Abstract
In a reliability experiment, accelerated life-testing allows higher-than-normal stress levels on test units. In a special class of accelerated life tests known as step-stress tests, the stress levels are increased at some pre-planned time points, allowing the experimenter to obtain information on the lifetime parameters more quickly than under normal operating conditions. Also, when a test unit fails, there are often several risk factors associated with the cause of failure (i.e., mechanical, electrical, etc.). In this article, the step-stress model under Type-I censoring is considered when the different risk factors have s-independent generalized exponential lifetime distributions. With the assumption of cumulative damage, the point estimates of the unknown scale and shape parameters of the different causes are derived using the maximum likelihood approach. Using the asymptotic distributions and the parametric bootstrap method, we also discuss the construction of confidence intervals for the parameters. The precision of the estimates and the performance of the confidence intervals are assessed through extensive Monte Carlo simulations, and lastly, the method of inference discussed here is illustrated with examples.
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