Cumulative exposure lognormal model with hybrid
Abstract
This research aims to analyze data coming from step stress life testing experiments that
are commonly used to make inferences on the reliability of products and machines.
Customers expect a reliable product that can still perform its functions for a long period
of time. For this reason, factories are pressured to design and make products that can
operate for a long enough period of time while performing its functions. Step stress
experiments are accelerated experiments for which the stress level increases at a preset
time to obtain failure data faster and make the necessary analysis. To analyze step stress
data, a model that extrapolates the information obtained from the accelerated tests to
normal use conditions needs to be fit to the life test data. In this study, we will use the
Cumulative Exposure Model (CEM) to analyze simple step stress lognormal life test
data and estimate the model parameter and survival function in the case where hybrid
censoring is present in the data. This study uses the maximum likelihood estimation
method and the Maximum Likelihood Estimators (MLEs) properties to find the point
and interval estimates of the parameters, in addition to finding the point and interval
estimates for the survival function. The MLEs are obtained numerically since the ML
equations cannot be found explicitly. The approximate confidence interval for
estimating the model parameters was constructed based on the asymptotic property of
the MLEs. To obtain the approximate confidence interval for estimating the survival function, the delta method is used. The bootstrap-t intervals and percentile intervals
were also constructed to estimate the model parameters and survival function.
Furthermore, a simulation study has been performed to examine the proposed methods
of estimation under different hybrid censoring schemes. The Bias, MSE, coverage
probability and average lengths have been calculated to study and compare the
performance of the point and interval estimators of the model parameters and survival
function. Finally, an illustrative example has been made to view and illustrate how the
proposed methods work
DOI/handle
http://hdl.handle.net/10576/20827Collections
- Mathematics, Statistics & Physics [33 items ]