用于虚拟计量的随机源选择多源集合方法

IF 4.4 3区 管理学 Q1 OPERATIONS RESEARCH & MANAGEMENT SCIENCE Annals of Operations Research Pub Date : 2024-08-17 DOI:10.1007/s10479-024-06179-y
Gejia Zhang, Tianhui Wang, Jaeseung Baek, Myong-Kee Jeong, Seongho Seo, Jaekyung Choi
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引用次数: 0

摘要

在工业 4.0 时代,半导体生产的复杂性正在飞速增长,这就有可能出现无法察觉的缺陷晶圆,进而造成资源浪费。工业 4.0 的主要优势之一是可以获取大数据,这些数据可以从许多传感器获得,包括多种传感器数据和广泛的数据存储库。最近,工程师们为虚拟计量(VM)预测模型开发了数据融合策略,以有效处理来自多个来源的数据。本研究探索了一种针对多源数据的数据驱动虚拟计量预测模型的新方法,即具有随机源选择的多源集合方法。通过利用多源数据的袋集原理和基于树的预测范式,所提出的方法随机选择数据源子集来构建每个树学习器,从而减少了树之间的相互依赖,最大限度地降低了过拟合的风险,而这正是现有的基于树的预测模型所面临的挑战。为了验证和说明我们提出的方法的实际应用性,我们使用了等离子蚀刻过程中的实际数据,旨在提供我们方法的潜在优势和有效性。
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Multi-source ensemble method with random source selection for virtual metrology

In the era of Industry 4.0, the complexity of semiconductor production is growing very fast, raising the possibility of unnoticed defective wafers and subsequent wasteful use of resources. One of the key advantages of Industry 4.0 is the accessibility to big data, which can be obtained from a number of sensors, including multiple sensor data and extensive data repositories. Recently, engineers have developed data fusion strategies for virtual metrology (VM) prediction models to effectively handle data from multiple sources. This research explores a novel approach for data-driven VM prediction model for multi-source data, namely multi-source ensemble method with random source selection. By utilizing the bagging principle for multi-source data and tree-based prediction paradigms, the proposed approach randomly selects subsets of data sources to construct each tree learner, thus reducing interdependence among the trees and minimizing the risk of overfitting, which can be a challenge faced by existing tree-based prediction models. To validate and illustrate the practical applicability of our proposed method, we use real-world data from the plasma etching process, aiming to provide potential benefits and effectiveness of our methodology.

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来源期刊
Annals of Operations Research
Annals of Operations Research 管理科学-运筹学与管理科学
CiteScore
7.90
自引率
16.70%
发文量
596
审稿时长
8.4 months
期刊介绍: The Annals of Operations Research publishes peer-reviewed original articles dealing with key aspects of operations research, including theory, practice, and computation. The journal publishes full-length research articles, short notes, expositions and surveys, reports on computational studies, and case studies that present new and innovative practical applications. In addition to regular issues, the journal publishes periodic special volumes that focus on defined fields of operations research, ranging from the highly theoretical to the algorithmic and the applied. These volumes have one or more Guest Editors who are responsible for collecting the papers and overseeing the refereeing process.
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