半导体制造中低温泵的预测性维护实践

Erik Collart, A. Longley, Dirk Gordon, John Nordquist, Paul Matthews
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引用次数: 0

摘要

半制造中的许多关键步骤需要高真空或受控的环境条件。这种需求是通过一个非常广泛的真空和减排系统网络来满足的。在一个典型的工厂中,这个网络由成千上万的泵、减压阀和辅助设备组成。这提供并保持真空水平和质量,两个关键的工艺参数。应用智能制造和预测性维护是卓越运营的关键,可以减少与计划外真空和消减相关的风险和不确定性。本文以低温泵为研究对象,讨论了使用基于规则和统计模型(ML模型)来提供维护指导和维护优先级。基于规则的案例研究包括氦回路污染检测和低温再生故障检测。我们的机器学习模型是在广泛的HVM泵数据上开发、训练和验证的。它们应用于3种不同的泵类型,在关键的二元分类器率指标上得分很高,根据泵类型,准确率高达93%,召回率高达87%。随着我们收集更多的数据,我们的模型将继续学习和改进,并进一步降低风险和不确定性。
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Predictive Maintenance Practices for Cryogenic Pumps in Semiconductor Manufacturing
Many critical steps in semi manufacturing need high vacuum or controlled ambient conditions. This need is met through a very extensive network of vacuum and abatement systems. In a typical fab this network consists of many thousands of pumps, abatement, and ancillary equipment. This provides and maintains vacuum levels and quality, two key process parameters. Applying Smart Manufacturing and Predictive Maintenance is key to Operational Excellence and reducing risk and uncertainty associated with unplanned vacuum and abatement downs. In this paper we focus on cryogenic pumps and discuss using both rule-based and statistical models (ML models) to provide maintenance guidance and maintenance prioritization. Rule-based case studies include Helium circuit contamination detection and Cryo regeneration fault detection. Our ML models, were developed, trained, and verified on extensive HVM pump data. They were applied to 3 different pump types and scored high on key binary classifier rate metrics, as high as 93% accuracy and 87% recall depending on pump type. As we collect more data our models will continue to learn and improve and further reduce risk and uncertainty.
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