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Efficient detailed design optimization of topology optimization concepts by using support vector machines and metamodels

机译:使用支持向量机和元模型有效详细的详细设计优化拓扑优化概念

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摘要

In this article, an approach for metamodel-based design optimization (MBDO) of topology optimization (TO) concepts is proposed by using support vector machines (SVMs) as geometric models of the concepts instead of traditional parametric computer aided design (CAD) models. In such a manner, an efficient approach for the MBDO-driven design of TO-based concepts is obtained. An implicit hypersurface representing the TO-based concept is generated by classifying the TO-solutions of zeros and ones by using the 1-norm SVM of Mangasarian. The implicit SVM-based hypersurfaces are then utilized to set up designs of experiments of nonlinear finite element analyses by morphing the TO-based concepts by using Boolean and blending operations. Finally, MBDO is performed by using an ensemble of metamodels consisting of quadratic regression, Kriging, radial basis function networks, polynomial chaos expansion and support vector regression models. The proposed MBDO framework is demonstrated by minimizing the mass of a three-dimensional design domain with a constraint on the plastic limit load. The performance of the approach is most promising.
机译:在本文中,通过使用支持向量机(SVM)作为概念的几何模型,而不是传统的参数计算机辅助设计(CAD)模型,提出了一种基于Metomodel的设计优化(MBDO)的拓扑优化(至)概念的方法。以这种方式,获得了用于基于基于概念的MBDO驱动设计的有效方法。通过使用MagaserArian的1范数SVM来分类零的解决方案来生成代表基于基于概念的隐式超出。然后利用基于隐式的SVM的过度迹象来建立非线性有限元分析的实验设计,通过使用布尔和混合操作来改变基于概念。最后,通过使用由二次回归,Kriging,径向基函数网络,多项式混沌扩展和支持向量回归模型组成的元模型的集合来执行MBDO。通过将三维设计结构域的质量与塑料限制负荷的约束最小化来证明所提出的MBDO框架。这种方法的表现最有前途。

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