Evaluation of reliability of a production process is a crucial step in sustainability assessment. In this article we consider the sample size determination problem when time-to-failure is modeled by a Rayleigh distribution. Following a hybrid Bayesian-frequentist approach, the selection of the number of units is based on the so-called probability of success (PoS) of the experiment, that is the expected value of the power function with respect to a design prior distribution for the mean failure time. This method works properly only if PoS is a representative summary of the distribution of the power function induced by the design prior. Therefore we derive and analyze the density of the power function for one-sided tests on the Rayleigh parameter, using conjugate design priors. Numerical examples are discussed.

On Bayesian power analysis in reliability / DE SANTIS, Fulvio; Gubbiotti, Stefania; Mariani, Francesco. - (2023), pp. 918-922. (Intervento presentato al convegno SEAS IN - Statistical Learning, Sustainability and Impact Evaluation tenutosi a Ancona).

On Bayesian power analysis in reliability

Fulvio De Santis;Stefania Gubbiotti;Francesco Mariani
2023

Abstract

Evaluation of reliability of a production process is a crucial step in sustainability assessment. In this article we consider the sample size determination problem when time-to-failure is modeled by a Rayleigh distribution. Following a hybrid Bayesian-frequentist approach, the selection of the number of units is based on the so-called probability of success (PoS) of the experiment, that is the expected value of the power function with respect to a design prior distribution for the mean failure time. This method works properly only if PoS is a representative summary of the distribution of the power function induced by the design prior. Therefore we derive and analyze the density of the power function for one-sided tests on the Rayleigh parameter, using conjugate design priors. Numerical examples are discussed.
2023
SEAS IN - Statistical Learning, Sustainability and Impact Evaluation
Bayesian analysis; power function; probability of success; Rayleigh model; sample size determination
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
On Bayesian power analysis in reliability / DE SANTIS, Fulvio; Gubbiotti, Stefania; Mariani, Francesco. - (2023), pp. 918-922. (Intervento presentato al convegno SEAS IN - Statistical Learning, Sustainability and Impact Evaluation tenutosi a Ancona).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1688601
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