Partitioned scheduling for real-time tasks on multiprocessor embedded systems with programmable shared srams

Che-Wei Chang, Jian-Jia Chen, Waqaas Munawar, Tei-Wei Kuo, H. Falk
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引用次数: 6

Abstract

This work is motivated by the advance of multiprocessor system architecture, in which the allocation of tasks over heterogeneous memory modules has a significant impact on the task execution. By considering two different types of memory modules with different access latencies, this paper explores joint considerations of memory allocation and real-time task scheduling to minimize the maximum utilization of processors of the system. For implicit-deadline sporadic tasks, a two-phase algorithm is developed, where the first phase determines memory allocation to derive a lower bound of the maximum utilization, and the second phase adopts worst-fit partitioning to assign tasks. It is shown that the proposed algorithm leads to a tight (2-⁄2M+1)-approximation bound where M is the number of processors. The proposed algorithm is then evaluated with 82 realistic benchmarks from MRTC, MediaBench, UTDSP, NetBench and DSPstone, and extensive simulations are further conducted to analyze the proposed algorithm.
具有可编程共享ram的多处理器嵌入式系统上实时任务的分区调度
这项工作是由多处理器系统架构的发展所推动的,在多处理器系统架构中,任务在异构内存模块上的分配对任务的执行有重大影响。本文通过考虑具有不同访问延迟的两种不同类型的内存模块,探讨了内存分配和实时任务调度的联合考虑,以最小化系统处理器的最大利用率。对于隐式截止日期偶发任务,提出了一种两阶段算法,其中第一阶段确定内存分配以得到最大利用率的下界,第二阶段采用最差拟合分区进行任务分配。结果表明,该算法得到一个紧的(2- 2 / 2M+1)逼近界,其中M为处理器数。然后用MRTC, mediabbench, UTDSP, NetBench和DSPstone的82个现实基准对所提出的算法进行了评估,并进一步进行了大量的模拟来分析所提出的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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