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Knowledge Transfer in Board-Level Functional Fault Identification using Domain Adaptation

机译:使用域自适应的板级功能故障识别中的知识转移

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High integration densities and design complexity make board-level functional fault identification extremely difficult. Machine-learning techniques can identify functional faults with high accuracy, but they require a large volume of data to achieve high prediction accuracy. This drawback limits the effectiveness of traditional machine-learning algorithms for training a model in the early stage of manufacturing, when only a limited amount of fail data and repair records are available. We propose a board-level diagnosis workflow that utilizes domain adaptation to transfer the knowledge learned from a mature board to a new board in the ramp-up phase. First, a metric is designed to evaluate the similarity between products, and based on the calculated value of the similarity, either a homogeneous or a heterogeneous domain adaptation algorithm is selected. Second, these domain adaptation algorithms utilize information from both the mature and the new boards with carefully designed domain-alignment rules and train a functional fault identification classifier. Three complex boards in volume production and one new board in the ramp-up phase are used to validate the proposed domain-adaptation approach in terms of the diagnosis accuracy.
机译:高集成度和设计复杂性使板级功能故障识别极为困难。机器学习技术可以高精度地识别功能故障,但是它们需要大量数据才能实现高预测精度。当只有有限数量的故障数据和维修记录可用时,此缺点限制了传统机器学习算法在制造初期训练模型的有效性。我们提出了一个董事会级别的诊断工作流程,该工作流程利用领域适应性来在加速阶段将从成熟董事会中学到的知识转移到新董事会。首先,设计一个度量来评估产品之间的相似性,并基于相似性的计算值,选择同质或异质域自适应算法。其次,这些域自适应算法利用精心设计的域对齐规则利用来自成熟板和新板的信息,并训练功能故障识别分类器。批量生产中使用了三块复杂的电路板,在升级阶段中使用了一块新的电路板,以从诊断准确性的角度验证所提出的领域自适应方法。

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