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An estimate of maintenance efficiency in Brown-Proschan imperfect repair model with bathtub failure intensity

Journal Name:

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DOI: 
http://dx.doi.org/10.3926/jiem.314
Abstract (2. Language): 
Purpose: Estimate the maintenance efficiency in the Brown-Proschan model with the bathtub failure intensity. Design/methodology/approach: Empirical research through which we propose a framework to establish the characteristics of failure process and its influence on maintenance process. Findings: The main contribution of the present study is the reformulation of the Brown and Proschan model using the bathtub failure intensity Practical implications: Our model is defined by BP reformulation one using bathtub failure intensity. This form of intensity is presented like superposition of two N H P P and Homogeneous Poisson one. Originality/value: This is the follow on research on the study that employed the power-law-process type of failure intensity.
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REFERENCES

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