A generative-adversarial-network-based temporal raw trace data augmentation framework for fault detection in semiconductor manufacturing

IF 7.5 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS
Shu-Kai S. Fan , Wei-Yu Chen
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引用次数: 0

Abstract

In modern semiconductor manufacturing, where sophisticated process control mechanisms are standard, processing tools are equipped with sensors that generate vast amounts of raw trace data for process monitoring and fault detection. However, one of the major challenges data scientists face is the scarcity of sufficient raw trace data for defective wafers, creating an imbalance that complicates the training of machine learning models for effective fault detection. To address this issue, this paper proposes novel data augmentation structures and strategies utilizing Cycle Generative Adversarial Networks (CycleGANs) as an artificial intelligence application to synthesize temporal raw trace data for defective wafers. The effectiveness of these methods is demonstrated using a real-world dataset from the thin-film process in semiconductor fabrication. Several machine learning classification models—Gaussian Naive Bayes, Adaptive Boosting, eXtreme Gradient Boosting, and Light Gradient Boosting Machine—are employed to evaluate the performance of the augmented data. The paper identifies the optimal augmentation structure and strategy to enhance classification performance within the CycleGAN-based framework. For the thin-film processing dataset under study, the best classification performance achieves an accuracy rate of up to 99.30%, with a notably low false negative rate of 6.45%.
基于生成-对抗-网络的时间原始轨迹数据增强框架,用于半导体制造中的故障检测
在现代半导体制造业中,复杂的流程控制机制是标准配置,加工工具配备了传感器,可生成大量用于流程监控和故障检测的原始轨迹数据。然而,数据科学家面临的主要挑战之一是缺乏足够的缺陷晶圆原始跟踪数据,从而造成不平衡,使训练机器学习模型以进行有效故障检测变得更加复杂。为解决这一问题,本文提出了新颖的数据增强结构和策略,利用循环生成对抗网络(CycleGANs)作为人工智能应用,合成缺陷晶圆的时间原始轨迹数据。这些方法的有效性通过半导体制造中薄膜工艺的真实数据集得到了验证。本文采用了几种机器学习分类模型--高斯奈维贝叶斯模型、自适应提升模型、极梯度提升模型和轻梯度提升机模型--来评估增强数据的性能。本文确定了最佳增强结构和策略,以提高基于 CycleGAN 框架的分类性能。对于所研究的薄膜加工数据集,最佳分类性能的准确率高达 99.30%,假阴性率仅为 6.45%。
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来源期刊
Engineering Applications of Artificial Intelligence
Engineering Applications of Artificial Intelligence 工程技术-工程:电子与电气
CiteScore
9.60
自引率
10.00%
发文量
505
审稿时长
68 days
期刊介绍: Artificial Intelligence (AI) is pivotal in driving the fourth industrial revolution, witnessing remarkable advancements across various machine learning methodologies. AI techniques have become indispensable tools for practicing engineers, enabling them to tackle previously insurmountable challenges. Engineering Applications of Artificial Intelligence serves as a global platform for the swift dissemination of research elucidating the practical application of AI methods across all engineering disciplines. Submitted papers are expected to present novel aspects of AI utilized in real-world engineering applications, validated using publicly available datasets to ensure the replicability of research outcomes. Join us in exploring the transformative potential of AI in engineering.
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