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Uniprocessor scheduling of real-time synchronous dataflow tasks

机译:实时同步数据流任务的单处理器调度

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摘要

The synchronous dataflow graph (SDFG) model is widely used today for modeling real-time applications in safety-critical application domains. Schedulability analysis techniques that are well understood within the real-time scheduling community are applied to the analysis of recurrent real-time workloads that are represented using this model. An enhancement to the standard SDFG model is proposed, which supports the specification of a real-time latency constraint between a specified input and a specified output of an SDFG. A polynomial-time algorithm is derived for representing the computational requirement of each such enhanced SDFG task in terms of the notion of the demand bound function (dbf), which is widely used in real-time scheduling theory for characterizing computational requirements of recurrent processes represented by, e.g., the sporadic task model. By so doing, the extensive dbf-centered machinery that has been developed in real-time scheduling theory for the hard-real-time schedulability analysis of systems of recurrent tasks may be applied to the analysis of systems represented using the SDFG model as well. The applicability of this approach is illustrated by applying prior results from real-time scheduling theory to construct an exact preemptive uniprocessor schedulability test for collections of independent recurrent processes that are each represented using the enhanced SDFG model.
机译:如今,同步数据流图(SDFG)模型已广泛用于在安全关键型应用程序域中对实时应用程序进行建模。在实时调度社区中很好理解的可调度性分析技术被应用于分析使用此模型表示的经常性实时工作负载。提出了对标准SDFG模型的增强,该模型支持SDFG的指定输入和指定输出之间的实时延迟约束的规范。推导了多项式算法,以需求约束函数(dbf)的概念表示每个此类增强的SDFG任务的计算需求,该算法广泛用于实时调度理论中以表征所表示的循环过程的计算需求通过例如零星的任务模型。通过这样做,已经在实时调度理论中开发的广泛的以dbf为中心的机制,可以对重复任务系统进行硬实时可调度性分析,也可以应用于使用SDFG模型表示的系统的分析。通过应用实时调度理论的先前结果来构建精确的先占式单处理器可调度性测试,以说明独立的递归过程的集合,每个独立过程均使用增强的SDFG模型表示,从而说明了该方法的适用性。

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