4.5 Article

Power-Aware Runtime Scheduler for Mixed-Criticality Systems on Multicore Platform

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCAD.2020.3033374

关键词

Task analysis; Power demand; Runtime; Multicore processing; Timing; Scheduling; Vehicle dynamics; Dynamic slack; mixed-criticality (MC) systems; multicore platform; runtime management; timing overhead

资金

  1. German Research Foundation (DFG) Within the Cluster of Excellence Center for Advancing Electronics Dresden at the Technische Universitat Dresden

向作者/读者索取更多资源

The study proposes an online peak power and thermal management heuristic for multicore mixed-criticality systems, aiming to reduce the peak power consumption by exploiting dynamic slack and DVFS. Experimentally validated on the ODROID-XU3 platform, the results show significant reduction in power and temperature compared to existing methods.
In modern multicore mixed-criticality (MC) systems, a rise in peak power consumption due to parallel execution of tasks with maximum frequency, specially in the overload situation, may lead to thermal issues, which may affect the reliability and timeliness of MC systems. Therefore, managing peak power consumption has become imperative in multicore MC systems. In this regard, we propose an online peak power and thermal management heuristic for multicore MC systems. This heuristic reduces the peak power consumption of the system as much as possible during runtime by exploiting dynamic slack and per-cluster dynamic voltage and frequency scaling (DVFS). Specifically, our approach examines multiple tasks ahead to determine the most appropriate one for slack assignment, that has the most impact on the system peak power and temperature. However, changing the frequency and selecting a proper task for slack assignment and a proper core for task remapping at runtime can be time-consuming and may cause deadline violation which is not admissible for high-criticality tasks. Therefore, we analyze and then optimize our runtime scheduler and evaluate it for various platforms. The proposed approach is experimentally validated on the ODROID-XU3 (DVFS-enabled heterogeneous multicore platform) with various embedded real-time benchmarks. Results show that our heuristic achieves up to 5.25% reduction in system peak power and 20.33% reduction in maximum temperature compared to an existing method while meeting deadline constraints in different criticality modes.

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