English

A Robust Server-Effort Policy for Fluid Processing Networks

Optimization and Control 2022-09-07 v2

Abstract

Multi-Class Processing Networks describe a set of servers that perform multiple classes of jobs on different items. A useful and tractable way to find an optimal control for such a network is to approximate it by a fluid model, resulting in a Separated Continuous Linear Programming (SCLP) problem. Clearly, arrival and service rates in such systems suffer from inherent uncertainty. A recent study addressed this issue by formulating a Robust Counterpart for SCLP models with budgeted uncertainty which provides a solution in terms of processing rates. This solution is transformed into a sequencing policy. However, in cases where servers can process several jobs simultaneously, a sequencing policy cannot be implemented. In this paper, we propose to use in these cases a a resource allocation policy, namely, the proportion of server effort per class. We formulate Robust Counterparts of both processing rates and server-effort uncertain models for four types of uncertainty sets: box, budgeted, one-sided budgeted, and polyhedral. We prove that server-effort model provides a better robust solution than any algebraic transformation of the robust solution of the processing rates model. Finally, to get a grasp of how much our new model improves over the processing rates robust model, we provide results of some numerical experiments.

Keywords

Cite

@article{arxiv.2207.04472,
  title  = {A Robust Server-Effort Policy for Fluid Processing Networks},
  author = {Harold Ship and Evgeny Shindin and Odellia Boni and Itai Dattner},
  journal= {arXiv preprint arXiv:2207.04472},
  year   = {2022}
}
R2 v1 2026-06-25T00:47:33.576Z