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Efficient Board-Level Functional Fault Diagnosis With Missing Syndromes

机译:缺少综合征的高效板级功能故障诊断

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Functional fault diagnosis is widely used in board manufacturing to ensure product quality and improve product yield. Advanced machine-learning techniques have recently been advocated for reasoning-based diagnosis; these techniques are based on the historical record of successfully repaired boards. However, traditional diagnosis systems fail to provide appropriate repair suggestions when the diagnostic logs are fragmented and some error outcomes, or syndromes, are not available during diagnosis. We describe the design of a diagnosis system that can handle missing syndromes and can be applied to four widely used machine-learning techniques. Several imputation methods are discussed and compared in terms of their effectiveness for addressing missing syndromes. Moreover, a syndrome-selection technique based on the minimum-redundancy-maximum-relevance criteria is also incorporated to further improve the efficiency of the proposed methods. Two large-scale synthetic data sets generated from the log information of complex industrial boards in volume production are used to validate the proposed diagnosis system in terms of diagnosis accuracy and training time.
机译:功能故障诊断在电路板制造中被广泛使用,以确保产品质量和提高产品良率。最近已经提倡使用先进的机器学习技术进行基于推理的诊断。这些技术基于成功修复的板的历史记录。但是,当诊断日志分散且诊断过程中某些错误结果或综合症不可用时,传统的诊断系统无法提供适当的维修建议。我们描述了一种诊断系统的设计,该系统可以处理缺失的综合症,并且可以应用于四种广泛使用的机器学习技术。讨论并比较了几种插补方法在解决缺失综合症方面的有效性。此外,还基于最小冗余-最大相关性标准的综合症选择技术也被纳入,以进一步提高所提出方法的效率。根据批量生产中复杂工业板的日志信息生成的两个大规模综合数据集,可从诊断准确性和培训时间方面验证所提出的诊断系统。

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