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Détail de l'auteur
Auteur Odgaard, P.F.
Documents disponibles écrits par cet auteur
Affiner la rechercheObserver and data-driven-model-based fault detection in power plant coal mills / Odgaard, P.F. in IEEE transactions on energy conversion, Vol. 23 n°2 (Juin 2008)
[article]
in IEEE transactions on energy conversion > Vol. 23 n°2 (Juin 2008) . - pp. 659 - 668
Titre : Observer and data-driven-model-based fault detection in power plant coal mills Type de document : texte imprimé Auteurs : Odgaard, P.F., Auteur ; Bao, Lin, Auteur ; Jorgensen, S.B., Auteur Année de publication : 2008 Article en page(s) : pp. 659 - 668 Note générale : Energy conversion Langues : Anglais (eng) Mots-clés : Fault location; least mean squares methods; power plants; principal component analysis Résumé : This paper presents and compares model-based and data-driven fault detection approaches for coal mill systems. The first approach detects faults with an optimal unknown input observer developed from a simplified energy balance model. Due to the time-consuming effort in developing a first principles model with motor power as the controlled variable, data-driven methods for fault detection are also investigated. Regression models that represent normal operating conditions (NOCs) are developed with both static and dynamic principal component analysis and partial least squares methods. The residual between process measurement and the NOC model prediction is used for fault detection. A hybrid approach, where a data-driven model is employed to derive an optimal unknown input observer, is also implemented. The three methods are evaluated with case studies on coal mill data, which includes a fault caused by a blocked inlet pipe. All three approaches detect the fault as it emerges. The optimal unknown input observer approach is most robust, in that, it has no false positives. On the other hand, the data-driven approaches are more straightforward to implement, since they just require the selection of appropriate confidence limit to avoid false detection. The proposed hybrid approach is promising for systems where a first principles model is cumbersome to obtain. En ligne : http://ieeexplore.ieee.org/xpl/articleDetails.jsp?arnumber=4470327&sortType%3Das [...] [article] Observer and data-driven-model-based fault detection in power plant coal mills [texte imprimé] / Odgaard, P.F., Auteur ; Bao, Lin, Auteur ; Jorgensen, S.B., Auteur . - 2008 . - pp. 659 - 668.
Energy conversion
Langues : Anglais (eng)
in IEEE transactions on energy conversion > Vol. 23 n°2 (Juin 2008) . - pp. 659 - 668
Mots-clés : Fault location; least mean squares methods; power plants; principal component analysis Résumé : This paper presents and compares model-based and data-driven fault detection approaches for coal mill systems. The first approach detects faults with an optimal unknown input observer developed from a simplified energy balance model. Due to the time-consuming effort in developing a first principles model with motor power as the controlled variable, data-driven methods for fault detection are also investigated. Regression models that represent normal operating conditions (NOCs) are developed with both static and dynamic principal component analysis and partial least squares methods. The residual between process measurement and the NOC model prediction is used for fault detection. A hybrid approach, where a data-driven model is employed to derive an optimal unknown input observer, is also implemented. The three methods are evaluated with case studies on coal mill data, which includes a fault caused by a blocked inlet pipe. All three approaches detect the fault as it emerges. The optimal unknown input observer approach is most robust, in that, it has no false positives. On the other hand, the data-driven approaches are more straightforward to implement, since they just require the selection of appropriate confidence limit to avoid false detection. The proposed hybrid approach is promising for systems where a first principles model is cumbersome to obtain. En ligne : http://ieeexplore.ieee.org/xpl/articleDetails.jsp?arnumber=4470327&sortType%3Das [...]