实时内存控制器的模式控制数据流建模

Yonghui Li, Hrishikesh Salunkhe, J. Bastos, Orlando Moreira, B. Akesson, K. Goossens
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引用次数: 5

摘要

SDRAM是现代多核平台上执行多个实时(RT)流应用程序的共享资源。分析最小保证SDRAM带宽对于保证RT流应用的需求是至关重要的。然而,导出最坏情况带宽(WCBW)是具有挑战性的,因为具有不同事务大小的不同内存流量。事实上,现有的RT内存控制器要么不能有效地支持可变事务大小,要么不能提供对紧密绑定的WCBW的分析。我们提出了一种新的模式控制数据流(MCDF)模型来捕获可变大小内存事务的命令调度依赖关系。WCBW可以通过使用现有的工具来自动分析我们的MCDF模型而不是使用现有的静态分析技术来获得,与我们的模型相比,现有的静态分析技术很难扩展到涵盖不同的RT内存控制器。此外,MCDF分析可以利用由应用程序或内存仲裁器提供的有关已知事务序列的静态信息。实验结果表明,与没有已知事务序列的情况相比,WCBW可以提高77%。此外,结果表明,所提出的MCDF模型优于最先进的分析方法,并且在没有已知交易序列的情况下将WCBW提高了22%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mode-controlled data-flow modeling of real-time memory controllers
SDRAM is a shared resource in modern multi-core platforms executing multiple real-time (RT) streaming applications. It is crucial to analyze the minimum guaranteed SDRAM bandwidth to ensure that the requirements of the RT streaming applications are always satisfied. However, deriving the worstcase bandwidth (WCBW) is challenging because of the diverse memory traffic with variable transaction sizes. In fact, existing RT memory controllers either do not efficiently support variable transaction sizes or do not provide an analysis to tightly bound WCBW in their presence. We propose a new mode-controlled data-flow (MCDF) model to capture the command scheduling dependencies of memory transactions with variable sizes. The WCBW can be obtained by employing an existing tool to automatically analyze our MCDF model rather than using existing static analysis techniques, which in contrast to our model are hard to extend to cover different RT memory controllers. Moreover, the MCDF analysis can exploit static information about known transaction sequences provided by the applications or by the memory arbiter. Experimental results show that 77% improvement of WCBW can be achieved compared to the case without known transaction sequences. In addition, the results demonstrate that the proposed MCDF model outperforms state-of-the-art analysis approaches and improves the WCBW by 22% without known transaction sequences.
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