DocumentCode :
740617
Title :
Life-data analysis for condition assessment of high-voltage assets
Author :
Chmura, Lukasz ; Morshuis, Peter H. F. ; Smit, Johan J. ; Janssen, Anton
Author_Institution :
Delft Univ. of Technol., Delft, Netherlands
Volume :
31
Issue :
5
fYear :
2015
Firstpage :
33
Lastpage :
43
Abstract :
Currently, network operators are facing a situation in which their high-voltage assets are reaching or even exceeding their design lifetimes [1]-[3]. The problem of future replacement of assets must thus be considered [4], [5]. Spare parts must be available to ensure replacement of components that fail during operation. In practice, utilities adopt two different approaches to assessing the condition of their assets [6], [7], namely bottom-up and top-down analysis. Bottom-up analysis uses aging characteristics of the materials within a given asset, and diagnostic measurements are performed to assess the physical degradation of the various parts of that asset. In contrast, top-down analysis uses mathematics to analyze the service-lifetime data of the whole population under consideration and to estimate the number of future failures within the population. In practice, both approaches have limitations due to differences in component design, operational conditions, environment, and maintenance programs [1]. An additional difficulty arises from ongoing technological improvements, e.g., in the properties of materials used in high-voltage components over a period of perhaps 40 years. In this paper, parametric statistical methods are used to analyze the time to failure of high-voltage components and to estimate the number of future failures. Attention is drawn to several problems that complicate the statistical analysis of service-lifetime data. Detailed information on the basic theory of statistical analysis of failure data can be found in [5], [6], [8]. Using service-lifetime data provided by a Dutch utility, and Monte Carlo simulations, three case studies of the failure of high-voltage components are presented.
Keywords :
Monte Carlo methods; condition monitoring; maintenance engineering; power apparatus; statistical analysis; Monte Carlo simulations; components replacement; condition assessment; high-voltage assets; high-voltage components; life-data analysis; maintenance programs; materials aging characteristics; operational conditions; service-lifetime; spare parts; statistical methods; Epoxy resin bushing; High-voltage techniques; Insulators; Load management; Power system reliability; Statistical analysis; Voltage control; Weibull distribution; aging assessment; epoxy resin bushing; life cycle; nonhomogeneous data; statistics; tap changer;
fLanguage :
English
Journal_Title :
Electrical Insulation Magazine, IEEE
Publisher :
ieee
ISSN :
0883-7554
Type :
jour
DOI :
10.1109/MEI.2015.7214443
Filename :
7214443
Link To Document :
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