The Development of the Charge Transport Model To Predict Dielectric Failure

Yueming Xu, J. Plawsky, T. Lu
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引用次数: 1

Abstract

A charge transport model was previously developed in our group to predict intrinsic dielectric failure as a function of voltage for low-k SiCOH and high-k SiN, two materials commonly used in integrated circuits[1], [2]. The model incorporates a set of fundamental mechanisms, including electronical conduction and defect generation, resulting in breakdown when a critical defect density is reached. It replicated electrical conduction through dielectric materials and so can describe the entire history of current flow through the dielectric. Furthermore, a revised version of this model was recently proposed, and it overcame two limitations of the original model: the lack of thickness and temperature dependence. One issue recently investigated was the assumption that the effective velocity of tunneling electrons was the same as mobile electrons. These velocities are used to calculate the electron flux/current. New models separating the two velocities were developed and to fit the experimental data. These newer models offered slightly worse reliability predictions, and so the initial assumption remains not only simpler, but also more accurate so far. This model will be applied to predict the filament formation in resistive switching memory devices.
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预测介质失效的电荷输运模型的发展
我们小组之前开发了一个电荷传输模型,用于预测低k SiCOH和高k SiN这两种集成电路中常用的材料作为电压函数的本征介电失效[1],[2]。该模型结合了一组基本机制,包括电子传导和缺陷产生,当达到临界缺陷密度时导致击穿。它复制了电介质材料的电传导,因此可以描述电流流过电介质的整个历史。此外,最近提出了该模型的修订版本,它克服了原始模型的两个局限性:缺乏厚度和温度依赖。最近研究的一个问题是假设隧穿电子的有效速度与移动电子相同。这些速度被用来计算电子通量/电流。建立了分离两种速度的新模型,以拟合实验数据。这些新模型提供的可靠性预测略差,因此,到目前为止,最初的假设不仅更简单,而且更准确。该模型将用于预测电阻开关存储器中灯丝的形成。
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