Probabilistic Models for Life Cycle Management of Energy Infrastructure Systems

The degradation of aging energy infrastructure systems has the potential to increase the risk of failure, resulting in power outage and costly unplanned maintenance work. Therefore, the development of scientific and cost-effective life cycle management (LCM) strategies has become increasingly import...

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Main Author: Datla, Suresh Varma
Format: Others
Language:en
Published: 2007
Subjects:
Online Access:http://hdl.handle.net/10012/3145
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spelling ndltd-WATERLOO-oai-uwspace.uwaterloo.ca-10012-31452013-01-08T18:50:22ZDatla, Suresh Varma2007-08-02T17:16:45Z2007-08-02T17:16:45Z2007-08-02T17:16:45Z2007-07-04http://hdl.handle.net/10012/3145The degradation of aging energy infrastructure systems has the potential to increase the risk of failure, resulting in power outage and costly unplanned maintenance work. Therefore, the development of scientific and cost-effective life cycle management (LCM) strategies has become increasingly important to maintain energy infrastructure. Since degradation of aging equipment is an uncertain process which depends on many factors, a risk-based approach is required to consider the effect of various uncertainties in LCM. The thesis presents probabilistic models to support risk-based life cycle management of energy infrastructure systems. In addition to uncertainty in degradation process, the inspection data collected by the energy industry is often censored and truncated which make it difficult to estimate the lifetime probability distribution of the equipment. The thesis presents modern statistical techniques in quantifying uncertainties associated with inspection data and to estimate the lifetime distributions in a consistent manner. Age-based and sequential inspection-based replacement models are proposed for maintenance of component in a large-distribution network. A probabilistic lifetime model to consider the effect of imperfect preventive maintenance of a component is developed and its impact to maintenance optimization is illustrated. The thesis presents a stochastic model for the pitting corrosion process in steam generators (SG), which is a serious form of degradation in SG tubing of some nuclear generating stations. The model is applied to estimate the number of tubes requiring plugging and the probability of tube leakage in an operating period. The application and benefits of the model are illustrated in the context of managing the life cycle of a steam generator.1388061 bytesapplication/pdfenLife cycle managementReliabilitySurvival analysisMaintenanceLifetime estimationProbabilistic Models for Life Cycle Management of Energy Infrastructure SystemsThesis or DissertationCivil and Environmental EngineeringDoctor of PhilosophyCivil Engineering
collection NDLTD
language en
format Others
sources NDLTD
topic Life cycle management
Reliability
Survival analysis
Maintenance
Lifetime estimation
Civil Engineering
spellingShingle Life cycle management
Reliability
Survival analysis
Maintenance
Lifetime estimation
Civil Engineering
Datla, Suresh Varma
Probabilistic Models for Life Cycle Management of Energy Infrastructure Systems
description The degradation of aging energy infrastructure systems has the potential to increase the risk of failure, resulting in power outage and costly unplanned maintenance work. Therefore, the development of scientific and cost-effective life cycle management (LCM) strategies has become increasingly important to maintain energy infrastructure. Since degradation of aging equipment is an uncertain process which depends on many factors, a risk-based approach is required to consider the effect of various uncertainties in LCM. The thesis presents probabilistic models to support risk-based life cycle management of energy infrastructure systems. In addition to uncertainty in degradation process, the inspection data collected by the energy industry is often censored and truncated which make it difficult to estimate the lifetime probability distribution of the equipment. The thesis presents modern statistical techniques in quantifying uncertainties associated with inspection data and to estimate the lifetime distributions in a consistent manner. Age-based and sequential inspection-based replacement models are proposed for maintenance of component in a large-distribution network. A probabilistic lifetime model to consider the effect of imperfect preventive maintenance of a component is developed and its impact to maintenance optimization is illustrated. The thesis presents a stochastic model for the pitting corrosion process in steam generators (SG), which is a serious form of degradation in SG tubing of some nuclear generating stations. The model is applied to estimate the number of tubes requiring plugging and the probability of tube leakage in an operating period. The application and benefits of the model are illustrated in the context of managing the life cycle of a steam generator.
author Datla, Suresh Varma
author_facet Datla, Suresh Varma
author_sort Datla, Suresh Varma
title Probabilistic Models for Life Cycle Management of Energy Infrastructure Systems
title_short Probabilistic Models for Life Cycle Management of Energy Infrastructure Systems
title_full Probabilistic Models for Life Cycle Management of Energy Infrastructure Systems
title_fullStr Probabilistic Models for Life Cycle Management of Energy Infrastructure Systems
title_full_unstemmed Probabilistic Models for Life Cycle Management of Energy Infrastructure Systems
title_sort probabilistic models for life cycle management of energy infrastructure systems
publishDate 2007
url http://hdl.handle.net/10012/3145
work_keys_str_mv AT datlasureshvarma probabilisticmodelsforlifecyclemanagementofenergyinfrastructuresystems
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