Madakyaru, Muddu and Harrou, Fouzi and Sun, Ying (2019) Monitoring Distillation Column Systems Using Improved Nonlinear Partial Least Squares-Based Strategies. IEEE Sensors Journal, 19 (23). pp. 11697-11705. ISSN 1530-437X
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Abstract
Fault detection in industrial systems plays a core role in improving their safety, productivity and avoiding expensive maintenance. This paper proposed and verified data-driven anomaly detection schemes based on a nonlinear latent variable model and statistical monitoring algorithms. Integrating both the suitable characteristics of partial least squares (PLS) and adaptive neural network fuzzy inference systems (ANFIS) procedure, PLS-ANFIS model is employed to allow for flexible modeling of multivariable nonlinear processes. Furthermore, PLS-ANFIS modeling was connected with k-nearest neighbors (kNN)-based data mining schemes and employed for nonlinear process monitoring. Specifically, residuals generated from the PLS-ANFIS model are used as the input to the kNN-based mechanism to uncover anomalies in the data. Moreover, kNN-based exponentially smoothing with parametric and nonparametric thresholds is adopted to better anomaly detection. The effectiveness of the proposed approach is evaluated using real measurements from an actual bubble cap distillation column
Item Type: | Article |
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Uncontrolled Keywords: | —Anomaly detection, data mining algorithm, unsupervised monitoring, distillation column systems |
Subjects: | Engineering > MIT Manipal > Chemical |
Depositing User: | MIT Library |
Date Deposited: | 12 Feb 2020 10:55 |
Last Modified: | 12 Feb 2020 10:55 |
URI: | http://eprints.manipal.edu/id/eprint/154917 |
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