Tätä sivua ei enää ylläpidetä. Siirry uuteen julkaisuluetteloon tästä
Modelling of conditional variance and uncertainty using industrial process data
Ilmari Juutilainen
Teknillinen tiedekunta, Teknillinen tiedekunta, Oulun yliopisto
Teknillinen tiedekunta, Sähkö- ja tietotekniikan osasto, Oulun yliopisto
Academic dissertation to be presented, with the assent of the Faculty of Technology of the University of Oulu, for public defence in Auditorium TA105, Linnanmaa, on November 24th, 2006, at 12 noon
Copyright © 2006
Oulun yliopisto
Esitarkastajat
Professori Lasse Holmström
Professori Olli Simula
OULUN YLIOPISTO, OULU 2006
ISBN 951-42-8262-0 (PDF)
ISSN 1796-2226 (Online)
URN:ISBN:9514282620
Abstract
This thesis presents methods for modelling conditional variance and uncertainty of prediction at a query point on the basis of industrial process data. The introductory part of the thesis provides an extensive background of the examined methods and a summary of the results. The results are presented in detail in the original papers.
The application presented in the thesis is modelling of the mean and variance of the mechanical properties of steel plates. Both the mean and variance of the mechanical properties depend on many process variables. A method for predicting the probability of rejection in a quali?cation test is presented and implemented in a tool developed for the planning of strength margins. The developed tool has been successfully utilised in the planning of mechanical properties in a steel plate mill.
The methods for modelling the dependence of conditional variance on input variables are reviewed and their suitability for large industrial data sets are examined. In a comparative study, neural network modelling of the mean and dispersion narrowly performed the best.
A method is presented for evaluating the uncertainty of regression-type prediction at a query point on the basis of predicted conditional variance, model variance and the effect of uncertainty about explanatory variables at early process stages. A method for measuring the uncertainty of prediction on the basis of the density of the data around the query point is proposed. The proposed distance measure is utilised in comparing the generalisation ability of models. The generalisation properties of the most important regression learning methods are studied and the results indicate that local methods and quadratic regression have a poor interpolation capability compared with multi-layer perceptron and Gaussian kernel support vector regression.
The possibility of adaptively modelling a time-varying conditional variance function is disclosed. Two methods for adaptive modelling of the variance function are proposed. The background of the developed adaptive variance modelling methods is presented.
Asiasanat: joint modelling of mean and dispersion, model uncertainty, process data, tensile properties, time-varying parameter, variance estimation, variance function, variance heterogeneity
- Julkaisu Adoben PDF-muodossa 794.35 KB
Julkaistu painettuna:
![]() | Acta Universitatis Ouluensis Technica C 258 ISBN 951-42-8261-2 ISSN 0355-3213 |
Oulun yliopiston muita julkaisuja
- Muita Oulun yliopiston julkaisemia elektronisia julkaisuja
- Sarjan Acta Universitatis Ouluensis Technica kotisivu
Päivitetty 24.8.2011 | Webmaster

