The reliability of a complex industrial system can rarely be assessed analytically. As system failure is often a rare event, crude Monte-Carlo methods are prohibitively expensive from a computational point of view. In order to reduce computation times, variance reduction methods such as importance sampling can be used. We propose an adaptation of this method for a class of multi-component dynamical systems. We address a system whose failure corresponds to a physical variable of the system (temperature, pressure, water level) entering a critical region. Such systems are common in hydraulic and nuclear industry. In these systems, the statuses of the components (on, off, or out-of-order) determine the dynamics of the physical variables, and is...
In the present paper we use discrete event simulation in order to analyze a binary monotone system o...
We introduce Path-ZVA: an efficient simulation technique for estimating the probability of reaching ...
The theory of probabilistic dynamics (TPD) was first introduced in order to overcome some of the lim...
The reliability of a complex industrial system can rarely be assessed analytically. As system failur...
In order to assess the reliability of a complex industrial system by simulation, and in reasonable t...
Piecewise deterministic Markov processes (PDMPs) can be used to model complex dynamical industrial s...
Importance sampling has had its origin in Monte Carlo simulation and in the last 15 years or so, it ...
A new approach to evaluate the reliability of structural systems using a Monte Carlo variance reduct...
Probabilistic model checking has been used recently to assess, among others, dependability measures ...
Very complex systems occur nowadays quite frequently in many technological areas and they are often ...
Probabilistic dynamics offers a general Markovian framework for a dynamic treatment of reliability. ...
This paper focuses on the reliability analysis of multicomponent systems by the importance sampling ...
Importance sampling methods can be iterated like MCMC algorithms, while being more robust against de...
An adaptive importance sampling methodology is proposed to compute the multidimensional integrals e...
This paper presents a simulation technique for reliability analysis of linear dynamical systems. It ...
In the present paper we use discrete event simulation in order to analyze a binary monotone system o...
We introduce Path-ZVA: an efficient simulation technique for estimating the probability of reaching ...
The theory of probabilistic dynamics (TPD) was first introduced in order to overcome some of the lim...
The reliability of a complex industrial system can rarely be assessed analytically. As system failur...
In order to assess the reliability of a complex industrial system by simulation, and in reasonable t...
Piecewise deterministic Markov processes (PDMPs) can be used to model complex dynamical industrial s...
Importance sampling has had its origin in Monte Carlo simulation and in the last 15 years or so, it ...
A new approach to evaluate the reliability of structural systems using a Monte Carlo variance reduct...
Probabilistic model checking has been used recently to assess, among others, dependability measures ...
Very complex systems occur nowadays quite frequently in many technological areas and they are often ...
Probabilistic dynamics offers a general Markovian framework for a dynamic treatment of reliability. ...
This paper focuses on the reliability analysis of multicomponent systems by the importance sampling ...
Importance sampling methods can be iterated like MCMC algorithms, while being more robust against de...
An adaptive importance sampling methodology is proposed to compute the multidimensional integrals e...
This paper presents a simulation technique for reliability analysis of linear dynamical systems. It ...
In the present paper we use discrete event simulation in order to analyze a binary monotone system o...
We introduce Path-ZVA: an efficient simulation technique for estimating the probability of reaching ...
The theory of probabilistic dynamics (TPD) was first introduced in order to overcome some of the lim...