Please use this identifier to cite or link to this item: https://hdl.handle.net/10316/7375
Title: Monitorização, modelação e melhoria de processos químicos : abordagem multiescala baseada em dados
Other Titles: Data-driven multiscale monitoring, modelling and improvement of chemical processes
Authors: Reis, Marco Paulo Seabra 
Orientador: Saraiva, Pedro Manuel Tavares Lopes de Andrade
Keywords: Processos químicos; Indústria química; Análise multiescala; Multiscale analysis; Multiscale statistical process control; Measurement uncertainty; Linear regression; Chemometrics; Multivariate statistical process control; Process optimization; Latent variable modelling; Missing data; Multiresolution data
Issue Date: 27-Mar-2006
Citation: REIS, Marco Paulo Seabra dos - Monitorização, modelação e melhoria de processos químicos : abordagem multiescala baseada em dados. Coimbra, 2005.
Abstract: Processes going on in modern chemical processing plants are typically very complex, and this complexity is also present in collected data, which contain the cumulative effect of many underlying phenomena and disturbances, presenting different patterns in the time/frequency domain. Such characteristics motivate the development and application of data-driven multiscale approaches to process analysis, with the ability of selectively analyzing the information contained at different scales, but, even in these cases, there is a number of additional complicating features that can make the analysis not being completely successful. Missing and multirate data structures are two representatives of the difficulties that can be found, to which we can add multiresolution data structures, among others. On the other hand, some additional requisites should be considered when performing such an analysis, in particular the incorporation of all available knowledge about data, namely data uncertainty information. In this context, this thesis addresses the problem of developing frameworks that are able to perform the required multiscale decomposition analysis while coping with the complex features present in industrial data and, simultaneously, considering measurement uncertainty information. These frameworks are proven to be useful in conducting data analysis in these circumstances, representing conveniently data and the associated uncertainties at the different relevant resolution levels, being also instrumental for selecting the proper scales for conducting data analysis. In line with efforts described in the last paragraph and to further explore the information processed by such frameworks, the integration of uncertainty information on common single-scale data analysis tasks is also addressed. We propose developments in this regard in the fields of multivariate linear regression, multivariate statistical process control and process optimization. The second part of this thesis is oriented towards the development of intrinsically multiscale approaches, where two such methodologies are presented in the field of process monitoring, the first aiming to detect changes in the multiscale characteristics of profiles, while the second is focused on analysing patterns evolving in the time domain.
Description: Tese de doutoramento em Engenharia Química (Processos Químicos) apresentada à Faculdade de Ciências e Tecnologia da Univ. de Coimbra
URI: https://hdl.handle.net/10316/7375
Rights: openAccess
Appears in Collections:FCTUC Eng.Química - Teses de Doutoramento

Files in This Item:
File Description SizeFormat
Tese Doutoramento Marco P S Reis.pdf2.88 MBAdobe PDFView/Open
Show full item record

Page view(s)

244
checked on Apr 16, 2024

Download(s) 50

443
checked on Apr 16, 2024

Google ScholarTM

Check


Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.