Analytical sensitivity in topology optimization for elastoplastic composites

被引:0
|
作者
Junji Kato
Hiroya Hoshiba
Shinsuke Takase
Kenjiro Terada
Takashi Kyoya
机构
[1] Tohoku University,Mechanics of Materials Laboratory
[2] Tohoku University,International Research Institute of Disaster Science
关键词
Topology optimization; Analytical sensitivity analysis; Elastoplasticity; Composites; Plane stress condition;
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学科分类号
摘要
The present study proposes a topology optimization of composites considering elastoplastic deformation to maximize the energy absorption capacity of a structure under a prescribed material volume. The concept of a so-called multiphase material optimization, which is originally defined for a continuous damage model, is extended to elastoplastic composites with appropriate regularization for material properties in order to regularize material parameters between two constituents. In this study, we formulate the analytical sensitivity for topology optimization considering elastoplastic deformationand its path-dependency. For optimization applying a gradient-based method, the accuracy of sensitivities iscritical to obtain a reliable optimization result. The proposed analytical sensitivity method takes the derivative of the total stress which satisfies equilibrium equation instead of that of the incremental stress and does not need implicit sensitivity terms. It is verified that the proposed method can provide highly accurate sensitivity enough to obtain reliable optimization results by comparing with that evaluated from the finite difference approach.
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页码:507 / 526
页数:19
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