Multi-objective evolutionary optimization of unsupervised latent variables of turning process

Manufacturing process modeling and optimization is a challenging task due to the numerous objectives to be considered in the optimization. Generally, the optimization of these processes requires many objective optimization methods to deal with four or more objective functions. However, the correlati...

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Veröffentlicht in:Applied soft computing 2022-05, Vol.120, p.108713, Article 108713
Hauptverfasser: de Melo, Simone Aparecida, Pereira, Robson Bruno Dutra, da Silva Reis, Allexandre Fortes, Lauro, Carlos Henrique, Brandão, Lincoln Cardoso
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Sprache:eng
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Zusammenfassung:Manufacturing process modeling and optimization is a challenging task due to the numerous objectives to be considered in the optimization. Generally, the optimization of these processes requires many objective optimization methods to deal with four or more objective functions. However, the correlation structure of the outputs cannot be disregarded. In this work, it is proposed the unsupervised learning of the outputs together with multi-objective evolutionary optimization of the turning process of AISI 4340 steel considering three scenarios varying the tool nose radius. A central composite design varying the process parameters is used to conduct the experimental tests. After tests and measurements of quality and productivity outputs the p correlated observed outputs are firstly transformed in m unobserved latent variables through factor analysis using principal axis extraction method and varimax rotation, with m
ISSN:1568-4946
1872-9681
DOI:10.1016/j.asoc.2022.108713