Academy & Industry Research Collaboration Center (AIRCC)

Volume 9, Number 13, November 2019

Token Bucket-based Throughput Constraining in Cross-layer Schedulers

  Authors

Jeremy Van den Eynde and Chris Blondia, University of Antwerp - imec, Belgium

  Abstract

In this paper we consider upper and lower constraining users' service rates in a slotted, cross-layer scheduler context. Such schedulers often cannot guarantee these bounds, despite the usefulness in adhering to Quality of Service (QoS) requirements, aiding the admission control system or providing different levels of service to users. We approach this problem with a low-complexity algorithm that is easily integrated in any utility function-based cross-layer scheduler. The algorithm modifies the weights of the associated Network Utility Maximization problem, rather than for example applying a token bucket to the scheduler's output or adding constraints in the physical layer. We study the efficacy of the algorithm through simulations with various schedulers from literature and mixes of traffic. The metrics we consider show that we can bound the average service rate within about five slots, for most schedulers. Schedulers whose weight is very volatile are more difficult to constrain.

  Keywords

Cross-layer Scheduling, Quality of Service, Token Buckets, Resource allocation