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Surrogate modelling and optimization using shape-preserving response prediction: A review
Authors:Leifur Leifsson  Slawomir Koziel
Affiliation:1. Department of Aerospace Engineering, Iowa State University, Ames, Iowa, USA;2. Faculty of Electronics, Telecommunications and Informatics, Gdansk University of Technology, Gdansk, Poland
Abstract:Computer simulation models are ubiquitous in modern engineering design. In many cases, they are the only way to evaluate a given design with sufficient fidelity. Unfortunately, an added computational expense is associated with higher fidelity models. Moreover, the systems being considered are often highly nonlinear and may feature a large number of designable parameters. Therefore, it may be impractical to solve the design problem with conventional optimization algorithms. A promising approach to alleviate these difficulties is surrogate-based optimization (SBO). Among proven SBO techniques, the methods utilizing surrogates constructed from corrected physics-based low-fidelity models are, in many cases, the most efficient. This article reviews a particular technique of this type, namely, shape-preserving response prediction (SPRP), which works on the level of the model responses to correct the underlying low-fidelity models. The formulation and limitations of SPRP are discussed. Applications to several engineering design problems are provided.
Keywords:shape-preserving response prediction  surrogate modelling  surrogate-based optimization  microwave engineering  aerodynamic shape optimization
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