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Data-Retention-Time Characterization of Gain-Cell eDRAMs Across the Design and Variations Space

机译:跨越设计和变化空间的增益单元eDRAM的数据保留时间表征

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The rise of data-intensive applications has increased the demand for high-density and low-power embedded memories. Among them, the gain-cell embedded DRAM (GC-eDRAM) is a suitable alternative to the static random access memory (SRAM) due to its high memory density and low leakage current. However, as the GC-eDRAM dynamically stores data, its memory content has to be periodically refreshed according to the data retention time (DRT). Even though different DRT characterization methodologies have been reported in the literature, a practical and accurate method to quantify the DRT across Monte Carlo (MC) runs to evaluate the impact of local process variations (LPVs) has not been proposed yet. Thus, the minimum memory refresh rate is generally estimated with large design guard bands to avoid any loss of data, at the expense of a higher power consumption and less memory bandwidth. In this work, we present a current-based DRT characterization methodology that enables an accurate LPV analysis without the need of a large number of costly electronic design automation (EDA) software licenses. The presented approach is compared with other DRT characterization methodologies for both accuracy as well as practical aspects. Furthermore, the DRT of a 3-transistor (3T) gain cell (GC) designed in 28 nm FD-SOI process technology is measured for different design choices, global and local variations. The analysis of the results shows that LPVs have the most degrading effect on the DRT and therefore that the proposed approach is key for either the design of GC-eDRAMs or the choice of their refresh rate to avoid the need for overly pessimistic worst-case margins.
机译:数据密集型应用程序的兴起增加了对高密度和低功耗嵌入式存储器的需求。其中,增益单元嵌入式DRAM(GC-eDRAM)具有高存储密度和低泄漏电流,因此是静态随机存取存储器(SRAM)的合适替代产品。但是,由于GC-eDRAM动态存储数据,因此必须根据数据保留时间(DRT)定期刷新其内存内容。即使在文献中已经报道了不同的​​DRT表征方法,但尚未提出一种实用且准确的方法来量化横跨Monte Carlo(MC)的DRT来评估局部过程变化(LPV)的影响。因此,通常以较大的设计保护带来估计最小存储器刷新率,以避免任何数据丢失,但以更高的功耗和更少的存储器带宽为代价。在这项工作中,我们提出了一种基于电流的DRT表征方法,该方法可进行准确的LPV分析,而无需大量昂贵的电子设计自动化(EDA)软件许可证。在准确性和实践方面,将本文提出的方法与其他DRT表征方法进行了比较。此外,还针对不同的设计选择,全局和局部变化对采用28 nm FD-SOI工艺技术设计的3晶体管(3T)增益单元(GC)的DRT进行了测量。结果分析表明,LPV对DRT的影响最大,因此,建议的方法对于设计GC-eDRAM或选择其刷新率至关重要,以避免过于悲观的最坏情况下的余量。

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