With the rise of Industry 4.0, huge amounts of data are now generated that are apt to be modelled as functional data. In this setting, standard profile monitoring methods aim to assess the stability over time of a completely observed functional quality characteristic. However, in some practical situations, evaluating the process state in real-time, i.e., as the process is running, could be of great interest to significantly improve the effectiveness of monitoring. To this aim, we propose a new method, referred to as functional real-time monitoring (FRTM), that is able to account for both phase and amplitude variation through the following steps: (i) registration; (ii) dimensionality reduction; (iii) monitoring of a partially observed functional quality characteristic. An extensive Monte Carlo simulation study is performed to quantify the performance of FRTM with respect to two competing methods. Finally, an example is presented where the proposed method is used to monitor batches from a penicillin production process in real-time.
翻译:随着工业4.0的兴起,现在产生了大量数据,这些数据可以仿照功能性数据,在这一环境中,标准剖面监测方法旨在评估一个完全观察到的功能性特征在一段时间内的稳定性,然而,在某些实际情况下,实时评估过程状态,即随着过程的运行,可能非常有助于显著提高监测的有效性,为此,我们提出了一种新的方法,称为功能性实时监测(FRTM),能够通过下列步骤说明阶段性和振幅变化:(一) 登记;(二) 维度减少;(三) 监测一个部分观察到的功能性能特征;对蒙特卡洛进行广泛的模拟研究,以量化FRTM在两种竞争方法方面的性能;最后,举例说,拟议的方法用于实时监测来自前哨生产过程的批量。