Online fault detection based on typicality and eccentricity data analytics

Costa, Bruno Sielly Jales and Bezerra, Clauder Gomez and Guedes, Luiz Affonso and Angelov, Plamen Parvanov (2015) Online fault detection based on typicality and eccentricity data analytics. In: Proceedings of the 2015 International Joint Conference on Neural Networks (IJCNN) :. IEEE, pp. 1-6.

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Abstract

Fault detection is a task of major importance in industry nowadays, since that it can considerably reduce the risk of accidents involving human lives, in addition to production and, consequently, financial losses. Therefore, fault detection systems have been largely studied in the past few years, resulting in many different methods and approaches to solve such problem. This paper presents a detailed study on fault detection on industrial processes based on the recently introduced eccentricity and typicality data analytics (TEDA) approach. TEDA is a recursive and non-parametric method, firstly proposed to the general problem of anomaly detection on data streams. It is based on the measures of data density and proximity from each read data point to the analyzed data set. TEDA is an online autonomous learning algorithm that does not require a priori knowledge about the process, is completely free of user- and problem-defined parameters, requires very low computational effort and, thus, is very suitable for real-time applications. The results further presented were generated by the application of TEDA to a pilot plant for industrial process.

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Contribution in Book/Report/Proceedings
Additional Information:
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Subjects:
?? fault detectionevolvingself-learning ??
ID Code:
77919
Deposited By:
Deposited On:
26 Jan 2016 14:02
Refereed?:
Yes
Published?:
Published
Last Modified:
10 Jan 2024 00:41