In reliability theory, the most important problem is to determine the reliability of a complex system from the reliability of its components. The weakness of most reliability theories is that the systems are described and explained as simply functioning or failed. In many real situations, the failures may be from many causes depending upon the age and the environment of the system and its components. Another problem in reliability theory is one of estimating the parameters of the assumed failure models. The estimation may be based on data collected over censored or uncensored life tests. In many reliability problems, the failure data are simply quantitatively inadequate, especially in engineering design and maintenance system. The Bayesi...
This paper considers the quantification of system reliability in scenarios in which data, that is, f...
In ideal circumstances, failure time data for a K component series system contain the time to failur...
In reliability engineering, data about failure events is often scarce. To arrive at meaningful estim...
The exponential distribution is the most widely used reliability analysis. This distribution is very...
The exponential distribution is the most widely used reliability analysis. This distribution is very...
This research deals with the failure rate of the components of a complex system. The failure of a co...
Master's thesis in Risk managementNowadays, increasingly complex systems are critical due to the sec...
In a reliability or maintenance analysis of a complex system, it is important to be able to identify...
In this paper our effort is to introduce the basic notions that constitute a competing risks models ...
In the reliability modeling field, we sometimes encounter systems with uncertain structures, and the...
Bayesian analysis of system failure data from engineering applications under a competing risks frame...
The development of the theory and application of Monte Carlo Markov Chain methods, vast improvements...
A two parameter Weibull distribution is assumed to be the appropriate model of an engineering device...
In the masked system lifetime data, the exact component that causes the system's failure is oft...
The objective of this study is to compare Bayesian and parametric approaches to determine the best f...
This paper considers the quantification of system reliability in scenarios in which data, that is, f...
In ideal circumstances, failure time data for a K component series system contain the time to failur...
In reliability engineering, data about failure events is often scarce. To arrive at meaningful estim...
The exponential distribution is the most widely used reliability analysis. This distribution is very...
The exponential distribution is the most widely used reliability analysis. This distribution is very...
This research deals with the failure rate of the components of a complex system. The failure of a co...
Master's thesis in Risk managementNowadays, increasingly complex systems are critical due to the sec...
In a reliability or maintenance analysis of a complex system, it is important to be able to identify...
In this paper our effort is to introduce the basic notions that constitute a competing risks models ...
In the reliability modeling field, we sometimes encounter systems with uncertain structures, and the...
Bayesian analysis of system failure data from engineering applications under a competing risks frame...
The development of the theory and application of Monte Carlo Markov Chain methods, vast improvements...
A two parameter Weibull distribution is assumed to be the appropriate model of an engineering device...
In the masked system lifetime data, the exact component that causes the system's failure is oft...
The objective of this study is to compare Bayesian and parametric approaches to determine the best f...
This paper considers the quantification of system reliability in scenarios in which data, that is, f...
In ideal circumstances, failure time data for a K component series system contain the time to failur...
In reliability engineering, data about failure events is often scarce. To arrive at meaningful estim...