(eng) In this paper, we show how to design a perfect simulation for Markovian fork-join networks, or equivalently, free-choice Petri nets. For pure fork-join networks and for event graphs, the simulation time can be greatly reduced by using extremal initial states, namely blocking states, although such nets do not exhibit any natural monotonicity property. Another approach for perfect simulation of pure fork-join networks is based on a (max,plus) representation of the system. For that, we show how the theory of (max,plus) stochastic systems can be used to provide perfect samplings. Finally, experimental runs show that the (max,plus) approach couples within fewer steps but needs a larger simulation time than the Markovian approach
This paper deals with the estimation of rare event probabil-ities in finite capacity queueing networ...
Perfect simulation of a class of Markovian queueing networks with finite buffers is examined in this...
The solution of continuous and discrete-time Markovian models is still challenging mainly when we mo...
In this paper, we show how to design a perfect simulation for Markovian fork-join networks, or equiv...
Special issue of selected papers from the Valuetools conferenceInternational audienceIn this paper, ...
In a fork-join network each incoming job is split into K tasks and the K tasks are simultaneously as...
Stochastic Petri nets are an important formalism for performance evaluation of telecommunication sys...
National audienceThe statistical control of discrete event simulations is usually based on empirical...
Stochastic Petri nets (SPNs) are widely used for the performance evaluation of computer and telecomm...
Stochastic Petri nets are an important formalism for performance evaluation of telecommunication sys...
International audienceThis paper presents a new method to speed up perfect sampling of Markov chains...
This paper considers a fork-join network with a group of heterogeneous servers in each service stati...
Perfect sampling allows exact simulation of random variables from the stationary measure of a Markov...
Perfect simulation, or coupling from the past, is an efficient technique for sampling the steady sta...
Perfect sampling, or coupling from the past enables one to compute unbiased samples of the stationar...
This paper deals with the estimation of rare event probabil-ities in finite capacity queueing networ...
Perfect simulation of a class of Markovian queueing networks with finite buffers is examined in this...
The solution of continuous and discrete-time Markovian models is still challenging mainly when we mo...
In this paper, we show how to design a perfect simulation for Markovian fork-join networks, or equiv...
Special issue of selected papers from the Valuetools conferenceInternational audienceIn this paper, ...
In a fork-join network each incoming job is split into K tasks and the K tasks are simultaneously as...
Stochastic Petri nets are an important formalism for performance evaluation of telecommunication sys...
National audienceThe statistical control of discrete event simulations is usually based on empirical...
Stochastic Petri nets (SPNs) are widely used for the performance evaluation of computer and telecomm...
Stochastic Petri nets are an important formalism for performance evaluation of telecommunication sys...
International audienceThis paper presents a new method to speed up perfect sampling of Markov chains...
This paper considers a fork-join network with a group of heterogeneous servers in each service stati...
Perfect sampling allows exact simulation of random variables from the stationary measure of a Markov...
Perfect simulation, or coupling from the past, is an efficient technique for sampling the steady sta...
Perfect sampling, or coupling from the past enables one to compute unbiased samples of the stationar...
This paper deals with the estimation of rare event probabil-ities in finite capacity queueing networ...
Perfect simulation of a class of Markovian queueing networks with finite buffers is examined in this...
The solution of continuous and discrete-time Markovian models is still challenging mainly when we mo...