多元统计
控制图
计算机科学
休哈特个体控制图
统计
数学
EWMA图表
程序设计语言
过程(计算)
作者
Christian Capezza,Fabio Centofanti,Antonio Lepore,Biagio Palumbo
出处
期刊:Technometrics
[Taylor & Francis]
日期:2024-03-07
卷期号:66 (4): 531-547
被引量:9
标识
DOI:10.1080/00401706.2024.2327346
摘要
In modern Industry 4.0 applications, a huge amount of data is acquired during manufacturing processes and is often contaminated with outliers, which can seriously reduce the performance of control charting procedures, especially in complex and high-dimensional settings. In the context of profile monitoring, we propose a new framework that is referred to as robust multivariate functional control chart (RoMFCC) to monitor a multivariate functional quality characteristic while being robust to both functional casewise and componentwise outliers. In the former case, observations of the quality characteristic are contaminated in all functional variables or components, while, in the latter, the contamination affects one or more components independently. The RoMFCC relies on (I) a functional filter to identify componentwise outliers to be replaced by missing components; (II) a robust multivariate functional data imputation method; (III) a casewise robust dimensionality reduction; (IV) a monitoring strategy for the quality characteristic. Through a Monte Carlo simulation study, the RoMFCC is compared with competing schemes that have already appeared in the literature. A case study is finally presented where the proposed framework is used to monitor a resistance spot welding process in the automotive industry. RoMFCC is implemented in the R package funcharts, available online on CRAN.
科研通智能强力驱动
Strongly Powered by AbleSci AI