P‐167: Autoencoder with Variables Added Model for Manufacturing Process Anomaly Detection Using Multivariate Time‐series Data that Minimizes Data Information Loss
Yunyoung Kyeong,
Doyoon Kim,
Eunzi Kim
et al.
Abstract:In the display industry, the technology of the FAB process is continuously being advanced. As process quality management technology improves, data can be stored, analyzed, and monitored in real time using various types of sensors. The manufacturing process is so complex that it is difficult to detect anomalies simply by analyzing data from on e or two sensors. For t his reason, multivariate data analysis is essential, and time‐series data analysis is particularly effective for detecting process state changes. … Show more
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