Application of Machine Learning Methods to Predict the Quality of Electric Circuit Boards of a Production Line

Immo Schmidt, Lorenz Dingeldein, D. Hünemohr, Henrik Simon, Max Weigert
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引用次数: 1

Abstract

For the data challenge of the 2022 European PHM conference, data from a production line of electric circuit boards is provided to assess the quality of the produced components. The solution presented in this paper was elaborated to fulfill the data challenge objectives of predicting defects found in an automatic inspection at the end of the production line, predicting the result of a following human inspection and predicting the result of the repair of the defect components. Machine learning methods are used to accomplish the different prediction tasks. In order to build a reliable machine learning model, the steps of data preparation, feature engineering and model selection are performed. Finally, different models are chosen and implemented for the different sub-tasks. The prediction of defects in the automatic inspection is modeled with a multi-layer perceptron neural network, the prediction of human inspection is modeled using a random forest algorithm. For the prediction of human repair, a decision tree is implemented.
机器学习方法在生产线电路板质量预测中的应用
对于2022年欧洲PHM会议的数据挑战,提供了来自电路板生产线的数据,以评估所生产组件的质量。本文提出的解决方案是为了实现预测在生产线末端自动检查中发现的缺陷、预测后续人工检查的结果和预测缺陷部件修复的结果的数据挑战目标。机器学习方法用于完成不同的预测任务。为了建立可靠的机器学习模型,进行了数据准备、特征工程和模型选择等步骤。最后,针对不同的子任务选择并实现不同的模型。自动检测缺陷预测采用多层感知器神经网络建模,人工检测缺陷预测采用随机森林算法建模。对于人工修复的预测,采用决策树的方法。
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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