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Utilization difference based partitioned scheduling of mixed-criticality systems

机译:基于利用率差异的混合临界系统分区调度

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Mixed-Criticality (MC) systems consolidate multiple functionalities with different criticalities onto a single hardware platform. Such systems improve the overall resource utilization while guaranteeing resources to critical tasks. In this paper, we focus on the problem of partitioned multiprocessor MC scheduling, in particular the problem of designing efficient partitioning strategies. We develop two new partitioning strategies based on the principle of evenly distributing the difference between total high-critical utilization and total low-critical utilization for the critical tasks among all processors. By balancing this difference, we are able to reduce the pessimism in uniprocessor MC schedulability tests that are applied on each processor, thus improving overall schedulability. To evaluate the schedulability performance of the proposed strategies, we compare them against existing partitioned algorithms using extensive experiments. We show that the proposed strategies are effective with both dynamic-priority Earliest Deadline First with Virtual Deadlines (EDF-VD) and fixed-priority Adaptive Mixed-Criticality (AMC) algorithms. Specifically, our results show that the proposed strategies improve schedulability by as much as 28.1% and 36.2% for implicit and constrained-deadline task systems respectively.
机译:混合关键性(MC)系统将具有不同关键性的多个功能整合到单个硬件平台上。这样的系统提高了整体资源利用率,同时保证了关键任务的资源。在本文中,我们关注于分区多处理器MC调度的问题,特别是设计有效分区策略的问题。我们基于在所有处理器之间平均分配关键任务的总高关键利用率和总低关键利用率之间的差异的原理,开发了两种新的分区策略。通过平衡这种差异,我们能够减少应用于每个处理器的单处理器MC可调度性测试中的悲观情绪,从而提高整体可调度性。为了评估所提出策略的可调度性,我们使用广泛的实验将它们与现有的分区算法进行了比较。我们表明,所提出的策略对于动态优先级最早的虚拟截止日期最早的截止日期(EDF-VD)和固定优先级的自适应混合临界(AMC)算法都是有效的。具体而言,我们的结果表明,对于隐式和约束截止任务系统,所提出的策略分别将可调度性提高了28.1%和36.2%。

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