1. 예지 정비를 위한 기계류 설비 고장의 전조증상 데이터셋.
- Author
-
배서한, 김윤수, and 석종원
- Subjects
MACHINE learning ,MACHINE performance ,SIGNAL processing ,MANUFACTURING processes ,DEEP learning ,CLASSIFICATION - Abstract
In manufacturing, it is a fatal problem to stop production due to a failure of facilities. Therefore, it is important to predict defects in facilities in advance and proactively maintain them. With the recent development of machine learning and deep learning technologies, research on predictive maintenance is also becoming active, and the performance of machine learning and deep learning technologies varies depending on the dataset. However, the existing dataset simply exists in normal and defective states, and the state between defects and normal was not simulated. Therefore, in this paper, a dataset was constructed by collecting additional attention data containing signals between normal and defective, and a simple classification experiment was conducted to verify the effectiveness of the data. Using the Prognostic dataset proposed in this paper, it is expected to be able to move toward a true predictive maintenance system that performs actions in advance, not after an accident. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF