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A survey of adaptive sampling for global metamodeling in support of simulation-based complex engineering design

机译:基于模拟的复杂工程设计支持全球元模型自适应采样调查

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摘要

Metamodeling is becoming a rather popular means to approximate the expensive simulations in today's complex engineering design problems since accurate metamodels can bring in a lot of benefits. The metamodel accuracy, however, heavily depends on the locations of the observed points. Adaptive sampling, as its name suggests, places more points in regions of interest by learning the information from previous data and metamodels. Consequently, compared to traditional space-filling sampling approaches, adaptive sampling has great potential to build more accurate metamodels with fewer points (simulations), thereby gaining increasing attention and interest by both practitioners and academicians in various fields. Noticing that there is a lack of reviews on adaptive sampling for global metamodeling in the literature, which is needed, this article categorizes, reviews, and analyzes the state-of-the-art single-/multi-response adaptive sampling approaches for global metamodeling in support of simulation-based engineering design. In addition, we also review and discuss some important issues that affect the success of an adaptive sampling approach as well as providing brief remarks on adaptive sampling for other purposes. Last, challenges and future research directions are provided and discussed.
机译:元旦正在成为一种相当流行的方法,以便近似当今复杂的工程设计问题中的昂贵模拟,因为精确的元模型可以带来很多好处。然而,元模拟精度严重取决于观察点的位置。自适应采样,因为其名称表明,通过从先前的数据和元模型的信息学习信息区域中的更多点。因此,与传统的空间填充采样方法相比,自适应采样具有巨大的潜力,可以构建具有较少点(模拟)的更准确的元模型,从而增加了各种领域的从业者和院士的关注和兴趣。注意到,在文献中,缺乏对全球Metomodeling的自适应采样的评论,这篇文章分类,评论和分析全球元模型的最先进的单次/多响应自适应采样方法支持基于仿真的工程设计。此外,我们还审查并讨论了影响自适应采样方法的成功的一些重要问题,并为其他目的提供了关于自适应采样的简要评论。最后,提供并讨论了挑战和未来的研究方向。

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