A methodology for LBIST logic diagnosis in high volume manufacturing

A. Jayalakshmi, Tan Ewe Cheong
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引用次数: 6

Abstract

LBIST (Logic Built-In Self Test) is a structural test method that tests a circuit by running test patterns generated on the die as opposed to ATPG (Automatic Test Pattern Generation) method in which the test patterns are pre-generated to test specific fault types. LBIST has emerged as an alternative scan based test methodology due to its attractive benefits such as reduced pattern size and field testability. LBIST uses pseudo random patterns enabling it to generate patterns on the die saving tester memory to a large extent. At the same time it poses challenges to enable fail data collection for later debug as the LBIST test iterations are usually large (typically 100000). Tester time is not a big concern for a LBIST based method if the objective is to know if the unit passed or failed, but memory usage is a concern due to the need to compare intermediate scan responses to determine and collect failing responses for diagnosis and debug purposes. This motivated us to come up with a methodology for fail data collection that optimizes tester time and memory and collects enough fail data to provide acceptable diagnosis quality. In this paper we have presented a methodology for fail data collection and discussed the tester overheads for LBIST logic diagnosis.
大批量生产中LBIST逻辑诊断方法研究
LBIST(逻辑内置自检)是一种结构测试方法,它通过运行在模具上生成的测试模式来测试电路,与ATPG(自动测试模式生成)方法相反,ATPG(自动测试模式生成)方法预先生成测试模式以测试特定的故障类型。LBIST已经成为一种替代的基于扫描的测试方法,因为它具有减少模式尺寸和现场可测试性等诱人的优点。LBIST使用伪随机模式,使其能够在芯片上生成模式,从而在很大程度上节省测试人员的内存。与此同时,由于LBIST测试迭代通常很大(通常为100000次),因此为以后的调试启用失败数据收集带来了挑战。对于基于LBIST的方法来说,如果目标是知道单元是通过了还是失败了,那么测试器时间不是一个大问题,但是内存使用是一个问题,因为需要比较中间扫描响应来确定和收集失败响应,以便进行诊断和调试。这促使我们提出了一种故障数据收集的方法,该方法可以优化测试时间和内存,并收集足够的故障数据以提供可接受的诊断质量。在本文中,我们提出了一种故障数据收集方法,并讨论了LBIST逻辑诊断的测试开销。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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