In modern Industry 4.0 applications, a huge amount of data is acquired during manufacturing processes that are often contaminated with anomalous observations in the form of both casewise and cellwise outliers. These can seriously reduce the performance of control charting procedures, especially in complex and high-dimensional settings. To mitigate this issue in the context of profile monitoring, we propose a new framework, referred to as robust multivariate functional control chart (RoMFCC), that is able to monitor multivariate functional data while being robust to both functional casewise and cellwise outliers. The RoMFCC relies on four main elements: (I) a functional univariate filter to identify functional cellwise outliers to be replaced by missing components; (II) a robust multivariate functional data imputation method of missing values; (III) a casewise robust dimensionality reduction; (IV) a monitoring strategy for the multivariate functional quality characteristic. An extensive Monte Carlo simulation study is performed to compare the RoMFCC with competing monitoring schemes already appeared in the literature. Finally, a motivating real-case study is presented where the proposed framework is used to monitor a resistance spot welding process in the automotive industry.
翻译:在现代工业4.0应用中,在制造过程中获取了大量数据,而制造过程中往往以案例和细胞外缘两种形式受到异常观测的污染。这些数据可严重降低控制图表绘制程序的性能,特别是在复杂和高维环境下。为了在剖析监测范围内缓解这一问题,我们提议了一个新的框架,称为“稳健的多变量功能控制图(ROMFCC)”,它能够监测多变量功能数据,同时对功能性外系和细胞外系都具有很强的功能性。RoMFCC依靠四个主要要素:(一) 一个功能性的单项单项过滤器,以确定功能性细胞外系,以缺失的部件取代;(二) 一个强有力的多变量功能数据估算方法,以缺失值来取代; (三) 一个案例性强的维度减少;(四) 一个多变量功能性特性的监测战略。开展了一个广泛的蒙特卡洛模拟研究,以比较RoMFCC与文献中已经出现的相互竞争的监测计划。最后,在拟议框架用来监测汽车工业的阻力点微处理过程中,提出了一个激励性实际案例研究。