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A splitting algorithm for simulation-based optimization problems with categorical variables
Authors:Zuzana Nedělková  Christoffer Cromvik  Peter Lindroth  Michael Patriksson  Ann-Brith Strömberg
Affiliation:1. Department of Mathematical Sciences, Chalmers University of Technology and University of Gothenburg, Gothenburg, Sweden;2. Fraunhofer–Chalmers Research Centre for Industrial Mathematics, Computational Engineering and Design, Gothenburg, Sweden;3. Chassis &4. Vehicle Dynamics, Global Operations, Volvo Group Trucks Technology, Gothenburg, Sweden
Abstract:In the design of complex products, some product components can only be chosen from a finite set of options. Each option then corresponds to a multidimensional point representing the specifications of the chosen components. A splitting algorithm that explores the resulting discrete search space and is suitable for optimization problems with simulation-based objective functions is presented. The splitting rule is based on the representation of a convex relaxation of the search space in terms of a minimum spanning tree and adopts ideas from multilevel coordinate search. The objective function is underestimated on its domain by a convex quadratic function. The main motivation is the aim to find—for a vehicle and environment specification—a configuration of the tyres such that the energy losses caused by them are minimized. Numerical tests on a set of optimization problems are presented to compare the performance of the algorithm developed with that of other existing algorithms.
Keywords:Design optimization  simulation-based optimization  splitting  categorical variables  tyres
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