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HiSIM-RP: A reverse-profiling based 1st principles compact MOSFET model and its application to variability analysis of 90nm and 40nm CMOS

机译:HISIM-RP:基于反向分析的1 ST 原理紧凑型MOSFET模型及其在90nm和40nm CMOS的可变性分析中的应用

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As traditional compact MOSFET models have many unphysical fitting parameters, they cannot be used for electrical characteristics prediction with process condition change. Moreover, they cannot be used for physical variability extraction from electrical characteristics variation, either. Although TCAD has the same potential capability, they are too slow for circuit simulation. In this paper, a reverse-profiling based 1st principles compact MOSFET model HiSIM-RP developed from HiSIM2 [1] is presented. HiSIM-RP does not have any unphysical fitting parameters and has 1,000-10,000 times faster calculation speed than TCAD. Good predictability of HiSIM-RP has been demonstrated in the case of channel profile change of 90nm transistor. Moreover, 90nm and 40nm CMOS electrical characteristics variability has been analyzed by HiSIM-RP. It has been clarified that random dopant fluctuation and external source/drain series resistance variation are the primary contributors to random variation of electrical characteristics. As for the systematic variation of the electrical characteristics, it has been clarified that gate length, dopant non-uniformity and external source/drain series resistance variation are the primary contributors.
机译:随着传统的紧凑型MOSFET模型具有许多不受神经的拟合参数,它们不能用于工艺条件变化的电特性预测。此外,它们不能用于从电特性变化的物理变化提取。虽然TCAD具有相同的潜在能力,但它们对于电路仿真太慢。在本文中,提出了一种基于反析性的1 st 原理紧凑型MOSFET模型从HISIM2 [1]开发的HINIM-RP。 Hisim-RP没有任何不受神经的拟合参数,并且比TCAD的计算速度快1000-10,000倍。在90nm晶体管的通道轮廓变化的情况下,已经证明了Hisim-RP的良好可预测性。此外,通过HISIM-RP分析了90nm和40nm CMOS电特性可变性。已经澄清了随机掺杂剂波动和外部源/漏极串联电阻变化是电气特性随机变化的主要贡献者。对于电气特性的系统变化,已经澄清了栅极长度,掺杂剂不均匀性和外部源/漏极串联电阻变化是主要贡献者。

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