Title of article
A neural network based closed-form solution for the distortional buckling of elliptical tubes
Author/Authors
Dias، نويسنده , , J.L.R. and Silvestre، نويسنده , , N.، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2011
Pages
10
From page
2015
To page
2024
Abstract
Following the Eurocode 3 philosophy, it is expected that the design of elliptical hollow section (EHS) tubes will be based on the slenderness concept, which requires the calculation of the EHS critical stress. The critical stress of an EHS tube under compression may be associated with local buckling, distortional buckling or flexural buckling. The complexity in deriving analytical expressions for distortional critical stress from classical shell theories, led us to apply Artificial Neural Networks (ANN). This paper presents closed-form expressions to calculate the distortional critical stress and half-wave length of EHS tubes under compression, using ANN. Almost 400 EHS geometries are used and based solely on three parameters: the outer EHS dimensions (A and B) and its thickness (t). Two architectures are shown to be successful. They are tested for several statistical parameters and proven to be very well behaved. Finally, some simple illustrative examples are shown and final remarks are drawn concerning the accuracy of the closed-formed formulas.
Keywords
NEURAL NETWORKS , Elliptical tubes , distortional buckling , Compression , critical stress , Half-wave length , Closed-form expression , EHS
Journal title
Engineering Structures
Serial Year
2011
Journal title
Engineering Structures
Record number
1645980
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