Efficient importance sampling methods are proposed for the simulation of a single server queue with server breakdowns. The server is assumed to alternate between the operational and failure states according to a continuous time Markov chain. Both, continuous (fluid flow) and discrete (single arrivals) sources are considered. In the fluid flow model, we consider Markov-modulated fluid sources and a constant output rate when the server is operational. In the discrete arrivals model, we consider Markov-modulated Poisson sources and generally distributed service time when the server is operational. We show how known results on Markov additive processes may be applied to determine the optimal (exponentially tilted) change of measure for both mod...
In this paper, a method is presented for the efficient estimation of rare-event (overflow) probabili...
Efficient Simulation of a Tandem Queue with Tandem Jackson networks and more sophisticated variants ...
Tandem Jackson networks, and more sophisticated variants, have found widespread appli-cation in vari...
Efficient importance sampling methods are proposed for the simulation of a single server queue with ...
This article analyzes the transient buffer content distribution of a queue fed by a large number of ...
This article analyzes the transient buffer content distribution of a queue fed by a large number of ...
This article analyzes the transient buffer content distribution of a queue fed by a large number of ...
Consider a continuous-time queueing network with probabilistic routing, including feedback. External...
An Importance Sampling procedure to efficiently estimate overflow probabilities in continuous flow l...
Tandem Jackson networks and more sophisticated variants have found widespread application in various...
Tandem Jackson networks, and more sophisticated variants, have found widespread application in vario...
AbstractImportance sampling (IS) is a variance reduction method for simulating rare events. A recent...
Importance sampling (IS) is a variance reduction method for simulating rare events. A recent paper b...
In this thesis we propose state-dependent importance sampling heuristics to estimate the probability...
In this paper, a method is presented for the efficient estimation of rare-event (buffer overflow) pr...
In this paper, a method is presented for the efficient estimation of rare-event (overflow) probabili...
Efficient Simulation of a Tandem Queue with Tandem Jackson networks and more sophisticated variants ...
Tandem Jackson networks, and more sophisticated variants, have found widespread appli-cation in vari...
Efficient importance sampling methods are proposed for the simulation of a single server queue with ...
This article analyzes the transient buffer content distribution of a queue fed by a large number of ...
This article analyzes the transient buffer content distribution of a queue fed by a large number of ...
This article analyzes the transient buffer content distribution of a queue fed by a large number of ...
Consider a continuous-time queueing network with probabilistic routing, including feedback. External...
An Importance Sampling procedure to efficiently estimate overflow probabilities in continuous flow l...
Tandem Jackson networks and more sophisticated variants have found widespread application in various...
Tandem Jackson networks, and more sophisticated variants, have found widespread application in vario...
AbstractImportance sampling (IS) is a variance reduction method for simulating rare events. A recent...
Importance sampling (IS) is a variance reduction method for simulating rare events. A recent paper b...
In this thesis we propose state-dependent importance sampling heuristics to estimate the probability...
In this paper, a method is presented for the efficient estimation of rare-event (buffer overflow) pr...
In this paper, a method is presented for the efficient estimation of rare-event (overflow) probabili...
Efficient Simulation of a Tandem Queue with Tandem Jackson networks and more sophisticated variants ...
Tandem Jackson networks, and more sophisticated variants, have found widespread appli-cation in vari...