Enhancing Fault Detection in Stochastic Environments Using Interval-Valued KPCA: A Cement Rotary Kiln Case Study
Date
2025
Journal Title
Journal ISSN
Volume Title
Publisher
Institute of Electrical and Electronics
Abstract
Fault detection in industrial processes is challenging due to significant data uncertainty, which
complicates the accurate modeling of interval-valued data and the quantification of errors necessary for
reliable detection. Existing approaches, such as kernel principal component analysis (KPCA), struggle
with these challenges because they rely on single-valued data representations and are unable to effectively
handle interval-based variability. To address these limitations, this paper introduces the interval-valued
model KPCA (IV-KPCA), which extends KPCA by redefining similarity measures and kernel functions to
accommodate interval-valued uncertainty. IV-KPCA preserves the interval structure throughout the modeling
process, enhancing robustness to dynamic uncertainties and improving fault detection in complex nonlinear
systems. Within this framework, fault detection statistics (T
2
, Q, and 8) are developed to enable precise
error quantification. The proposed method is validated on a cement rotary kiln process, a highly stochastic
industrial system characterized by significant uncertainties. Experimental results demonstrate that IV-KPCA
reduces false alarms, missed detections, and detection delays by over 100%, 90%, and 95%, respectively,
compared to traditional methods. These findings underscore the potential of IV-KPCA in enhancing fault
detection performance in complex, uncertain environments
Description
Keywords
Fault detection, Kernel principal component analysis (KPCA), Interval-valued kernel PCA (IV-KPCA), Cement rotary kiln
