A fault detection system based on unsupervised techniques for industrial control loops

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http://hdl.handle.net/2183/35204Colecciones
- Investigación (EPEF) [590]
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A fault detection system based on unsupervised techniques for industrial control loopsAutor(es)
Fecha
2019-08Cita bibliográfica
Jove E, Casteleiro-Roca J-L, Quintián H, Méndez-Pérez JA, Calvo-Rolle JL. A fault detection system based on unsupervised techniques for industrial control loops. Expert Systems. 2019; 36:e12395. https://doi.org/10.1111/exsy.12395
Resumen
[Abstract] This research describes a novel approach for fault detection in industrial processes, by means of unsupervised and projectionist techniques. The proposed method includes a visual tool for the detection of faults, its final aim is to optimize system performance and consequently obtaining increased economic savings, in terms of energy, material, and maintenance. To validate the new proposal, two datasets with different levels of complexity (in terms of quantity and quality of information) have been used to evaluate five well-known unsupervised intelligent techniques. The obtained results show the effectiveness of the proposed method, especially when the complexity of the dataset is high.
Palabras clave
Power cell
Fault detection
Anomaly detection
One-class
Fault detection
Anomaly detection
One-class
Descripción
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ISSN
1468-0394