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Titre: | Interval-valued statistical approaches for process monitoring |
Auteur(s): | Louifi, Abdelhalim Harkat, Mohamed Faouzi(Directeur de thèse) |
Mots-clés: | Fault detection Principal component analysis Interval-valued PCA Cement rotary kiln Tennessee eastman process |
Date de publication: | 2025 |
Editeur: | Universite M'Hamed Bougara Boumerdès : Institut de Génie Eléctrique et Eléctronique |
Résumé: | Various data-driven approaches, such as Principal Component Analysis (PCA), are widely employed
for process monitoring in industrial applications, particularly for detecting abnormal
events. PCA-based Fault Detection and Isolation is a well-established strategy, praised for its
robust performance. However, its reliability diminishes in uncertain systems where model uncertainties
signi?cantly impact e ectiveness.
To address this challenge, process modeling is conducted using PCA for interval-valued
data, incorporating uncertainties directly into the modeling phase. Four of the most prominent
methods for interval-valued PCA are detailed, alongside an extension of conventional PCAbased
statistical process monitoring to handle interval-valued data. Over the past decade, this
approach has garnered substantial research attention, leading to the development of multiple
interval-valued PCA models. This thesis proposes a novel approach called Interval-Valued
Principal Component Analysis (IV-PCA), designed to handle uncertainties by de?ning a safe
interval for data ?uctuations. The developed technique is applied to the cement rotary kiln
process and the Tennessee Eastman Process, where its performance is compared against conventional
PCA and four leading Interval-Valued Data PCA (IVD-PCA) methods. Through tests
involving actual involuntary system faults and various sensor faults, the IV-PCA demonstrates
superior performance in accurately and quickly detecting distinct faults, even in stochastic environments
with unknown and uncontrolled uncertainties. The results show signi?cant reductions
in false alarms and missed detections compared to the best outcomes of the studied methods |
Description: | 67 p. : ill. 30 cm |
URI/URL: | http://dlibrary.univ-boumerdes.dz:8080/handle/123456789/15460 |
Collection(s) : | Doctorat
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