Numerical ellipsometry: Artificial intelligence for real-time, in situ absorbing film process control

F. Urban, D. Barton
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Abstract

Ellipsometry is a material analytical method in which the desired parameters, for example, film thickness and index of refraction, are related to the instrument measurements through Maxwell’s equations, light wavelength, and measurement geometry. Consequently, obtaining the desired parameters has required solving the model equations using a wide variety of methods. A commonly used method is least squares curve fitting, frequently the Levenberg–Marquardt method. This numerical method depends upon not only the model but also the initial estimates of solution, the possible interference of local minima, and the algorithm stopping conditions. Being iterative, it also takes nonzero time. The work here demonstrates the use of artificial intelligence in the form of a multilayer perceptron artificial neural network to avoid these problems and find solutions in the millisecond time scale. This noniterative, stable, and fast performance lends itself to real-time, in situ monitoring of thin film growth. Examples for thin (up to 30 nm) films will be given using a multilayer perceptron configuration consisting of four input and four output neurons with two hidden layers of 40 neurons each. Solutions are predicted by the artificial neural network at each wavelength independently and do not rely on fitting functions which express a relationship between optical properties and wavelength.
数字椭偏仪:用于实时、原位吸收膜过程控制的人工智能
椭偏仪是一种材料分析方法,其中所需的参数(如薄膜厚度和折射率)通过麦克斯韦方程、光波长和测量几何形状与仪器测量结果相关联。因此,要获得所需的参数,需要使用多种方法求解模型方程。一种常用的方法是最小二乘法曲线拟合,通常是 Levenberg-Marquardt 方法。这种数值方法不仅取决于模型,还取决于求解的初始估计值、可能的局部最小值干扰以及算法的停止条件。由于是迭代法,它也需要非零时间。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避免这些问题,并在毫秒级的时间尺度内找到解决方案。这种非迭代、稳定和快速的性能适用于对薄膜生长进行实时、现场监测。我们将以薄膜(最多 30 纳米)为例,使用多层感知器配置,包括四个输入和四个输出神经元,以及两个各由 40 个神经元组成的隐藏层。人工神经网络可独立预测每个波长的解决方案,而不依赖于表示光学特性与波长之间关系的拟合函数。
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