4.7 Article

Estimation of renewal function under progressively censored data and its applications

Journal

RELIABILITY ENGINEERING & SYSTEM SAFETY
Volume 216, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.ress.2021.107988

Keywords

Renewal process; Renewal function; Variance function; Parametric estimation; Progressive censoring

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Renewal function and its variance function estimation problem under progressively censored data are investigated in this study. Parametric plug-in estimators are proposed with established statistical properties of consistency and asymptotic unbiasedness. The possible applications of the estimators in maintenance, warranty, and spare parts analyzes are discussed, and numerical procedures are provided for computation.
Renewal function is an important tool used by researchers in the fields of applied probability such as reliability theory, risk analysis, inventory theory and warranty analysis etc. Estimation problem of this function under complete and right censored samples is well studied in the literature. However, there isn't any study dealing with the estimation problem of this function under progressive censoring which is used widely in survival and failure analyzes. In this study, estimation problem of renewal function as well as variance function of a renewal process under progressively censored data is considered. Some parametric plug-in estimators are proposed, and their statistical properties are investigated. Consistency and asymptotic unbiasedness of these estimators are established. Possible applications of the estimators in maintenance, warranty and spare parts analyzes are investigated. Numerical procedures are provided to compute renewal and variance functions and their plug-in estimators. Small sample performances of the estimators are evaluated by a simulation study. Finally, two real data sets are examined to exhibit applicability of the estimators in some reliability problems.

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