Predictive maintenance decision using statistical linear regression and kernel methods

Tung Le, Ming Luo, Junhong Zhou, H. Chan
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引用次数: 12

Abstract

In this paper, we develop a predictive maintenance (PdM) method to determine the most effective time to apply maintenance to an equipment and study its application to a real semiconductor etching chamber. More specifically, we first apply linear regression to predict the (output) equipment health condition from the (input) operational parameters. This choice of linear model also allows us to propose an algorithm to reduce the number of operational parameters to be monitored for PdM purposes using t-statistics. Then, we follow a cross-validation based procedure to generate prediction error samples and apply a kernel method to construct the corresponding probability density function of the prediction error. Finally, the PdM decision can be made based on the likelihood of the predicted health condition exceeding a certain maintenance threshold. Our analysis using real data from a semiconductor etching chamber shows that the proposed PdM decision with the reduced dimension linear regression performs comparably to the one using full-scale linear model and can be used for better maintenance planning compared to the existing practice of fixed-schedule maintenance.
基于统计线性回归和核方法的预测性维修决策
在本文中,我们开发了一种预测维护(PdM)方法来确定对设备进行维护的最有效时间,并研究了其在实际半导体蚀刻室中的应用。更具体地说,我们首先应用线性回归从(输入)运行参数预测(输出)设备健康状况。这种线性模型的选择还允许我们提出一种算法,以减少使用t统计量监测PdM目的的操作参数的数量。然后,我们遵循基于交叉验证的过程生成预测误差样本,并应用核方法构造相应的预测误差概率密度函数。最后,可以根据预测的健康状况超过某个维护阈值的可能性做出PdM决策。我们使用半导体蚀刻室的实际数据进行分析,结果表明,采用降维线性回归的PdM决策与使用全尺寸线性模型的PdM决策相当,并且与现有的固定计划维护实践相比,可以用于更好的维护计划。
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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