Capezza, Christian (2020) Statistical Methods for Industrial Process Monitoring Based on Functional Data Analysis. [Tesi di dottorato]

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Tipologia del documento: Tesi di dottorato
Lingua: English
Titolo: Statistical Methods for Industrial Process Monitoring Based on Functional Data Analysis
Autori:
AutoreEmail
Capezza, Christianchristian.capezza@unina.it
Data: 13 Marzo 2020
Numero di pagine: 163
Istituzione: Università degli Studi di Napoli Federico II
Dipartimento: Ingegneria Industriale
Dottorato: Ingegneria industriale
Ciclo di dottorato: 32
Coordinatore del Corso di dottorato:
nomeemail
Grassi, Michelemichele.grassi@unina.it
Tutor:
nomeemail
Palumbo, Biagio[non definito]
Lepore, Antonio[non definito]
Data: 13 Marzo 2020
Numero di pagine: 163
Parole chiave: Profile Monitoring; Scalar-on-Function Regression; Ship CO2 Emissions
Settori scientifico-disciplinari del MIUR: Area 13 - Scienze economiche e statistiche > SECS-S/02 - Statistica per la ricerca sperimentale e tecnologica
Depositato il: 02 Apr 2020 08:35
Ultima modifica: 31 Ott 2021 21:32
URI: http://www.fedoa.unina.it/id/eprint/13242

Abstract

In this thesis, statistical methods for industrial process monitoring are proposed. The industrial scenario that motivates the research work is the monitoring and prediction of fuel consumption and CO2 emissions from maritime transportation. The two main objectives are, on the one hand, the prediction of fuel consumption (and/or CO2 emissions) on the basis of covariates describing the ship operating conditions at each voyage by means of advanced regression methods, and, on the other hand, the statistical process monitoring of the ship operating conditions and the fuel consumption (and/or CO2 emissions) based on control charts. The proposed methodologies can be arranged in three groups on the basis of how they treat the data for each voyage of a ship. The first group uses multivariate techniques, which, for each voyage, consider each individual observation of the variables as scalar quantities. Typically, the mean value of each variable over a voyage is considered. The second group considers the data for each voyage as profiles, from which several features are extracted in order to describe them in the best possible way. The third group considers the data for each voyage as functions, i.e. as complex, unique objects that have to be treated using functional data analysis techniques. The common ground of all the proposed methodologies is the need to provide tools to industrial practitioners that are easily interpretable and give clear indications of anomalies by identifying the related causes, possibly in real-time, and the use of real-data examples to demonstrate their predictive and monitoring abilities.

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