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Engineering design optimization using species-conserving genetic algorithms
Authors:Jian-Ping Li  M. E. Balazs  G. T. Parks
Affiliation:1. School of Mechanical, Aerospace and Civil Engineering, University of Manchester , PO Box 88, Manchester, M60 1QD, UK Jian-Ping.Li@manchester.ac.uk;3. Department of Mathematics and Computing , University of Richmond in London , Queens Road, Richmond upon Thames, TW10 6JP, UK;4. Engineering Design Centre, University of Cambridge, Department of Engineering , Trumpington Street, Cambridge, CB2 1PZ, UK
Abstract:The species conservation technique described here, in which the population of a genetic algorithm is divided into several groups according to their similarity, is inspired by ecology. Each group with similar characteristics is called a species and is centred on a dominating individual, called the species seed. A genetic algorithm based on this species conservation technique, called the species-conserving genetic algorithm (SCGA), was established and has been proved to be effective in finding multiple solutions of multimodal optimization problems. In this article, the SCGA is used to solve engineering design optimization problems. Different distance measures (measures of similarity) are investigated to analyse the performance of the SCGA. It is shown that the Euclidean distance is not the only possible basis for defining a species and sometimes may not make sense in engineering applications. Two structural design problems are used to demonstrate how the choice of a meaningful measure of similarity will help the exploration for significant designs.
Keywords:Species conservation  Engineering design optimization  Genetic algorithms  Bio-inspired computation  Optimization
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