oprchp:978-3-030-18500-8_47
    DOI: 10.1007/978-3-030-18500-8_47
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