Structural optimization under uncertainties: understanding the role of expected consequences of failure (2013)
- Autor:
- Autor USP: BECK, ANDRÉ TEÓFILO - EESC
- Unidade: EESC
- Assunto: ESTRUTURAS (OTIMIZAÇÃO;ANÁLISE;CONFIABILIDADE)
- Language: Inglês
- Imprenta:
- Publisher: Civil-Comp Press
- Publisher place: Stirlingshire, Scotland
- Date published: 2013
- Source:
- Título: Civil and structural engineering computational methods
- ISSN: 1759-3158
- Volume/Número/Paginação/Ano: 210 p
-
ABNT
BECK, André Teófilo. Structural optimization under uncertainties: understanding the role of expected consequences of failure. Civil and structural engineering computational methods. Tradução . Stirlingshire, Scotland: Civil-Comp Press, 2013. . . Acesso em: 23 jan. 2026. -
APA
Beck, A. T. (2013). Structural optimization under uncertainties: understanding the role of expected consequences of failure. In Civil and structural engineering computational methods. Stirlingshire, Scotland: Civil-Comp Press. -
NLM
Beck AT. Structural optimization under uncertainties: understanding the role of expected consequences of failure. In: Civil and structural engineering computational methods. Stirlingshire, Scotland: Civil-Comp Press; 2013. [citado 2026 jan. 23 ] -
Vancouver
Beck AT. Structural optimization under uncertainties: understanding the role of expected consequences of failure. In: Civil and structural engineering computational methods. Stirlingshire, Scotland: Civil-Comp Press; 2013. [citado 2026 jan. 23 ] - Fragility analysis of tubular structures based on local-buckling driving variables
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