Stress-Strength Modeling Using Median-Ranked Set Sampling: Estimation, Simulation, and Application
In this study, we look at how to estimate stress?strength reliability models, R1 = P (Y < X)
and R2 = P (Y < X), where the strength X and stress Y have the same distribution in the first model,
?1, and strength X and stress Z have different distributions in the second model, R2. Based on the
first model, the stress Y and strength X are assumed to have the Lomax distributions, whereas, in
the second model, X and Z are assumed to have both the Lomax and inverse Lomax distributions,
respectively. With the assumption that the variables in both models are independent, the medianranked
set sampling (MRSS) strategy is used to look at different possibilities. Using the maximum
likelihood technique and an MRSS design, we derive the reliability estimators for both models when
the strength and stress variables have a similar or dissimilar set size. The simulation study is used
to verify the accuracy of various estimates. In most cases, the simulation results show that the reliability
estimates for the second model are more efficient than those for the first model in the case of
dissimilar set sizes. However, with identical set sizes, the reliability estimates for the first model are
more efficient than the equivalent estimates for the second model. Medical data are used for further
illustration, allowing the theoretical conclusions to be verified.