A Comparative Study of Deep-Learning Autoencoders (DLAEs) for Vibration Anomaly Detection in Manufacturing Equipmentopen access
- Authors
- Lee, Seonwoo; Kareem, Akeem Bayo; Hur, Jang-Wook
- Issue Date
- May-2024
- Publisher
- MDPI
- Keywords
- anomaly detection; autoencoders; data management; deep-learning; reconstruction error; speed reducer; vibration
- Citation
- ELECTRONICS, v.13, no.9
- Journal Title
- ELECTRONICS
- Volume
- 13
- Number
- 9
- URI
- https://scholarworks.bwise.kr/kumoh/handle/2020.sw.kumoh/28711
- DOI
- 10.3390/electronics13091700
- ISSN
- 2079-9292
- Abstract
- Speed reducers (SR) and electric motors are crucial in modern manufacturing, especially within adhesive coating equipment. The electric motor mainly transforms electrical power into mechanical force to propel most machinery. Conversely, speed reducers are vital elements that control the speed and torque of rotating machinery, ensuring optimal performance and efficiency. Interestingly, variations in chamber temperatures of adhesive coating machines and the use of specific adhesives can lead to defects in chains and jigs, causing possible breakdowns in the speed reducer and its surrounding components. This study introduces novel deep-learning autoencoder models to enhance production efficiency by presenting a comparative assessment for anomaly detection that would enable precise and predictive insights by modeling complex temporal relationships in the vibration data. The data acquisition framework facilitated adherence to data governance principles by maintaining data quality and consistency, data storage and processing operations, and aligning with data management standards. The study here would capture the attention of practitioners involved in data-centric processes, industrial engineering, and advanced manufacturing techniques.
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