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Plasma-Chemical Etching Process Behavioral Models Based on Tree Ensembles and Neural Network

机译:基于树合奏和神经网络的等离子体 - 化学蚀刻过程行为模型

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In the modern semiconductor manufacturing technology it is essential to control the result of a wafer processing to ensure stability and high production yield. One of the promising techniques, which can provide the information about the result of a process, is predictive modeling based on machine learning models. In this paper, the possibilities of using Tree Ensembles and Artificial Neural Networks for modeling the plasma-chemical process of deep trench etching in the silicon substrate are considered. Mathematical background for machine learning techniques used for modeling is discussed, principles of regression trees generation are presented and formal descriptive algorithm of composing several regression trees in an ensemble is demonstrated. The developed predictive models were tested on physical-technological model of the plasma-chemical etching process. The results have shown that accurate and robust models based on Tree Ensembles and Artificial Neural Networks were developed in order to predict the trench depth.
机译:在现代半导体制造技术中,必须控制晶片加工的结果,以确保稳定性和高产量。有希望的技术之一,可以提供关于过程结果的信息,是基于机器学习模型的预测建模。在本文中,考虑了使用树集合和人工神经网络来建模硅衬底中深沟槽蚀刻等离子体化学过程的可能性。讨论了用于建模的机器学习技术的数学背景,提出了回归树生成的原理,并证明了在集合中作曲若干回归树的形式描述性算法。在等离子体化学蚀刻工艺的物理技术模型上测试了开发的预测模型。结果表明,开发了基于树集合和人工神经网络的准确和鲁棒模型,以预测沟槽深度。

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