Dynamic Control of Brownian Networks: State Space Collapse and Equivalent Workload Formulations
The Annals of Applied Probability, 1997, Vol. 7, No. 3, pp. 747-771
Posted: 14 Dec 2013
Date Written: March 1, 1997
Brownian networks are a class of linear stochastic control systems that arise as heavy traffic approximations in queueing theory. Such Brownian system models have been used to approximate problems of dynamic routing, dynamic sequencing and dynamic input control for queueing networks. A number of specific examples have been analyzed in recent years, and in each case the Brownian network has been successfully reduced to an "equivalent workload formulation" of lower dimension. In this article we explain that reduction in general terms, using an orthogonal decomposition that distinguishes between reversible and irreversible controls.
Suggested Citation: Suggested Citation