This paper presents a methodology for general nonlinear reliability problems. It is based on dividing the failure domain into a number of appropriately selected subregions and calculating the failure probability as a sum of the probabilities associated with each of these subregions. The probability of each subregion is calculated as a product of factors. These factors can be estimated quite accurately by a relatively small number of samples generated according to the conditional distribution of different subregions. The generation of such samples is achieved through Markov Chain Monte Carlo (MCMC) simulations using a slice-sampling-based algorithm proposed by the authors. This algorithm overcomes difficulties in choosing an appropriate prop...
Abstract. The development of an efficient MCMC strategy for sampling from complex dis-tributions is ...
ABSTRACT: Estimation of small failure probabilities is one of the most important and challenging pro...
Studying failure scenarios allows one to gain insights into their cause and consequence, providing i...
This paper presents a methodology for general nonlinear reliability problems. It is based on dividin...
This paper presents a methodology for general non-linear reliability problems. It is based on dividi...
Estimation of small failure probabilities is one of the most important and challenging computational...
Abstract Monte Carlo Simulation (MCS) offers a powerful means for evaluating the reliability of a sy...
Monte Carlo simulation (MCS) offers a powerful means for evaluating the reliability of a system, due...
Monte Carlo Simulation (MCS) offers a powerful means for modeling the stochastic failure behavior of...
This paper presents the reliability analysis of three benchmark problems using three variants of Su...
In this paper the problem of reliability-based optimization is considered. A global optimization met...
A new simulation approach, called 'subset simulation', is proposed to compute small failure probabil...
This paper presents the reliability analysis of three benchmark problems using three variants of Sub...
In reliability analysis literature, Monte Carlo simulation method offers a simple and robust means f...
This paper addresses a benchmark study designed to evaluate the performance of various methods in ca...
Abstract. The development of an efficient MCMC strategy for sampling from complex dis-tributions is ...
ABSTRACT: Estimation of small failure probabilities is one of the most important and challenging pro...
Studying failure scenarios allows one to gain insights into their cause and consequence, providing i...
This paper presents a methodology for general nonlinear reliability problems. It is based on dividin...
This paper presents a methodology for general non-linear reliability problems. It is based on dividi...
Estimation of small failure probabilities is one of the most important and challenging computational...
Abstract Monte Carlo Simulation (MCS) offers a powerful means for evaluating the reliability of a sy...
Monte Carlo simulation (MCS) offers a powerful means for evaluating the reliability of a system, due...
Monte Carlo Simulation (MCS) offers a powerful means for modeling the stochastic failure behavior of...
This paper presents the reliability analysis of three benchmark problems using three variants of Su...
In this paper the problem of reliability-based optimization is considered. A global optimization met...
A new simulation approach, called 'subset simulation', is proposed to compute small failure probabil...
This paper presents the reliability analysis of three benchmark problems using three variants of Sub...
In reliability analysis literature, Monte Carlo simulation method offers a simple and robust means f...
This paper addresses a benchmark study designed to evaluate the performance of various methods in ca...
Abstract. The development of an efficient MCMC strategy for sampling from complex dis-tributions is ...
ABSTRACT: Estimation of small failure probabilities is one of the most important and challenging pro...
Studying failure scenarios allows one to gain insights into their cause and consequence, providing i...