ICNGC 2025 The 11th International Conference on Next Generation Computing 2025 (2025.12)바로가기
페이지
pp.326-329
저자
Yeong Jun Nam, Gyu Tae Park, Dong Eon Kim, Byung-Joo Shin
언어
영어(ENG)
URL
https://www.earticle.net/Article/A478526
원문정보
초록
영어
We present an unsupervised anomaly detection framework for aluminum molten metal processes that trains exclusively on normal operational data. The extreme temperatures and dynamic luminance variations characteristic of molten metal environments make it practically infeasible to collect representative samples of anomalies—such as foreign material contamination, thermal irregularities, or flow inconsistencies—and manual annotation remains prohibitively labor-intensive. Our approach employs a Convolutional Autoencoder to capture the visual and thermal signatures of normal process states. Anomalies are detected by computing reconstruction errors and comparing them against thresholds derived from the upper percentiles of the normal error distribution. Experimental validation across multiple production lines demonstrates that our method achieves high detection accuracy even with limited abnormal samples, offering a practical solution for automated quality control and real-time process monitoring in industrial casting operations.
목차
Abstract I. INTRODUCTION II. DATASET CONFIGURATION III. AUTOENCODER MODEL DESIGN A. Network Architecture Details B. Training Process C. Threshold Definition IV. EXPERIMENTAL PROCEDURE AND RESULTS A. Data Preprocessing and Training Environment B. Evaluation and Threshold-Based Detection V. CONCLUSION ACKNOWLEDGMENT REFERENCES
키워드
AutoencoderUnsupervised LearningAnomaly DetectionMolten Metal ProcessComputer Vision
저자
Yeong Jun Nam [ Dept. of Computer Science & Engineering Kyungnam University Changwon, Republic of Korea ]
Gyu Tae Park [ Dept. of Computer Science & Engineering Kyungnam University Changwon, Republic of Korea ]
Dong Eon Kim [ Dept. of Computer Science & Engineering Kyungnam University Changwon, Republic of Korea ]
Byung-Joo Shin [ Dept. of Computer Science & Engineering Kyungnam University Changwon, Republic of Korea ]
Corresponding Author