指导板级故障诊断的信息论综合症和根本原因分析

Fangming Ye, Zhaobo Zhang, K. Chakrabarty, Xinli Gu
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引用次数: 12

摘要

复杂电子产品的大批量生产涉及板级功能测试,以确保低缺陷逃逸。基于推理的功能故障诊断系统提出了机器学习技术,以达到较高的诊断精度。然而,机器学习需要一组丰富的测试项目(综合症)和一个相当大的故障板数据库。失败板的数量不足,不明确的根本原因识别,以及冗余或不相关的综合征会使机器学习无效。我们提出了一个基于信息论的评估和增强框架,用于指导使用证候和根本原因分析的诊断系统。基于子集选择的证候分析提供了一个具有最小冗余和最大相关性的代表性证候集合。根本原因分析衡量的是将一个给定的根本原因与其他根本原因区分开来的能力。从提出的框架中获得的度量也可以为测试重新设计提供指导,以提高诊断。使用目前正在批量生产的工业真实板和基于从另一个真实板推断的数据的额外合成板来证明所建议框架的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Information-theoretic syndrome and root-cause analysis for guiding board-level fault diagnosis
High-volume manufacturing of complex electronic products involves functional test at board level to ensure low defect escapes. Machine-learning techniques have recently been proposed for reasoning-based functional-fault diagnosis system to achieve high diagnosis accuracy. However, machine learning requires a rich set of test items (syndromes) and a sizable database of faulty boards. An insufficient number of failed boards, ambiguous root-cause identification, and redundant or irrelevant syndromes can render machine learning ineffective. We propose an evaluation and enhancement framework based on information theory for guiding diagnosis systems using syndrome and root-cause analysis. Syndrome analysis based on subset selection provides a representative set of syndromes with minimum redundancy and maximum relevance. Root-cause analysis measures the discriminative ability of differentiating a given root cause from others. The metrics obtained from the proposed framework can also provide guidelines for test redesign to enhance diagnosis. A real board from industry, currently in volume production, and an additional synthetic board, based on data extrapolated from another real board, are used to demonstrate the effectiveness of the proposed framework.
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