2023 AIChE Annual Meeting
(509a) Online Monitoring and Robust, Reliable Fault Detection and Diagnosis of Chemical Process Systems
In addition, we present a novel integrated process monitoring and fault diagnosis framework that adopts the SPC algorithm for quick and reliable fault detection, as well as Principal Geodesic Analysis (PGA) for accurate fault diagnosis [1]. Thus, this integrated framework overcomes the drawbacks of conventional dimensionality reduction-based process monitoring techniques and achieves superior performance in the benchmark case study of the Tennessee Eastman Process (TEP). We also compare different choices of distance measures on the fault classification accuracy in the case study, such as Euclidian, Manhattan, Mahalanobis, and Cosine distance measures. We find that the cosine distance gives the highest classification accuracy among all candidates. These results and findings further improve the performance of our integrated framework.
References
[1] A. Smith, B. Laubach, I. Castillo, V.M. Zavala, 2022, Data analysis using Riemannian geometry and applications to chemical engineering, Computers & Chemical Engineering, 168, 108023.