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Growing Structure Multiple Model System for Quality Estimation in Manufacturing Processes

机译:制造过程质量评估的增长结构多模型系统

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摘要

A new virtual metrology (VM) method for estimation of product quality characteristics will be presented using the recently introduced growing structure multiple model system (GSMMS) approach for modeling of non-linear dynamic systems. The underlying concept of local linear models enables representation of non-linear dependencies with non-Gaussian and non-stationary noise characteristics. In addition, localized analysis of VM inputs within the GSMMS framework enables detection of situations when the model is not adequate and needs to be improved. The newly proposed method was applied to an extensive dataset gathered from a plasma enhanced chemical vapor deposition tool operating in a major semiconductor manufacturing fab, with tool signatures being used to predict the mean film thicknesses on the wafers. The GSMMS-based VM significantly decreased the number of measurements necessary for prediction, while improving VM accuracy, as compared to several linear and nonlinear benchmark VM methodologies. These beneficial results are credited to the GSMMS being able to store local models within its growing network of local VM models corresponding to various operating regimes of the underlying manufacturing machine, as well as to recognize situations when new physical measurements need to be taken and when new local VM models need to be added.
机译:使用最近引入的用于非线性动态系统建模的增长结构多模型系统(GSMMS)方法,将提出一种用于估算产品质量特征的新虚拟度量(VM)方法。局部线性模型的基本概念可以表示具有非高斯和非平稳噪声特征的非线性相关性。此外,通过在GSMMS框架内对VM输入进行本地分析,可以检测模型不足且需要改进的情况。新提出的方法已应用于从主要半导体制造厂中运行的等离子增强化学气相沉积工具收集的广泛数据集,并且使用工具签名来预测晶片上的平均膜厚。与几种线性和非线性基准虚拟机方法相比,基于GSMMS的虚拟机显着减少了预测所需的测量次数,同时提高了虚拟机的准确性。这些有益的结果归功于GSMMS能够将其本地模型存储在其不断增长的本地VM模型网络中,该网络对应于基础制造机器的各种运行状况,并且能够识别需要进行新的物理测量和何时需要进行新的物理测量的情况需要添加本地VM模型。

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