Archimbaud, Aurore, Boulfani, Fériel, Gendre, Xavier, Nordhausen, Klaus, Ruiz-Gazen, Anne and Virta, Joni (2021) ICS for multivariate functional anomaly detection with applications to predictive maintenance and quality control. TSE Working Paper, n. 21-1182, Toulouse

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Abstract

Multivariate functional anomaly detection has received a large amount of attention recently. Accounting both the time dimension and the correlations between variables is challenging due to the existence of different types of outliers and the dimension of the data. Most of the existing methods focus on a small number of variables. In the context of predictive maintenance and quality control however, data sets often contain a large number of functional variables. Moreover, in fields that have high reliability standards, detecting a small number of potential multivariate functional outliers with as few false positives as possible is crucial. In such a context, the adaptation of the Invariant Component Selection (ICS) method from the multivariate to the multivariate functional case is of particular interest.
Two extensions of ICS are proposed: point-wise and global. For both methods, the choice of the relevant components together with outlier identification and interpretation are discussed. A comparison is made on a predictive maintenance example from the avionics field and a quality control example from the microelectronics field. It appears that in such a context, point-wise and global ICS with a small number of selected components are complementary and can be recommended.

Item Type: Monograph (Working Paper)
Language: English
Date: January 2021
Place of Publication: Toulouse
Uncontrolled Keywords: dimension reduction, funtional outlier map, kurtosis, multivariate functional data
Subjects: B- ECONOMIE ET FINANCE
Divisions: TSE-R (Toulouse)
Institution: Université Toulouse 1 Capitole
Site: UT1
Date Deposited: 04 Mar 2021 13:04
Last Modified: 21 Mar 2022 13:22
OAI Identifier: oai:tse-fr.eu:125186
URI: https://publications.ut-capitole.fr/id/eprint/42330

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