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arxiv: 1901.10635 · v1 · pith:MJFQAA3Snew · submitted 2019-01-30 · 🧮 math.PR

A discontinuous Galerkin method for approximating the stationary distribution of stochastic fluid-fluid processes

classification 🧮 math.PR
keywords distributionfluid-fluidstationarystochasticvarphiapproximatingdiscontinuousdriven
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Introduced by Bean and O'Reilly (2014), a stochastic fluid-fluid process is a Markov processes $\{X_t, Y_t, \varphi_t\}_{t \geq 0}$, where the first fluid $X_t$ is driven by the Markov chain $\varphi_t$, and the second fluid $Y_t$ is driven by $\varphi_t$ as well as by $X_t$. That paper derived a closed-form expression for the joint stationary distribution, given in terms of operators acting on measures, which does not lend itself easily to numerical computations. Here, we construct a discontinuous Galerkin method for approximating this stationary distribution, and illustrate the methodology using an on-off bandwidth sharing system, which is a special case of a stochastic fluid-fluid process.

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