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METAMODEL DEFINED MULTIDIMENSIONAL EMBEDDED SEQUENTIAL SAMPLING CRITERIA

机译:亚模型定义的多维嵌入序列采样准则

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摘要

Collecting data to characterize an unknown space presents a series of challenges. Where in the space should data be collected? What regions are more valuable than others to sample? When have sufficient samples been acquired to characterize the space with some level of confidence? Sequential sampling techniques offer an approach to answering these questions by intelligently sampling an unknown space. Sampling decisions are made with criteria intended to preferentially search the space for desirable features. However, N-dimensional applications need efficient and effective criteria. This paper discusses the evolution of several such criteria based on an understanding of the behaviors of existing criteria, and desired criteria properties. The resulting criteria are evaluated with a variety of planar functions, and preliminary results for higher dimensional applications are also presented. In addition, a set of convergence criteria, intended to evaluate the effectiveness of further sampling are implemented. Using these sampling criteria, an effective metamodel representation of the unknown space can be generated at reasonable sampling costs. Furthermore, the use of convergence criteria allows conclusions to be drawn about the level of confidence in the metamodel, and forms the basis for evaluating the adequacy of the original sampling budget.
机译:收集用于表征未知空间的数据提出了一系列挑战。应该在空间中的何处收集数据?哪些地区比其他地区更有价值?何时获得足够的样本以一定程度的置信度来表征空间?顺序采样技术提供了一种通过智能采样未知空间来回答这些问题的方法。使用旨在优先在空间中搜索所需特征的标准进行采样决策。但是,N维应用程序需要有效的标准。本文基于对现有标准的行为以及所需标准属性的理解,讨论了几种此类标准的演变。使用各种平面函数对所得标准进行评估,并提供了针对更高尺寸应用的初步结果。此外,还实施了一套旨在评估进一步采样的有效性的收敛标准。使用这些采样标准,可以以合理的采样成本生成未知空间的有效元模型表示。此外,使用收敛准则可以得出关于元模型的置信度的结论,并构成评估原始抽样预算是否适当的基础。

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