Les Inscriptions à la Bibliothèque sont ouvertes en
ligne via le site: https://biblio.enp.edu.dz
Les Réinscriptions se font à :
• La Bibliothèque Annexe pour les étudiants en
2ème Année CPST
• La Bibliothèque Centrale pour les étudiants en Spécialités
A partir de cette page vous pouvez :
Retourner au premier écran avec les recherches... |
Détail de l'auteur
Auteur Torben M. Schmidt
Documents disponibles écrits par cet auteur
Affiner la rechercheData-driven soft sensor design with multiple-rate sampled data / Bao, Lin in Industrial & engineering chemistry research, Vol. 48 N° 11 (Juin 2009)
[article]
in Industrial & engineering chemistry research > Vol. 48 N° 11 (Juin 2009) . - pp. 5379–5387
Titre : Data-driven soft sensor design with multiple-rate sampled data : a comparative study Type de document : texte imprimé Auteurs : Bao, Lin, Auteur ; Bodil Recke, Auteur ; Torben M. Schmidt, Auteur Année de publication : 2009 Article en page(s) : pp. 5379–5387 Note générale : Chemical engineering Langues : Anglais (eng) Mots-clés : Multirate systems Samples Numerical interpolation Polynomial transformation Data lifting Weighted partial least squares Résumé : Multirate systems are common in industrial processes where quality measurements have slower sampling rates than other process variables. Since intersample information is desirable for effective quality control, different approaches have been reported to estimate the quality between samples, including the numerical interpolation, polynomial transformation, data lifting, and weighted partial least squares (WPLS). Two modifications to the original data lifting approach are proposed in this paper: reformulating the extraction of a fast model as an optimization problem and ensuring the desired model properties through Tikhonov Regularization. A comparative investigation of the four approaches is performed. Their applicability, accuracy, and robustness to process noise are evaluated with a single-input single-output (SISO) system. The modified data lifting and WPLS approaches are implemented to design quality soft sensors for cement kiln processes using data collected from a simulator and a plant log system. Preliminary results reveal that the WPLS approach is able to provide accurate one-step-ahead prediction. The regularized data lifting technique predicts the product quality of cement kiln systems reasonably well, demonstrating the potential to be used for effective quality control and as an advanced component of process analytical technology (PAT). En ligne : http://pubs.acs.org/doi/abs/10.1021/ie801084e [article] Data-driven soft sensor design with multiple-rate sampled data : a comparative study [texte imprimé] / Bao, Lin, Auteur ; Bodil Recke, Auteur ; Torben M. Schmidt, Auteur . - 2009 . - pp. 5379–5387.
Chemical engineering
Langues : Anglais (eng)
in Industrial & engineering chemistry research > Vol. 48 N° 11 (Juin 2009) . - pp. 5379–5387
Mots-clés : Multirate systems Samples Numerical interpolation Polynomial transformation Data lifting Weighted partial least squares Résumé : Multirate systems are common in industrial processes where quality measurements have slower sampling rates than other process variables. Since intersample information is desirable for effective quality control, different approaches have been reported to estimate the quality between samples, including the numerical interpolation, polynomial transformation, data lifting, and weighted partial least squares (WPLS). Two modifications to the original data lifting approach are proposed in this paper: reformulating the extraction of a fast model as an optimization problem and ensuring the desired model properties through Tikhonov Regularization. A comparative investigation of the four approaches is performed. Their applicability, accuracy, and robustness to process noise are evaluated with a single-input single-output (SISO) system. The modified data lifting and WPLS approaches are implemented to design quality soft sensors for cement kiln processes using data collected from a simulator and a plant log system. Preliminary results reveal that the WPLS approach is able to provide accurate one-step-ahead prediction. The regularized data lifting technique predicts the product quality of cement kiln systems reasonably well, demonstrating the potential to be used for effective quality control and as an advanced component of process analytical technology (PAT). En ligne : http://pubs.acs.org/doi/abs/10.1021/ie801084e