1 |
Baum, L. and Petrie, T. (1966). Statistical inference for probabilistic functions of finite state markov chains. The Annals of Mathematical Statistics, 37(6):1554–1563.
|
|
2 |
Bilmes, J. et al. (1998). A gentle tutorial of the EM algorithm and its application to parameter estimation for gaussian mixture and hidden markov models. International Computer Science Institute, 4(510):126.
|
|
3 |
Chen, P. et al. (2021). A threshold self-setting condition monitoring scheme for wind turbine generator bearings based on deep convolutional generative adversarial networks. Measurement, 167:108234.
|
|
4 |
Council, G. W. E. (2021). Global wind report 2021. https://gwec.net/
wp-content/uploads/2021/03/GWEC-Global-Wind-Report-2021.
pdf, Acessado em 10/04/2024.
|
|
5 |
EDP (2021). Edp - open data. https://opendata.edp.com/pages/
homepage/, Acessado em 07/08/2021.
|
|
6 |
Feng, Z. et al. (2023). Rolling bearing performance degradation assessment with adaptive sensitive feature selection and multi-strategy optimized svdd. Sensors, 23(3):1110.
|
|
7 |
Ghojogh, B. et al. (2019). Hidden markov model: Tutorial. engrXiv.
|
|
8 |
Jiang, Z. et al. (2021). Fault detection and diagnosis of wind turbine gearbox based on acoustic analysis. In 2021 International Conference on Power System Technology (POWERCON), pages 2047–2052. IEEE.
|
|
9 |
Khan, P. and Byun, Y. (2024). A review of machine learning techniques for wind turbine’s fault detection, diagnosis, and prognosis. International Journal of Green Energy, 21.
|
|
10 |
Kidam, K. and Hurme, M. (2013). Analysis of equipment failures as contributors to chemical process accidents. Process Safety and Environmental Protection.
|
|
11 |
Kobbacy, K. and Murthy, D. (2008). Complex system maintenance handbook. Springer Science & Business Media.
|
|
12 |
Kouadri, A. et al. (2020). Hidden markov model-based principal component analysis for intelligent fault diagnosis of wind energy converter systems. Renewable Energy, 150.
|
|
13 |
Li, J. et al. (2019). Reliability assessment of wind turbine bearing based on the degradation-hidden-markov model. Renewable Energy, 132:1076–1087.
|
|
14 |
Li, X. et al. (2024). Correlation warping radius tracking for condition monitoring of rolling bearings under varying operating conditions. Mechanical Systems and Signal Processing, 208:110943.
|
|
15 |
Lou, H.-L. (1995). Implementing the viterbi algorithm. IEEE Signal processing magazine, 12(5):42–52.
|
|
16 |
Rabiner, L. and Juang, B. (1986). An introduction to hidden markov models. IEEE ASSP Magazine, 3(1):4–16.
|
|
17 |
Sa, F. d. et al. (2023). Wind turbine fault detection: a semi-supervised learning approach with two different dimensionality reduction techniques. International Journal of Innovative Computing and Applications, 14(1-2):67–77.
|
|
18 |
Sahu, D., Dewangan, R. K., and Matharu, S. P. S. (2024). An investigation of fault detection techniques in rolling element bearing. Journal of Vibration Engineering & Technologies, 12(4):5585–5608.
|
|
19 |
Seymore, K. et al. (1999). Learning hidden markov model structure for information extraction. In AAAI - workshop on machine learning for information extraction.
|
|
20 |
Xu, J. et al. (2023). Physics-guided, data-refined fault root cause tracing framework for complex electromechanical system. Reliability Engineering System Safety, 236.
|
|