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A Convolutional Neural Network for Fault Classification and Diagnosis in Semiconductor Manufacturing Processes

机译:用于半导体制造过程中故障分类和诊断的卷积神经网络

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摘要

Many studies on the prediction of manufacturing results using sensor signals have been conducted in the field of fault detection and classification (FDC) for semiconductor manufacturing processes. However, fault diagnosis used to find clues as to root causes remains a challenging area. In particular, process monitoring using neural networks has been employed to only a limited extent because it is a black box model, making the relationships between input data and output results difficult to interpret in actual manufacturing settings, despite its high classification performance. In this paper, we propose a convolutional neural network (CNN) model, named FDC-CNN, in which a receptive field tailored to multivariate sensor signals slides along the time axis, to extract fault features. This approach enables the association of the output of the first convolutional layer with the structural meaning of the raw data, making it possible to locate the variable and time information that represents process faults. In an experiment on a chemical vapor deposition process, the proposed method outperformed other deep learning models.
机译:在半导体制造过程的故障检测和分类(FDC)领域中,已经进行了许多使用传感器信号预测制造结果的研究。然而,用于寻找根本原因线索的故障诊断仍然是一个具有挑战性的领域。特别是,由于它是一个黑盒模型,因此仅在有限的范围内使用了基于神经网络的过程监控,尽管具有很高的分类性能,但仍难以在实际的制造环境中解释输入数据和输出结果之间的关系。在本文中,我们提出了一个名为FDC-CNN的卷积神经网络(CNN)模型,其中针对多元传感器信号量身定制的接收场沿时间轴滑动,以提取故障特征。这种方法可以使第一卷积层的输出与原始数据的结构含义相关联,从而可以定位代表过程故障的变量和时间信息。在化学气相沉积过程的实验中,所提出的方法优于其他深度学习模型。

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