Logistic regression for crystal growth process modeling through hierarchical nonnegative garrote-based variable selection

Hongyue Sun, Xinwei Deng, Kaibo Wang, R. Jin
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引用次数: 18

Abstract

ABSTRACT Single-crystal silicon ingots are produced from a complex crystal growth process. Such a process is sensitive to subtle process condition changes, which may easily become failed and lead to the growth of a polycrystalline ingot instead of the desired monocrystalline ingot. Therefore, it is important to model this polycrystalline defect in the crystal growth process and identify key process variables and their features. However, to model the crystal growth process poses great challenges due to complicated engineering mechanisms and a large amount of functional process variables. In this article, we focus on modeling the relationship between a binary quality indicator for polycrystalline defect and functional process variables. We propose a logistic regression model with hierarchical nonnegative garrote-based variable selection method that can accurately estimate the model, identify key process variables, and capture important features. Simulations and a case study are conducted to illustrate the merits of the proposed method in prediction and variable selection.
基于分层非负绞喉变量选择的晶体生长过程逻辑回归模型
单晶硅锭的生产是一个复杂的晶体生长过程。这种工艺对细微的工艺条件变化很敏感,很容易失效,导致生长出多晶锭而不是理想的单晶锭。因此,在晶体生长过程中对这种多晶缺陷进行建模,识别关键的工艺变量及其特征是十分重要的。然而,由于复杂的工程机制和大量的功能过程变量,对晶体生长过程进行建模带来了很大的挑战。在这篇文章中,我们着重于建模多晶缺陷的二元质量指标和功能工艺变量之间的关系。我们提出了一种基于层次非负绞杀变量选择方法的逻辑回归模型,该模型可以准确地估计模型,识别关键过程变量,并捕获重要特征。通过仿真和实例分析,说明了该方法在预测和变量选择方面的优点。
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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来源期刊
IIE Transactions
IIE Transactions 工程技术-工程:工业
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4.5 months
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