AbstractFor systems that are suitable to be modelled by continuous Markov chains, dependability analysis is not always straightforward. When such systems are large and complex, it is usually impossible to compute their dependability measures exactly. An alternative solution is to estimate them by simulation, typically by Monte Carlo simulation. But for highly reliable systems standard simulation can not reach satisfactory accuracy levels (measured by the variance of the estimator) within reasonable computing times. Conditional Monte Carlo with Intermediate Estimations (CMIE) is a simulation method proposal aimed at making accurate estimations of dependability measures on highly reliable Markovian systems. The basis of CMIE is introduced, th...
For rare events described in terms of Markov processes, truly unbiased estimation of the rare event ...
Markov Chain Monte Carlo method is used to sample from complicated multivariate distribution with no...
International audienceWe describe a quasi-Monte Carlo method for the simulation of discrete time Mar...
AbstractFor systems that are suitable to be modelled by continuous Markov chains, dependability anal...
For systems that provide some kind of service while they are operational and stop providing it when ...
As the size of engineered systems grows, problems in reliability theory can become computationally c...
The paper shows how Monte Carlo methods can be improved significantly by conditioning on a suitable ...
In this paper, we give a necessary and sufficient condition to perform a good normal approximation f...
The reliability of consecutive-k-out-of-n: F system (or C (k, n: F) system) has aroused great intere...
Modern engineering systems are becoming increasingly complex. Assessing their risk by simulation is ...
As the size of engineered systems grows, problems in reliability theory can become computationally c...
Simulation methods have recently been developed for the solution of the extremely large Markovian de...
International audienceThis paper proposes an efficient approach to model stochastic hybrid systems a...
Monte Carlo simulation (MCS) offers a powerful means for evaluating the reliability of a system, due...
A new method for efficient Monte Carlo simulations is developed, and used to estimate the reliabilit...
For rare events described in terms of Markov processes, truly unbiased estimation of the rare event ...
Markov Chain Monte Carlo method is used to sample from complicated multivariate distribution with no...
International audienceWe describe a quasi-Monte Carlo method for the simulation of discrete time Mar...
AbstractFor systems that are suitable to be modelled by continuous Markov chains, dependability anal...
For systems that provide some kind of service while they are operational and stop providing it when ...
As the size of engineered systems grows, problems in reliability theory can become computationally c...
The paper shows how Monte Carlo methods can be improved significantly by conditioning on a suitable ...
In this paper, we give a necessary and sufficient condition to perform a good normal approximation f...
The reliability of consecutive-k-out-of-n: F system (or C (k, n: F) system) has aroused great intere...
Modern engineering systems are becoming increasingly complex. Assessing their risk by simulation is ...
As the size of engineered systems grows, problems in reliability theory can become computationally c...
Simulation methods have recently been developed for the solution of the extremely large Markovian de...
International audienceThis paper proposes an efficient approach to model stochastic hybrid systems a...
Monte Carlo simulation (MCS) offers a powerful means for evaluating the reliability of a system, due...
A new method for efficient Monte Carlo simulations is developed, and used to estimate the reliabilit...
For rare events described in terms of Markov processes, truly unbiased estimation of the rare event ...
Markov Chain Monte Carlo method is used to sample from complicated multivariate distribution with no...
International audienceWe describe a quasi-Monte Carlo method for the simulation of discrete time Mar...