A Methodology for Updating Prognostic Models via Kalman Filters

Prognostic models are built to predict the future evolution of the state or health of a system. Typical applications of these models include predictions of damage (like crack, wear) and estimation of remaining useful life of a component. Prognostic models may be data based, based on known physics of...

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Main Authors: Venkatesh Rajagopalan, Arun Subramaniyan
Format: Article
Language:English
Published: The Prognostics and Health Management Society 2016-12-01
Series:International Journal of Prognostics and Health Management
Subjects:
Online Access:https://papers.phmsociety.org/index.php/ijphm/article/view/2525
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spelling doaj-f762a604a82b4720a346dc55dab3da642021-07-02T19:15:28ZengThe Prognostics and Health Management SocietyInternational Journal of Prognostics and Health Management2153-26482153-26482016-12-0174doi:10.36001/ijphm.2016.v7i4.2525A Methodology for Updating Prognostic Models via Kalman FiltersVenkatesh Rajagopalan0Arun Subramaniyan1Prognostics Laboratory, GE Global Research Center, Bangalore, Karnataka, 560078, IndiaStructures Laboratory, GE Global Research Center, Niskayuna, New York, 12309, USAPrognostic models are built to predict the future evolution of the state or health of a system. Typical applications of these models include predictions of damage (like crack, wear) and estimation of remaining useful life of a component. Prognostic models may be data based, based on known physics of the system or can be hybrid, i.e., built through a combination of data and physics. To build such models, one needs either data from the field (i.e., real-world operations) or simulations/ tests that qualitatively represent field observations. Often, field data is not easy to obtain and is limited in its availability. Thus, models are built with simulation or test data and then validated with field observations when they become available. This necessitates a procedure that allows for refinement of models to better represent real-world behavior without having to run expensive simulations or tests repeatedly. Further, a single prognostic model developed for an entire fleet may need to be updated with measurements obtained from individual units. In this paper, we describe a novel methodology, based on the Unscented Kalman Filter, that not only allows for updating such “fleet” models, but also guarantees improvement over the existing model.https://papers.phmsociety.org/index.php/ijphm/article/view/2525unscented kalman filterkalman filteringmodel updating
collection DOAJ
language English
format Article
sources DOAJ
author Venkatesh Rajagopalan
Arun Subramaniyan
spellingShingle Venkatesh Rajagopalan
Arun Subramaniyan
A Methodology for Updating Prognostic Models via Kalman Filters
International Journal of Prognostics and Health Management
unscented kalman filter
kalman filtering
model updating
author_facet Venkatesh Rajagopalan
Arun Subramaniyan
author_sort Venkatesh Rajagopalan
title A Methodology for Updating Prognostic Models via Kalman Filters
title_short A Methodology for Updating Prognostic Models via Kalman Filters
title_full A Methodology for Updating Prognostic Models via Kalman Filters
title_fullStr A Methodology for Updating Prognostic Models via Kalman Filters
title_full_unstemmed A Methodology for Updating Prognostic Models via Kalman Filters
title_sort methodology for updating prognostic models via kalman filters
publisher The Prognostics and Health Management Society
series International Journal of Prognostics and Health Management
issn 2153-2648
2153-2648
publishDate 2016-12-01
description Prognostic models are built to predict the future evolution of the state or health of a system. Typical applications of these models include predictions of damage (like crack, wear) and estimation of remaining useful life of a component. Prognostic models may be data based, based on known physics of the system or can be hybrid, i.e., built through a combination of data and physics. To build such models, one needs either data from the field (i.e., real-world operations) or simulations/ tests that qualitatively represent field observations. Often, field data is not easy to obtain and is limited in its availability. Thus, models are built with simulation or test data and then validated with field observations when they become available. This necessitates a procedure that allows for refinement of models to better represent real-world behavior without having to run expensive simulations or tests repeatedly. Further, a single prognostic model developed for an entire fleet may need to be updated with measurements obtained from individual units. In this paper, we describe a novel methodology, based on the Unscented Kalman Filter, that not only allows for updating such “fleet” models, but also guarantees improvement over the existing model.
topic unscented kalman filter
kalman filtering
model updating
url https://papers.phmsociety.org/index.php/ijphm/article/view/2525
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