posted on 2023-10-05, 13:35authored byChihang Wei, Chenglin Wen, Jieguang He, Zhihuan Song
Visual process monitoring would provide more directly
appreciable
and more easily comprehensible information about the process operating
status as well as clear depictions of the occurrence path of faults;
however, as a more challenging task, it has been sporadically discussed
in the research literature on conventional process monitoring. In
this paper, the Data-Dependent Kernel Discriminant Analysis (D2K-DA) model is proposed. A special data-dependent kernel function
is constructed and learned from the measured data, so that the low-dimensional
visualizations are guaranteed, combined with intraclass compactness,
interclass separability, local geometry preservation, and global geometry
preservation. The new optimization is innovatively designed by exploiting
both discriminative information and t-distributed geometric similarities.
On the construction of novel indexes for visualization, experiments
of visual monitoring tasks on simulated and real-life industrial processes
illustrate the merits of the proposed method.