In reliability analyses recording the lifetimes of a sample of test units is not always possible, for example when a data capture system only keeps track of the number of malfunctions over a specified time interval. For the resulting so called failure count data the appropriate model is the Poisson distribution with parameter "lambda", which represents the mean number of failures in a time interval of given length. In this paper we present a Bayesian approach estimating this parameter, which allows for incorporating prior knowledge into the analyses. This prior knowledge can be obtained through experts' experience such as knowledge from previous development projects with similar products. Secondly, we will introduce a hierarchical Poisson m...
Fully Bayesian approaches to analysis can be overly ambitious where there exist realistic limitation...
A parallel system is one of the special redundant systems that industrial systems frequently use to ...
The Gibbs sampling approach is developed for Bayesian inferences and predictions in software reliabi...
In this paper, we are concerned with predicting the number of faults N and the time to next failure ...
This paper looks into the Bayesian approach for analyzing and selecting the best Poisson process mod...
In this dissertation, we present Bayesian inference for models based on non-homogeneous Poisson proc...
We study sample sizes for testing as required for Bayesian reliability demonstration in terms of fai...
This paper describes the extending model of Multi-mode Failure Models by using the Weibull and Gamma...
Abstract: The failure pattern of repairable mechanical equipment subject to deterioration phenomena...
The reliability assessment of systems which are relevant to security is an extremely important task ...
In reliability theory, the most important problem is to determine the reliability of a complex syste...
Nowadays, increasingly complex systems are critical due to the sectors and enterprises which they su...
Abstract: This research seeks to better understand how to update sectional time-to-failure (TTF) dis...
This research deals with the failure rate of the components of a complex system. The failure of a co...
Over the last few decades, reliability analysis has attracted significant interest due to its import...
Fully Bayesian approaches to analysis can be overly ambitious where there exist realistic limitation...
A parallel system is one of the special redundant systems that industrial systems frequently use to ...
The Gibbs sampling approach is developed for Bayesian inferences and predictions in software reliabi...
In this paper, we are concerned with predicting the number of faults N and the time to next failure ...
This paper looks into the Bayesian approach for analyzing and selecting the best Poisson process mod...
In this dissertation, we present Bayesian inference for models based on non-homogeneous Poisson proc...
We study sample sizes for testing as required for Bayesian reliability demonstration in terms of fai...
This paper describes the extending model of Multi-mode Failure Models by using the Weibull and Gamma...
Abstract: The failure pattern of repairable mechanical equipment subject to deterioration phenomena...
The reliability assessment of systems which are relevant to security is an extremely important task ...
In reliability theory, the most important problem is to determine the reliability of a complex syste...
Nowadays, increasingly complex systems are critical due to the sectors and enterprises which they su...
Abstract: This research seeks to better understand how to update sectional time-to-failure (TTF) dis...
This research deals with the failure rate of the components of a complex system. The failure of a co...
Over the last few decades, reliability analysis has attracted significant interest due to its import...
Fully Bayesian approaches to analysis can be overly ambitious where there exist realistic limitation...
A parallel system is one of the special redundant systems that industrial systems frequently use to ...
The Gibbs sampling approach is developed for Bayesian inferences and predictions in software reliabi...