A multigroup framework for fault detection and diagnosis in large-scale multivariate systems

2021 ◽  
Vol 100 ◽  
pp. 65-79
Author(s):  
Lijia Luo ◽  
Xin Peng ◽  
Chudong Tong
2021 ◽  
Vol 2021 ◽  
pp. 1-11
Author(s):  
Qiang Gao ◽  
Xinhong Wu ◽  
Junhui Guo ◽  
Hongqing Zhou ◽  
Wei Ruan

Wind power has gained wide popularity due to the increasingly serious energy and environmental crisis. However, the severe operational conditions often bring faults and failures in the wind turbines, which may significantly degrade the security and reliability of large-scale wind farms. In practice, accurate and efficient fault detection and diagnosis are crucial for safe and reliable system operation. This work develops an effective deep learning solution using a convolutional neural network to address the said problem. In addition, the linear discriminant criterion-based metric learning technique is adopted in the model training process of the proposed solution to improve the algorithmic robustness under noisy conditions. The proposed solution can efficiently extract the features of the mechanical faults. The proposed algorithmic solution is implemented and assessed through a range of experiments for different scenarios of faults. The numerical results demonstrated that the proposed solution can well detect and diagnose the multiple coexisting faults of the operating wind turbine gearbox.


IEEE Access ◽  
2020 ◽  
Vol 8 ◽  
pp. 78343-78353 ◽  
Author(s):  
Radhia Fezai ◽  
Kamaleldin Abodayeh ◽  
Majdi Mansouri ◽  
Abdelmalek Kouadri ◽  
Mohamed-Faouzi Harkat ◽  
...  

Processes ◽  
2021 ◽  
Vol 9 (3) ◽  
pp. 544
Author(s):  
Nayher Clavijo ◽  
Afrânio Melo ◽  
Rafael M. Soares ◽  
Luiz Felipe de O. Campos ◽  
Tiago Lemos ◽  
...  

Variable selection constitutes an essential step to reduce dimensionality and improve performance of fault detection and diagnosis in large scale industrial processes. For this reason, in this paper, variable selection approaches based on causality are proposed and compared, in terms of model adjustment of available data and fault detection performance, with several other filter-based, wrapper-based, and embedded-based variable selection methods. These approaches are applied in a simulated benchmark case and an actual oil and gas industrial case considering four different learning models. The experimental results show that obtained models presented better performance during the fault detection stage when variable selection procedures based on causality were used for purpose of model building.


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