Performance analysis of queueing networks via robust optimization

22Citations
Citations of this article
62Readers
Mendeley users who have this article in their library.
Get full text

Abstract

Performance analysis of queueing networks is one of the most challenging areas of queueing theory. Barring very specialized models such as product-form type queueing networks, there exist very few results that provide provable nonasymptotic upper and lower bounds on key performance measures. In this paper we propose a new performance analysis method, which is based on the robust optimization. The basic premise of our approach is as follows: rather than assuming that the stochastic primitives of a queueing model satisfy certain probability laws-such as i.i.d. interarrival and service times distributions-we assume that the underlying primitives are deterministic and satisfy the implications of such probability laws. These implications take the form of simple linear constraints, namely, those motivated by the law of the iterated logarithm (LIL). Using this approach we are able to obtain performance bounds on some key performance measures. Furthermore, these performance bounds imply similar bounds in the underlying stochastic queueing models. We demonstrate our approach on two types of queueing networks: (a) tandem single-class queueing network and (b) multiclass single-server queueing network. In both cases, using the proposed robust optimization approach, we are able to obtain explicit upper bounds on some steady-state performance measures. For example, for the case of TSC system we obtain a bound of the form C(1-p)-1 ln ln C(1-p) -1) on the expected steady-state sojourn time, where C is an explicit constant and P is the bottleneck traffic intensity. This qualitatively agrees with the correct heavy traffic scaling of this performance measure up to the ln ln C(1-p)-1)correction factor. © 2011 INFORMS.

Cite

CITATION STYLE

APA

Bertsimas, D., Gamarnik, D., & Anatoliy Rikun, A. (2011). Performance analysis of queueing networks via robust optimization. Operations Research, 59(2), 455–466. https://doi.org/10.1287/opre.1100.0879

Register to see more suggestions

Mendeley helps you to discover research relevant for your work.

Already have an account?

Save time finding and organizing research with Mendeley

Sign up for free