Fault prediction model for motor and generative adversarial
收藏DataCite Commons2023-09-25 更新2025-04-16 收录
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http://doi.nrct.go.th/?page=resolve_doi&resolve_doi=10.14457/TU.the.2022.771
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The manufacturing process must continuously be improved. One of the most efficient strategies is maintenance scheduling by predictive maintenance for early fault detection and assisting with real-time decisions. The major concern of developing a predictive maintenance system is lack of the abnormal data and the cost of a high-specification sensor device for collecting data. This paper introduces the unsupervised learning model called Generative Adversarial Networks (GANs) for the generation of abnormal data in form of acceleration signals in order to provide a dataset for developing early fault prediction model and assisting a real-time decision on a low-frequency sensor device. The prediction model dataset is labeled on ISO10816-3 to classify the label of data by Velocity Vibration (mm/sec). The machine learning classifier model implements with hyperparameters optimization framework called OPTUNA to provide the best model performance. The proposed system aims to assist in real-time decision and maintenance schedules for the injection molding machine and offer the prediction model based on low-frequency sensor data from a drive motor
提供机构:
Thammasat University
创建时间:
2023-09-25



