Surface metrology is the area of engineering concerned with the study of geometric variation in surfaces. This paper explores the potential for modern techniques from spatial statistics to act as generative models for geometric variation in 3D-printed stainless steel. The complex macro-scale geometries of 3D-printed components pose a challenge that is not present in traditional surface metrology, as the training data and test data need not be defined on the same manifold. Strikingly, a covariance function defined in terms of geodesic distance on one manifold can fail to satisfy positive-definiteness and thus fail to be a valid covariance function in the context of a different manifold; this hinders the use of standard techniques that aim to learn a covariance function from a training dataset. On the other hand, the associated covariance differential operators are locally defined. This paper proposes to perform inference for such differential operators, facilitating generalisation from the manifold of a training dataset to the manifold of a test dataset. The approach is assessed in the context of model selection and explored in detail in the context of a finite element model for 3D-printed stainless steel.
翻译:地表计量学是研究地表几何变化的工程领域。本文件探讨空间统计现代技术作为3D印刷的不锈钢几何变化的遗传模型的潜力。3D印刷的部件的复杂宏观地形构成传统地表计量学中不存在的挑战,因为培训数据和试验数据不必在同一方形上加以界定。令人吃惊的是,以一个方形的大地测距为定义的共变功能可能无法满足正定性,从而无法在不同的方形中成为有效的共变功能;这妨碍了使用标准技术,目的是从培训数据集中学习共变函数。另一方面,相关的共变差操作员是当地界定的。本文提议为这种差异操作员作出推论,便利从培训数据集的元到测试数据集的元形体进行概括化。这一方法是在模型选择的背景下进行评估,并在3D印刷的钢质定质模型中详细探讨。