首页> 外文期刊>Optimization and Engineering >Metamodels for mixed variables based on moving least squares Application to the structural analysis of a rigid frame
【24h】

Metamodels for mixed variables based on moving least squares Application to the structural analysis of a rigid frame

机译:基于移动最小二乘的混合变量元模型在刚架结构分析中的应用

获取原文
获取原文并翻译 | 示例
           

摘要

Surrogate-based optimization has become a major field in engineering design, due to its capacity to handle complex systems involving expensive simulations. However, the majority of general-purpose surrogates (also called metamodels) are restricted to continuous variables, although versatile problems involve additional types of variables (discrete, integer, and even categorical to model technological options). Therefore, the main contribution of this paper consists in the development of metamodels specifically dedicated to handle mixed variables, in particular continuous and unordered categorical variables, and their comparison with state-of-the-art approaches. This task is performed in three steps: (ⅰ) considering an appropriate parametrization (integer mapping, regular simplex, dummy, effect codings) for the mixed variable design vector; (ⅱ) defining metrics to compare pairs of design vectors; (ⅲ) carrying out an ordinary or moving least square regression scheme based on the parametrization and metric previously defined. The proposed metamodels have been tested on six analytical benchmark test cases, and applied to the structural finite element analysis model of a rigid frame characterized by continuous and categorical variables. In particular, it is demonstrated that using a standard regular simplex representation for the nominal categorical variables usually outperforms a direct conversion of the nominal parameters to integer values, while offering an efficient and systematic way to encompass all types of variables in a common framework. It is also shown that the choice of a given variable representation has a higher impact on the results than the selected scheme (ordinary or moving least squares), or than the metric used for calculating distances between samples.
机译:由于基于代理的优化功能可以处理涉及昂贵仿真的复杂系统,因此它已成为工程设计的主要领域。但是,尽管通用性问题涉及变量的其他类型(离散,整数,甚至是对技术选项进行建模的分类),但大多数通用替代项(也称为元模型)仅限于连续变量。因此,本文的主要贡献在于专门致力于处理混合变量(特别是连续和无序分类变量)的元模型的开发,以及它们与最新方法的比较。该任务分三个步骤执行:(ⅰ)考虑混合变量设计矢量的适当参数化(整数映射,正则单纯形,虚拟,效果编码); (ⅱ)定义度量以比较设计向量对; (ⅲ)根据先前定义的参数和度量执行普通或移动最小二乘回归方案。所提出的元模型已经在六个分析基准测试用例上进行了测试,并应用于具有连续和分类变量特征的刚性框架的结构有限元分析模型。特别是,证明了对标称类别变量使用标准的正则单纯形表示通常胜过标称参数到整数值的直接转换,同时提供了一种有效且系统的方式将所有类型的变量包含在一个通用框架中。还显示出,给定变量表示的选择对结果的影响比所选方案(普通或最小二乘方)或用于计算样本之间距离的度量标准高。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号