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Cell-Aware Defect Diagnosis of Customer Returns Based on Supervised Learning

机译:基于监督学习的客户返回的细胞感知缺陷诊断

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In this paper, we propose a new learning-guided approach for diagnosis of intra-cell defects that may occur in customer returns. In the first part of the paper, only static defects modeled by stuck-at faults have been assumed. Several supervised learning algorithms were considered, with various levels of efficiency. In the second part of the paper, we have extended the previous work by dealing with more sophisticated (i.e., dynamic) defects. This time, we concentrated on a Bayesian classification method used for predicting the nature (likelihood to be a good candidate) of each new data instance (defect) that has to be evaluated during the diagnosis process. Results obtained on benchmark circuits, and comparison with a commercial cell-aware diagnosis tool, demonstrate the efficiency of the proposed approach in terms of accuracy and resolution.
机译:在本文中,我们提出了一种新的学习引导方法,用于诊断客户回报中可能发生的细胞内缺陷。在本文的第一部分中,假设仅通过卡住故障建模的静态缺陷。考虑了几种监督学习算法,具有各种效率。在本文的第二部分,我们通过处理更复杂(即动态)缺陷来扩展了以前的工作。这次,我们集中在贝叶斯分类方法上,用于预测在诊断过程中必须评估的每个新数据实例(缺陷)的性质(缺陷)的性质(可能是一个好候选人)。基准电路获得的结果,以及与商业细胞感知诊断工具的比较,展示了在准确性和分辨率方面提出了提出的方法的效率。

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