首页> 外文会议>Quality Electronic Design (ISQED), 2010 >A MATLAB-based technique for defect level estimation using data mining of test fallout data versus fault coverage
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A MATLAB-based technique for defect level estimation using data mining of test fallout data versus fault coverage

机译:基于MATLAB的缺陷级别估计技术,使用测试余量数据与故障覆盖率之间的数据挖掘

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To achieve progressively lower defective parts per million (PPM) levels in silicon, we need to target a wide variety of fault and defect models, such as stuck-at, at-speed and bridging faults and IDDQ/IDD failures, and apply tests targeting each such model. This paper describes a novel MATLAB®-based methodology for quantifying PPM improvements based on fallout data during manufacturing test application. It is seen that tests that target a range of defect models, each with moderately high levels of coverage, may be better in terms of lowering PPM than those that target a single fault model with high levels of coverage. This analysis is explained using regression models for PPM yield versus fault/defect coverage. This approach is beneficial to semiconductor companies for calibrating their fault coverage goals to meet PPM requirements from automotive and other customers.
机译:为了使硅中的百万分之几的缺陷零件(PPM)级别逐渐降低,我们需要针对各种故障和缺陷模型,例如卡住,高速和桥接故障以及IDDQ / IDD故障,并针对性地进行测试。每个这样的模型。本文介绍了一种新颖的基于MATLAB 的方法,该方法可用于在制造测试应用过程中基于辐射数据量化PPM改进。可以看出,针对一系列缺陷模型的测试,在降低PPM方面可能比针对单一缺陷模型且覆盖率高的测试更好,每个缺陷模型的覆盖率都较高。使用PPM产量与故障/缺陷覆盖率的回归模型来解释此分析。这种方法对半导体公司校准其故障覆盖率目标以满足汽车和其他客户的PPM要求很有帮助。

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