P‐102: Explainable AI Approach for MOD Outliers in FAB to MOD Process

Author:

Park Sujin1,Choi Hyunho1,Yim Taekyung2,Kyung Yunyoung1,Jin Younggil1,Kim Jaewon1

Affiliation:

1. AI Team, Mechatronics Technology Research Center Samsung Display Yongin-si Korea

2. Development Team Samsung Display Asan-si Koera

Abstract

Display panels manufactured in the FAB process are assembled with various films and components in the module (MOD) process, and their final quality is a result of accumulated the quality of hundreds of preceding processes. Due to these limitations, it is hard to analyze the cause of MOD's outliers relevant to the FAB process and much time and money are consumed to maintain the cause process to eliminate MOD outliers. Therefore, we propose a new explainable AI (XAI) approach to detect and improve the module process's outliers by finding the correlation between FAB and MOD in this paper. The proposed approach was verified for MOD outlier cases in the real world's OLED development and manufacturing process. As a result, it confirmed 96.8% of the average accuracy for classifications. This approach presents the FAB factor that caused MOD's outliers based on the correlation between the MOD and the FAB.

Publisher

Wiley

Subject

General Medicine

Reference11 articles.

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2. Unsupervised Anomaly Detection with Generative Adversarial Networks to Guide Marker Discovery;Schlegl T;IPMI,2017

3. Wasserstein generative adversarial networks;Arjovsky M;International Conference on Machine Learning,2017

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