通过特征分析识别参数:二维 Kuramoto-Sivashinsky 表面模型的应用

IF 2 3区 材料科学 Q2 ENGINEERING, MECHANICAL
D Reiser, M Brenzke, S Wiesen
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引用次数: 0

摘要

我们开发了一种系统,可以从单一给定的二维表面结构轮廓(如离子和等离子体辐照产生的表面结构)推导出仓本-西瓦申斯基(KS)模型的参数。这种数值方法受到著名的面部识别方法的启发。从描述表面侵蚀的 KS 模型的缩放版本开始,创建表面轮廓的训练集。在傅立叶空间中,每个剖面都有一个适当的特征,然后使用奇异值分解来确定一组正交的特征值,从而在此基础空间中为每个剖面指定一个点,并确定它们之间的距离。结果表明,在这个特征空间中,属于不同模型参数的剖面图之间有明显的分隔,这使得识别效果非常好。我们将利用一个合成数据集解释其中的基本关系,并讨论将其应用于实验结果的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parameter identification by eigenfeature analysis: application to 2D Kuramoto-Sivashinsky surface models
We have developed a system that makes it possible to derive parameters of a Kuramoto-Sivashinsky (KS) model from a single given two-dimensional profile of surface structures, such as those produced by ion and plasma irradiation. The numerical method is inspired by well-known approaches to facial recognition. Starting from a scaled version of a KS Model to describe surface erosion, a training set of surface profiles is created. Each profile is assigned an appropriate feature in Fourier space and a Singular Value Decomposition is used to determine an orthogonal set of eigenfeatures that allow each profile to be assigned a point in the space of this basis and to determine the distances between them. It turns out that the profiles belonging to different model parameters are clearly separated from each other in this feature space, which enables very good identification. We explain the basic relationships using a synthetic data set and discuss the possibilities for applications to experimental results.
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来源期刊
Surface Topography: Metrology and Properties
Surface Topography: Metrology and Properties Materials Science-Materials Chemistry
CiteScore
4.10
自引率
22.20%
发文量
183
期刊介绍: An international forum for academics, industrialists and engineers to publish the latest research in surface topography measurement and characterisation, instrumentation development and the properties of surfaces.
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