基于机器学习的半导体制造最优预测性维护技术

Dyd Pradeep, Bitragunta Vivek Vardhan, Shaik Raiak, I. Muniraj, Karthikeyan Elumalai, S. Chinnadurai
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引用次数: 2

摘要

随着半导体行业的全球竞争加剧,企业必须继续提高制造技术和生产率,以保持竞争优势。在这篇研究论文中,我们使用机器学习(ML)技术对从制造单元的传感器收集的计算数据进行预测,以预测半导体制造中的晶圆故障,然后通过实现预测性维护来降低设备故障,从而提高生产率。通过所提出的特征选择过程,大大减少了训练时间,同时保持了较高的准确率。逻辑回归、随机森林分类器、支持向量机、决策树分类器、极端梯度增强和神经网络是在这项工作中执行的一些模型构建技术。进行了许多案例研究以检查准确性和精确性。随机森林分类器的准确率超过93.62%,超过了所有其他模型。数值结果还表明,机器学习技术可以用于预测晶圆故障,进行预测性维护,提高半导体制造的生产率。
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Optimal Predictive Maintenance Technique for Manufacturing Semiconductors using Machine Learning
As global competitiveness in the semiconductor sector intensifies, companies must continue to improve manufacturing techniques and productivity in order to sustain competitive advantages. In this research paper, we have used machine learning (ML) techniques on computational data collected from the sensors in the manufacturing unit to predict the wafer failure in the manufacturing of the semiconductors and then lower the equipment failure by enabling predictive maintenance and thereby increasing productivity. Training time has been greatly reduced through the proposed feature selection process with maintaining high accuracy. Logistic Regression, Random Forest Classifier, Support Vector Machine, Decision Tree Classifier, Extreme Gradient Boost, and Neural Networks are some of the model-building techniques that are performed in this work. Numerous case studies were undertaken to examine accuracy and precision. Random Forest Classifier surpassed all the other models with an accuracy of over 93.62%. Numerical results also show that the ML techniques can be implemented to predict wafer failure, perform predictive maintenance and increase the productivity of manufacturing the semiconductors.
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