Modeling of NBTI Induced Threshold Voltage Shift Based on Activation Energy Maps Under Consideration of Variability

C. Bogner, C. Schlünder, M. Waltl, H. Reisinger, T. Grasser
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引用次数: 1

Abstract

One of the major challenges for modeling BTI degradation in modern technology nodes and deeply scaled transistors is the occurrence of significant time dependent variability (TDV). This means that due to the sparsity of defects, the impact of single defects as well as variation in the number of defects per device need to be taken into consideration. We present a modeling approach based on physical principles to describe both mean parameter degradation as well as TDV. Our approach is based on activation energy maps combined with an exponential-Poisson model in order to capture variability. For parameter extraction a combination of ultra fast measurements on large area transistors and transistor array measurements are applied. Thereby, ultra fast measurements have the capability to make a wide range of capture-/emission times experimentally accessible, improving the confidence of the extracted activation energy map. On the other hand, transistor arrays have proven to be the ideal test vehicle to efficiently measure an ensemble of transistors and to asses TDV.
考虑可变性的基于激活能映射的NBTI诱导阈值电压偏移建模
在现代技术节点和深度缩放晶体管中,BTI退化建模的主要挑战之一是存在显著的时间相关变异性(TDV)。这意味着由于缺陷的稀疏性,需要考虑单个缺陷的影响以及每个设备缺陷数量的变化。我们提出了一种基于物理原理的建模方法来描述平均参数退化和TDV。我们的方法是基于活化能图与指数泊松模型相结合,以捕获可变性。在参数提取方面,采用了大面积晶体管的超快速测量和晶体管阵列测量相结合的方法。因此,超快速测量能够在实验上获得大范围的捕获/发射时间,从而提高提取活化能图的可信度。另一方面,晶体管阵列已被证明是有效测量晶体管集合和评估TDV的理想测试工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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