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1 이정형, "시계열 특징을 갖는 선박용 공기 압축기 전류 데이터의 이상 탐지 알고리즘 적용 실험" 해양환경안전학회 27 (27): 127-134, 2021
2 Riaz, S., "Vibration feature extraction and analysis for fault diagnosis of rotating machinery- a literature survey" 5 (5): 103-110, 2017
3 Pestana-Viana, D., "The influence of feature vector on the classification of mechanical faults using neural networks" IEEE 115-118, 2016
4 Wang, B., "Sparse representation theory for support vector machine kernel function selection and its application in high-speed bearing fault diagnosis" 118 : 207-218, 2021
5 Chawla, N. V., "SMOTE: synthetic minority over-sampling technique" 16 : 321-357, 2002
6 Breiman, L., "Random forests" 45 (45): 5-32, 2001
7 Wang, S. H., "Partial Discharge Detection in Power Line using 1D Convolutional Neural Network" Hanyang University 2019
8 de Lima, A. A., "On fault classification in rotating machines using fourier domain features and neural networks" IEEE 1-4, 2013
9 Cover, T., "Nearest Neighbor Pattern Classification" 13 (13): 21-27, 1967
10 Bartelmus, W., "Modelling of gearbox dynamics under time-varying nonstationary load for distributed fault detection and diagnosis" 29 (29): 637-646, 2010
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17 Faust, O., "Deep learning for healthcare applications based on physiological signals: A review" 161 : 1-13, 2018
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