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首页> 外文期刊>ACM Transactions on Embedded Computing Systems >Power-mode-aware Memory Subsystem Optimization for Low-power System-on-Chip Design
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Power-mode-aware Memory Subsystem Optimization for Low-power System-on-Chip Design

机译:电源模式感知内存子系统优化低功耗系统上的设计

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The memory subsystem is increasingly subject to an intensive energy minimization effort in embedded and System-on-Chip development. While the main focus is typically put on energy consumption reduction, there are other optimization aspects that become more and more relevant as well, e.g., peak power constraints or time budgets. In this regard, the present article makes the following contributions. Taking industrial-grade information into account, different Static Random-Access Memory (SRAM) power modes and their characteristics are presented at first. Using this information, a comprehensive optimization model with the main intention of energy minimization is defined. It is based on memory access statistics that represent the embedded software of interest, which allows for application-tailored improvements. Further, it considers different power states of the memory subsystem and enables the definition of peak power and time corridor constraints. The presented two-stage implementation of this optimization model allows the handling of large design spaces. Clearly defined interfaces facilitate the exchange of individual workflow parts in a plug-and-play fashion and further enable a neat integration of our optimization method with existing hardware/software (HW/SW) codesign synthesis flows. A general evaluation for different technology nodes yields that the optimization potential of memory low-power modes increases with advancing miniaturization but also depends on the data footprint of the embedded software. Experimental results for a set of benchmark applications confirm these findings and provide energy savings of up to 90% and over 60% on average compared to a monolithic memory layout without low-power modes.
机译:内存子系统越来越多地受到嵌入式和系统开发系统中的强化能量最小化努力。虽然主要重点通常会降低能量消耗,但还有其他优化方面,也变得越来越相关,例如,峰值功率限制或时间预算。在这方面,本条提出以下贡献。考虑到工业级信息,首先呈现不同的静态随机存取存储器(SRAM)电源模式及其特性。使用此信息,定义了具有能量最小化的主要意图的全面优化模型。它基于内存访问统计信息,表示嵌入式感兴趣的软件,这允许适用于应用程序定制的改进。此外,它考虑了存储器子系统的不同功率状态,并实现了峰值功率和时间走廊约束的定义。本优化模型的呈现两级实现允许处理大型设计空间。明确定义的接口有助于在即插即用时尚中交换各个工作流程部分,并进一步使我们的优化方法与现有硬件/软件(HW / SW)代号合成流程进行了整洁的优化方法。不同技术节点的一般评估产生了内存低功率模式的优化电位随着越野化而增加,而且取决于嵌入式软件的数据足迹。与单片内存布局没有低功率模式,一组基准应用的实验结果确认了这些发现,并提供了高达90%,平均值超过60%的能量节省,而不是低功率模式的单片内存布局。

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