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Information-theoretic and statistical methods of failure log selection for improved diagnosis

机译:故障日志选择的信息理论和统计方法可改善诊断

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Diagnosis of each failed part requires the failed data captured on the test equipment. However, due to memory limitations on the tester, one often cannot store all the failed data for every chip tested. Consequently, truncated failure logs are used instead of complete logs for each part. Such truncation of the failure logs can result in very long turn-around times for diagnosis because important failure points may be removed from the log. Subsequently, the accuracy and resolution of final diagnosis may suffer even after multiple iterations of diagnosis. In addition, the existing test response compaction techniques though good for testing, either adversely affect diagnosis or are highly sensitive to deviation from the chosen fault model. In this context, the industry needs dynamic selection of better failure logs that enhances diagnosis. In this paper, we propose a number of metrics based on information theory that may help in selecting failure logs dynamically for improving the accuracy and resolution of final diagnosis. We also report on the efficacy of these metrics through the results of our experiments.
机译:诊断每个失败的零件都需要在测试设备上捕获失败的数据。但是,由于测试仪的内存限制,通常无法存储每个测试芯片的所有失败数据。因此,每个部分都使用截断的故障日志,而不是完整的日志。故障日志的这种截断可能会导致非常长的诊断周转时间,因为重要的故障点可能会从日志中删除。随后,即使在多次诊断之后,最终诊断的准确性和解决方案也可能会受到影响。此外,现有的测试响应压缩技术虽然很适合测试,但是对诊断产生不利影响,或者对与所选故障模型的偏差高度敏感。在这种情况下,行业需要动态选择更好的故障日志以增强诊断。在本文中,我们提出了一些基于信息论的指标,这些指标可能有助于动态选择故障日志,以提高最终诊断的准确性和解决方案。我们还将通过实验结果报告这些指标的有效性。

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