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·인용수 21
·2023
Generative Adversarial Network-Based Fault Detection in Semiconductor Equipment with Class-Imbalanced Data
Jeong Eun Choi, Da Hoon Seol, Chan Young Kim, Sang Jeen Hong
IF 3.5Sensors
초록

This research proposes an application of generative adversarial networks (GANs) to solve the class imbalance problem in the fault detection and classification study of a plasma etching process. Small changes in the equipment part condition of the plasma equipment may cause an equipment fault, resulting in a process anomaly. Thus, fault detection in the semiconductor process is essential for success in advanced process control. Two datasets that assume faults of the mass flow controller (MFC) in equipment components were acquired using optical emission spectroscopy (OES) in the plasma etching process of a silicon trench: The abnormal process changed by the MFC is assumed to be faults, and the minority class of Case 1 is the normal class, and that of Case 2 is the abnormal class. In each case, additional minority class data were generated using GANs to compensate for the degradation of model training due to class-imbalanced data. Comparisons of five existing fault detection algorithms with the augmented datasets showed improved modeling performances. Generating a dataset for the minority group using GANs is beneficial for class imbalance problems of OES datasets in fault detection for the semiconductor plasma equipment.

키워드
Fault (geology)Process (computing)Computer scienceArtificial intelligenceFault detection and isolationClass (philosophy)Machine learningAnomaly detectionSemiconductor device fabricationData mining
타입
article
IF / 인용수
3.5 / 21
게재 연도
2023