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Fault Detection and Diagnosis Using Self-Attentive Convolutional Neural Networks for Variable-Length Sensor Data in Semiconductor Manufacturing

机译:半导体制造中基于变心传感器数据的自专心卷积神经网络的故障检测与诊断

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摘要

Nowadays, more attention has been placed on cost reductions and yield enhancement in the semiconductor industry. During the manufacturing process, a considerable amount of sensor data called status variables identification (SVID) is collected by sensors embedded in advanced machines. This data is a valuable source for data-driven automatic fault detection and diagnosis at an early manufacturing stage to maintain competitive advantages. However, wafer processing times vary slightly from wafer to wafer, resulting in variable-length signal data. The conventional approaches use much condensed data called fault detection and classification (FDC) data made by manually designed feature extraction. Or, recent deep learning approaches assume that all wafers have the same processing time, which is impotent to the variable-length SVID. To detect and diagnose faults directly from the variable-length SVID, we propose a self-attentive convolutional neural network. In experiments using real-world data from a semiconductor manufacturer, the proposed model outperformed other deep learning models with less training time and showed robustness at different sequence lengths. Compared to FDC data, SVID data showed better fault detection performance. Without manually investigating the lengthy sensor signals, abnormal sensor value patterns were found at the time specified by the model.
机译:如今,半导体行业中越来越关注降低成本和提高产量。在制造过程中,嵌入在先进机器中的传感器会收集大量称为状态变量标识(SVID)的传感器数据。此数据是在制造初期阶段以数据为依据的自动故障检测和诊断的宝贵资源,以保持竞争优势。然而,晶片的处理时间因晶片而异,导致长度可变的信号数据。常规方法使用通过手动设计的特征提取获得的称为故障检测和分类(FDC)数据的大量压缩数据。或者,最近的深度学习方法假设所有晶圆都具有相同的处理时间,这对于可变长度SVID来说并不重要。为了直接从可变长度SVID检测和诊断故障,我们提出了一种自注意卷积神经网络。在使用来自半导体制造商的真实数据的实验中,所提出的模型以更少的训练时间胜过其他深度学习模型,并且在不同序列长度下显示出鲁棒性。与FDC数据相比,SVID数据显示出更好的故障检测性能。无需手动研究冗长的传感器信号,在模型指定的时间发现了异常的传感器值模式。

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