Optimization of a thin-walled element geometry using a system integrating neural networks and finite element method

Journal title

Archives of Metallurgy and Materials




vol. 62


No 1


Divisions of PAS

Nauki Techniczne


Institute of Metallurgy and Materials Science of Polish Academy of Sciences ; Commitee on Metallurgy of Polish Academy of Sciences




DOI: 10.1515/amm-2017-0067 ; ISSN 1733-3490


Archives of Metallurgy and Materials; 2017; vol. 62; No 1


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