INCORPORATING PRIOR BELIEF IN THE GENERAL PATH MODEL: A COMPARISON OF INFORMATION SOURCES
The general path model (GPM) is one approach for performing degradation-based, or Type III, prognostics. The GPM fits a parametric function to the collected observations of a prognostic parameter and extrapolates the fit to a failure threshold. This approach has been successfully applied to a variet...
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doaj-a39f217c61604aec9dbe4118ccdd3ec52020-11-24T23:49:25ZengElsevierNuclear Engineering and Technology1738-57332014-12-0146677378210.5516/NET.04.2014.722INCORPORATING PRIOR BELIEF IN THE GENERAL PATH MODEL: A COMPARISON OF INFORMATION SOURCESJAMIE COBLEJ. WESLEY HINESThe general path model (GPM) is one approach for performing degradation-based, or Type III, prognostics. The GPM fits a parametric function to the collected observations of a prognostic parameter and extrapolates the fit to a failure threshold. This approach has been successfully applied to a variety of systems when a sufficient number of prognostic parameter observations are available. However, the parametric fit can suffer significantly when few data are available or the data are very noisy. In these instances, it is beneficial to include additional information to influence the fit to conform to a prior belief about the evolution of system degradation. Bayesian statistical approaches have been proposed to include prior information in the form of distributions of expected model parameters. This requires a number of run-to-failure cases with tracked prognostic parameters; these data may not be readily available for many systems. Reliability information and stressor-based (Type I and Type II, respectively) prognostic estimates can provide the necessary prior belief for the GPM. This article presents the Bayesian updating framework to include prior information in the GPM and compares the efficacy of including different information sources on two data sets.http://www.sciencedirect.com/science/article/pii/S1738573315301455General Path ModelBayesian UpdatingType III Prognostics |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
JAMIE COBLE J. WESLEY HINES |
spellingShingle |
JAMIE COBLE J. WESLEY HINES INCORPORATING PRIOR BELIEF IN THE GENERAL PATH MODEL: A COMPARISON OF INFORMATION SOURCES Nuclear Engineering and Technology General Path Model Bayesian Updating Type III Prognostics |
author_facet |
JAMIE COBLE J. WESLEY HINES |
author_sort |
JAMIE COBLE |
title |
INCORPORATING PRIOR BELIEF IN THE GENERAL PATH MODEL: A COMPARISON OF INFORMATION SOURCES |
title_short |
INCORPORATING PRIOR BELIEF IN THE GENERAL PATH MODEL: A COMPARISON OF INFORMATION SOURCES |
title_full |
INCORPORATING PRIOR BELIEF IN THE GENERAL PATH MODEL: A COMPARISON OF INFORMATION SOURCES |
title_fullStr |
INCORPORATING PRIOR BELIEF IN THE GENERAL PATH MODEL: A COMPARISON OF INFORMATION SOURCES |
title_full_unstemmed |
INCORPORATING PRIOR BELIEF IN THE GENERAL PATH MODEL: A COMPARISON OF INFORMATION SOURCES |
title_sort |
incorporating prior belief in the general path model: a comparison of information sources |
publisher |
Elsevier |
series |
Nuclear Engineering and Technology |
issn |
1738-5733 |
publishDate |
2014-12-01 |
description |
The general path model (GPM) is one approach for performing degradation-based, or Type III, prognostics. The GPM fits a parametric function to the collected observations of a prognostic parameter and extrapolates the fit to a failure threshold. This approach has been successfully applied to a variety of systems when a sufficient number of prognostic parameter observations are available. However, the parametric fit can suffer significantly when few data are available or the data are very noisy. In these instances, it is beneficial to include additional information to influence the fit to conform to a prior belief about the evolution of system degradation. Bayesian statistical approaches have been proposed to include prior information in the form of distributions of expected model parameters. This requires a number of run-to-failure cases with tracked prognostic parameters; these data may not be readily available for many systems. Reliability information and stressor-based (Type I and Type II, respectively) prognostic estimates can provide the necessary prior belief for the GPM. This article presents the Bayesian updating framework to include prior information in the GPM and compares the efficacy of including different information sources on two data sets. |
topic |
General Path Model Bayesian Updating Type III Prognostics |
url |
http://www.sciencedirect.com/science/article/pii/S1738573315301455 |
work_keys_str_mv |
AT jamiecoble incorporatingpriorbeliefinthegeneralpathmodelacomparisonofinformationsources AT jwesleyhines incorporatingpriorbeliefinthegeneralpathmodelacomparisonofinformationsources |
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1725482313756704768 |