Esteban Jove, J. Casteleiro-Roca, Héctor Quintián-Pardo, D. Simić, J. A. M. Pérez, J. Calvo-Rolle
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Anomaly detection based on one-class intelligent techniques over a control level plant
A large part of technological advances, especially in the field of industry, have been focused on the optimization of productive processes. However, the detection of anomalies has turned out to be a great challenge in fields like industry, medicine or stock markets. The present work addresses anomaly detection on a control level plant. We propose the application of different intelligent techniques, which allow to obtain one-class classifiers using real data taken from the correct plant operation. The performance of each classifier is assessed and validated with real created faults, achieving successful overall results.