Accurate estimation of analog test metrics with extreme circuits

Kamel Beznia, A. Bounceur, L. Abdallah, K. Huang, S. Mir, R. Euler
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引用次数: 5

Abstract

Specification-based testing of analog/RF circuits is very costly due to lengthy test times and highly sophisticated test equipment. Alternative test measures, extracted by means of Built-In Test (BIT) techniques, are a promising approach to replace standard specification-based tests. However, these test measures must be evaluated at the design stage, before the real production, by estimating parametric test errors such as Test Escapes (TE) and Yield Loss (YL). An accurate estimation of these metrics requires a large non-biased sample of circuit instances including parametric defective ones. Since these extreme circuits are rare events, they cannot be obtained with a Monte Carlo simulation of an affordable size. However, statistical learning techniques, in combination with Monte Carlo simulation, can allow the generation of such a sample for multivariate test metrics estimation. In this paper, we will demonstrate this technique for the evaluation of an RF LNA BIT technique for which a large database of 106 circuits has been simulated for comparison purposes.
精确估计模拟测试指标与极端电路
基于规格的模拟/射频电路测试是非常昂贵的,由于漫长的测试时间和高度复杂的测试设备。通过内置测试(BIT)技术提取的替代测试度量是替代基于标准规范的测试的一种很有前途的方法。然而,这些测试措施必须在设计阶段进行评估,在实际生产之前,通过估计参数测试误差,如测试逃逸(TE)和产量损失(YL)。这些指标的准确估计需要大量的电路实例的无偏样本,包括参数缺陷。由于这些极端电路是罕见的事件,它们不能用一个负担得起的大小的蒙特卡罗模拟来获得。然而,统计学习技术与蒙特卡罗模拟相结合,可以为多元测试度量估计生成这样的样本。在本文中,我们将演示该技术用于评估RF LNA BIT技术,该技术已经模拟了106个电路的大型数据库以进行比较。
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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