严格提取65nm CMOS设计的工艺变化

Wei Zhao, Yu Cao, F. Liu, K. Agarwal, D. Acharyya, S. Nassif, K. Nowka
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引用次数: 47

摘要

统计电路的分析和优化对于稳健的纳米级设计至关重要。为了准确地进行这种分析,需要确定主要的过程变化源,并为进一步的电路仿真建模。在这项工作中,我们提出了一种严格的方法来从现场IV测量中提取过程变化。晶体管统计数据收集从测试芯片在65nm制程制造的SOI。我们认为栅极长度(L),阈值电压(Vth)和迁移率(mu)是主要的变化源,这是由于光刻,通道掺杂和应力方面的巨大工艺挑战。为了分解它们,只需要从泄漏和线性区域中提取三个IV点。L和Vth变化均为正态分布,空间相关性可忽略不计。通过将提取的变化量包含在标称模型文件中,我们可以准确地预测驱动电流在各个工艺角落的变化。新的提取方法保证了模型与硬件的良好匹配,便于进一步的统计电路分析。
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Rigorous extraction of process variations for 65nm CMOS design
Statistical circuit analysis and optimization are critical for robust nanoscale design. To accurately perform such analysis, primary process variation sources need to be identified and modeled for further circuit simulation. In this work, we present a rigorous method to extract process variations from in-situ IV measurements. Transistor statistics are collected from a test chip fabricated in a 65 nm SOI process. We recognize gate length (L), threshold voltage (Vth) and mobility (mu) as the leading variation sources, due to the tremendous process challenge in lithography, channel doping, and stress. To decompose them, only three IV points are needed from the leakage and linear regions. Both L and Vth variations are normally distributed, with negligible spatial correlation. By including extracted variations in the nominal model file, we can accurately predict the change of drive current in all process corners. The new extraction method guarantees excellent model matching with hardware for further statistical circuit analysis.
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