电介质击穿数据建模的最小对数方法

E. Yashchin, Baozhen Li, J. Stathis, E. Wu
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引用次数: 3

摘要

薄膜介质击穿的过程在文献中得到了广泛的研究。通常,这些过程是根据与威布尔分布相关的随机量来建模的。在许多情况下,直接威布尔方法不能解释观测到的介质击穿(TDDB)时间,导致需要引入更复杂的模型。这反过来又导致在建模和分析这种现象的过程中出现相当大的复杂性。在本文中,我们提出了一种分析TDDB数据的方法,该方法基于一个假设,即样品可以被视为竞争细胞的集合,其中在单个细胞中发生相同的随机降解过程。因此,每个细胞都有自己的失效时间,而时间最短的细胞就是真正导致失效的细胞。在许多情况下,这是唯一可观察到的寿命,因为样品和电池中正在进行的过程可能受到其中一个电池中的介电放电的影响。我们考虑了单个细胞的分解时间可以用对数正态分布来建模的情况,并开发了一种基于最小值的有限样本分布的方法。该模型可以相对简单地解释TDDB数据,包括低百分位数和高百分位数。我们开发了基于完整或正确删减的TDDB数据的推理程序,并说明了其在基于应力的实验过程中获得的数据的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Min-log approach to modeling dielectric breakdown data
The process of dielectric breakdown in thin films has been studied extensively in the literature. Typically, these processes are modeled in terms of stochastic quantities related to a Weibull distribution. In many cases the direct Weibull approach is not capable of explaining the observed times to dielectric breakdown (TDDB), leading to the necessity to introduce more complex models. This, in turn, leads to considerable complications in the process of modeling and analyzing this phenomenon. In this article we present an approach to analysis of TDDB data based on the assumption that a sample can be viewed as a collection of competing cells, where the same stochastic process of degradation is taking place in the individual cells. Every cell, therefore, has its individual time to failure, and the cell having the shortest time is the one that actually causes the failure. In many cases, this is the only lifetime that is actually observable, as the sample and the ongoing processes in the cells could be affected by the dielectric discharge in one of them. We consider the situation where times of breakdown of individual cells can be modeled by a lognormal distribution and develop an approach based on the finite-sample distribution of minimum. This model leads to a relatively simple explanation of the TDDB data, including both low and high percentiles. We develop procedures for inference based on complete or right-censored TDDB data and illustrate its application for data obtained in the course of stress-based experiments.
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