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A Novel FS-GAN-Based Anomaly Detection Approach for Smart Manufacturingopen access

Authors
Kim, Tae-yongLee, JieunGong, SeokhyunLim, JaehoonKim, DowanJeong, Jongpil
Issue Date
Jan-2025
Publisher
MDPI
Keywords
machine vision; deep learning; few-shot learning; GAN; anomaly detection
Citation
MACHINES, v.13, no.1
Indexed
SCIE
SCOPUS
Journal Title
MACHINES
Volume
13
Number
1
URI
https://scholarx.skku.edu/handle/2021.sw.skku/120120
DOI
10.3390/machines13010021
ISSN
2075-1702
2075-1702
Abstract
In this study, we present the few-shot generative adversarial network (FS-GAN) model, which integrates few-shot learning and a generative adversarial network with an unsupervised learning approach (AnoGAN) to address the challenges of anomaly detection in smart-factory manufacturing environments. Manufacturing processes often encounter malfunctions or defective parts that disrupt production and compromise product quality. However, collecting and labeling sufficient data to detect anomalies is time-intensive, and abnormal data are rare, leading to data imbalances. The FS-GAN model leverages few-shot learning to enable accurate predictions with minimal data and uses the generative capabilities of AnoGAN to mitigate the scarcity of abnormal data by generating synthetic normal data. Experimental results demonstrate that FS-GAN outperforms existing models in terms of accuracy and learning speed, even with limited datasets, effectively addressing the data imbalance problem inherent in manufacturing. The model reduces dependency on extensive data collection and labeling efforts, making it suitable for real-world applications. Through reliable and efficient anomaly detection, FS-GAN contributes to production reliability, product quality, and operational efficiency in smart factories. This study highlights the potential of FS-GAN to provide a cost-effective and high-performance solution to the challenges of anomaly detection in the manufacturing industry.
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