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Unified Framework for Training Point Selection and Error Estimation for Surrogate Models

机译:替代模型的训练点选择和误差估计的统一框架

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摘要

A unified framework for surrogate model training point selection and error estimation is proposed. Building auxiliary local surrogate models over subdomains of the global surrogate model forms the basis of the proposed framework. A discrepancy function, defined as the absolute difference between response predictions from local and global surrogate models for randomly chosen test candidates, drives the framework, thereby not requiring any additional exact function ' evaluations. The benefits of this new approach are demonstrated with analytical test functions and the construction of a two-dimensional aerodynamic database. The results show that the proposed training point selection approach improves the convergence monotonicity and produces more accurate surrogate models compared to random and quasi-random training point selection strategies. The introduced root-mean-square discrepancy and maximum absolute discrepancy exhibit close agreement with the actual root-mean-square error and maximum absolute error, respectively, and are therefore proposed as a measure for the approximation accuracy of surrogate models in applications of practical interest Multivariate interpolation and regression is employed to build local surrogates, whereas kriging and polynomial chaos expansions serve as global surrogate models in demonstrating the applicability of the proposed framework.
机译:提出了替代模型训练点选择和误差估计的统一框架。在全局代理模型的子域上构建辅助本地代理模型构成了所提出框架的基础。差异函数定义为随机选择的测试候选者的本地和全局替代模型的响应预测之间的绝对差,从而驱动了框架,因此不需要任何其他精确的函数评估。这种新方法的优势通过分析测试功能和二维空气动力学数据库的构建得到证明。结果表明,与随机和准随机训练点选择策略相比,所提出的训练点选择方法提高了收敛单调性,并产生了更准确的替代模型。引入的均方根差异和最大绝对差异分别与实际均方根误差和最大绝对误差密切相关,因此建议在实际应用中作为替代模型的逼近精度的量度多元插值和回归用于构建局部代理,而kriging和多项式混沌扩展用作全局代理模型,以证明所提出框架的适用性。

著录项

  • 来源
    《AIAA Journal》 |2015年第1期|215-234|共20页
  • 作者单位

    University of Dayton, Dayton, Ohio 45469 ,Department of Mechanical and Aerospace Engineering;

    University of Dayton, Dayton, Ohio 45469 ,Department of Mechanical and Aerospace Engineering;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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