A metamodel-based adaptive sampling approach for efficient failure region characterization of integrated circuits

Ingrid Kovacs, M. Topa, Monica Ene, Andi Buzo, G. Pelz
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引用次数: 3

Abstract

Adaptive verification appears to be an e client solution to overcome the coverage problem and to accurately characterize the failure region of high dimensional spaces at integrated circuits’ verification. Its main task is to gather more samples in the regions of interest based on the information learnt from previous samples. This helps engineers understand and interpret the behavior of the system under study with a reduced number of simulations/measurements compared to classical verification methods. To this end, we propose an adaptive sampling approach for the failure region characterization using the concept of metamodeling. Compared to other sampling methods for the failure region characterization, it has the advantage that it can detect and sample more in the near-failure region in the absence of a fail region. The concept has been applied on several synthetic test functions and on lab measurements of an analog integrated circuit. Results reveal that this adaptive sampling approach is very promising for failure region characterization.
基于元模型的自适应采样方法在集成电路失效区域的有效表征
自适应验证是克服集成电路验证中覆盖问题和准确表征高维空间失效区域的一种客户端解决方案。它的主要任务是基于从以前的样本中学习到的信息,在感兴趣的区域收集更多的样本。与经典验证方法相比,这有助于工程师通过减少模拟/测量次数来理解和解释所研究系统的行为。为此,我们提出了一种使用元建模概念的自适应采样方法来表征故障区域。与其它失效区域表征的采样方法相比,它的优点是在没有失效区域的情况下,可以在近失效区域进行更多的检测和采样。该概念已应用于几种综合测试功能和模拟集成电路的实验室测量。结果表明,这种自适应采样方法在故障区域表征中具有很好的应用前景。
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