Robust estimates for the performance of complicated queue-ing networks can be obtained by showing that the number of jobs in the network is stochastically comparable to a simpler, analytically tractable reference network. Classical coupling results on stochastic ordering of network populations require strong monotonicity assumptions which are often violated in practice. However, in most real-world applications we care more about what goes through a network than what sits in-side it. This paper describes a new approach for ordering flows instead of populations by augmenting network states with their associated flow counting processes and deriving Markov couplings of the augmented state–flow processes. Keywords flow coupling, non-Markov coupl...
This handbook aims to highlight fundamental, methodological and computational aspects of networks of...
This paper presents an analytical model for the performance prediction of queueing networks with bat...
We present a general algorithm based on the stochastic ordering theory to provide a bounding aggrega...
International audienceQuality of performance measure bounds is crucial for an accurate dimensioning ...
International audienceWe study queueing networks similar to Jackson networks, modelled by a multidim...
International audienceWe present an extension of a methodology based on monotonicity of various netw...
Abstract: Order-preserving couplings are elegant tools for obtaining robust estimates of the time-de...
Stochastic processing networks arise as models in manufacturing, telecommunications, transportation,...
We introduce open stochastic fluid networks that can be regarded as continuous analogs or fluid limi...
International audienceWe present an extension of a methodology we have introduced recently. The main...
International audienceEnd to end QoS (Quality of Service) is crucial in computer networks, but very ...
We establish in a direct manner that the steady state distribution of Markovian fluid flow models ca...
International audienceWe consider large queueing networks for which transient and stationary probabi...
Stochastic comparison is a method to prove bounds on performance metrics of stochas-tic models. Here...
International audienceStochastic monotonicity is one of the sufficient conditions for stochastic com...
This handbook aims to highlight fundamental, methodological and computational aspects of networks of...
This paper presents an analytical model for the performance prediction of queueing networks with bat...
We present a general algorithm based on the stochastic ordering theory to provide a bounding aggrega...
International audienceQuality of performance measure bounds is crucial for an accurate dimensioning ...
International audienceWe study queueing networks similar to Jackson networks, modelled by a multidim...
International audienceWe present an extension of a methodology based on monotonicity of various netw...
Abstract: Order-preserving couplings are elegant tools for obtaining robust estimates of the time-de...
Stochastic processing networks arise as models in manufacturing, telecommunications, transportation,...
We introduce open stochastic fluid networks that can be regarded as continuous analogs or fluid limi...
International audienceWe present an extension of a methodology we have introduced recently. The main...
International audienceEnd to end QoS (Quality of Service) is crucial in computer networks, but very ...
We establish in a direct manner that the steady state distribution of Markovian fluid flow models ca...
International audienceWe consider large queueing networks for which transient and stationary probabi...
Stochastic comparison is a method to prove bounds on performance metrics of stochas-tic models. Here...
International audienceStochastic monotonicity is one of the sufficient conditions for stochastic com...
This handbook aims to highlight fundamental, methodological and computational aspects of networks of...
This paper presents an analytical model for the performance prediction of queueing networks with bat...
We present a general algorithm based on the stochastic ordering theory to provide a bounding aggrega...