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A Learning-Based Cell-Aware Diagnosis Flow for Industrial Customer Returns

机译:用于工业客户回报的基于学习的细胞感知诊断流程

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Diagnosis is crucial in order to establish the root cause of observed failures in Systems-on-Chip (SoC). In this paper, we present a new framework based on supervised learning for cell-aware defect diagnosis of customer returns. By using a Naive Bayes classifier to accurately identify defect candidates, the proposed flow indistinctly deals with static and dynamic defects that may occur in actual circuits. Results achieved on benchmark circuits, as well as comparison with a commercial cell-aware diagnosis tool, show the effectiveness of the proposed framework in terms of accuracy and resolution. Moreover, the proposed flow has been experimented and validated on industrial circuits (two test chips and one customer return from STMicroelectronics), thus corroborating the results achieved on benchmark circuits.
机译:诊断至关重要,以便在片上系统(SOC)中观察到的失败的根本原因。在本文中,我们提出了一种基于监督学习的新框架,用于客户返回的细胞感知缺陷诊断。通过使用朴素贝叶斯分类器来准确地识别缺陷候选者,所提出的流程模糊地处理在实际电路中可能发生的静态和动态缺陷。基准电路实现的结果,以及与商业细胞感知诊断工具的比较,表明了在准确性和分辨率方面提出了框架的有效性。此外,所提出的流程已经在工业电路上进行了实验和验证(来自STMicroelectronics的两个测试芯片和一个客户返回),从而证实了在基准电路上实现的结果。

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