Scalarizing cost-effective multi-objective optimization algorithms made possible with kriging

Purpose - The purpose of this paper is threefold: to make explicitly clear the range of efficient multi-objective optimization algorithms which are available with kriging; to demonstrate a previously uninvestigated algorithm on an electromagnetic design problem; and to identify algorithms particular...

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Bibliographic Details
Main Authors: Hawe, G. (Author), Sykulski, J.K (Author)
Format: Article
Language:English
Published: 2008-07-21.
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Summary:Purpose - The purpose of this paper is threefold: to make explicitly clear the range of efficient multi-objective optimization algorithms which are available with kriging; to demonstrate a previously uninvestigated algorithm on an electromagnetic design problem; and to identify algorithms particularly worthy of investigation in this field. Design/methodology/approach - The paper concentrates exclusively on scalarizing multi-objective optimization algorithms. By reviewing the range of selection criteria based on kriging models for single-objective optimization along with the range of methods available for transforming a multi-objective optimization problem to a single-objective problem, the family of scalarizing multi-objective optimization algorithms is made explicitly clear. Findings - One of the proposed algorithms is demonstrated on the multi-objective design of an electron gun. It is able to identify efficiently an approximation to the Pareto-optimal front. Research limitations/implications - The algorithms proposed are applicable to unconstrained problems only. One future development is to incorporate constraint-handling techniques from single-objective optimization into the scalarizing algorithms. Originality/value - A family of algorithms, most of which have not been explored before in the literature, is proposed. Algorithms of particular potential (utilizing the most promising developments in single-objective optimization) are identified.