Numerical ellipsometry: Artificial intelligence for rapid analysis of indium tin oxide films on silicon

F. Urban, D. Barton
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Abstract

Ellipsometry is a well-known material analytical method widely used to measure thickness and optical properties of thin films and surfaces across a wide range of industrial and research applications including critical dimensions in chipmaking. The method employs the fact that light undergoes a change in polarization state upon reflection from or transmission through a material. The desired properties of the surface structure are related to measurements by the electromagnetic models expressed by Maxwell’s equations as well as models of material properties. The work here demonstrates the use of artificial intelligence in the form of a multilayer perceptron artificial neural network to apply the electromagnetic model. The reflecting surface examined here is composed of indium tin oxide (ITO) films approximately 400 nm in thickness deposited on silicon substrates. Solutions are provided by 299 artificial neural networks, one per wavelength from 210 to 1700 nm across which ITO exhibits transparent as well as absorbing characteristics. Thus, it serves as a proxy for a wide range of other materials. To train the network, simulated measurements are computed at two thicknesses which differ randomly by 1–6 nm and at three different incidence angles of 55°, 65°, and 75°. Following training, results are obtained in less than one second on a conventional desktop computer.
数字椭偏仪:人工智能用于快速分析硅基氧化铟锡薄膜
椭偏仪是一种著名的材料分析方法,广泛用于测量薄膜和表面的厚度和光学特性,其应用领域包括芯片制造中的关键尺寸。该方法利用了光从材料反射或透过材料时偏振态发生变化这一事实。通过麦克斯韦方程表达的电磁模型以及材料特性模型,表面结构所需的特性与测量结果相关联。这里的工作展示了使用多层感知器人工神经网络形式的人工智能来应用电磁模型。本文研究的反射表面由沉积在硅基板上的厚度约为 400 nm 的氧化铟锡 (ITO) 薄膜组成。299 个人工神经网络提供了解决方案,从 210 纳米到 1700 纳米的每个波长都有一个,ITO 在这些波长上显示出透明和吸收特性。因此,它可以作为多种其他材料的替代物。为了训练该网络,我们在两种厚度(随机相差 1-6 纳米)和三个不同入射角(55°、65° 和 75°)下进行了模拟测量。训练完成后,在传统台式电脑上不到一秒钟就能得到结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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