location: Current position: English-homepage >> Scientific Research >> Paper Publications

Workload-Aware Harmonic Partitioned Scheduling for Probabilistic Real-Time Systems

Hits:

Indexed by:会议论文

Date of Publication:2018-01-01

Included Journals:CPCI-S

Volume:2018-January

Page Number:213-218

Abstract:Multiprocessor platforms, widely adopted to realize real-time systems nowadays, bring the probabilistic characteristic to such systems because of the performance variations of complex chips. In this paper, we present a harmonic partitioned scheduling scheme with workload awareness for periodic probabilistic real-time tasks on multiprocessors under the fixed-priority preemptive scheduling policy. The key idea of this research is to improve the overall schedulability by strategically arranging the workload among processors based on the exploration of the harmonic relationship among probabilistic real-time tasks. In particular, we define a harmonic index to quantify the harmonicity among probabilistic real-time tasks. This index can be obtained via the harmonic period transformation and probabilistic cumulative worst case utilization calculation of these tasks. The proposed scheduling scheme first sorts tasks with respect to the workload, then packs them to processors one by one aiming at minimizing the increase of harmonic index caused by the task assignment. Experiments with randomly generated task sets show significant performance improvement of our proposed approach over the existing harmonic partitioned scheduling algorithm for probabilistic real-time systems.

Pre One:Proactive Interference Cancellation for Mobile-to-Mobile Communication Underlaying LTE Networks

Next One:A many-objective evolutionary algorithm with two interacting processes: cascade clustering and reference point incremental learning