Models
and Analysis of Degradation Data
Sergio Yañez, Ronald Andrés Granada & Mario Cesar Jaramillo
Abstract
Degradation is a weakness that eventually can cause
failure (e.g. car tire wear). When it is possible to measure degradation, such
measures often provide more information than failure-time data for purposes of
assessing and improving product reliability. This is a paper which mainly
pretends to divulge techniques that had been developed by Meeker & Escobar
(1998). We think it is worth to make this topics known, because they are in the
research frontier of the Reliability Theory (Lawless 2000). We compare in this
work the explicit degradation models with the approximate degradation analysis.
The explicit degradation model requires specific models developed by engineers
and physical scientists, which are treated as mixed models with random effects.
To obtain ML estimates we use S-PLUS following Pinheiro & Bates (2000), and
also use bootstrap confidence intervals.
Key words: Reliability theory,
Degradation data, boostrap, Mixed effects models, Random effects.
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