College of Information Science and Engineering, Northeastern University, Shenyang 110819, China.
Sensors (Basel). 2023 Jan 14;23(2):987. doi: 10.3390/s23020987.
Actual industrial processes often exhibit multimodal characteristics, and their data exhibit complex features, such as being dynamic, nonlinear, multimodal, and strongly coupled. Although many modeling approaches for process fault monitoring have been proposed in academia, due to the complexity of industrial data, challenges remain. Based on the concept of multimodal modeling, this paper proposes a multimodal process monitoring method based on the variable-length sliding window-mean augmented Dickey-Fuller (VLSW-MADF) test and dynamic locality-preserving principal component analysis (DLPPCA). In the offline stage, considering the fluctuation characteristics of data, the trend variables of data are extracted and input into VLSW-MADF for modal identification, and different modalities are modeled separately using DLPPCA. In the online monitoring phase, the previous moment's historical modal information is fully utilized, and modal identification is performed only when necessary to reduce computational cost. Finally, the proposed method is validated to be accurate and effective for modal identification, modeling, and online monitoring of multimodal processes in TE simulation and actual plant data. The proposed method improves the fault detection rate of multimodal process fault monitoring by about 14% compared to the classical DPCA method.
实际工业过程通常具有多模态特征,其数据呈现出复杂的特点,如动态、非线性、多模态和强耦合。尽管学术界已经提出了许多用于过程故障监测的建模方法,但由于工业数据的复杂性,仍然存在挑战。基于多模态建模的概念,本文提出了一种基于变长度滑动窗口-均值增强 Dickey-Fuller(VLSW-MADF)检验和动态局部保持主成分分析(DLPPCA)的多模态过程监测方法。在离线阶段,考虑到数据的波动特性,提取数据的趋势变量并输入 VLSW-MADF 进行模态识别,并使用 DLPPCA 分别对不同模态进行建模。在在线监测阶段,充分利用前一时刻的历史模态信息,仅在必要时进行模态识别,以降低计算成本。最后,通过 TE 仿真和实际工厂数据验证了该方法在多模态过程的模态识别、建模和在线监测方面的准确性和有效性。与经典的 DPCA 方法相比,所提出的方法将多模态过程故障监测的故障检测率提高了约 14%。